Jan 17, 1992 - cameras in a fixed-winged aircraft. The ... Purposive Versus Random Sampling ...... forest (>40 Yo canopy coverl versus ...... the estimates of sìngle pixels. Also, correlation coefficients were determined s7 ...... 6s. ¿I',. Subploc no. l0. 9. ;. 7. 6. ;. 4. 3. ;. I. Ã1J. sub¡lJ.ots: measure al.1 Ã,rees 2O cm dbh +.
REMOTE SENSING AND PERMANENT PLOT TECHNIOUES FOR WORLD FOREST MONITORING
Proceedings of the luFRo s4.o2.05 Wacharakitti lnternational Workshop 13 - 17 January 1992 Pattaya, Thailand
Organized hy
Faculty of Forestry, Kasetsart University National Research Council of Thailand Royal Forest Department University of Helsinki University of Joensuu
tuFRo s4.02.05 FINNIDA
Chíef Editors
H. Gyde Lund Risto Päivinen Songkram Thammincha
Associate Editors
Jerry Vanclay Raymond Czaplewski Thomas Stone Ladawan Puangchit Wanchai Arunpraparut
CONTENTS Page
Preface.
Opening Report Niwat Ruangpanit Opening Address H.E. Eero Salovaara
I II
III
Opening Remarks
Suvít Vibulsresth..... Opening Remarks Yanyong Thanompichai Vote of Thanks Risto Päivinen Keynote Address: A primer on permanent plots for monitoring natural resources H. Gyde Lund
IV V
VI
I
Remote Sensing Techniques for Forest Monitoring lnternational efforts at global forest monitoring using remote sensing
Sipi Jaakkola...... Forest change on a landscape scale using LANDSAT imagery: temperate and tropical forest examples Steven A. Sader. Application of remote sensing in tropical rain forest and mangrove forest monitoring in Thailand Suvit Víbulsresth and Surachai Ratanasermpong... Forest health monitoring : A new program of the USDA forest service and environmental protection agency Charles G. Shaw //11...... Monitoring changing of forest land-use by means of aerial photographs lshak Sumantri and Wesman Endom.....
13
25
3V
43
49
Permanent Sample Plot Techniques United States environmental monitoring and assesment program : An overview Craig J. Palmer and K. Bruce Jones Methodology and training in monitoring deforestation using satellite data for sustainable environmental management Hervé Jeanjean and André Husson Using 1 km resolution satellite data to classify the vegetation of South America Thomas A. Stone and Peter Schlesinger Calibrating AVHRR data w¡th LANDSAT TM data for tropical closed forest assessment in Ghana Risto Päívinen and Juho Pitkänen
59
7I 85 95
Forest inventory in Nepal Eka Raj Sharma
Unite States environmental monitoring and assessment program : landscape characterization and remote sensing Raymond L. Czaplewski, Douglas J. Norton and Denis White. Resource potential : Policies for scaling up to global significance K.D. Singh. Establishment and analysis of permanent sample plots Símo Poso
Data registries for growth and yield plots in ASEAN : A network to review current permanent sample plots in the tropics
Hashim bin Saad and Chung Kueh Shin.. Forest area est¡mates : Sampling error and classification problems Christoph Kleínn and Dieter R. Pe12...... The use of permanent plots for monitoring vegetation change in Somalia : Problems opportunities, recommendations R.M. Watson and J.M. Nímmo...... Permanent plots for multiple objectives : Defining goals and resolving conflicts Jerome K. Vanclay. The importance of permanent plots for growth and yield studies of forest plantation species in Nigeria John O. Abayomi... The ITC/RFD Huai Kha Kheng permanent sample plot (1987) Sydney G. Banyard. Permanent research sample plots in Peninsular Malaysia : Establishment, maintenance and problems lsmail Harun, Azman Hassan and Khali Azzíz Hamzah
io3 r09 119
125 129 143
149 157
165
t73
I8l
Geographic lnformation Systems GIS and tropical forest monitoring
Boonchana Klankamsorn Estimating forest biomass for Continental South and Southeast Asia using GIS Louís lverson, Sandra Brown and Anantha Prasad., RGC : A new method for dynamic monitoring of forest resources
Xu Maosong and Kou Wenzheng.. Techniques and establishment of forest resource dynamic
195
199
203
monitoring system in China Kou Wenzheng, Zhou Changxíang and Xu Maosong. Application of GIS ¡n protected areas management Youngyut Trîsurat......... lnventory of natural and forest resources of Kalimantan Timur/ lndonesia using remote sensing methods Frithjof Voss......*..
2Ls
Working Group heports.
23L
Poster Abstracts
245
List of Participants
249
Additional Papers...
257
lnworkshop Act¡v¡t¡es
273
209
227
PREFACE
ln IUFRO World Congress in Montreal, a resolution was given that the working party 4.02.05 - called 'Remote Sensing and World Forest Monitoriñg' - should promote establishment of permanent sample plot networks for global forest assessments. As the first step towards worldwide forest monitoring network, the international workshop 'REMOTE SENSING AND PERMANENT SAMPLE PLOT TECHNIOUES FOR WORLD FOREST MONITORING'was held in Pattaya, Thailand. The main objective of the workshop was to develop guidelines for establishing permanent monitoring sites throughout the world. The workshop was dedicated to the late IUFRO 4.O2.05 co-chairman, Dr. Sathit Wacharakitti, who intended to organize this meeting. The workshop was sponsored by Thai and Finnish institutions; Kasetsart University,
Faculty of Forestry, Royal Forest Department, National Research Council of Thailand, University of Joensuu, University of Helsinki and Finnish lnternational Development Agency FinnlDA. Altogether 82 participants from 1 4 countries and 7 internat¡onal organizations spent
three days having fruitful discussions in Pattaya, During two field trip days questions of tropical forestry were seen at the spot, The proceedings of this workshop include the papers, poster abstracts and the recommendat¡ons for further development of the guidelines based on the group works. lt is intended that the guidelines drafted here will be refined during the following IUFRO 4,02. and 4.02,05 meet¡ngs in Finland in August 1992.
We would like to devote our sincere thanks to the sponsors, organizers and part¡cipants of this workshop for their valuable contribution to the attempts to monitor thè forests of the world.
Risto Päivinen IUFRO 4.O2.O5 Chairman University of Joensuu Finland
Songkram Thammincha IUFRO 4.O2.05 Co-chairman
Kasetsart University Thailand
OPENING REPORT Dr. Niwat Ruangpanít Dean, Faculty of Forestry Kasetsart University Bangkok, Thailand
Your Excellency Ambassador of Finland, distinguished guests, participants, ladies and gentlemen, On behalf of the Organizing Committee, I would like to extend my sincere thank to Your Excellency the Ambassador of Finland who kindly agreed to preside over the opening ceremony of the IUFRO Wacharakitti lnternational Workshop on Remote Sensing and World Forest Monitoring. Also, lwould like to thank every one here for coming to part¡cipate in this special occasion,
This workshop is a distinguished one, being dedicated to Dr.Sathit Wacharakitti, former Dean of the Faculty of Forestry, Kasetsart University snd the late CoChairman of IUFRO 54,02.05. Dr. Wacharakitti planned to organize this meeting , but he never fulfilled his intention because of his untimely death in February 1990, The workshop is jointly organized by the Faculty of Forestry, Kasetsart University, the Royal Forest Department, the National Research Council of Thailand, University of Joensuu, University of Helsinki, and, of course, the IUFRO 54.02.05. The Finnish lnternational Development Agency (FINNIDA) kindly provides financial support through the University of Joensuu, The sessions will take place today until Friday 1 7th January. During this five-day period distinguished participants will present papers and posters on ;3mote sensing and permanent plot techn¡ques for world forest monitoring. One day will be devoted to work group intended to prepare the draft guidelines for permanent monitoring of forest resources. The other day will be spent for the field trip to National. Park, mangrove forest, and Coastal Development Project in Chantaburi Province. The participants will spend their last day of the workshop visiting the satell¡te data receiving statio;ì and the laboratory at Asian lnstitute of Technology, The output, conclusions and recommendation from this workshop will be brought to discussion during the next IUFRO meeting in Helsinki, Finland in August this year.
The Organizing Committee truly believes that this workshop will prove to be a venue where the exchange of knowledge and experience among distinguished participants will lead to the development of global network of cooperation. Now, I would like to take this opportunity to ask His Excellency Eero Salovaara, the Ambassador of Finland, to declare the official opening of this workshop.
II
OPENING ADDRESS H.E. Eero Salovaara The Ambassador of Finland
Esteemed Participants, Ladies and Gentlemen,
I feel very honoured to have the opportunity to address this very important international Workshop on Remote Sensing and World Forest Monitoring which is partly organized through my goverhment. One can justifiably ask shy such a remote country as Finland is interested in the forestry sector in South East Asia, For one thing, without much exaggeration our present property in Finland is largely based on our forests. lt is natural that over the decades Finland has gathered fairly vast knowledge and experience on different fields related to forestry, Much of this knowledge has proved to be universally applicable, We have also been very keen
to share and develop our expertise with other partners and researcher in the field, ln our modern world no one can escape the fact that apart from being vital natural resource of great economic importance, forests are crucial element in the ecological system of the Earth, ln this respect the whole mankind has a common interest in preserving sufficient and healthy forest cover, For our part, we have over the last two decades financed through our development assistance programmes dozens of forestry related project in over ten tropical countries. one example is the Thai Forestry Master plan which is under preparation, I referred to the universal responsibility in preserving and maintaining of forests for
us, I believe that this workshop is one good example of concerted efforts towards our common goal. Our workshop here may deal with limited number of issues, but in my opinion they are all of crucial importance. Since requirement for rational and comprehensive planning is the basic data which can be achieved only by thorough and reliable forest assessment and continuous monitoring system. the benefit of all of
Ladies and Gentlemen,
With these short remarks, I would like to wish you a very fruitful and efficient workshop.
III
OPENING REMARKS
Dr. Suvit Wbulsresth u.ty Sec r eta r y-g en eral National Research Council of Thailand D ep
Your Excellency, Ambassador of Finland to Thailand Dean, Faculty of Forestry, Kasetsart University Deputy Director General, Royal Forestry Department IUFRO
54.02.05 Chairman
Distinguished participants, Ladies and Gentlemen It is a great pleasure and honour for me to speak on behalf of the National Research Council of Thailand on this special occasion. First of all, I wish to convey on behalf of the NRCT grateful thanks to the Ambassador of Finland, IUFRO, Kasetsart University, and Royal Forestry Department for kindly hosting this lnternational Workshop which would certainly contribute to the research on the development of natural resources specifically for the forest resources in the tropical region,
Your Excellency, ladies and gentlemen, may I draw your attent¡on to the great contribution of Asdociate Professor Dr.Sathit Wacharakitti in the development of remote sensing in Thailand. Associate Professor Dr.Sathit Wacharakitti was the first person in Thailand to engage in remote sensing since 1 971 . His pioneering and various efforts in remote sensing activities during a period of 1 5 years brought about the position of Thailand as of today as the regional remote sensing centre in Southeast Asia. To dedicate to the memory of Dr.Sathit, the National Research Council of Thailand initiated the annual Dr.Sathit Wacharakitti Seminar on Remote Sensing and GIS for National Resources and Environmental Management soon after his untimely and sad departure from us. Two such seminars had been organized in 1990 at NRCT auditorium and in 1991 at Khon Kaen Province which is his home town. These two seminars had been successful in achieving its goals for strengthening the remote sensing technology for the benefits of our country. This year we feel very honoured to organize the Third Seminar in conjunction with FAO, Finnish government, Kasetsart University and Royal Forestry Department, lt reaffirms our belief that Dr. Sathit Wacharakitti had been contributing not only to Thailand but to the world in this important field. I remember his enthusiasm to go to Papua New Guinea to help lecture on remote sensing applied to forestry under the UN/ESCAP Regional Remote Sensing program some 5 years ago, Therefore, I hope that his spirits of international cooperation will guide us towards even closer cooperation in the future. Finally, I would like to extend my gratitude to the Finnish Government for the support and cooperation in this workshop. Let me once again welcome all overseas participants and hope all of you enjoy your stay in Thailand, and I wish the workshop all the best and great success. Thank you.
Iv
OPENING REMARKS
Mr. Yanyong Thanompichai Deputy Director General Royal Forest Department Bangkok, Thailand Your Excellency Ambassador of Finland, distinguished guests, ladies and gentlemen, It is my great honour indeed to be among distinguished and knowledgeable people like you all here today, This kind of international gathering has long been desired by the Royal Forest Department. May I take this opportunity to express my deepest appreciation to the Finnish lnternational Development Agency for the financial support to th¡s meeting. My special thanks are also extended to the Organizing Committee and the people behind the scene who have devoted their tireless efforts to make this workshop come true. Forests in developing countries have declined by nearly half in this century, and the rate of deforestation is still increasing. Recent studies using remote-sensing data and extensive ground surveys have found that between 17 million to 20 million hectares of forest - mainly tropical moist forest - are being lost each year. The loss of tropical moist forest is especially worrying because these forests have a much greater influence on the global climate than do the other main types of forest - tropical dry forests and temperate forests - and because they are a major repository of biological
diversity, Moreover, they are the most fragile forests in that their soils are easily degraded once deforested, and experience to date indicates that even if reforestation or selective felling is attempted, the original ecosystems cannot be fully renewed or sustained,
Thailand is among the countries in developing world having faced a very serious problem of deforestation. Half of its forest land has been transformed to other types of land use during the last three decades, Remote sensing techniques becomes one of the most important tools in Thailand's f orest resources management, and permanent monitoring of forest resources will play an important role in forestry sector planning.
It has long been realized that deforestation yield the impacts on both local and global ecosystems, Therefore, forest resources monitoring system in each country must be standardized for we can determine the global change more efficiently, More efforts are needed, and I can only see that the right path to the success has to be made through a closed collaboration between the rich and the poor countries. Thus, this is a very special occasion for you all to discuss and share among each other the knowledge and experience. I am absolutely sure that more substantial cooperat¡on among scientists will be established, so do I believe that this workshop will be fruitful, Ladies and gentlemen, may I take this opportunity to wish you all the success during five days of this important meeting. For our foreign guests, I also wish you a pleasant stay in Thailand and have a save and sound journey back to your home country,
Thank you,
VOTE OF THANKS Dr. Risto Päivinen Chairman of IUFRO 4.O2.05
University of Joensuu, Finland
Your Excellency, Ambassador of Finland, ladies and gentlemen. During the previous luFRo world congress in Montreal almost two years ago, it was proposed that working party 4.o2.o5, which was called 'Remote Sensing and World Forest Monitoring' should devote the efforts to the global forest assessments by promoting the establishment of permanent sample plot network, Now, as the first step towards worldwide forest monitoring network, we are here to discuss about the guidelines for that network. The output from this meeting will be brought to d¡scussion during the llvessalo Symposium held in Finland in August this year
As an
example of earlier luFRo guidelines, I would like to mention the 'Standardization of symbols in forest mensuration', which has been successfully utilized over three decades as a basis of common language between foresters all over the world. Now, we might face a more complicated pr,9blem concerning standardization of the methods of establishing permanent plots all over the globe,
on behalf of the luFRo working party 4.o2.ob, I would like to extend our sincere thank's to Finnish Ministry of Foreign Affairs, who is behind the main financial support of th¡s meeting. I am absolutely sure everybody here share my gratitude to the organization committee, and its members from Kasetsart University, National Research council of rhailand and Royal Forest Department, who made this workshop possible. Special thanks I would like to give the IUFRO 4.02 officers, whose encouraging spirit gave strength to all organizers of this workshop.
But most of all, I would like to thank you all for gathering here around this important issue, Ladies and gentlemen, your contribut¡on is now requested. Thank you.
YI
A PRIMER ON PERMANENT PLOTS FOR MONITORING NATURAL RESOURCES H. Gyde Lund USDA Forest Service P.O. Box 96090 Washington, DC 20090-6090, USA
ABSTRACT This paper lists basic considerations for developing a world-wide, permanent plot system for monitoring natural resources. Considerations include information needs, constraints, sample design, plot confíguration, and infrastructure. The paper also gives recommendations on ihe content for guidelines or direction for setting up a permanent plot system for monitoring natural resources. Lastly, the paper outl¡nes proposed activities of l|JFßO for activating the instructions on a global basis.
that histor¡c meet¡ng, the Food and Agricultural Organization of the United
INTRODUCTION Sawaddi klap - good morningl Decrease of forest areas is inevitable because of mounting pressures caused by increasing
human populations. lntegrat¡on
of
agricultural and f orestry products with each other and other sectors, linked to environment and nature protect¡on, is a need. Unfortunately, there ¡s too little information upon which to build reliable alternatives to get rid of uncontrolled and
probably dangerous development. We know too little about the dynamics and
changes in natural forests and the environmental impacts of managed forests.
A network of a permanent plots offers a good aid in finding out how resources behave under alternative land use regimes. Monitoring provides the data for
building plans we need f or sustained development. Building of production
models for alternative land use to get land use
combinations may help under control.
The lnternational Union of Forestry Research Organizations (IUFRO) celebrated its XIX World Forestry Congress in Montreal, Canada in 1990. At
Nations (FAOI asked Working Party
S
4.O2.O5 to help develop requ¡rements for
such a world-wide permanent
plot
network.
FAO seeks guidance on how to link sampling for land cover through remote sensing with sampling for biomass. lt seeks help on how to sample for biomass and how to set up a network of biomass plots. This network of plots would add to the remote sensing part of FAO's Global Continuous Forest Resources Monitoring (GCFM) project. Other international organizations have similar needs. The theme of this international workshop
is Permanent olots f or world forest monitorino. We are here to develop a set of guidelines that cooperating nations may follow. The final result of these guides will be a multi-nation network of databases that will provide consistent
information to the international community. Ouestions we need to address are: what information do we need
for effective global monitoring,
how
should we measure the data, and how should we organize for the work. lt is appropriate that we try to answer these
questions using this workshop as
an
international platf orm.
will need. As a minimum, guides should contain direction thal, ¡f you are go¡ng to establish permanent plots in your country,
DEFINITIONS Monitorino is the periodic measurement or physical, chemical, and biological parameters for establishing baselines and for detecting and quantifying changes over time.
observation of selected
we recommend you collect these data to these standards and make the resulting information available to the international community. ldeally, any guidelines should contain the following.
1
.
A olot is as a known location on the Earth's surface having defined boundaries or point of origin. A oermanent olot is:
1.
2. 3.
monitoring
and
Goals - The reasons for setting up the permanent plot sy.stem. Develop goals through an information needs assessment (lNA). ldentify lands you
wish
plan for remeasurement.
to
mon¡tor and variables you
wish to measure. Clarify the various
broad classes of
Note that you may ,not have to locate a plot physically on the ground. One could
identify an area on imagery
One uses permanent plots for a variety of purposes. We often use plots to est¡mate land cover changes between ¡nventories, set up a basis for long term study of the
ects of climate change,
monitor response'to treatments, and to construct
coded manuals according to these issues.
4.
Statements of who will do what, where, and when. Who sets up the plots, who mainta¡ns data bases, has
author¡ty to abandon a plot system.
Who maintains the databases
how can others access inf
5.
and
the
ormation.
Definitions of Terms, References, and Sources of lnf ormation Common standards and inexpensive,
micro-compilation procedures provide regional estimates of key
agencies may use networks of permanent plots to model biological, socio-economic,
variables for global aggregation of comparable results.
affect iion
Responsibilities and lnfrastructure -
who remeasures, and who
growth and yield predictions (USDA Forest Service 1992). lnternational
ref oresta
information
potentially involved and
and
repeatedly observe the same area over time. ln such cases, the plot may be quite large. lt may range in size from 0.1 ha to a pixel to a Landsat scene to a whole continent depending on what you wish to monitor.
def orestation and eventually and afforestation.
on
establishment of permanent plots.
2. f or which there is an intent and
and political factors that
legal mandates or
Policy - The general guidance to the
organization
(Lund and Thomas 1 989) and
eff
- The
charters under which the organization will carry out the monitoring program.
established, monumented, and documented in such a manner so
one can remeasure the exact area and same oblects at a later t¡me
Authority
6.
- lnclude sample intensity, plot design and Sample Design
conf iguration, and statistical review.
Consider a robust, f lexible design that can handle various mixtures and densities of linked plots from space imagery to ground. As a minimum,
PERMANENT PLOT GUIDELINES To be compatible with current efforts, we need to determine what information we
consider using an survey where there
need and what guidelines are already
available - both nationally and internationally. From here, we can determine what additional guidance we
image-based is no local
support. 7
.
Variables
to Measure or Observe -
lnclude standards,
def
initions,
and
coding.
8, Field
lnstructions lnclude procedures for referencing and
the plots and plot maintenance, measurement techniques, data recording processes, and completing f ield monument¡ng
forms.
9.
Data Ed¡ting and Analysis Procedures - How one will use the data to carry
out the study goals and the statistical procedures one is to use.
10.
for Plot Establishrìrent,
Schedule
Remeasurement, and Reporting. 11
.
Budget Requirements and Funding
Sources
f
or
Establishment
and
measure
There is a major shift from timber-oriented
to environmentally-oriented forest monitoring. We need to consult with other international organizations including FAO, WMO, UNEP, UNCED, IPCC, IUCN,
and some NGO's as well f or their information needs. From these we can agree upon a minimum set of common parameters for global synthesis. Once we have identified the needs then we can determine the minimum information that we will need to measure or observe on
our plots.
Use
def initions and classif ication systems that are compatible
promote data sharing.
12. Signed Plan Approval.
to
onê would observe species and measure dbh and tree length.
as possible with other institutions to
Remeasurement.
Deciding what
biodiversity, one would have to monitor changes in composition of plant and animal species and the condition and population dynamics of each. For trees,
or
observe
requires an information needs assessment (lNA). Available funds and time constra¡n
the lNA. The lNA, funds, and time, in turn, dictate the sample design and plot conf iguratiöh. Lastly, an established intrastructure or inst¡tutional base is a need f or a remeasurement program. These topics ate the focus of the remainder of this paper.
INFORMATION NEEDS ASSESSMENT
Minimum Data
The minimum required information for nearly any type of natural resource monitoring includes: plot identif ication number, datum source
(f
ield observations,
remote sensing), location coordinates (Universal Transverse Mercator or Latitude and Longitude), measurement date, vegetation type, and land cover. Note, we can often interpret the last two items f rom remote sensing with minimum field checking. This data corresponds to the inf ormation FAO and others are gathering through remote sensing efforts.
The most important step in a monitoring
ort, global or otherwise, is the ormation needs assessment (lNA). Start the INA by examining current and eff inf
Vegetation Production
applicable laws, regulations, organization charters, memorandums of understanding, and cooperative agreements (Lund 19861. Ref ine the requirements in these
To monitor and model vegetation
documents
principles
by applying the laws
of
and
nature. For example, a national environmental law may require that a given agency maintain susta¡ned biodiversity in the nation's forest lands. We know that biodiversity includes plant and animal species. We also know that to sustain plant and animal species, we have
to know about the¡r production and growth rates. Thus, to monitor
production, such as forest growth
and
yield, we traditionally measure and record (USDA Forest Service 19921: aspect,
slope percent, elevation, plant species, tree identification number, tree history, tree length, diameter at breast he¡ght (DBH) or diameter at root collar, crown
ratio, and area history.
Standard
initions f or these variables are available from the U.S.D.A. Forest Service (19891. Note that we need most of these def
variables
for biomass estimation.
We
often gather this information through f ield
Regardless of f unding, monitoring projects take time to carry out and to measure
samples.
Environmental Health
lf we were
monitoring environmental
health, we would add some measure of plant vigor and observations on possible
damage causes
to the above list. ln
change. Some variables (such as snow depth) are seasonal. One cannot speed up seasonal changes with additional funding. Time spent in planning is time well spent. Often, we never have time to do jobs right the first time, but always have time to do the task again.
addition, we may gather information on
water quality and soil depletion, We usually need both remote sensing and field plots to gather environmental data.
Standards and Classification Systems Data standards and classification systems may provide additional constraints upon
CONSTRAINTS
of how well one determines ormation needs, there are always constraints with whìch we will have to deal. Limitations in funding and time are the two major constraints. Lack of people and equipment may also be constraints, but often we can overcome these if f unds are available. Existing standards and classif ication systems impose a third group bf constraints.
the monitoring system. Standards often establ¡sh minimum data sets, accuracy
Regardless
requirements, and stratification schemes
inf
that may or may not meet our needs at the local level. Having to meet these standards may dictate oqr sample or monitoring design.
Yet adherence to standards is important
or
most
ensuring compatibility. Potential users of monitoring data are f
more conf¡dent in the results if they know prescribed standards.
the data follow
One would certainly require international Funding
Available f unding is the f oremost constraint. lf funds are not available, obviously we cannot carry out the mon¡tor¡ng program. lf funds are less than what we need, then we must cut back the monitoring program. Change the design, reduce the sampling intensity, or drop some of thê data we would collect. Keep in mind that remeasurements should
cost less than setting up a base. One does not have to spend the time in plot referencing and monumentation. Also you can use the old plot data to help locate the trees that you need to remeasure more quickly.
A crew may not have to remeasure all variables that are measured at time of installation, Some variables may change more slowly than others. For example,
crews may record soil characteristics when they set up the baseline, but may
standards
f
or global monitoring.
For
example, if we all were to provide data to the FAO for global forest assessments, we would have to use the classification system that the FAO uses. lf this were
not possible, we would have to crosswalk the data with the FAO system. lf the cross-walk were not possible, then we would have to change the data collection system to meet the standards. lf that were not possible, we would have to settle on providing less than desired information. FAO and other international organizations
(lOsl are try¡ng to develop a system that can ¡nterest individual nations by its success and one which nat¡ons can change and intensify for their own needs.
lOs are seeking designs that fosters a natural evolution f rom an ¡nternational system to many national systems. These will have a certain degree of compatibility because of their shared origins.
not need to measure the soil again for the
20 or 30 years. SAMPLE DESIGN Time
Sample design is very important in most
monitoring efforts. However, it is not as important as information needs assessment and use of standards in sett¡ng up a global plot network. As long
as you can provide the
required
information to the specified standards, those to whom you provide the data will be satisfied. Based upon the papers presented at this meeting, we will review current remote sensing and field plot networks. We will recommend characteristics we think lOs
and
cooperators should
f
ollow
in
developing the permanent plot networks. When practical, adapt successful designs of other agencies, nations, or international
programs. This will show others that your design is practical. lt will also exhibit the potential utility by describing the usefulness in other parts of the continent or world. Vary the sample design to use available f unds and inf
ormation.
set up a baseline retroactively. Start a monitoring effort today, but use remote sensing from the past to set up a base. Remote sensing platforms and sensors vary from AVHRR satellite imagery with f our km resolution to hand-held video cameras in a fixed-winged aircraft. The former may be suitable for setting up a base and for monitoring major changes in land cover. The latter is more suitable for monitoring more subtle changes in land cover and changes in visible characteris-
tics of individual trees. Bias will be greater for the more rare cover types. lf such types are important, then design the
monitoring effort to include some way to calibrate remotely-sensed area estimates,
if not initially, then in the future.
or monitoring usually requires less field effort than setting up the base. lnterpretefs can see some afea Remeasurement
on remote sensing media (satellite imagery, aerial photos,
changes
lf developing a new program, keep the sample design simple. Start vlith a design that you can easily implement. Use a design and system that will yield instant results. Then act to get results out. Build upon it as interest, support, and funding increase. Explore use of remote sensing and plot conf iguration to match the technology you will be using.
videography) thus reducing field efforts. ln addition, one may be able to develop relations between variables measured on the ground and those observed on aerial photographs or other forms of remote sensing. Use these models to predict f ield conditions in f uture monitoring
Role of Remote Sensing
Purposive Versus Random Sampling
The most costly and time consum¡ng part of a monitoring system is the field work. Use remote sensing to the maximum extent to keep field costs to a m¡nimum and decrease time one needs to produce
There are essentially two kinds of sampling designs we may use f or
initial estimates. A design where one uses both remote sensing and f ield surveys is very effective for studying large areas. The more general the data sought, the more one may use remote
sens¡ng. The more detailed data needed, the more one must rely on field sampling. You may use remote sens¡ng both as a basis for creating a sampling f rame and as
a
means for expanding plot data to produce thematic maps (Lund and
Thomas 1989).
Use remote sensing f or sett¡ng up baseline inf ormation and monitoring changes in that baseline. One may also
effort.
monitoring - purposive and random. Purposive sampling requires someform of prestrat¡fication. One decides in advance
what kinds of conditions one wants to monitor, seeks those conditions, and sets up plots only in those areas. You do not
leave
the location of the plot uP to Research scientists use
chance.
purposive sampling for special monitoring this method for setting up a global network of plots for forest health monitoring using a small number of intensively-studied, longterm ecological research sites.
studies. Bailey (1 991 ) suppsrts
ln random sampling, you do not have a choice where you will locate the plot. One leaves the location up to chance.
Like purposive sampling, the designer may
systematic sample and reduce the overall
use some form of stratification before or
sampling errors (Lund and Thomas 1989).
after drawing the sample, but sample plots within strata are randomly or systematically selected. ln either case, one should sample all strata. However,
you may sample some strata intensely than others.
more
Resource
specialists often use random sampling for
natural resource inventories. Lund and Thomas (1989) discuss a wide variety of designs suitable for setting up a network
of
lf information is available, consider using a prestratif¡ed sample. This is less costly
than a systematic sample
with
poststrat¡f¡cation. One may also consider a double sample with the first sample being a systematic remote sensing sample ollowed a prestratif ied sub sample of
f
larger scale photo plots or field plots.
randomly-located plots including
systematic sampling with a random start.
Use of Existing Networks
Purposive sampling works well when one has extremely limited funding and where the location of the plots ate true
Often there will be an existing network of permanent plots w¡thin a given area. The
indicators
of
similar areas elsewhere.
This sampling technique also works well when there is a very specific target one is
trying to monitor. The
primary
disadvantage ¡s that you have to use caution in how you use and interpret the
resulting statistics because purposive sampling often leads to inferences that are not valid for the entire population. Random sampling may not be as efficient as purposive sampling. However, because
this method avoids bias in the location of plots, the data have more general utility and acceptance.
Systematic Sampling
lf
there is little information about the extent of a particular resource or the resource is extensive with small inclusions
of other cover types,
consider a randomly-located, systemat¡c sample design across all lands. ln forestry, we often want to monitor changes in the land base including area or extent, condition,
composition. lf we have no
prior
knowledge about the resource situation, then we need to establish a base (survey all lands). lf we just want to see if the forest land base is decreasing, then in the future we just need to check the forested lands. lf, however, we wish to know if
forest lands are increasing
and
decreasing, then we have to monitor all lands. The changes we could see would
include forest to forest, forest to nonforest, and non-forest to forest. lf we did not monitor all lands, then we could miss the latter group. One may poststratify a
will arise if one can use that network to accomplish the goals of the new monitoring effort. lntuitively, one would want to take advantage of work question
already done. This is 'good advise providing that the new needs do not somehow compromise the existing system. For example, in the United States, we have an excellent net work of permanent plots set up by our Forest lnventory and Analysis (FlA) units of the USDA Forest Service. FIA uses these plots for forest inventory. Recently, the USDA Forest Service embarked upon a Forest Health Monitoring program (FHM). The FHM program also calls for the USDA Forest Service to set up a network of permanent plots across the United States (Shaw 1992). The initial proposal was to use a sub sample of the FIA plots to meet the needs of FHM. However, because there
would be considerable activity around the FHM plots, it could damage the plots for FIA work. ln this instance, the agency decided to use a separate sample for the Forest Health Monitoring. For our Forest Health Monitoring program
in the USA, we are using a systematic
grid set up by the
Environmental
Protection Agency (EPA) under its
Environmental Monitoring
and
Assessment Program (EMAP) (Palmer 1 992). The grid is very coarse, but covers all lands and ecosystems. Each plot is 27 km from one another at 60 degree angles. The EMAP grid is available
on a world-wide basis. Several other countries are start¡ng to use it to monitor
changes in their resource base.
observations.
For world-wide monitoring, we will probably need to use both existing networks and set up new ones linked by common information gathered. Similarly, nations may use both purpos¡ve and random sampling to set up this network. Plot Gonfiguration
Recently, there has been considerable discussion about plot conf iguration. Should one use a variable-radius plot or fixed areaT lf fixed-area, should the plot be circular or rectangular? What size should the plot be?
For most monitoring efforts we should used fixed-area plots. Crews and the public understand such plots, There is no question if a tree is ingrowth, ongrowth, in or out. Therefore, fixed-area plots are less subject to error. The nature of the vegetation and how one
Hidden Versus Visible Plots
A
question
will arise if a crew should
monument a plot in such a manner that only the crews know where the plots are and which trees were measured. These are hidden plots as opposed to plots where the crews clearly marks the boundaries or plot center and sample trees.
We use hidden plots when we do not want the plot treated differently f rom the surrounding area. The monitoring effort is to measure human-induced eff ects as well as natural effects. One may also use hidden plots on land not belonging to the organization conducting the surveys for aesthetic reasons. The disadvantage of
the hidden plot is that crews on successive surveys may difficulty finding systems (GPS) may reduce field time in the f uture.
the plots. Global positioning
will use the data dictate plot size and configuration. lf you wish to l¡nk the f¡eld plots to remote sensing imagery, then consider using:
We use visible plots in research studies where we own the land and where we must control the applied treatments. ln
1. Plots that are equal in area to a pixel size or larger,
this case, one applies special treatments to the plot area and measures the effects. Crews may also use visible plots in areas
2. A cluster of small field plots spread out over an area that is at least equal to the area of a pixel, or
3.
lgnore trying
to
correlate
ield data with a given pixel. lnstead, treat the field plots as
f
samples
of a
remote sensing
classified stratum. Be sure the
sampling intensity
is
large
.enough to describe the stratum adequately. For our world-wide network, we probably will need a network of multi-layered plots.
The f irst layer being a network
of
satellite-based remote sensing plots for monitoring land cover change. We would sub-sample these plots using larger-scale
imagery including satellite,
aerial photography and videography. We may
sub-sample these
plots with
f
ield
where recovery would be extremely diff icult such as in extremely brushy areas, dense forests, swamps, etc.
Visible plots are less costly to relocate. A disadvantage of visible plots is that people may treat the area diff erently
when they see the tags and other markers. This biases the intent of the
monitoring program. ln addition, people may find tree tags tempt¡ng souvenirs or targets. The tags may also attract
wildlife which, in turn, may damage the tree.
During the past few years, crews have started using hand-held global positioning systems (GPS) (Lund et al. 1991). Currently, these are useful for directing a crew to within 25 meters of a known
location. ln the future, when
coupled
w¡th real-time differential GPS, crews will be able to locate themselves to within a few centimeters. Eventually, this may
make v¡s¡ble plots unnecessary.
about. lf you do not, then you have less likelihood of carrying out see ¡t come
the project. Sampling lntensity Sampling intensity will vary with the goals and standards of the monitoring project. It will also vary funds and time available as discussed above. lf funds or time are limiting, then goals may have to change and standards and sampling intensity reduced. ldeally, one designs a project to
lf you believe in what you want to do, then lay out a strategy to get there. Specify what it will take to do the job and negotiate from there. Don't start by making concessions first. Lay out what needs to be done. Look at options if so ¡nstructed. The options and approaches for working with the constraints are:
meet certain accuracy requirements. ln reality, however, it is the funding or time
1,
available
that will dictate the
sample
it will take to get that information. Specify how much the monitoring effort will cost and how much time it will take to meet specif ied
intensity. Sampling intensity for global monitoring at
the national level need not be very high. Some 200
to 1,000 plots may be enough
for most countries. The critical task is to find good experts and organizations to do the work.
Take the direct approach. Specify what information you need and what
standards and needs.
2.
Accept reduced funding or time then
cut back on or change
the
monitoring program accordingly. Monitoring Rate
Different variables change at d¡fferent rates. Soils change slowly and annual
vegetation changes rapidly. Hence monitoring rates for different attributes will vary. Adjust the period of remeasurement to meet the expected rates of change of the most important variables of interest. The determination of
the cause of change may require special
research. One could use
an
interpenetrating design. One measures
some plots on the f irst occasion
3.
Change the standards, if that is within your power. Given this information and this amount of time and f unding, we will have to change
these standards.
4.
lmplement all constraints. We have this amount of funding, this amount of time, and these standards to
which we have to adhere. What inf ormation can we gather with these restrictionsT
and
different plots on successive occasions.
Be persistent. Seek public support and publicity for the monitoring effort. Form
INFRASTRUCTURE
Our last task is to develop recommendations on ¡nfrastructure
support. How do you see the role of national and international organizationsT
How can we arrange funding for those that need it7 How can we ensure data availability and sharing? How can we maintain support f or the monitoring effortT
partnerships or alliances with environmental groups and other ministries. Such groups may be willing to
give time or funds to the project. Also they may be less reluctant to criticize the effort at a latter date if they are part of the effort. Find common ground and build upon it.
Be willing to give to gain support. Support others needs. Look ahead for problem areas or areas of disagreement.
The best-designed monitoring system will
not be
implemented
if there is
no
infrastructure to support it. The first step to building an infrastructure is you. You must believe in the system and want to
Try to f¡nd a way to resolve the problem before it occurs. Alert others to potential
problem and seek their solution. Be honest in what you say about what the system will do once it is in place.
Tie the task to national laws or international agreements. ldentify monitoring needs and publish in local
lournals or other outlets. Write the article with environmentalists or scientists as coauthors. This publication will serve as a
handout and reference later. People accept published documents more readily than verbal approaches.
Seek long range comm¡tments. Get of
funding through memoranda
understanding or cooperative agreements.
remedial actions (Schmid-Haas 1 981 ). lmplied is the assumpt¡on there is some plan in place to deal with the problems that we may reveal from monitoring. To
a global basis. Hopef ully, one will emerge from the UNCED Congress this coming June. date, no such plan exists on
Successful global monitoring will require the voluntary participation of all nations. It will begin, however, with your active participation in the meeting and in the work groups to develop these guides for
Permanent plots for World Forest Monitoring. Thank you - kob khum!
Seek a permanent staff. lt is better to have a small continuous permanent s'taff rather than having to create a new staff
every monitoring period. Build up a contiiruous staff at proper time and cut back when workload is over. The staff can do updates, techniques research, training, and respond to information needs
at off periods.
When the project
is
approved, share
funding, responsibilities, and most of all, information and credit.
ACKNOWLEDGEMENTS
My thanks to: Dr. Yong-Chi
Yang
National Taiwan University; Dr. Sipi Jaakkola -UNEP/GRlD, Geneva; Dr' K.D. Singh - FAO FBA 9O, Rome; Mr. Joe J. Lowe - Forestry Canada; Drs. Simo Poso University of Helsinki and Risto Päivinen
-
University of Joensuu, Finland; Dr. A.B'
WORK GROUPS AND FOLLOW-UP
Temu - Sokoine University of Agriculture, Tanzania; and Drs. Ray Czaplewski and Mark Hansen - USDA Forest Service for their helpful suggest¡ons for this paper.
During this meeting we will form work groups to develop guidelines for a global
REFERENCES
pefmanent plot network as described above. Once drafted, we will publish these rough guides in our IUFRO Forest
Resource lnventory
and
Monitoring
Newsletter for other members to review. We will also send review copies to FAO and other international organizations for
their input. We will assemble comments and revise the guides
all as
necessary. Lastly, we will send the flnal guides to the President of IUFRO, Director
of FAO, and other organizations to publicize and use. IUFRO members should be proactive in implementing the
guides
at the local and international
levels.
Sett¡ng up a network of permanent plots is but the beginning of the resolving some
of the
environmental, social,
and
economic problems we, the citizens of Earth, face, Monitoring is not done for the simple sake of collecting data. lt is done to reveal discrepancies between f
orecast and achievement
in time f or
Bailey, Robert G., 1 991 : Design of ecological networks for monitoring
Global Change. Environmental Conservation l8(2):173-175'
Lund, H. Gyde, 1986:
A
Primer on
integrating resource inventories.
Gen. Tech. RePort
WO-49.
Washington, DC: U.S. Department of Agriculture; Forest Service. 64 p'
Lund, H. Gyde; Thomas, Charles E., 1989: A primer on stand and forest inventory designs. Gen' Tech. Report WO-54. Washington, DC: U.S. Department of Agriculture; Forest Service. 96 P. Lund, H. Gyde; Jasumback, TonY; Allison, Ray; Falconer, Allan, 1991: Taking back the desert. GPS World 2ßl:24- 31.
Palmer, Craig. 1992: United States
Environmental Monitoring
Shaw, Charles G. 1992: Forest health monitoring -- a new program of the
and
Assessment Program: an overview. Paper presented at the IUFRO
USDA Forest Servíce and the
S4.02.05 lnternational Conference on Permanent plots for World Forest Monitoring. 1992 January 13-17; pattaya,
Environmental Protection Agency. Paper presented at the IUFRO S 4.02.05 lnternational Conference on Permanent Plots for World Forest
Thailand.
Monitoring.
Schmid-Haas, Paul. 1gB1: Monitoring change with combined sampling on
Proceedings
- Arid Land Resource
:
Developing Cost
Effective Methods. 1980 November 3O-December 6. La paz, Mexico. G
992
Janua
ry l3-17;
USDA Forest Service, 1989: lnter¡m resource inventory glossary. U.S.Department of Agriculture; Forest Service. 96 p.
aerial photographs and on the ground. ln Lund, H. Gyde; et al. lnventories
1
Pattaya, Thailand.
USDA Forest Service, 1992: Timber permanent plot handbook. FSH 2409.13a. Washington, DC: U.S. Department of Agriculture; Forest
en. Tech. Report WO-2 g.
Washington, DC: U.S. Department of Agriculture; Forest Service: 3g3388.
Service. Misc. Pagination.
10
REMOTE SENSING TEGHNIOUES FOR FOREST MONITORING
INTERNATIONAL EFFORTS AT GLOBAL FOREST MONITORING USING REMOTE SENSING Sipi Jaakkola United Nations Environment Programme, Global Resource lnformation Database, CH-1 227 Carouge-Geneva
ABSTRACT The world's decreasing forest resources cover a total of about 3.4 billion ha. This equals to 27 per cent of the global land area. Deforestation by shifting cultivation, cattle rànching, fuel wood collection, and logging, has during historical times reduced the global forest area by almost 5O %. Deforestation is the second largest contributor to the global warming. lt threatens biological diversity and global ecosystems fundamental to life, and it is prompting soil erosion and habitat destruction. The world community increasingly requires timely and reliable information on the s¿afus of worlds forest resources and the changes therein. A global data base for forest resources monitoring can best be established when relevant information is available at natíonal level. The new awareness on global forest monitoring needs is leading to increased institutional responses.
ln
temperate forests the monitoring techniques are rather well estabtished, although the as.sessrnent practices lack harmonisation. Concerning the tropical forests, the methods and practices tend to be poorly establíshed. The choice of methodology is largely that of appropriate sampling, measurement and estimation methods. Remote sensing from space can provide global measurements for resource monitoring. Today's methodology for global forest cover assess/?enÍs is largely based upon NOAA/AVHRR data analysis. Two interrelated branches of methodology can be differentiated: those of assessrng the status of forest and those of change monitoring. Further, world community is witnessing a sh¡ft from timberoriented towards environmentally oriented needs of forest monitoring. lnternational organizations have a role in providing methodology and guidelines for global forest monitoring. A more direct role is to implement global forest assessments and distribute the results. FAO and UNEP made the first tropical forest inventory in 198O, and FAO is now carrying out the Forest Resources 4ssessrnenf I 99O project. UNEP helps the pro¡ect by providing certaín satellite image processing and GIS services. UNEP can contribute in the design of future global forest monitoring systems, in particular their environmental dimensions.
number
BACKGROUND
of f orest
classif
ication schemes
ex¡sts at global level, such as the UNESCO lnternational Classification and Mapping of Vegetation. They distinguish between
tropical and sub-tropical forests
The diversity of forest is enormous. A large
13
and
woodlands, temperate, sub-temperate and Mediterranean zones, as well as the boreal forest zone. The diversity of forest types results also from the interference by man, such as deforestation, logging, grazing and fires. Finally, air-, soil- and water pollution, pests and diseases are foundations of the
diversity, Together with technical
community modelling geosphere-biosphere interactions at global scale, needs both a
baseline map of global f orests and the changes therein. IGBP will generate a predictive understanding of the effects of climate change on terrestrial ecosystems. Governments, various NGOs, development aid agencies, and a number of international
and
political constraints involved, the diversity
of forests is a fundamental
organizations, such as FAO, ITTO, UNEp, IUCN or World Bank, need timely information both on world forest status and
difficulty to
cope with when designing forest monitoring systems at a global scale.
The latest survey of world's
condition. WhyT To assess
the
environmental impact of deforestation, i.e. f
its impact on climate change,
orest
resources was made by FAO and UNEp in 1 980. The results indicate that the forests then covered a total of 3.6 billion hectaès (ha). This equals To 27.7 per cent of the global land area. Forests of the tropical countr¡es and territories covered about 1.94 billion ha, representing 53 per cent of the global forest area. About one half of it was tropical moist forest.
land
degradation, resource depletion and loss of biological diversity; to have baseline facts f or sustainable development of f orest
resources; and to plan afforestat¡on and orestation programmes.
ref
SCIENTIFIC CHALLENGE
At the moment, FAO is carrying out the Forest Resources Assessment
1
990 project;
the tropical forests are assessed by the headquarters in Rome and the temperate forests by the FAO/ECE office in Geneva. The latter, compiled on the basis of an enquiry, will be completed bef ore the UNCED conference, June 1 992. The
How does one implement global forest monitoring: a mission impossible or just difficult? Key issues to consider at the outset include: 'l ) What parameters to monitor: timber, fuel, carbon, biodiversity,
soils, protected areas, agroforests, or what? 2) How to interlink the monitoring activities
preliminary results of the tropical part of the project showed that during 1 981 -1 990 the annual deforestation rate was 16.9 million ha. Although the preliminary estimate needs to be verified, it seems that deforestation has accelerated in the tropical zone (FAO, 1990).
from national to global level? Should one choose bottom-up or top-down approach? 3) What monitoring techniques and practices exist f or the provision of cont¡nuous, and compatible forest resource inf ormation?
ln certain parts of the world, notably in
Obviously, in temperate f orests the monitoring techniques are rather well established at national level, although the
northern Europe, forest area and volume of growing stock are increasing. Examples can even be found in the tropical zone where afforestation and reforestation programs are becoming an increasingly important activity. Tree plantation - "Greening of the World" seems to become a major political, technical and funding issue in the near future. Who needs
inf
practices tend to favour timber inventories.
Concerning the tropical forests, the methods and practices tend to be poorly established. Remote sensing oriented systems are often suggested for these conditions as a quick way out.
ormation on forests at global
The primary outputs of any global forest monitoring system designed to serve
level? The lnternational GeosphereBiosphere Programme (IGBP) and, more
generally,
decision makers at national, regional and global levels should include
the international scientif ic
l4
- a periodically updated digital database, implemented in a geographic information system, comprising summary
Today's remote sensing methodology for global forest cover assessments is largely based upon NOAA/AVHRR data analysìs These techniques were first adopted to
statistics and maps over the current status of worlds forested ecosystems,
vegetat¡on mapping by NASA's scientists in early 1 980's. Since then, the f urther
- a grid of permanent sample plots
periodically measured with replacement for provision
development for forestry applications has succeeded in a number of North American and European universities and research
impact analysis.
centres. Two interrelated branches
partial
of changes and trends needed in detail in environmental
of
methodology can be differentiated: those for mapping of forest status and those for monitoring of changes. Mapping methods
cover both visual interpretation or digital
METHODOLOGY
analysis of satellite data.
Dig¡tal
interpretation can now be performed using
clustering techniques, single band or box classif ication, or by
The choice of methodology is largely that of
thresholding
appropriate sampling, measurement and estimation methods' The assessment of current status and detection of changes in
forest resources readily suggest
applying discriminant f unctions such
minimum distance
or, in
as
particular, maximum likelihood. A new development among classification algorithms is so called
a
multistage sampling approach using permanent sample plots with partial
mixture modelling
by which the
class
replacement. What is more, if one applies
proportions, rather than class labels, can be estimated for individual Pixels.
NOAA/AVHRR satellite imagery,
forests can be done by two methods;
preliminary strat¡fication, e.g. forest/non-forest classification from of
sample size
a
Monitoring
reduction
by 30 % at global level
seems possible. The recent development of
ul.
def
orestation
in
tropical by
classifying the imagery at a single point of
time or, which is most often applied,
forest assessment and monitoring methods involving remote sens¡ng components has
been active and successf
of
by
multitemporal analysis for change detection. The latter requires image data from at least two po¡nts of time and may, in a successf ul case, demonstrate well the best properties of satellite remote sensing. Besides f or clear cutting, the monitoring methods apply for
Although
further research and validation are needed, any serious global forest monitoring plan now has to incorporate remote sensing methodology.
the detection of other disturbances
in
forest, such as new roads, fires, etc. ln the
Remote sensing f rom space - typically aided by surface-based measurements - provides global and long-term measurements f or
same way, afforestation
the changes caused bY or reforestation can be
monitored.
resource monitoring. The polar orbiting satell¡tes are particularly usef ul for data acquisition about the status and changes in the forests. Computer-aided processing of
l'hese rapid advances of inf ormation technology can, hopefully, soon be welcomed as new means for contributing to and, ultimately, achieving a goal advocated by the United Nations and various other international organizations: the sustainable development of earth resources.
satell¡te imagery is rapidly advancing in the
industrialised world. NASA estimated, in
1 990, that the international space programme f or global environment monitoring will cost 30 billion dollars over
Since 1970's, UNEP/GEMS has contributed to the development of capabilities for global tropical forest resource assessment. The work is now linked to UNEP's concentration
the next ten years. lt seems safe to predict that the supply of satellite data w¡ll not be a limiting factor in forest monitoring by the end of the century.
15
of land resources by combating deforestat¡on and area "Protection
it was recently expanded to cover temperate forest conservation issues as well. An important, though heavily criticised, initiative is the Tropical Forestry Action Plan coordinated by FAO since 1987. Major changes in TFAP are expected after an independent progress review made forests, but
desertif ication". UNEP has stressed that the
world community should urgently
be
provided with access to timely information on the condition and change of tropical forest cover. UNEP has argued that the new earth satell¡te observations, together with the recent advances in the fields of GIS and digital image analysis have made the task technically possible. UNEP has implemented
this work in
cooperation
with
last year. IUFRO is actively participating in the debate natural
on needs and ways of global
resource monitoring. IUFRO-meetings in Venice, 1989, and Montreal, 1 990, helped specifying the goals and problem areas, as summarized by Lund (1990): "The need for global assessments is becoming more and
the
specialized UN agencies (notably FAO), other international organizations, the relevant research organizations, and the
major bilateral and mult¡lateral aid authoritles.
more evident. Better information about the environment is necessary to understand and
Clearly, the international organisations have
solve emerging problems such as global warming, deforestation and acid deposition.
a role in
collecting and disseminating information on the world's forests. Since 1989,!n ad hoc group of experts from ¡nter alia FAO, UNEP, JRC and NASA has cooperated in the development of global
For any actions to change these processes,
data are needed at the national international levels.
satellite remote sensing. Today, the strengths and limitations of such
level? "
methodology are relatively well known.
As a methodology solution IUFRO suggests adopting various combinations of existing inventory data and new data through
remote sensing.
FOREST
ASSESSMENT EFFORTS
UNCED: World public concern has led to the
convening of the UN Conference on Environment and Development (Earth Summit) in Rio de Janeiro, June 1992,
lncreæed inten¡ationd i¡¡stitrfímd actiyity
which may result in Global Convent¡ons on Climate and Biodiversity. Steps are being taken for a Global Convention on Forests as well, i.e. an international legal instrument for forest management. During UNCED's recent preparatory meetings, reforestation
The institutional activity related to global forestry issues is expanding. ln 1985, the UN Conference on Tropical Timber ratified
the lnternational Tropical
Timber Agreement, which regulates the tropical timber trade and encourages co-operation
has become a major f unding and technology
between producing and consuming nations. The secretariat, ITTO, is actively pursuing studies on tropical forests. lt has recently
published
a set of
guidelines
and is:
basic question
how can we link inventories and monitoring systems developed at the national level with inf ormation needs at the international
forest assessment methodology based upon
REVIEW OF TROPICAL
A
for
transfer issue. Summarizing, the new awareness on global
the
f
sustainable management of natural tropical
orest monitoring needs, as described to increased institutional
above, is leading
forests.
responses. Some init¡at¡ves focus attention on the need for policy reform considering economic, political and institutional factors. Others focus on the need to provide data concerning the status of forests and the
IUCN has recently revised the¡r Forest
lt includes the establishment of protected areas in tropical Conservation Programme,
16
rate of deforestation.
WCMC,
in
conjunction
with IUCN, is
implementing the "Tropical Rain Forests - an Atlas for Conservation", a project started in 1 989 and sponsored by British Petroleum Co. lt aims to demonstrate graphically the present knowledge of rain forest extent and distribution. The work covering South-East Asia has been completed in 1 990, and they are now doing Africa. The data are stored in ARC/INFO ¡n vector form. After completing the Atlas they intend to update it, so the work is likely to lead into a mon¡tor¡ng type
ONGOING TROPICAL FOREST ASSESSMENT PROJECTS Food and Agriculture Organisation IFAO) Forest resources appraisals on a global basis of FAO's mandate. The latest
are a part
of activity.
world-wide f orest resources assessment was carried out in 1980 by FAO in conjunction with UNEP. The current
The Woods Hole Research Center
assessment, " Forest Resources Assessment 1 990', began in 1989, and its f inal report is
expected by the end of 1 992. The main goals of the project are the inventory of present state and the assessment of changes in 1 980-1 990. FAO headquarters
The Woods Hole Research Center, based in Massachussetts, USA, carries out a "Global
are responsible for the work in tropical and sub-tropical countries (109 in number). The
recent inaugurat¡on of the lnternational Boreal Forest Research Association the Center offered to map the boreal forest
methods involve remote sensing
Forest lnventory Prolect" which
and
statistical sampling surveys. Even if the project has problems with funding, it is
zone using AVHRR data.
to serve as a benchmark of international efforts, as was the case in
expected 1
lnternational Space Year 1992 (ISY)
980 assessment.
The Global lnformation System Test in the context of the international space year includes a project called " Rate of
NASA
Deforestation" which aims at lmprovements in the reliability
NASA Goddard Space Flight
Center's Biospheric Sciences Branch has, during the 1 980's, performed a number of studies where methodologies for Amazonian forest assessment with AVHRR data were developed. They have recently developed a
satellite-based methodology
f
or
forests of Central Africa. A goal has been to establish the current forest areal extent and land use practices in the context of regional and global climate and ecology. NASA is currently engaged in a global tropical forest mapping project using visual ¡nterpretat¡on
is
forest cover and monitoring maps with appropriate spatial and temporal resolution
in
which are organised in geographic information systems. An atlas of deforestation case studies is one of the
progress in South America.
intended results. Presentation of the global forest assessment results is planned at ISY
The World Conservat¡on Unìon (IUCN) and
World Conservatíon Monìtorìng (wcuc)
establ¡shing forest
assessments, 2) Definition of procedures for monitoring forest changes, 3l Generation of case studies in major forested areas both in tropical and temperate/boreal forest zones. The approach to meet the objectives involves: 1 ) Generation of a set of calibrated data and optimised products combining optical and microwave radar data for forest analysis, and 2l Production of
mapping
Landsat MSS data. The work
1)
and
procedures for the use of spaceborne data
as a means to
and continuous monitoring of the tropical
of
is
attempting to measure Jhe global forest area and rates of deforestation. ln the
Cent¡e
World Forest Watch mid-1992.
l7
Conf
erence
in
of remote sensing oriented projects dedicated to the f orest monitoring and
TREES
Tropical EcÒsystem
Environment
assessment at a global scale. lt is expected
that the next
Observations by Satellite (TREES) is a joint project of the Commission of the European
Communities and
the
European
gerreration of baseline ormation on tropical f orest cover will become available for major parts of trop¡cs by mid-1992. The usefulness of this inf
Space
Agency concerned with the development of space observation techniques to the service of a better monitoring of the tropical forest of the world. The project has been defined for 1991-1993, but its ambitions seem to
information 'for, e.g., quantifying environmental impacts remains
reach beyond 1993, TREES is addressing deforestation issues at a global scale and
satellite remote sensing. The project is financed by the European Parliament and the European Space Agency (ESA) first for a period of two years. Later it may become a regular activity of Joint Research Centre
ERS-1
Assessments with weather satell¡te data
Although NOAA weather satellite's AVHRR sensors provide only 1 to 4 km spatial resolution they offer a possibility for daily
are: 1 ) A global tropical
as the main sources of
coverage. NASA Goddard Space Flight Center has, during the 1 980's, performed a number of studies where methodologies for Amazonian forest assessment with AVHRR
and
data supplemented by higher resolution data (SPOT and TM)when required; 2) Detection
and intensive rqonitoring of the active def orestation areas; measurement of def orestation rates in critical areas; 3)
data were developed (e.9. Justice, et
ln 1987, UNEP/GRID
launched a tropical
forest cover assessment study in order to develop methodology to apply at global scale. The study which was based on the analysis of NOAA/AVHRR data was conducted in two major regions of tropical moist forest: West Africa and Amazonia.
tropical
forest inventories: it is intended to be linked
to other projects, but us¡ng new approaches.
The Amazonian study was made digital map showing France and the South-East Asian Ministers
Education Organisation
in
cooperation with the University of Reading and the European Community. A large area
SEAMEO
of
al,
1985).
Modelling of tropical deforestation dynamics. TREES project has not declared an ambition to replace existing
orestation
fuutEAme¡*n
and ESA.
(baseline) inventory using AVHRR
def
STATUS BY REGIONS IN 1991
developing new monitoring techniques using
TREES goals
of
to be evaluated.
def
orestation
in
southern Amazonia was compiled from a number of 1988 NOAAiAVHRR scenes at
(SEAMEO)
undertake since 1989 a joint project to assess and map the extent of deforestation in SE Asia and to train national experts in
one-kilometer resolution.
After
some
preliminary methodological experiments, a maximum likelihood classifier was selected
trop¡cal f orest monitoring. The countries involved are Brunei, lndonesia, Malaysia, the Philippines and Thailand. The aim is to ana,lyze the change f rom 1 982 to 1 988 in
f
or the
discrimination
of f orest
and
non-forest classes. The map was checked
¡n
detail against secondary sources including Landsat TM and Brazilian forestry maps.
forest and land under cultivation on an area of three million sq.km. The project is geared
The f inal product represented the first large
to the ISY Global lnformation System Test.
area digital map
Summarisínq: There is currently a
region. The map was combined with various otlîer carto€raphic dataplanes within a GlS.
nurmber
1E
of
deforestation for this
Amazon was 29.8 million ha. Only 1,382,000 ha of the Amazon rain f orest were cleared in 1990. This means a 27 o/o reduction in the rate of deforestation compared with 1 989, or a 36 7o reduction compared with 1988. This estimation was based on the analysis of 226 Landsat TM
Some simple GIS operations were carried
out to analyze the incidence
of deforestation with respect to political units, floristic zones, protected areas and roads. The integrated data set can be used to focus f urther monitoring work. The result is
a f irst digital, large area map
on
deforestation compiled over Amazonia.
scenes.
The accuracy of the map was evaluated by
comparison
Despite the work done during the last ten or so there still are gaps in the coverage of satellite image analysis of the
with
secondary sources, particularly those produced by the former Brazilian Forestry Department. The tests
years
tropical f orests of South America. The North Western parts of the continent as well as parts of Central America need to be
showed that forest/non-forest results from AVHRR data analysis are well correlated with those from higher resolution satellite and ground data, but that a tendency exists
mapped soon. Some international activities are now being introduced in those areas in order to fill the gaps.
to overestimate the deforestation area. This
is however perf
ormance
countered by the poor of the AVHRR sensor in
West Africa
distinguishing areas of secondary regrowth from undisturbed forest. Dependency on the geometry of deforestation patterns coupled with an inability to distinguish undisturbed
The West African part of GRID's study was implemented in conlunction with the Finnish
lnternational Development Agency
orest f rom secondary regrowth are suspected as sourcqs of errors. Field checking of the classìf ication results is
(FINNIDA) and the University
f
of
Joensuu,
Finland. The main purpose of the project was to test the utility of AVHRR data for
indispensable (Cross, 1990).
mapping forested and non-forested regions,
.4ssessments using Landsat TM data
and other broad vegetation categor¡es, within the humid tropical forest zone of West Africa. A variety of digital image processing techniques were tested and compared using single date scenes. The
Along with the advent of
optical
high-resolution satellite sensors, notably Landsat TM, the opportunities for forest cover assessment were d rastically improved. Perhaps the best estimates on
the extent of
deforestation
in
results were compared with high-resolution
satellite data f rom Landsat and SPOT, which in turn had been classif ied using information obtained during field visits.
"Legal
The best results for mapping the closed
Amazonia", an administrative zone of some
forest (>40 Yo canopy coverl versus surrounding vegetation classes were
500 million hectares, have been derived by (INPE). ïhey used visual interpretation of TM-imagery f rom 1988 in mapping the
obtained using a supervised classification and a segmented approach to mapping across the AVHRR scenes used. A total of three scenes was used to produce a map of closed forest of West Africa. An effort to update this map using additional cloud-free AVHRR imagery and more recent field data
deforested areas, and produced a 200-page
atlas
to
document the results. The total
damaged area added up to about
hectares, i.e., less than
!5
million the
a half of
corresponding estimate by the World Bank
based on a projection from Landsat MSS imagery of 1978 and that by World Resources lnstitute 1990/9 1 report.
is now underway (Päivinen and
Witt, 1 991
).
Central Africa
The Brazilian Science and
Technology Secretary announced recently that, in the 1 98O's, the total deforestation of the
NASA/GSFC Biospheric Sciences Branch has recently developed a satellite-based
19
methodology for mapping and continuous monitoring of the tropical f orests of Central Africa (i.e., Zaire, CAR, Congo, Cameroun,
test AVHRR approach for global forest assessment and, in particular,
Gabon and Equatorial Guinea). According to FAO (1 988) the total forest area concerned
deforestation fronts, and discrimination of
f
seasonal effects. The approach has involved
calculation of maximum
is about 280 million hectares. A goal has been to establish the current forest areal extent and land use practices in the context
NDVI during dry seasons was performed in order to discriminate between seasonal and evergreen forests. Finally, a non-supervised classif ication was made using the most
To accomplish the objectives AVHRR data was used as the primary mapping tool for
the region. A coarse vegetation map which
promising combinations of transf ormed AVHRR channels (MeanCh2, MeanCh3,
delineates primary forest, degraded forest, mixed forest/savanna, and primary savanna areas was then produced from this data. ln addition, the fire distribution (from biomass burning) was established for the region by month and vegetation type.
MeanNDVl, MaxNDVl).
The preliminary results obtained indicate that 1 ) the thermal channels and NDVI show promise in forest/non-forest
The cooperation with FAO's FRA 1990 involves the provision of f orest area
discrimination, 2)the MaxNDVl - MeanNDVl transf ormation helps in discriminating between seasonal and evergreen forests, 3)
statistics and land use information for the Af
normalized
difference vegetat¡on indices (NDVI) of scenes masked for clouds and water. As analysis of the seasonal evolution of the
of regional and global climate and ecology.
Central
orest/non-forest classif ication, detection of
rica component. FAO has
the dense primary f orest and degraded secondary forest are separable in the classif ication perf ormed. The area
selected Zaire as a pilot study for showing the usefulness of rempte sensing for the tropical forest assessment. Data from the AVHRR are being used in the primary Ievel sampling for change detection.
estimation
of
South-East Asian f orests
seems plausible using AVHRR methodology.
Further research is needed for refining the discrimination procedure (e.9,, GAC time
series). The evaluation
South-East Asia
of results is
underway.
The IUCN/WCMC project "Tropical Rain Forests - an Atlas for Conservation" introduced above has demonstrated graphically the present knowledge of rain forest extent and distribution in Asia.
UNEP/GRID-Bangkok in con.junction with TREES project is now participating ¡rr the forest cover mapping of South-East Asia.
The
original and remaining tropical forest cover has been estimated, and the existing and proposed conservation areas outlined by countr.ies. The total forest area is reported
EXPERIENCE GAINED
to be 280 million ha. The project has published the Atlas
of
Asian and Pacific
Following is an effort to summarize the experience so far gained in forest cover assessment projects in the tropical zone using digital AVHRR data analysis.
Rim.
The lnstitute of Remote
Sensing
Applications at the Joint Research Centre, lspra, is currently making assessments of
tropical f orest cover in the region of South-East Asia comprising Kampuchea,
Data'. The NOAA/AVHRR LAC imagery seems feasible as a data source for global forest cover assessments. However, there are st¡ll gaps in the global coverage of the
Laos, Myanmar, Thailand, and Viet Nam. According to FAO (1988) the total forest area conceàed is about 84 million hectares. The objectives of the work have been to
imagery, and the clouds are problem.
20
a
serious
Preprocessing of LAC data.. The minimum geometric and rad¡ometr¡c corrections needed for forest mapping are available. A minimum set of preprocessing steps for forestry work should be defined.
compilation of such a map is dependent on
the contributions of those investigators working on regional AVHRR mapping
projects. The map will (or will not) be born as a result of international cooperation. The
result may not be perfect but better than
Classification scheme/definitions: lt, is of crucial importance to agree upon what is meant by forest; a carbon sink, a timber resource, or what. For a first global map, evergreen tropical forest may be a better
any corresponding product available today.
POTENTIAL AND PROBLEMS
concept than rain f orest. No generally applicable classification scheme for global applications has been defined; a set of regional schemes may be the solution. Rough stratif ication into low density (savannah, open woodlands) and high density forests seems desirable as a first step. Rubber-, oil palm and other plantations should be discriminated using
The potent¡al of the remote
the advent of satellite imagery. And it is true that new satellite data in combination with the advances in computer and data management techniques, as well as new experience in image processing and GIS analysis provide usef ul methodology f or
ancillary information.
G/S-aspecfs; Adding a number of to the AVHRR output map increases its value. The data layers for
GIS-layers
global applications could comprise, e.g.,
forest monitoring at global scales.
state and province bouhdaries, roads, rivers, population by districts, and ecof loristic zones. Analysis of environmental impact of deforestation, long term cause/effect
At the same t¡me a number of
technical problems remain to be solved. The difficult
and variable definition of forest
analysis and global carbon modelling are
discrimination of the two. Diff erences between published f igures on tropical deforestation arise largely because these problems are ignored or are tackled in
Mapping and/or monitoring'. The results so far obtained emphasize the need of a global baseline forest cover map made by using
different ways.
AVHRR/LAC data as a necessary f ¡rst stage. Once completed, it should be updated
Other problem areas are data availability; the global LAC data coverage is incomplete. The clouds disturb the data acquisition, and
(monitored) using high resolution data in an
appropriate sampling f rame (Jaakkola, 990).
the accuracy of classification results is variable and dependent on f actors like
Compilation of a global tropical forest cover
map'. The world community should
seasonality, land-use patterns, access to field data, etc. Finally, there are various political problems, and, of course, a constant shortage of f unding. A partial list
be
provided with access to timely and usable data on the condition and change of tropical forest cover. A digital global tropical forest cover map should be compiled, archived and made available to all. The NOAA/AVHRR data acquisition system together with the
of problem areas where immediate progress is needed could read as follows:
- Definition of forest - Agro-forestry: how to assess or monitor it - Growing criticism of the
recent advances in the fields of GIS and digital image analysis have made the task technically possible, although there still are
problems
to solve. Success in
and
non-forest is of crucial importance for the
examples of potential GIS-applications.
1
sensing
methodology discussed here is now being recognized in the international debate on tropical forest issues. Many have realized that an objective record of forest cover at a single moment of time was impossible until
the
2L
issues. They also are potential items for intergovernmental agreements to come.
ongoing assessments - Linking national and global monitoring - Problems in data collection, sharing and
Timely and reliable global statistics on deforestat¡on are requested, at the same time as f resh f unding and technology transfer for reforestation are required. Environmental impacts of def orestation have to be assessed. The best way to respond to this increasing demand is
handling
- Lack of guidelines, coordination, leadership, funds. - Harmonization through
through improved International cooperation, e.g. through integration of allwork, f inished
various levels. - Accuracy required and
and ongoing, in the various parts
of
our
globe.
obtained.
coNcLUsroNs REFERENCES
The global forest informat¡on ¡s high in demand but short in supply. The international organisations have a role in acquiring, processing, managing and
Cross,
deforestation and remote sensing:
The use of NOAA/AVHRR
distributing such information, as limited as they may be with their mandates, resources or methods. But first of all, they need to
help in the methodology
4., 1990: Tropical data
over Amazonia. Final Report, 43 pp
+ App.
UNEP/GRlD, Geneva.
development,
FAO, 1988: An interim report on the state
harmonisation and drawing up guidelines for forest monitoring.
of forest resources in
the
developing countries.
FO:
Misc/88/7.
The world community is witnessing a shift
from timber-oriented towards
environmentally oriented needs of forest monitoring. This change should be ref lected by any new set of guidelines for forest
Rome.
FAO, 1990: lnterim Report on Forest
Resources Assessment 1 990 Project, p. 6. Committee on Forestry, 1Oth Session, 24-28
monitoring.
September. FAO, UNEP can contribute to f uture global f orest monitoring designs assisting in
by
Rome.
FAO/UNEP, 1982: The Global Assessment
methodology development (remote sensing
of Tropical Forest Resources.
and GIS) and, in particular, by incorporating
GEMS PAC lnformation Series No.
environmental dimensions in such
3.
UNEP, Nairobi.
procedures.
Glück, P., 1989: Summary of session E-4
: policy
Satellite remote sensing certainly is a useful tool f or environment data acquisition.
Together
aspects
of
monitoring
systems. Proc. Global Natural Resource Monitoring and Assessments: Preparing f or the 21 st Century, Venice, 24-30
with GIS technology, and
incorporated in existing procedures, it can eff ectively help in monitoring the f orest resources at global, regional and national
September, pp. 845-846. ASPRS, Bethesda, MD.
levels.
Deforestation and reforestat¡on have become hot environmental and political
Jaakkola, S., 1990: Managing data for the monitoring of tropical forest cover:
22
The Global Resource lnformation
Forestry Research Organizations (IUFRO), Montreal, 5-1 1 August, Session 54.02 : " Research in
Database approach. Photog.
Engineering & Remote Sensing, Special lssue on Remote Sensing of Tropical Moist Forest. Vol. 56, No. 10, pp. 1355-1357.
Forest lnventory,Monitoring, Growth and Yield" [ed's] H.E. Burkhart, G.M. Bonnor & J.J.
Lowe, Publ. No. FWS-3-90, Virginia State University, pp.
Jaakkola, S., 1990: Global tropical forest cover assessment at UNEP/GEMS/
134-1 41. Blacksburg, Virginia.
GRID. /n Burkhart, G.M. ef al Proc. XIX World Congress of
lnternational Union
of
Myers, N., 1989:The Greenhouse Effect: A Tropical Forestry Response. Biomass 18:73-78.
Forestry
Research Organizations (IUFRO),
Montreal,
54.02 :
5-1 "
1 August,
Research
in
Session Forest
Myers, N., 1990: Tropical forests. /n J.
Leggett, Global Warming; The Greenpeace Report, Oxford
lnventory, Monitoring, Growth and
Yield" Publ. No.
FWS-3-90,
Virginia State University,
University Press, pp. 372-399.
pp.
95-101 . Blacksburg, Virginia.
Options, 1990: The price of pollution. Option. Septembe.r 1990, pp.4-8,
Jagannathan, N., 1989: Poverty, Public
The lnternational lnstitute of Systems Analysis (llASA),
the Environment. World Bank, Environment Policies and
Department Working
Laxemburg, Austria.
PaPer
No.24.34 p. Washington, D.C.
Päivinen, R. and Witt R., 1991: The methodology development project
for tropical forest assessment in West
Justice, C.; Townshend; J.R.G., Holben,
B.N; and Tucker, C.J., 1985: Analysis of the phenology of global vegetation us¡ng meteorological
cover Af rica.
UNEP/GEMS/GRlD, Geneva. Manuscript 51 pp. + 4 app.
satellite data. lnt Journal Remote Sens., 8, pp. 127 1-1318.
UNCED, 1991 : Combatting Deforestat¡on
:
Options for Agenda 21. Report of
Secretary General of the Conference (DrafT, 21 pp.). United
the Lund, H.G., 1990: Linking national and
Nations Conference on Environment and Development
global ¡nventories. ln Burkhart, G.M. et al. Proc. XIX World
Secretariat, Geneva-Conches.
Congress of lnternational Union of
23
FOREST CHANGE ON A LANDSCAPE SCALE USING LANDSAT IMAGERY: TEMPERATE AND TROPICAL FOREST EXAMPLES Steven
A. Sader
College of Forestry University of Maine 260 Nutting Hall Orono, Maine, U.S.A
ABSTRACT
Change detection techniques were applied to visualize and quantify major forest changes across a landscape. Two-date change detection is suitable for assessing short term change such as in updating a forest data base for new harvest areas, roads and establishing age of clearcuts. Three-date change detect¡on provides a method to interpret longer term timeseries changes (forest harvest and regeneration) on a landscape scale. Both change detection techniques incorporated the computation of the normalized difference vegetat¡on index (NDVI). A simple and logical technique (RGB-NDVI) to visualize changes in a 3 date tíme sezes rs presented. Landsat-MSS data was chosen as the f¡rst date (two-date method) and first-two dates (three-date method) in the temporal sequence to reduce data acquisition costs and increase the chance of finding suitable satellite coverage of any region (especially tropical). Change detection examples from temperate forests (Maine - USA) and Central America tropical forests are presented. Special considerations in image acquisition and data processing are described.
that breed in the northeastern U.S. but spend the winter in southern Mexico and Central America (Robbins et al. 1989; Powell et al. in press). Deforestation in the wintering grounds is believed to be a major contributing f actor to eastern songbird declines but only limited information exists on deforestation and
INTRODUCTION
Satellite remote sensing techniques have
great utility for extensive land surveys where current forest resource inf ormation is either scarce, too expensive or infeasible to acquire by alternative methods. ln tropical regions, satellite remote
sensing may be the only feasible
habitat relationships (Terborgh 1 990).
The capabilities of satellite data
and
'tor
detecting forest change has great promise f or updating geographic inf ormation systems (GlS) maintained by large industrial forest landowners and state agencies in Maine. The forests are Maine's most important resource in terms of major economic indicators (Land and Water
reliable technique to monitor def orestation rates and land use conversion trends (Sader ef a/. 1990). Knowledge of deforestation and reforestation rates can improve the global climate database (e.9., carbon modeling of terrestrial environments) and provide quantifiable data to
Resource Center, 1987), therefore timely
support international programs f or biodiversity conservation and critical
information about forest condition and trend is essential f or making inf ormed f orest management decisions. Results of
habitat protection. For example, wildlife
biologists have reported population of many migratory bird species
decline
f
26
orest change monitoring studies in Costa
Rica C.A. and Maine U.S.A. indicate that
digital analysis
of
OBJECTIVES
multi-date satellite
imagery can provide reliable estimates of major forest canopy changes (Sader e¿ a/. 1991, Sader and Winne, in press).
The primary objective of this paper is to present simple techniques for visualizing
and Previous Work
ying major f orest change
niques rely on routine image processing
Most of the digital image
and GIS editing functions that are avail-
able in most commercial and public domain computer software packages.
change
detection investigations reported in the literature have ut¡l¡zed two dates of imagery. A f ew investigators have attempted to analyze 3 or more dates of
The use of the older, Landsat MSS data is advocated as a valuable, low cost archive
to support global change research and landscape level forest moni-
available
imagery (Sapitula and Killip 1985, Chaudhury 1985, Parada et al. 1981, Woodwell et al. 1987) using two date
toring for time periods dating back two decades. Forest change monitoring techniques presented in this paper accommodate measures of both forest clearing and regrowth area.
or est¡mates in sequence rather than a composite analysis of 3
comparisons
dates as a multitemporal data set. Other investigators have applied data transfor-
mation techniques (e.9.,
principal
components) to analyze multiple dates of AVHRR imagery (Tucker ef a/. 1985, Townsend and Justice 1986), however,
the transf ormed image is not
to
quantif
events on a landscape scale. These tech-
METHODS
easily
determine the original
Twc and three date change detection
For
techniques utilizing multitemporal Landsat
forestry applications, the dates of change may be important to: 1) update a forest
imagery were applied to temperate and tropical forest study sites. Both techniques can incorporate the use of the
deconvolved
dates
of
reflectance changes.
resource inf ormation system f or new harvest activities,2) to develop forest
more economical Landsat MSS data. A Landsat Thematic Mapper (TM) image is
atea stat¡stics at each date, 3) to establish age classes of natural regene-
used as the second date in a two date change detection sequence and as the third acquisition in the three-date t¡me series change detection method. Land cover maps were derived through image
ration sites, and 4) to utilize these data to support forest supply analysis for regional planning (Sader and Winne, in press). lmage differencing techniques have been to detect abrupt changes in canopy
classif
used
ication procedures to aid
inement
of the change
in
detection images by minimizing commission errors (e.9. identificat¡on of a change event that ref
reflectance resulting from forest harvest and road construction (Woodwell et a/. 1983, Tucker et al. 1984, Pelletier and Sader 1 985, Singh 1 986). ln image diff erencing, one or more wavebands from two coregistered images are subtracted to produce a residual image indicating the relative change in reflectance between
is not associated with forest clearing or regrowth). Land cover strata can be
derived f rom
a GIS f ile and
logical
operations applied to the change detection images to reduce these errors.
the two dates (Singh 1986). Landsat MSS data can be preprocessed, resampled and co-registered with TM data to depict f orest change boundaries with adequate resolution for extensive forest surveys. The spatial and temporal data base that results allows harvest and regeneration zones to be monitored and
The TM image was registered
to UTM
coordinates. Matching control points
(pixels) were located in each MSS scene and these images are resampled to 30m and registered to the TM base map. A
destriping program was applied to the MSS images prior to rectif ication and resampling. Haze correct¡ons were applied and the Normalized Diff erence Vegetation lndex (NDVI) was computed
their area quantified using a sequence of image processing steps (Sader 1988).
26
',
r \
Jf1 OT
l.'
s{ t
\.
l.
Great Pond, Maine, 1:24,OOO scale quadrangle. a) 1987 Landsat-TM band 3 (0.63-0.69 um), NDVIimages derived from b) 1978 MSS, cl 1981 MSS, and dl 1987 TM' High biomass is,indicated by light tones and low biomass by dark tones ¡n the NDVI images' Forest change in a time ser¡es can be visualized by creating color composites of NDVI images (not shown herel.
Fìgure
27
Table
l.
Maine).
lnterpretation of Additive Colors in Three Date RGB-NDVI lmage (Great pond,
NDVI DATE (1)
Additive Color
1
978
1
981
1
987
I
nte
rpretation
o/o
Area Black
L
L
L
Low Biomass - no change
Blue
H
L
L
Decrease
978 to 1 981
19
Red
L
H
L
lncrease, then decrease
33
Green
L
L
H
lncrease 1 981 to 1 987
27
Magenta
H
H
L
Decrease 1981
to 1987
4.4
Cyan
H
L
H
Decrease, then increase
26
Yellow
L
H
H
lncrease 1 978 to 1 98.l
6.8
Dark Grey (2t
H
H
H
High biomass - nochange (SW)
22.5
Light Grey (2)
H
H
H
High biomass - nochange (HW)
44.5
-
-
1
(1)
Greenness index by year: Blue greeness, H : High greeness.
(2t
Grey replaces white (in additive color scheme)
1978, Red
1981, Green
differentiate hardwood and softwood.
I
to
-
11.3
1987;
L
=
Low
increase contrast and to
007
75t
25Í
1978
lXo Mature Forest
1981
V-
Regeneratlon
1987
l-_-l Non-forest
Figure 2' Forest change dynamics in the G¡eat Pond quadrangle as indicated by the percentage area of forest, regenerat¡on, and non-forest types at three dates spanning a 9-year time frame' The trend for the past decade has been a reduction in older age classes through industrial forest harvest and an increase in young forest age classes (regenerationl by 1 987 following harvest at earlier dates (late 1970s and early 19g0sl.
28
f
or each data set using the f ollowing
f
orm ula:
change events (harvest, regeneration, and road building) including the time period
when change occurred. Unfortunately, it is not possible in the proceedings to reproduce the color composite image that
near infrared - red near infrared + red
results f rom this technique.
A non-linear contrast stretch (scaling) was
performed on each NDVI image (Figure 1b,c,d).
f
ull
image and interpretation of change events is reported in Sadef and Winne (in press). A generic interpretation of RGB-NDVI
additive colors after application of a modified parallelepiped classifier (e.9. RGBCLUS in ERDAS or CLPIPE in NASAELAS software) is presented in Table 1
ADDITIVE COLOR THEORY FOR VISUALIZING CHANGE ¡N A TIME SERIES
.
The classifier converts the analog images into discrete classes that can be tabulated
A
simple and logical technique was developed to visualize forest change in a 3-date time series using the NDVI calculation and RGB image display functions (Sader and Winne, in press). The principles of additive color theory were the basis for image interpretat¡on whereby there are 3 primary colors (red, green and blue) and any combination of two primarily colors in nearly equal brightness produces a complementary color (yellow, magenta or cyan). For example, yellow is
created when
red and green
into forest change area statistics for
CHANGE DETECTION EXAMPLES FOR TROPICAL FORESTS
The annual rate of deforestat¡on in Central
to 1990, was approximately 1.8% which was the second highest rate of any region (f ollowing Af rica) in the world (Forest Resource America f or 1 980
are
or green and blue f orm magenta and
Assessment Project 1 991 ). lnf ormation on habitat loss in Latin America is among the poorest of all major regions (World Resource lnstitute 1990). Forests in southern Mexico, Belize and Guatemala are the subject of on-going investigations by U.S. Fish and Wildlife Service where
cyan. respectively. The absence of red, green and blue result in black (no color). High brightness of all 3 primary colors create white. The 3 primary color guns in an image display device generate a color
the additive color process when individual channels of digital brightness are displayed on a composite through
population assessments of migratory birds
and their habitats are beîng conducted.
computer color monitor screen.
Researchers
at the University of
Maine
are supporting the effort by developing the habitat maps and assess¡ng changes
Figure 1 b, c, and d are the NDVI images that correspond to the Great Pond U.S. Geological Survey 1:24OOO scale map quadrangle in east central Maine. The landscape is a mosaic of conifer, mixed and broadleaf f orests primarily under private industrial ownership with many
in f orest and land use using
satellite
digital analysis techniques.
Sierra de los Tuxtlas, Veracruz, Mexico
lakes, bogs and regenerating stands that occur in former clearcuts (Figure 1a).
the
3
time periods (Figure 2).
combined. Combinations of red and blue
Following
A
description of the RGB-NDVI technique w¡th the corresponding color composite
pre-processing steps
This study site is a rugged mountainous region of volcanic origin, situated on the
summarized on the previous page, the three NDVI images were displayed as a
Gulf of Mexico approximately 100 km southeast of La Ciuded de Veracruz.
color compos¡te. Using additive color ¡nterpretation and knowing what NDVI dates are coupled with red, green, and blue, it is possible to visualize f orest
According to Rappole and Warner (1980),
about one-third of the 42,OOO km2 mountain range was forested in 1975. 29
Winker et al. 11990) estimated that less than 15% was forested in 1986. Most of the former forest land was converted to
edit the change image (Figure 3c). Forest change was falsely indicated in the high elevation forest apparently due to slight misregistration and resampling effects of MSS pixels to 30 meters (see area A,
grasslands, citrus groves and weedy fields. The remaining forest now resides primarily in the less accessible, higher elevation mountain slopes. A 1O24 x 1O24 pixel subsection representing a 1049 sq. km area was selected f or analysis of forest change between 1986
stratified forest) to 443 ha (poststratified). The difference between the two estimates (632 ha) was added back
and 1 990.
into the "no-change" class (Table 2). The
Two date 'diff erence' images
ximately 1.7 percent of the study area. Only .2 percent of the area was categorized as biomass increase or regrowth zones. Figure 3d is the f inal change
Figure
1
were derived using the formula (ND1-ND2), where ND1 is the NDVI for the f irst date, while ND2 is the NDVI for the second date. Forest canopy alteration or biomass decrease can be inferred with high NDVI diff
erence values and an increase
eliminated most single pixels and edge effects.
The first attempt to calculate area and location of major change zones (forest
indicated that most of the sites were by pasture, scrub vegetation and low broadleaf vegetation which may include citrus; however further work is in occup¡ed
clearing and biomass increase) resulted in
of change.
986-90deforestation represented appro-
application of the "f orest mask. " Air photos and ground truth data were not available (at the time of this writing) to evaluate the areas indicated as biomass increase zones. These were likely areas cleared of forest shortly before 1986 and significant vegetation recovery occurred by 1 990. Comparison of these biomass increase zones with the land cover image
in
yield a category of canopy biomass increase, one of biomass decrease, and one of no change. A majority f ilter
estimate
forest
image after the false forest change areas in the mountains were eliminated through
biomass (regrowth) with low values. The difference image was density sliced to
a liberal
3b). The estimate of
clearing was reduced from 1075 ha (pre-
For
to refine and quantify these results. Change locations from the progress
example, commission errors were noticed in some mountain areas where f orest clearing apparently did not occur between the two dates (compare Figure 3a, 3b). A binary image "mask" of the medium tall broadleaf forest type classified from the 1990 TM image was used to stratif y and
difference calculations can be converted
into vectors f or plotting on maps
or
overlaying on a 3 band color composite image for visualization.
Table 2. Pre-stratified and post-stratified forest change estimates for Los Tuxtlas study site based on 1 986 and 1 990 Landsat imagery.
Class Prp- ctr¡+if ia
r'l
rea lha I
3
1
oo?
Rinm¡cc
444)
g6Â
Nn nhanne
1075
.o42
25,57 4
1.OO
67
oo)
)
?F.î7 3
ñ
Pêraêntânê
67
1
?
Pnct-cfrelifiod
A
innrorco
lronrnrrrl-hl
B omass
decrease (forest
Rinm¡cc
innrorco
fronrnr¡rihì
Ã
.981
No chanoe
443
.o17
Biomass decrease (forest
2557 4
1.OO
30
¡lorrinn\
1o24x1024pixel (30m)subsetof al pre-stratified 1986-90 NDVI difference image 1990 Landsat TM, band 3 0.69 uml, bl - 3 class density sliced, cl 1990 medium tall broadleaf forest binary mask derived from GIS
Fìgure3. SoutheastSierradelosTuxtlas,Mexico. 10.63 -
land cover and
dl post-strat¡fied 1986-90 change detection image indicating
increase (blackl, no change (medium grayl and forest clearing (white).
31
biomass
Northern Peten, Guatemala
by displaying them on the background of the 1986 color composite image to reveal the spatial proximity between old and new clearings; however, this is not possible for these proceedings. ef f ectively
diff erence in land use along the Mexico (state of Chiappas) and
The
Guatemala (Peten district) border is very
distinct on a satellite image (Figure 4a). Land use on the Mexico side is mostly
CONCLUSIONS
pasture and crops wit'h only remnants of
disturbed forest remaining.
The
Guatemala side of the border was almost
totally forested in 1986 although some
Two and three date change detection
orestation has occurred within the last
techniques have been briefly discussed with examples applied to a north temperate and two tropical study sites. Landsat MSS data are available at several dates and at low cost for most of the world. These data can be merged with higher
def
few years.
According
to
Guatemala government sources, illegal t¡mber cutting has increased substantially in the northern
Peten Region (Bangor Daily News 1991).
Most of the illegal f orest
removal of the The peten
occurred within the boundaries
Maya Biosphere Reserve. f
resolution Thematic Mapper or Spot multi-
spectral data for time-series change detection. By acquiring L¿ndsat-TM at the third date in the time series, the high
orest shelters a wealth of wildlife species
and conta¡ns Central America's largest f resh waterwetlands. The archaeological heritage and the integrity of one of the largest tropical wet forests in Central
resolution satel¡ite data can be classified separately using a classification algorithm
to generate a current land cover map. The land cover classes help to strat¡fy seasonally high biomass, non-f orest
America may be threatened by increased deforestation in this region (Garrett and Garrett 1989),
lmage
dif
f
erencing techniques
surfaces (e.9., bogs or agricultural areas)
that might be confused with forest areas where change has occurred.
were
applied to a section of the border region.
The imagery was TM data acquired
April 14, 1986, and April 17,
All imagery should be collected in the same season if possible, to reduce large
on
1990. Further east from the border region, near the small town of Carmelita, shifting
NDVI difference that can be attributed to seasonal changes in vegetation phenology
cultivation is practiced by local people. Recent forest clearing can be detected
rather than NDVI differences caused by
forest harvest, regeneration or
near Carmelita but the size and appearance of the recent clearings are different than those of the border region. Figure 4c and d are NDVI difference images of the two sites. The average size of the
fields atta¡n high amounts of green biomass. ln Central America, the best
orest clearings along the
Mexico/ Guatemala border (within Guatemala) was f
other
forest canopy alterations. ln Maine, the opt¡mal season to collect imagery is spring (late May to June) before herbaceous growth in bogs and agricultural
chance of obtaining imagery is in the dry season (usually February to April). Atmospheric correction and scaling (histogram stretch) are recommended techniques to
11.25 ha with a standard deviation of 14.25 ha. For comparison the average forest clearing near Carmelita was 2.77 ha with a standard deviation of 3.36 ha.
reduce haze effects, gain and offset differences between sensors. The NDVI computation (band ratioing) reduces sun angle effects and enhances the stratification of forest/nonforest areas. Forest
The change detection results suggest that
traditional shifting cultivators in this region clear less land for subsistance agricultural purposes. The forest clearing
activities along the border may be motivated by profits made from selling
road locations are also high-lighted by the NDVI calculation which can be useful to update old maps with new road locations.
logs (perhaps illegally) and cut boundaries are larger and more angular in appearance
A
(Figure 4c). The new clearings (1990) around Carmelita can be visualized most
post-change analysis majority f ¡lter
reduced isolated pixels and edges that
may result f rom resampling MSS data to
32
Figure 4. lal 1996 Landsat TM image of the Mexico-Guatemala border, (b) enlarged subsection 11O24x 1024 pixel) of the border where deforestation was detected between 1986 and 1990, and (c) the 3 class density sliced NDVI difference image. Forest clearings in a shifting cultivation area around Carmelita, Guatemala (dl are smaller and less angular
than forest clearings near the border zone, possibly indicating the differences between traditional agricultural practices and timber market extract¡ons in the two locations'
33
30 m pixels. Boundaries of change areas are often better defined by application of lnvestigations that focus on forest change
1985: Landsat: applicatr0ns to mangrove ecosystems studies. Remote Sensing in Vege tation Studies, Report of the ESCAPBIOTROP Training Course, UNDP-
detection usually emphasis only f orest
ESCAP, Bangkok, Thailand.
Chaudhury, M.U.,
the majority filter.
clearing; however, f orest change is dynamic and data about regrowth and
Forest Resources Assessment Project, 1991: Second interim report on the
land use conversion trends are processes
that would improve the inf ormation content of change detection investi-
state of tropical forests, FAO
gations. The techniques presented herein allow locations and area estimates of
Sept. 1 991.
regrowth zones to be determined in addition to areas where forest clearing has occurred. These techniques are not intended to represent a stand alone, fully
Garrett, W.E. and Garrett, K., 1989:
ruta Maya. National
La
Geographic
Society. Washington, D.C. Pp. 424478.
automated digital approach. lnstead, they rely on interactive steps and integration with GIS procedures that are required for refining change estimates and the visual display of major change events (afforestation and deforestation). The practice of ¡ntegrating change detection procedures with land cover information will undoubtably lead to significa¡t improvements in
Land and Water Resources Center, 1987:
The forests of Maine, University of Maine Press, Orono,
ME. 12 pp.
Parada, N. de Jesus; Tardin, A.T.; dos
Santos,
A.
P.; Filho, P. H.
a
nd
Shimabukuro, Y.E., 1 981 : Remote sensing in forestry: applications to the
quantifying forest change events. The
visualization
Rome.
1Oth World Forestry Congress, Paris.
Amazon region. INPE-2035-RPEl292, lnstituto de Pesquisas Espaciais, S.J. dos Campos, Sao Paulo, Brazil.
of changes, although
presented in color at the workshop, could not be reproduced in these proceedings published in black and white.
Pelletier, R.E. and Sader, S.A., 1985:The
relationship between soils data and forest clearing and forest regrowth trends in Costa Rica. ln: Proceedings of Pecora 10, August 20-22, 1985,
ACKNOWLEDGEMENTS
Colorado State University, Colorado. Pp. 276-285.
This work was supported by Mclntire-
Powell, G.V.N.; Rappole, J.H. and Sader, S.A., (in press): Nearctic migrant use of low land Atlant¡c hab¡tats in Costa
Stennis Project ME 09608. Other support provided by FinnlDA, the Maine Research
Fund, NASA-Stennis Space
Center
Rica: A test of remote sensing for
Science and Technology Laboratory and U.S. Fish and Wildlife Service-Patuxent Wildlif
e
Research Center
is
acknowledged. Maine
identification of habitat.
ln: Symposium on Ecology and Conservation of Neotropical Migrant
gratef ully
Agricultural
Landbirds, Woods Hole Marine Biology
Experiment Station External Publication
Laboratory,
#1617.
7
-9
December
1
(Woods Hole: Manoment
989. Bird
Observatory). Rappole, J.H. and Warner, P.W., 1980:
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. Ecological aspects
of
migrant
bird
behavior in Veracruz, Mexico, p.353-
393. ln Keast, A. and Morton, E.S.
Bangor Daily News. 1 991 . Guatemala f orests at risk. June 2, 1 991 , Bangor,
(Eds). Migrant birds in the neotropics,
Smithsonian lnstitution Washington, D.C.
Maine.
34
Press,
Robbins, C.S.; Sauer, J.R.; Greenberg, R.S. and Droege, S.,
1989:
Sensing and Tropical Land Management. John Wiley and Sons. 365 pp.
popula-
tion declines North American birds that migrate to the tropics. þ Proc. of National Academy
of
J. 1990. Where have all the birds gone? Princeton University
Terborgh,
Sciences.
86(1 9): 7658-62.
Press, Princeton, New Jersey.
Sader, S.4., 1988: Remote sensing inves-
tigations
of f orest
biomass
Townsend, J.B.G. and Justice, C.O.,
1986: Analysis of the dynamics of African vegetat¡on using the norma-
and
change detect¡on in tropical regions.
ln Satellite
lmageries of Forest lnventory and Monitoring: Experiences, Methods, Perspectives.
lized diff erence vegetation index. lnternational Journal of Remote Sensing, 7, 1435-1445.
l.U.F.R.O. 4.O2.05, Hyyriata, Fintand.
29 August - 2 September. Departrnent of Forest Mensuration and
Tucker, C.J.; Townsend, J.R.G. and Goff, T.E., 1985: African land cover classification using satellite data. Science,
Management Research Notes lrlo. 21,
(Finland: University of Helsinki), pp.
227, 369-375.
31-42.
Tucker, C.J.; Holben, B.N, and Goff , T.E.,
Sader, S.A.; Stone, T.A. and Joyce, A.T. 1990. Remote sensing of tropical
forests: An overview
of
1 984: lntensive forest clearing in Rondonia, Brazil, as detected by
satellite remote sensing. Remote
research
applications using non-photographic
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5:255-261
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sensors. Photogrammetric Engineering
and Remote Sensing. 56(10): 13431351.
Winker, K., Rappole, J.H. and Ramos, M.4., 1990: Population dynamics of the wood thrush in Southern Veracruz, Mexico. The Condor, 92:444-
Sader, S.A.; Powell, G.V.N. and Rappole, J.H., 1 991 : Migratory bird hab¡tat
460.
monitoring through remote sensing.
lnternational Journal of Remote Sensing 1 2l3l: 363-37 2. Sader, S.A. and Winne, J.C., 1991:RGBNDVI color composites for visualizing f orest change dynamics. lnternational Journal of Remote Sensing (ln Press).
Woodwell, G.M.; Hobbie, J.E.; Houghton, R.A.; Mellilo, J.M.; Peterson, B.J.; Shaver, G.R.; Stone, T.A.; Moore, B. and Park, 4.8,, 'l 983: Deforestation measure by Landsat: steps toward a method, DOE/EV 10468-1 . NTIS, Springfield, VA,62 pp.
Sapitula, B.P. and Killip, T.4., 1985: Forest vegetation mapping in the Philippines. ln: Remote Sensing in Vegetation Studies. Report of the
Woodwell, G.M.; Houghton, R.A.; Stone, T.A.; Nelson, R.F. and Kovelick, W., 1987: Deforestation in the trop¡cs: new measurements in the Amazon
ESCAP-BIOTROP
training
Basin Using Landsat and NOAA Advanced Very High Resolution Radiometer inragery. Journal of
course,
UNDP/ESCAP Regional Remote Sensing Program, Bangkok, Thailand (New York: United Nations Development Program). Singh,
4., 1986:
Geophysical Research.
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Change detection in the
World Resource lnstitute, 1990: World Resources 1990-91. Oxford University Press, New York. 383 pp.
tropical forest environment of northeastern lndia using Landsat. ln Eden,
M.J. and Parry, J.T. (eds),
Remote
35
APPLICATION OF REMOTE SENSING IN TROPICAL RAIN FOREST AND MANGROVE FOREST MONITORING IN THAILAND Suvít Vibulsresth Su ra c h ai Rata nasermpo
ng
National Research Council of Thailand (NRCT) Bangkok 1O9OO, Thailand
ABSTRACT Satellite remote sensing data have proven useful in assessrng the forest land resources and
in monitoring the changes. Results that were obtained from the interpretation of the high
resolution satellite data and dígital analysis have been used by policy makers to plan more effectively in areas of forest preservat¡on, reforestation scheme, rehabilitation of watershed on major catchment basin areas and the forest land use zoning. Ihe assessrnent of forqsted area of Thailand by usíng LANDSAT data was conducted by the Royal Forest Department in 1973, 1976, 1978, 1985 and r.989. lt is evident from the results of the study that the forested area of the whole country was depleted to approximately 27.95 percent compared to 43.21 percent sfat/stics of 1973. The rate of forest depletion since l973was greatest in the Northeast regíon and lowest ¡n the South region
at 3.35 and l.3O percent per annum respectívely. Furthermore, the Nationat Research council of Thailand iointly with the Royal Forest Department has conducted a study on man-
groves ¡nventory from satellite data for period 1975, 1979, 1986 and 'l 991 . lt revealed that the decrease in mangroves area of 1,390 sq.km. within l6 years period. From most recent LANDSAT-TM data of lggo and 1991, there are only 1,736 sq.km. or l,o75,o5o rais of mangroves which is about L2o percent of the forested area of the whole country.
LANDSAT-4/5 MSS data available to
INTRODUCTION
users.
Satell¡te remote sensing activities
ln 1986, NRCT received the grant from Canadian lnternational Development Agency (CIDA) to upgrade the existing facilities to receive and process the high
in
Thailand started as early as 1971 when a National Remote Sensing Coordinating Committee was appointed by the Cabinet to coordinate expeimental efforts of various government agencies and to disseminate remote sensing informat¡on. ln 1972, Thailand jointed other countries
in the LANDSAT-1 program, and
resolution data from Thematic Mapper of
Landsat-S and HRV of SPOT-1. The upgraded facilities started to receive TM and SPOT data from December 'l 987.
TRSC also cooperated with Japan's NASDA to construct a new ground station for MOS-1 which started to receive MOS-1 data from May 1988.
since
then the national remote sensing activities have evolved and reached the operational phase in 1981 with the establishment of the Thailand Landsat Station (TLSl. Since
With the new facilities, TRSC became the regional ground receiving stat¡on in South-
1981, Thailand has become a regional data center. To maintain her role, TLS was upgraded in 1984 to make
east
Asia. The total value of
provided 37
data
to users in 1 989 reached one
Thailand are applying TM and SPOT data
- The Central
on an operational basis. Thailand also cooperated with several countries in Asia and else where in the utilization of satell¡te data. A plan to upgrade the existing facilities to receive and process ERS-1 data of ESA is being worked out.
-
The Eastern part consists largely of a broad coastal zone with a hilly hinterland.
Thailand Remote Sensing Center (TRSC)
-
The Southern region is a long narrow
region comprises the Chao Phraya Plain and its tributaries connecting to the Gulf of Thailand.
of the National Research Council has been the agency responsible for the operat¡on of TLS and for distribution of the satellite data to both domestic and foreign uses. The National Remote Sensing Coordina-
Malaysia.
Being under the influence of monsoon climate conditions, the vegetation of
ting Committee, having the mandates given by the Cabinet to devise policies
Thailand is a humid tropical one with vast areas covered with forest. Basically, the forest of Thailand can be classified into two broad categories of Evergreen and Deciduous.
and plans for remote sensing applications in Thailand and to coordinate and promote
such activities. These are 8 subcommittees under the Committee, for example, Planning and Monitoring, Agriculture, Forestry and Land Use
The Evergreen Forest is composed of
Applications, etc. ln addition, TRSC funcRemote Sensing Committee to coordinate research activities, and to provide training
-
provide
research funds and application support to
the users. TRSC has provided
-
the
services of the image analysis systems to government agencies applying satellite
remote sensing technique to natural resources survey and environmental monitoring. W¡th the expansion of the
-
disciplines
including agriculture, forestry, land use, geology, oceanography, hydrology and environmental monitoring. The multidisciplinary nature of Landsat data has brought resource managers, decisionmakers and technicians together in the joint-effort for common goal.
The Forest
of
Rain Forest Coniferous Forest
Mangrove Forest
Mixed Deciduous Forest Dry Deciduous Dipterocarp Forest Savonna Forest
The f orests in the Northern region of Thailand are of leak lTectona grandis Linn.) bearing type. The forests are rich in timbers of commercial value such as bamboo, rattan, wood oil, gums and incense wood. Most of the forests are Tropical Mixed Forest with many valuable species. This type is very dense with considerable understoried plans and climbers making ground inventory very difficult, if not all inaccessible.
Thaíland
Thailand is divided by physical characteristics into five regions as follows:
-
Tropical Evergreen Forest or Tropical
The Deciduous Forest can be subdivided into the following three types :
systems, Landsat data have increasingly
been applied in various
a
great proportion of the non leaf-shedding species and covers about 60% of the total forested area. lt can be subdivided into the following three types :
t¡ons as the secretariat of the National
for new users as well as to
peninsula extending towards
The Northern part is made up mainly
of
highlands and steep mountains
Applîcation of Satellíte Data to Forestry
surrounding rich alluvial valleys.
-
Almost fifty years ago, a large portion of the country was covered with dense forest distributed all over the country
The Northeastern part is a generally
low-lying zone with Korat Plateau having a height of a few hundred
except the great central plain, where orest had long been replaced with
meters above mean sea level.
f
38
agricultural land. The increasing population in the past few decades at a high rate of 3.0 per cent annum led to the
equipped with necessary instruments and
adequate budget including expenses for ground survey. ln fact, the greatest contribution of our data from Thailand
exploitation of forest land f or agricultural purposes. However, in order to sustain economic growth, a rat¡onal utilization of natural resources including forestry must be properly maintained. Such realization
that forest is an integral part of
Landsat Station up to now has been in the field of forest applications. lf we were to conduct a natìonwide survey of existing forest by air reconnaissance, the effort would take three years and cost
the
about four million U.S. dollars, because
ecosystem which must be preserved led to the government policies to maintain the forested area at a suitable percentage of the total land area and to manage the watershed area more wisely. Satellite remote sensing data, especially Landsat, is considered to be useful in assessing the forest land resources and in monitoring the change. Results of the Landsat data derived interpretation have been used by policy makers to plan more effectively for
the preservation of forest area, for
only three months a year are suitable due to haze and cloud cover, and Thailand has a total land area of about 514,000 square kilometers. The last nationwide air survey
was conducted in 1 961 f or
Rate of Forest Depletion
The assessment of forestèd area of Thailand by using LANDSAT data was conducted by the Royal Forest Department in 1973, 1976, 1 978, 1985 and
the
reforestation scheme and rehabilitation of watershed on the major catchment basin areas.
1989. lt is evident from the results of the study that the forested area of the whole country was depleted to approximately 27.95 percent compared to 43.21 percent'statistics of 1 973. The rate of forest depletion since 1973 was greatest in the Northeast reg¡on and lowest in the South region a 3.35 and 1.30 percent
Remote Sensing tech¡ology has been ¡ntroduced in the study of forestry since 1955 by Dr.Fritz Loetzch, a German expert on forest inventory of FAO who used aerial photos in the forest inventory. Since then aerial photos have been used as a tool for forest survey and inventory.
per annum respectively (Table 1). Furthermore, the National-'Research council
It was in 1965 that air survey was first used in the study of mangrove ecology by Sukwong et al. Aerial photos acquired in 1961 at a scale of 1 : 50,000 were used to delineate mangrove forest area. Since
Thailand parricipated
forest
inventory.
of Thailand jointly with the Royal Forest Department has conducted a study on mangroves inventory from satellite data for period 1975, 1979, 1986 and 1991
in NASA ERTS
.
It revealed that the decrease in
program in 1972, satellite data have been widely applied in many fields. The earlier
of 1,390 sq. km. within 16 years period. From most recent
mangroves area
results from the use of LANDSAT data were first applied by S. Vroulsresth e¿ a/. to study mangrove ecosystem by visual-
LANDSAT-TM data of 1990 and 1991, there are only 1,736 sq.km. or 1,085,050 rais of mangroves which is about 1.20 percent of the forested area of the whole country (Table 2).
¡nterpretation.
Most of the interpretations of Landsat data were done visually, using false color
composite
at 1 : 250,000 scale
and
composite transparency at 1 : 1 million scale. Digital analysis started with the
CONCLUSION
establishment of Thailand Landsat station and became quite popular since 1 983
with the
acquisition
of
The forest is one of the few renewable natural resources. With careful planning
DIPIX lmage
Analysis System. The majority of work has been accomplished by the staff of the
Royal Forestry Department,
and management and efficient reforestat¡on programs, we can harvest timber and derive economic benef its indef initely. The
Forest
Management Division with manpower of about 30 who had been well trained and
f
39
orest land use should be planned
in
Table
Total Region
Forosted aroa
afea
I
1.
Forested arec
973'
1
Forested area by region of Thailand.
Forestod 6roa
976"
I
(km'?l km2
È
o
North Northeast East Contral South
169,644 1 68,854 36,503 67,399 70,715
TOTAL
513.1 15
* *
* **
*
**** r+ltr +iilt* rrfl**t
oÂ
13,595 50.671 15,036 23,970 18,435
67.0 30.o 41.2 35.6
221.707
1
km2
oÁ
102,327
60.3 24.6
34.6 32.4
26'1
,494 12.631 21,326 20,139
43.2
189,417
38.7
41
km2
1
km2
%
87.856 25,886 8,OOO 8.51 6 16,442
175,224
156.600
Source: Landsat-1 imagery, taken in 1973 Source: Landsat-2 imagery, taken in 1976 Source: Landsat-3 imagery, taken in 1978 Source: Landsat-3 imagery, taken in 1982 Source: Landsat-4-S imagery, taken in 1985 Sourcg: Landsat-4-S MSS Source: Landsat TM
34.2
Forested aÍea
982""
94.937 56.0 31,221 18.5 11,037 æ.2 20,426 30.3 17,603 24.9
28.5
Source: Royal Forest Department lggÙ
Forested area
978"'
1
1
km2
%
51.7 15.3 21.9 27.5 23.3 30.5
1
Foreste area
985""'
1
oÁ
9aA"""
km2
1
oÁ
A4j26 24,224 7,990 17,22A 15,485
49.6
8,o,402
14.4
23,693 7,A34 17,244 14,630
47.4 14.O 21 .5 25.6 20.7
49,053
29.1
43,803
2A.O
21 .9
25.6 21.9 1
Forested aroa
989"""'
km2
%
AO,222
47.3
23,586 7,7A6 17,223 14,600
14.O
143.417
21.3
25.6 20.7 2A.O
Table
2.
The areas of mangrove forest in Thailand.
Manqrove forest area (km2)
Province
NO
1 1
2 3
4 5 6 7
8
I
10
È
11
12 13
14 15 16 17 18 19
20 21
))
Trad Chanthaburi Rayong Chonburi Chachoengsao Samut Prakan Samut Sakhon Samut Songkhram Phetchaburi Prachuapkhirikhan Chumphon Surat Thani
Nakhon Si Thammarat Phatthalung Songkhla Pattani Ranong
Phang Nga Phuket Krabi Trang Sat¡ ¡n
TOTAL
9611
19752
129
106 261 55 38
154 17
1
9793
88.1 I 145.O7
14.98
46.O8
390
330 340
/,-A?
3.679
3.127
2.873.O8
6
2i 11
81
256
185 82 88
4 74
612
37 155
14
19
13
59
56
11
306
574
45 537
L^2
242 511 31
9864
98.40 240.64
33.12 23.20 10.40 144.16 76.48 77.92 3.36 69.28 48.08 128.32 16.32 51.84 13.92 225.92 487.16 28.48 317.60 328.64 ?q? 7A
30
1
24.'t8 7.40
1
989s
86.38 86.96 17.58 10.48 5.69
77.50 24.50
4.89
3.36 o.70 1 8.18
1.03 1.42
0.49 5.77 1.45
19916
1.O7
1.54 1.50
3.67
36.26 42.84 88.35
22.65 37.67
1.05
335.1 0
262.76 312.39
0.84 6.88 17.59 211.82 356.26 17.86 296.43 250.40 288.93
1.964.28
1.805.59
1.736.08
9.65 't8.28 216.06 364.20
19.35 303.1 2
85.21
22.O4
80.25 0.60 2.29 16.44
't94.70 15.54
31 9.1 5
308.49
?1ô q?
conjunction with the master plan for land
multilateral agreement should be strengthened. The commercialization of remote
decrease of forest land and at present the total f orest area of Thailand is much lower than the desired target. This
the cost-effectiveness and the economic
use. The inf ormation obtained f rom remote sensing data showed a sharp
sensing systems shÒuld take into account
and technological condition of
indicates that Thailand's forest has now reached a critical stage. The government has initiated plans and act¡ons to correct the situation. Monitoring of such efforts by remote sensing is an effective and economic way. With the increasing use of digital image processing, the different types of forest can be classified, which would provide information for the forest management. Better resolution data from
current satellite sensprs and
REFERENCES
of Thailand, Remote Sensing and Mangroves Project (Thailand).
National Research Council 1
991
:
Bangkok, Thailand. 189 p.
future
satellites would enhance the benefits of
remote sensing
the
developing countries.
Royal Forest Department, 1990: Forestry Statistics of Thailand 1989. Bangkok.
to forestry. Regional
79
cooperation, either through UN bodies or
42
p.
FOREST HEALTH MONITORING .- A NEW PROGRAM OF THE USDA FOREST SERVICE AND ENVIRONMENTAL PROTECTION AGENCY Charles G. Shaw
lll
Research Plant Pathologist USDA Forest Servíce
Fort Collins, Colorado, USA
ABSTNACT
The USDA Forest Seryice and Environmental Protection Agency have designed a national system to annually monitor the health of forests ¡n the United Sfafes. This system has three
tiers-+ach with a different intensity of activity and with specific, complementary goals. Detection Monitoring will collect field data on thousands of sifes coupled with remote sensing surueys throughout the nation's forests to document ecosystem condition and to detect changes in condition over tíme. Evaluation Monitoring will begin when Detection Monitoring uncovers unexpected changes in forest condition; it will obtain more detailed information through spec¡al studies designed to establish specific causes of changes in condition. lntensíve Sife Ecosysfem Monitoring will be conducted on about 2O research sites representing major forest types. lts purpose is to provide long-term data that will advance our understanding of ecosystem processes so that changes can be understood and predicted.
Agriculture, Forest Service, was handed a legislative mandate via the Forest Ecosystems and Atmospheric Pollution Research Act (Public Law 100-521) to initiate an ecosystem monitoring program. PL 100-
INTRODUCTION
The goal of the Wacharakitti Workshop is
to develop establishment
recommendations tor global network of
521 directed that "The Secretary (of Agriculture), act¡ng through the United
of a
permanent plots for world forest mon¡toring. The United States has recently in¡tiated an ambitious inter-agency program to document status and trends in the ecological health of its forests. The
Stated Forest Service shall --(a) increase
the frequency of forest inventories
in
matters that relate to atmospheric pollu-
tion and conduct such surveys as are necessary to monltor long-term trends in the health and productivity of domestic forest ecosystems-." The intent is to
purpose of this paper is to provide a review of that program. lt ¡s hoped that some of the lessons we have learned in
design
the establishment of this Forest Health Monitoring (FHM) program may be of benef it to the participants of this
a
program relatively uniform in
measurement protocols so that data can be examined, compared, and reported on a national or regional basis. The monito-
Workshop.
ring will provide data on current forest conditions, so that changes can be documented and meaningf ul inf erences drawn about causes of change.
BACKGROUND
We define monitoring as the repeated recording of pertinent data over time for comparison with a reference system or
ln 1988 the United States Department of 43
identified baseline. Monitoring is always concernèì - _With the determination of changes over time. We define Forest
Health as
the state of the forest
processes can be understood only by repeated, long-term observations. Even the development of researchable hypotheses is often possible only after many years of observing the state of the ecosystem. Finally, a better understanding of the processes that
as
measured by its functioning. and with reference to its normality at any given time.
control the functioning of forests will make ¡t poss¡ble to better def ine
The Forest Health Monitoring program has been developed in close coordination with and assistance of the Environmental
baseline conditions.
Protection Agency, Environmental Monitoring and Assessment Program
(EMAP) (Palmer et at. 1991). The EMAp program was designed to monitor ecological resources of the United States. The
THE THREE TIERS OF FOREST HEALTH MONITORING
described here
The program has three tiers of interrelated
Forest Health Monitoring Progràm is only one of seven
resource categories monitored
in
monitoring activit¡es: Detection Moni-
a
coordinated national program (Palmer and
toring, Evaluation Monitoring, and
Jones 'l 9921.
lntensive-site Ecosystem Monitoring.
From
a f orest resource
management pfactice. For example,
A f ourth component of the program,
To detect changes and to establ¡sh a baseline to determ¡ne if, when, and where changes are occurring and to quantify those changes.
2. To evaluate possible
causes of change. lf a change is undesirable, unexpected,
or
unexplained,
it
is
to document the cause/effect relationship to evaluate the
management practices could be related to control of air pollution or forest harvest practices. Natural and
which applies to all three tiers of monitoring activity, is research on monitoring techniques (Lund 1992). This activity necessarily involves research on topics
desirable changes should be evaluated enhance under-standing of the resource for future management.
to 3.
the
¡mportant to evaluate the cause of the change to decide if remedial action is indicated. lf a change results from a planned manipulation, it is important
perspective, the goals of Monitoring are threefold:
1.
Detection Monitoring records
condition of forest ecosystems, estimates baseline conditions, and detects changes from those baselines over time. Evaluation Monitoring determines the causes of detected changes, if possible, or hypothesizes causes that can be tested experimentally or with information from lntensive-site Ecosystem Monitoring. lntensive-site Ecosystem Monitoring provides high quality, detailed inf ormation that can be used (1) for a rigorous assessment of cause/effect relationships, and l2l to support experimental research on a small set of representative ecosystems. All three tiers are needed to fully understand the state of health of forest ecosystems.
management Forest Health
such
as:
sampling methods, sampling
This is achieved by understanding the
design, stat¡st¡cal analysis, assessment, remote sens¡ng and other measurement procedures, and indicators of forest health. Research on monitoring lechniques ensures that Forest Health Monito-
processes that are involved in regulating the function and controlling the
eff icient.
To increase our ability to anticipate or
predict changes in forest resources.
ring will continue
to be eff ect¡ve
structure of forest ecosystems. Forest ecosystems change rather
Detection Monitoring consists
gradually because they are dominated
network
by long-lived individuals (trees). Therefore, many forest ecosystem
of
and
of
a
permanent plots distributed
throughout the forests of the United States, coupled with remote sensing
44
observations and pest surveys. The sampling frame for the permanent plots
connects
an existing Forest
attr¡butes must be described
that
evaluated to determine if changes in them, individually or collectively, represent ¡mpacts on f orest health.
Service
network of inventory sample locations to a hexagonal grid of some 12,600 points
acfoss the contiguous united States (Palmer and Jones 1992). This design allows for augmentation with additional sample locations as needed to represent
Growth eff iciency currently is determined primarily through tree ring analyses.
Nutrients are currently evaluated f rom foliage collected in the upper portion of tree crowns, and soils are evaluated for
all forest lands in the United States. From
this augmented network, a subset
so
repeated observations over time can be
physical, chemical, and
of
biological
some 4,000 "sentinel plots" in forested lands, which comprise roughly one-third of the land base in the contiguous United States, will be visited annually. Sentinel plots are selected to closely conform with the EMAP network of 40 km2 hexagons
These "core indicators" may be augmented by several potential indicators
(Palmer and Jones 1992). The amount of
Lichens (characterization and chemi-
components.
currently under
--
information collected on sent¡nel plots will during
--
A component critical to this phase of the
---
be greater than that collected regular forest inventories.
program is selecting attr¡butes to measure
on the plots (Hunsaker and Carpenter 1 990). EPA has developed a process for testing and selecting these attributes, called indicators (Knapp ef a/. 1 990; Riitters et al. 1992],, and the FHM program f ollows these procedures.
These include:
)
Photosynthetic Active Radiation (PAR) - may emulate leaf area and is a part of the growth efficiency indicator Tree Height Growth
Understory Vegetation and Wildlif
e
Habitat
Tree Core Dendrochronology
and
Chemistry
-- Bioindicator Plants (i.e., ---
Desirable features to look for in indicators
include: an early and observable response perturbation events; a high precision (low variation) for measurement recording; capable of being successively remeasured; known inferences can be drawn from changes that occur over time; and reiative inexpensive to implement. Some general indicators that have been evaluated in pilot tests in major regions of the
to
U.S. over the past two years
stry
test.
ozone
impacts, etc.) Root Diseases Soil Microbiology (mycorrhizae)
For whatever indicators are measured, several subsamples are taken on each sentinel plot for each indicator to account f
or within-plot variation.
lnf
ormation
derived from indicators on the sentinel
plots will be coupled with information collected during routine forest pest surveys and other specif ically f ocused moni-
toring activities. All information will be spatially linked (Czaplewski 1992) to
are:
landscape attributes; visual symptoms of or other vegetat¡on; growth efficiency; foliar nutrient status; and soil characteristics.
damage on trees
provide a more complete, annual estimate
of forest condition. Over 700 sentinel plots have been estab-
lished in 1 2 states during the f irst two years of the FHM Program. Each plot established represents 640 km2 of forest land. Preliminary results indicate that the EMAP grid network provides for a repre-
Landscape characterization of vegetation a¡d land use patterns likely will be initi-
ated through thematic mapping f rom satellite imagery or aerial photography, and then ground-checked on the plots (Czaplewski 1992). Evaluation of visual symptoms involves checking for biotic
sentative sample
of f orest types
and
stand/age class distr¡bution. Furthermore,
except for the American beech situation noted below, no unexpected phenomena have been detected during this baseline establ¡shment period. As indicated earlier, we antic¡pate the need to collect data
and abiotic effects on vegetation, primarily foliage. Specific measurements include
crown ratio, crown diameter, crown density, crown dieback, and f oliage transparency and retention. These
45
over several years before any inferences concerning change can be drawn.
ant¡cipate changes in forest health; and (4) provide the understanding necessary to develop management responses to unexpected changes. The sites differ from Detection Monitoring sites in the frequency of measurement (i.e., daily vs. annual) and the number of parameters measured (many vs. few).
Evaluation Monitoring will usually be activated by the results of Detection
Monitoring. When Detection Monitoring reveals changes that represent areas or problems of concern, a spec¡f ic evaluation
will be
made
to
determine necessary
ln some cases, the availability of this detailed information might resolve questions that were ra¡sed but not answered by Detection or Evaluation Monitoring.
follow-up activities. The details of Evaluation Monitoring can not be specified in advance and thus have
not yet been fully developed. By definition, Evaluation Monitoring will be
ormation f rom lntensive-site Ecosystem Monitoring will contribute to better understanding of intra-site variability as well as better understanding of relationships between Detection Monitoring indicators and other ecosystem characteristics. lnf
implemented where unexplained changes have been detected, and it will be tailcìred
to the
specific nature of the problem.
Activities could include additional targeted surveys, site-specific evaluation visits, more detailed temporary monitoring, and specific research studies.
More importantly, lntensive-site Ecosys-
tem Monitoring will provide
long-term data and the sampling infrastructure that will support research on mechanisms and processes that shape forest ecosystems. ln this sense, lntensive-site Ecosystem Monitoring s¡tes are similar to the United States National Science Foundation's
Detection Monitoring plots identified an unusual amount of dieback in American beech during the 1990 f ield season in the New England States. An Evaluation Monitoring program has subsequently been initiated to survey this problem.
Long-Term Ecological Research (LTER) sites (Franklin et ai. 1990). lnformation from Ecosystem Mon¡toring sites can be
lntensive-site Ecosystem Monitoring will be designed to provrde a more complete understanding of the mechanisms of change in f orest ecosystems. Monitoring
with additional short-term measurements or ¡t can be expanded by measuring new variables during specific
augmented
studies. Such studies, along with ecosystem process modeling efforts, will be
at th¡s level provides data f rom a group of precisely measured parameters to better understand causal relationships and pre-
dict direction and rates of changes
needed to enhance the value of the lntensive-site Ecosystem Monitoring information in context with the more extensive aspects of the Detection and Evaluation Monitoring data and analyses.
in
forest condition. Ecosystem Monitoring sites will represent
key forest ecosystems throughout the United States. Ten to 50 primary sites likely will be established to represent
Together, data from all three tiers of monitoring should provide a statistlcally
major forest ecosystems. These sites will be centers f or collecting detailed inf ormation on all components of the forest ecosystem. The purpose of these detailed monitoring sites is to supplement Detec-
reliable basis f rom which to determine the
nature and direction of change in forest condition and if any such changes have resulted in a deterioration of the system's health. lf so, then the Forest Service can use the data to determine if certain land
tion and Evaluation Monitoring and to support mechanistic research to identify, describe, or model tree and forest processes in ways that: (1) increase basic
management practices need to be changed. Similarly, the data also may allow the Environmental Protection Agency to evaluate if further regulations may be necessary to control possible off-
understanding of causal relationships; (2)
provide explanations
or
projections of
observations in the other levels of the Forest Health Monitoring system; (3) help
site pollutants.
48
ment Program. EPA 600/3-90/060. U.S. EPA, Office of Research and
SUMMARY
Development, Research Triangle Park, North Carolina. 416
The U.S. experience in the establishment of a f orest health monitoring program provides several concepts for this Workshop
to
consìder.
Dif
f
permanent plots can
PP.
Knapp, C.M.; Marmorek, D.R.; Baker, J.P.; Thorton, K.W.; Klopatek, J.M.;
erent types of be established,
Charles, D.P., 1990: The indicator
development strategy f or the environmental monitorìng and assessment program. U.S. EPA, Environmental
based upon the objectives of the monitor-
ing program and associated spatial and temporal resolutions. A sampling design
Research LaboratorY, Corvallts, Oregon. Contract No. 60-CO-0021,
that provides unbiased regional estimates
is critical to the success of forest assessments. A continuous indicator
84
evaluation process is needed to improve
pp.
Lund, G., 1992: A Primer on Permanent plots f or monitoring natural resources'
the effectiveness of the
monitorìng program. A sound information management program f acilitates the evaluation of
IUFRO Remote Sensing and World Forest Monitoring lnternational Work-
the field data and its rapid dissemination to clients. Cooperation between agencies will extend resources and improve the overall utility of the information derived.
shop (PattaYa, Thailand,
13-17
January, 1 992). Palmer, Craig; Jones, K. Bruce, 1992: United States environmental monitoring and assessment Program - an Overview. IUFRO Remote Sensing and World Forest Monitoring lnternational WorkshoP (PattaYa, Thailand, 13-17
REFERENCES
January, 1 992).
Czaplewski, R., 1992: United States Environmental Monitoring and Assessment Program - LandscaPe charac-
Palmer, C.J.; Riitters, K.H.;Strickland, T'; Cassell, D.L.; BYers, G.E.; PaPP, M'L ; Liff , C.1., 1 991 : Monitoring and
terization and remote sensing' IUFRO Remote Sensing and World Forest
research strategy for forests - Environmental Monitoring and Assessment Program. U.S. EPA, Environmental
Monitoring lnternational Workshop (Pattaya, Thaìland, 13-17 JanuarY,
Monitoring Systems Laboratory, Las Vesas, NV. EPA 600/4-91 /01 2' 1 90
19921.
pp.
Franklin, J.F.; Bledsoe, C.S.; Callahan,
J.T., 1 990: Contributions of the Long-
Riitters, K.H.; Law, B.E.; Kucera, R'C'; Gallant, A.L.; DeVelice, R.L.; Palmer, C.J.: A selection of forest condition
term Ecological Research Program' BioScience, vol. 40, PP. 509-523.
indicators f or monitoring' Environmen-
CarP,çnter, D.E., (eds), 1990: EcologicaI indicators for the
Hunsaker,
C;
tal Monitorìng and Assessment: pre ss).
Environmental MÓn¡toring and Assess
47
(in
MONITORING CHANGING OF FOREST LAND.USE BY MEANS OF AERIAL PHOTOGRAPHS lshak Sumantrí Wesman Endom Forest Products Research and Development Center Agency of Forest Research and Development Department of Forestry, lndonesia
ABSTRACT This study is carried out to evaluate the trend of forest land-use change as a result of the communitY's activ¡ties in pursuing its need for settlement and land cultÍvation in forest land in the vicìnity of Kampar river, Riau. To understand the trend of forest land utilization changq; 4 data resource references including aerial photo I g64, general view of forcst map, 1982'land-use map, and ground check in 1984, have been used. Duríng two periods i.e., in the years from 1964 to 1974, and from 1974 to 1984, it is known that an invasion occurred into both limited production forest and conversion forest in the Sub of Kampar Kiri and sengingi. An analysis of data using "populat¡on prcssure ', and ,, location- quotíent formulation " technique shows that populatíon pressure and low income causes ínvasion into the forest areas.
INTRODUCTION
such as an easy road and or by the rivers, very often made problems. The problems are related to the illegality of land utili-
zation. Many people encroached to a piece of land that never used before. They used for agriculture, rubber plantation, mix garden, spontaneous transmigration, etc. The piece of land belonged are the forest area.
To
accelerate National Development Programme, many projects since 1969 t¡ll now has been working. Those projects worked through exploration and exploi-
tation of natural resources, such
as
mining, gas, oil, and also the forest.
ln
For long period with minimum tillage and initially low fertile, with number of people
lndonesia, National forest resources
covered r. 7O% of entirely land. Therefore ¡t is wise and important that
growing continuously due to fertilization and or migration, those land then would
forest should be managed professionally not only for living environmental condition such as water supply, soil conservation, healthiness and recreation, but it should
be more and more deteriorate. For example eroded land.
wood
Therefore to overcome of encroachment that gradually or fastly will influence more seriously problems. Problems solving
be produce especially f or
productíon and its industries. lt was the facts that since 1 970, forestry sector has been giving large contribution to
wisely are required. Referring to th¡s reality, monitoring of management forest land-use are important. ln this paper forest landuse changes was studied. The location was selected in Kampar River area, Province of Riau.
government ¡ncome, regional development and social livelihood.
However, in other side local and regional acceleration due to availability of facilities 4S
Table
l.
Percentage of people's livelihood in the research area in 1985.
Profession
D¡srriburion (%) Sub Dist.Kampar Kiri
Sub Dist.Sengingi
52.90 2.36 2.O4
75.75 5.98 1.60 1.94
Others
41.00
14.7 3
Total
100.00
100.00
Agriculture Commerce Government employee
1.70
Fishermen
GENERAL INFORMATION
6.932. ln
OF
general the livelihood are
STUDY AREA
agriculture f ield as seen in Table
Administratively part of study area under the management of Sub District Kampar
RESEARCH METHODOLOGY
Kiri District of Kampar, and the other part under the Sub District Sengingi D¡strict of lndragiri Hulu. The forest area partly
A. LocatÍon
Selection of the area was taken considering the facts that location has to be easily to achieved weather by road and or by the rivers and also relatively close to the villages. Hence analysis of forest land-use changes to the other type can be monitor and worked out.
belong to Forest D¡strict of Bangkinang, and the other part belong to Forest District of Rengat. ln this area there were 5 concession, i.e. PT.Siak, PT. Pertisa, PT.Brajatama I and ll and PT.lndowood. The terrain are flat to mountainous, with a swampy area specially in the right side of Sebayang and part of River Teso area
with an alt¡tude + 143 m above
1.
B. Data collection
sea
level. The soil are reddish and yellowish podsolic and glei humic with sedimentation stone. The climate based on Schmidt and Fergusson classification was Type A with rainfall between 256 272 mm per month.
Primary data are taken during field check
and f rom previous landuse map i.e. general situation map of 1 974, Landuse map of 1982, Agreement of Forest Landuse map of 1984 and aerial photographs of 1 964 as an initial land-use observed. Secondary data consist of
Landuse type are forest, village, public rubber estate, shrubs, swamp areas, dry
social economic and taken f rom Munificial
Forest District, Local
field and others. The forest vegetat¡on
Government,
Cadãster off ice, Planning Board
type dominantly distributed over
the whole area are Meranti lShorea sp), Kapur
and
interview.
(Dryobalanops sp), Keruing (Dipterocarpus sp), Mentangur lCallophyllum sp), Medang
(Litsea sp) Kempas (Kempasia sp) and Rengas lGluta renghasl.
C. Data analysis
About population, registration of 1 985 mentioned that in Sub District of Kampar Kiri number of population were 16.982 and in Sub District of Sengingi were
analyzing data of forest land-use changes are used. To know the tendency of
Descriptive and comparative data land-use changes, some f ormulas used as given below.
óo
in
are
Table 2. Value of carrying capacity factor based on the level of social welfare.
Z value
.20
1
Items
sustenance life, equaled as an income of 240 kg rice per capita per year
2.0o
Better life condition, equaled as an income of 320 kg rice per capita per year
3.0O Better life condition, denoted with possibifity to plant a small rubber estate ¡n the
future
5.00 Better life condition,
1
more properly life
I Regional conception (lsard 1 968 after
material
Warpani 1984)
3) Population Pressure (Myrda, 1968)
M = (P,*n-P,) -N,
Po
PP=Z'tl.L
where:
where
M
PP = Z =
=
P, *
The value of changed area The specific landuse area of the year t+n = The specific land-use area of the year t = The specific area on natural growing population condition without any imgration
n =
Pr Nr
(1 +
r)t
:
Population pressure/ car The value related to an area that required to support of sufficient
living condition. The val of Z as
f = Po = Í -
2) Location quotient/carrying capacity
| =
(Warpani 19841
xlOO% ,^ _ - (NtñftJoo-% '" (Si2/S)
L=
seen in the Table 2. Number of the farmers (%)
Number
of
population
specific period Population rate
at
a
of growth per
yeaf
lnterval rate of calculated (20 years)
Crop area (ha)
where:
LO
Regional carrying capacity to specif
Si = $ = Ni = N
ic
material supply
in
RESULTS AND DISCUSSION
a
region study area
Number
of a
A.
specific mater¡al
Forest landuse
observed
Based on aerial photo 1964, it is known that land cover of the study area can be
number of total material specific observed
classif
number of specific material in a wider region number of total specific material in a wider region
The criteria to decide a valuation was LO
> 1:
LO
the white squares are eliminated
. pixel coded in 10 bits . pixel size at nadir 4.4 km x 3.3 km . number of pixels on one line : 409 pixels I
4.4
r
r3.3
The purpose of the
B Washìngton format including one main
geometric correct¡on is to get an image in UTM projection (Universal. Transverse
header and one header for every line is essential : this gives the necessary data
for geometric and radiometr¡c correct¡ons (resampling of the GAC pixels at 4 x 4
Mercator). The bicubic method was
km). PACKED DATA (Packed image data) have pixels coded on 10 bits and are considered as original data and used for the
geometrically corrected with control
used here. Every NOAA image
is
points. The correction accuracy must be below one pixel in order to get an eff ective juxtaposition between
project.
rmages.
LAC format LAC (Local Area Coveragel data are recorded onboard for a ground
The radiometric calibrations are consisting in correcting responses
transmission. The onboard recorder capacity is lim¡ted to 10 minutes data recorded per orbit. One scanning line is constituted of 2048 pixels, and the pixel
into ref lectance (Visible and Near lnf rared bands) and temperature (lnfrared bands).
resolution is 1.1 km. This imagery is more difficult to acquire; the data archive is not systematic because of the heavy quantity of data to be stocked. ln order to have
A sixth band is created by combining bands 4 and 5 by the formula :
LAC format images, planned recording is
TBand 6 = C4xTB4 + C5 xTB5 + Cox 10 (Spl¡t w¡ndowl
needed.
. .
w¡th TB4 = Calculatod tomperaturo Band 4 TB5 = Calculated tamperature Band 5 C4 = 3,60 C5 = -2,60
pixel coded on 10 bits pixel size at nadir 0.8 km x 1.1 km
Co =
1.1
. .
r----l o.e
i
number of pixels on one scanning line : 2048 pixels IFOV (lnstantaneous field of viewl :
ooerat¡on
ref
erence image
is chosen
and
superimposed with the other images to check the accuracy of the geome-
Preorocessino ooerations 1
2nd ooeration:improvement of image correction
A
2580 km
. st'
2,2O
:
tric corrections. The tolerable shift between two images of the same
:
area should not exceed 1 pixel. lf the
correction
is greater than expected, the geometric correction ¡s performed again with this new value estimated shift
and
calibration
78
of shift. The operation must
pixels coming from corrected monodate
be
images, and having the highest vegetat¡on
repeated until an acceptable result is
index value. This composition minimizes monodate image but does not eliminate completely clouds and haze. Selected monodate images have to be recorded in a period as short as possible. lf not, radiometric values of the composite image would not mean anything.
obtained.
the cloud cover from each
3rd ooeration : making of the composite image with the best monodate images of the same area. The composite image is the result of a combination of several monodate images which need to have all the same number of lines and columns, the same number of bands and the same pixel size. The algorithm used is based upon the maximum of the vegetation index : each pixel (and its values in all bands) in the composite image is coming from the monodate image where the NDVI was found to be the greatest for this particular pixel, in comparison with the other monodate images.
lmages interpretation :
After geometric and radiometric corrections, monodate and composite images are available for each geographical area. lmage enhancement on the composite image are made f or a better display (masking procedure, bands combination,
contrast stretching).
2 and 3 are found to be the most discriminating for the interpretation of the vegetation cover. Band 6 may bring also some useful information but ¡t needs to be corrected by the air temperature to get the ground temperature. But the use Bands 1,
Output data
t Monodate images, when corrected, conslst of 7 bands (when raw images
of thermal bands is rather complex
have only 5).
. the 5 concerned AVHRR bands, . the sixth band is obtained by the combination of temperatures of
lnterpretat¡on of NOAA - AVHRR images is greatly facilitated by using other
sources of information for a "thematic calibration" such as cartographic documents (date of production being similar to the date of acquisition of NOAA images)
NOAA bands 4 and 5, with the Spl¡t Window algorithm. The coefficients
.
in the f ormula ate taking into consideration water vapour in bands 4 and 5. the seventh band is the vegetation index calculated with the standard f
or high resolution satellite
=
band2-band
1
bandl +band2
data.
Furthermore, it has been shown that in the ¡nterpretation process based on a barycentrlc classification algorithm, the selection and the delineation of training
ormula:
NDVI
and
hazardous in a composite image.
areas for NOAA imaoes
is the most important step
f
or
carrying out reliable results. Thus, the knowledge of the main types of vegetation in the Region is a prerequisite f or achieving results with a suff icient accuracy. This required ground knowledge is provided by the training participants
.
The composite ìmage lcomposed of I bands): . the 7 first bands of the monodate images which have the maximum value in NDVI, . band I gives f or every pixel the
who have a strong experience of their country.
number of the monodate image where it comes from (1 to 5 if 5
At last, the results are
evaluated
on
sample areas which were not used for the
monodate images have been involved in the composition).
interpretation
of
NOAA images. Those
sample areas may be provided by the high
resolution satellite data set which can be
The composite image is a patchwork of
7S
considered as reference data.
the land-cover classes
-
The link between the low and the high resolution satellite data is presented in Figure 4. The global study is airning at
comparison with existing reliable staof 1980 - 82 lf or instance: FAO 1 982 Forest Resources Assessment) on a country by country basis.
tistics
stratifying the main types of forest cover and at monitoring the global changes. The detailed studies using SPOT or Landsat data are carried out for the calibration and the validation of the global study. The location of the scenes presented in Figure 4 was made on random for the purpose of the f igure. The exact location of the
The deta¡led studies
:
Two sets of high resolution satellite data ate being purchased for the deta¡led studies. One is still in progress for the
scenes is not yet fully decided. lt can be noticed that nine sites have been already
calibration and the validation of the global
selected (Figure 5), but those detailed
study (par.2.1).
studies have other purposes (see par. 2.2) and are more training oriented.
lnteroretation leqend
overall statistics of deforestation by
The second one is directly pertaining to the training of national experts (Figure 5). Nine sites have been already selected and
are corresponding to two sites
:
To allow a proper
interconnection
data were acquired and visually interpreted by the tra¡ning participants. The interpretation legend, based on the FAO classification, is leading to the following
between the detailed studies and the global study, the interpretation legend of NOAA - AVHRR data is hased upon the FAO classification used for the "Forest Resources Assessment 1 990" Project.
classes:
-
The discrimination of the classes are based on the physiognomical characteristics of the forest cover.
-
The main classes will be:
-
- continuous forest - mosaics of forest and other land cover - cultural areas - other land covers (water, clouds...)
The interpretation of the eight geographical areas will be merged in a single document. This draft of the 1 990 forest state map will be evaluated by the Asian partners of the project on a country by
Scrubs
Water
Other land covers
which occurred on the nine selected sites,
additional high resolution satellite data (SPOT, TM or MSS) acquired at different dates with a significant time lag will be purchased. The national experts will be directly involved ¡n the interpretation of this new set of data. Statistical tables of the land covers will be performed for both sets of data and a change matrix will be derived from the crossing of the two sets
The final output products shall be:
statistical tables on the total areas of
cover Fallows
To assess the changes of forest covers
be performed.
-
Fragmented f orest (mosaics forest/other land coverl Man-made woody vegetation
mechanism of def orestation.
country basis. Then statistical figures will
global map
Closed forest (cc > 40 %l Open forest (cc 1O - 40 %l
The detailed studies help in the understanding of the deforestation process. Based on specific examples, they show what are the causes, consequences and
Final results :
-
per
country (except three for Malaysia). SPOT
of the forest cover at 1:2,000,00 carried out from the interpretation of NOAA-LAC 1990 data.
of results.
80
REFERENCES
CONCLUSION
The spectral bands of
Ducros-Gambart D. and GastelluEtchegorry J.P., 1984: Automat¡c analysis of bi-temporal Landsat data: an application to the studY of the
NOAA-AVHRR
radiometers were originally planned for
meteorology. Therefore,
they do
not
provide the optimum inf ormation f or vegetation monitoring because of their bandwidth. Their low spatial resolution has to be added to this shortage in spectral resolution. NOAA data will ¡ot
allow any
identif
ication of
evolution of vegetation-covered areas
in a tropical region, Proc. FAO/UNEP, 1 981
detailed
: Forest Resources
Assessment Pro.iect.
phenomena, such as transition areas or encroachments areas within the forests. But at this point, there is no similar tool for global monitoring of the vegetation. Seasonal or irreversible changes occurring on large extent can be detected by NOAA satellites. lts repetitivity is a powerful mean to solve, at least partially, the problem of cloud cover. And it has been
Gohin, F.; Delmas, R. and Legentil, S., 1988: Logiciel de Traitement d'images NOAA, unpublished report, IFREMER/
crsr. Laumonier Y., 1983: lnternational map of
the Vegetation, scale
shown that with NOAA-LAC data a relevant classification can be achieved
:1
,000,000;
sheet southern Sumatra;
BIOTROP,
1
Bogor, lClV, Toulouse.
regarding the deforestation process. This
is
IGARSS,
187-192.
Laumonier, Y.; PurnadjaYa, P.; and Setiabudi, S.; 1986-1987: lnternational map of the Vegetation, scale 1:1,000,000; sheet central Sumatra (1986); sheet north Sumatra (1987);
especially true when external data
(topographic, climatic...) are integrated in the interpretation process through Geographic lnformation System facilities.
BIOTROP, Bogor, lClV, Toulouse. For the next decade, NOAA-AVHRR data can be considered as a reliable tool for a regular monitoring of the vegetation on a two to five years basis (Figure 6). The detection of changes will always be facilitated by the use of high resolution satellite data for the calibration of NOAA data and for the validation of results.
SCOT CONSEIL, 1990: Les Prétraite-
ments d'images NOAA Pesket) version
1
.1
(Logiciel
.
SCOT CONSEIL, 1991, The SEAMEOFrance Project : the Sumatra Pilot Project, Methodological Test.
So Thirong Patrick, Juillet The be'st wish we could have for the future Ñhe development of new tools with a better spectral resolution. The methodology could be still improved and
the
SEAMEO-France
Project
1
991
:
Potentialités des données NOAA-LAC pour une reconnaissance des végéta-
tions de I'Asie du Sud-Est'
Essai Mémoire sur Sumatra' méthodologique de 3ème année, ENITEF.
mainlY
Whitmore, T.C.; 1985: TroPical
oriented to the transfer of know-how as well as its trained national experts would take very much benefit of it.
forest of the far East, University Press, New York.
E1
rain
Oxford
SEAMEO-FRANCE PROJECT
no
\._-_-.-.-.-
\ù2
$Çèe)ñ
! ! I
i
rl
DETAILED STUDIES
GLOBAL STUDY
-STRATIFICATION OF THE MAIN FOREST COVER TYPES -GLOBAL CHANGES MONITORING : DEFORESTATION, CATASTROPHY, FIRES. FIGURE 4
82
I I
DETAILED STUDIES USING SPOT DATA CARRIED OUT BY NATIONAL EXPERTS les
Ø
Malaysia
\r D
-o.A
\
¡
'o\
\
C-
\
Èó
Oñ {^ J\
lndonesia
_.^=\: :ccgr*r_
t
rvr
=O_7fr,J
SEAMEO-FRANCE PROJECT FIGURE 5
SEAMEO-FRANCE PROJECT
LOW RESOIUTION SATELLITE DATA (NOAA-AVHRR I-A,C) LOW RESOLUTION SATELLITE DATA (NOAA-AVHRR LAC) LOGICAL CROSSING CÀTIBRåTION
CHANGES DETECTION AND STATISTICS
EIGE RESOLIITION SÀTEI,T,ITE DÀIÀ
t ¡tss, sPoT)
84
USING 1 KM RESOLUTION SATELLITE DATA TO CLASSIFY THE VEGETATION OF SOUTH AMERICA Thomas A. Stone Peter Schlesinger PO Box 296 The Woods Hole Research Center Woods Hole, MA 02543, USA
ABSTRACT
Until the completion of this project there have been no other continental-scale land cover classification maps created from I km resolution satellite data. The objective of this work was to build such a map in a digital format by relying primarily on National Oceanic and Atmospheric Admin¡stration (NOAA) Advanced Very High Resolution Radiometer (AVHRR) Local Area Coverage (LAC) sateilite data. The advantages of such a map over conventional 'maps are the ease of continuously updating the map as new data are acquired (daily if requiredl, its convenience for use in modelling, and its ready compatibility with other digital continental-scale data bases such as soils, potential vegetation, climate anomalies, cloud cover percentage. The digital map's primary intended use will be to stratÌfy South America into zones of intensity of recent deforestation to allow the construction of a sampling scheme for the purchase of hígher resolution data from the Landsat and SPOT satellites. The created land cover digital map of South America described here is a unique product that has specific advantages and disadvantages compared with other continental-scale land cover maps of South America. lt has been created solely from satellite data and therefore is
relatively consistent from country to country. The individual classifications were completed objectively; all are based on the digital data from the NOAA AVHRR satellites. The labellìng or naming of the c/asses has been done in a manner that relied upon numerical data on vegetation vigor which was related to leaf cover and rate of growth, on elevation, on vegetation seasonality determined from the satellite data, on visual pattern analysis and by interactive examination of continental and national-scale vegetation maps and atlases. Estimates of the area of 39 land cover vegetation types are presented for the continent and estimates of more generalized land cover are presented for all countries of South America.
is due to uncertainties in the rate of land clearing and conversion and in the amount
INTRODUCTION AND OB.JECTIVES
of
carbon
or
biomass
in the
original
vegetat¡on. Understanding the terrestrial components
of the global carbon cycle knowledge about the location
There have been many studies using remotely sensed data to def ine the locations and the rates of tropical
requires large-
of
scale current land use change. For ¡nstance, it is estimated that tropical deforestation accounts for 1.1 to 3.6 X 1015 g of carbon released to the atmos-
deforestation in many regions aroundJhe world (Nelson et al. 1987, Malingreau and Tucker 1987, Woodwell et al. 1987, Green and Sussman 1990, Stone e¿ a/. 1 991 ). A f undamental drawback to these
phere yearly in the form of carbon dioxide
(Houghton 1991 ). The range of estimates
8ó
studies was that they were regionally specific and, to date, have not allowed scaling to continental or global estimates. The objective of this work was to build a continental land cover map in a digital f ormat by relying primarily on NOAA AVHRR LAC satell¡te data which would provide a basis for stratification of the continent for later more detailed analysis with higher resolution satellite data.
km2 at the equator. A digital potential vegetation map based on the theoretical concepts of L. R. Holdridge was also available. About 50 other reg¡onal maps, national-level atlases, and maps of vegetation f or various locations and dates
were available. A list of maps and atlases are available from the authors. For this project we assembled NOAA 9, 10 and 11 AVHRR LAC satellite imagery data of South America. These satellites
Previous continental-scale estimates of
the amount and rates of
acquire digital reflectivity and emissivity data from the surface of the earth from
deforestation (FAO 1 981 a,b,c, WRI 1 990, Myers 1 980,
the visible red (0.58 - 0.68 microns), near-infrared (O.725 - 1.1 microns), mid-
1 989) have not been presented at a subnational level and have not allowed assignment of carbon values to the land clearing that has occurred. ln short, they have not been spatially specific. More recent United Nations' FAO national and continental estimates of land cover (FAO, 1987) include only 5 categories; land area, arable land, permanent cropland, permanent pasture, and forest and wood-
infrared (3.5 - 3.93 microns) and thermal ( 10.3 - 11.3 and 11.5 - 12.5 microns)
portions of the spectrum (Kidwell 1988).
The LAC data is approximately 1 .1 km resolution at nadir. We purchased 34 tapes of which the majority were from 1988, the year of primary focus for this project. Because we did not have cloud-
lands. New estimates of the rates of tropical deforestation for 1 990 are due this year from the FAO's Forest Assessment 1990 Project.
free 1 km resolution LAC data of all South America, a three year weekly data base of 15 km resolution Global Vegetation lndex
(GVl) data from NOAA (Kidwell 19881 was utilized in the place of the 1 km data. All the AVHRR LAC data for this project
Developing the 1 km data base of South American land cover allows us not only to define areas of recent forest clearing but also to more closely define the probable
was purchased from the US Geological Survey's (USGS) EROS Data Center (EDC)
in Sioux Falls, South Dakota.
vegetation covers being affected by man's increasing role in the management
and alterat¡on of natural systems.
Because the map produced f rom this work was based primarily on the classifi-
METHODOLOGY
cation of satellite data, it is f undamentally different from typical vegetation maps.
We first divided South America into 75 classes of vegetation based on their seasonal patterns of vegetation activity using 15 km resolution NOAA GVI data.
AVAI1ABLE MAP AND SATETLITE DATA
GVI data is the only current
The number of continental-scale maps of the vegetation of South America are very limited. We had available for this effort only two at a reasonable map scale. These were the UNESCO Vegetation Map of South America at 1:5,000,000 scale (1 980) and Hueck's Vegetationskarte Von Sudamerika at 1 :8,000,000 scale 11 97 2l,.
A digital land cover map of
AVHRR
product with global coverage. The primary advantage of using this data set was that it enabled us to analyze t¡me series of vegetation indexes and to look at vegeta-
tion phenology globally. Again, th¡s data were to be used if there were no 1 km resolution (LAC) data available and also to aid in the interpretation of the available 1 km resolution data. The phenology information was not available from the 1 km AVHRR data used in creating the mosaic as each region classified with LAC data were based on imagery from one or two points in time.
South
America by Matthews (1983) was available but has a resolution of about 100O
86
Classification of the NOAA GVI Data
the resulting 75 classes had similar vegetation phenology and vegetation index values. The majority of the classes were then labelled interactively using the UNESCO vegetat¡on map (UNESCO 1981) as a guide and by examining the seasonality of the classes. Some 42 of these 75 classes based on the 1 5 km GVI seasonality data were satisf actorily labelled. These 42 classes covered 947o
The satellite data used were weekly NDVI of the globe covering the years 'l 986, 1987, and 1988 purchased f rom NOAA. The vegetation index was created by subtracting Ch. 1 or visible red data from Ch. 2 or near-infrared (NlR) data and then
normalized
by dividing by their sum.
Because healthy vegetation reflects light strongly in the NIR and absorbs strongly in the visible red portion of the spectrum the NDVI is a reliable indicator of vegetation vigor or rate of growth (Holben et a/. 1981, Tucker et a|.1980). The data are produced by NOAA by selecting thê max¡mum daily vegetation index for the week and retaining it to represent the weekly NDVI. NOAA produces as a standard product weekly NDVI composites at the
of the continent. The estimates of forest area based on the GVI data showed good agreement with other continental estimates and will be described in more detail in a forthcoming paper.
Classification of the NOAA AVHRR 1 km LAC Data
global scale. The data was at 15-2b km
in a
Plate Carre projection,
extending from
75' North to 55" South
resolut¡on
At EDC, the AVHRR data were converted rom the original 10 bit format to an 8 bit ormat, corrected f or radiometric and atmospheric effects and provided to us rectif¡ed to a latitude-longitude grid. The AVHRR data were rectified to match the f
f
latitude.
The NOAA values for the NDVI were
re-
World Data Bank ll national and coastal boundaries. ln addition, all the boundaries of the Brazilian slates were digitized. This
calculated back to a more typical range of values -0.1 to .63 by taking the formula f rom Kidwell (1 988) and inverting it. Unity or one was added to the value and
then multiplied by 100 to yield values
the range of 80 to 1 80. Then,
allowed us to select and analyze one country or state at a time. The advantages of this technique are that the data-
in
the
maximum value of the NDVI from each
sets being analyzed are a manageable size fit the regions
week was used to represent the month for each of the three years. Each of the three values for the three years for each of the'l,2,months were then averaged to produce a global image consisting of one band for eách of the 12 months with an average value for each pixel for each
month. A mask of values of zero
and the map resources
being analyzed. The disadvantage of this method are the creation of artificial discrepancies at the borders of states and national ent¡t¡es. Bands 1 , 2, 3 and 4 of the LAC data were read into the ERDASTM system and the upper left hand corner of the image was assigned a specific latitude and longitude. All pixels were specif ied to a dimension of
was
used to remove oceans and major bodies of water from the data set.
From this data set the South American continent was extracted and classified. We performed a principal components (PC) transformat¡on on the 12 bands
0.0089932 decimal degrees which is 'l 000 m at the equator. The region of interest was then extracted from the full
8
image using an appropriate polygon file. To create an image suitable for a classification clouds were removed.
bands of the principal components image which contained about 960/o of the variance of the full 1 2 bands of data. The
We used the CLUSTR program to do an unsupervised classification and create 50
(months) of data. An unsupervised classi-
fication was then done on the first
15 km resolution GVI data set of South America was sorted into 75 classes with
to
10O classes. We used the smaller value (50) if the region was small and contained few remnant clouds, smoke or shadows or the larger value (100) ¡f the region was large or complex. This was done for as
an unsupervised clustering algorithm called CLUSTR from ERDASTM (ERDAS, 1990). Consequently, the elements within
87
many different images of a region that
Any remaining holes in the
were ava¡lable. We prioritized the satellite images used by choosing first, the image most cloud and smoke-f
ree and closest to nadir
classif ied
region due to unavailable cloud-free 1 km LAC data were patched or filled with the classif ication based on the 1 5 km resolution GVI data. Again this operation was order dependent so the h¡gh resolution
and
classification (1 km scale),
second, how recent the image was. This
if
available,
process, generally resulted in several classifications of a region from different dates. These classifications were then
was added last and overwrote any classification based entirely on the GVI data.
superimposed or stitched together in the order worst to best so that the best pixels would be the last included in the final LAC classification and would overwrite any other pixels in the same geographic location.
Direct comparison our 39 land cover classes to other continental-scale estimates of land cover was not useful because of the variety of classif ications schemes and the f undamental differences between classif ications based on remotely sensed data and more typical land cover classif ications. To f acilitate intercomparisons, we combined the 39 land cover classes into 1 3 broader groups described in Table 2.
For each class def ined f rom the LAC data labelled them according to the following five steps. First, we determined
we
the mean NDVI of the class. Second, we determined where the NDVI stands in relation to the year-long phenology curves
as defined from the 15 km GVI data. Third, the class was compared with any map, atlas or ancillary information. Our primary reliance was on the UNESCO vegetat¡on map (1 980), but if a more detailed national vegetation map was available, then that was used as the
RESULTS Both country level and continental-scale values for the 39 land cover types were generated, Because of the inherent distortion in the original project¡on, particularly at higher latitudes, the projection of the output was converted to Lambert Conformal Conic.
primary source. Fourth, we determined if
there were recognizable spatial patterns which might indicate agriculture, pasture, or cultural features (roads etc.). And fifth, the data was reclassif ied to assign the 50 to 100 classes into a f ew meaningf ul
ïable 1 shows all 39 land cover classes for South America determined from this
ones. This last step was the most subjec-
study ranked by size. lt was important to note that many of the categories contain possible overlaps with other categories particularly if the land cover categories
tive and was largely a function of the analyst's interpretation guided by the information generated f rom the preceding steps and the relationship to data across
are the result of anthropogenic inf luences.
borders.
Shown in Table 2 are country level estimates of the generalized land cover types or groups described above. Brazil, not unexpectedly as it is the largest country in South America, has lost the greatest area of both closed and tropical moist forest. But, not only has it lost the largest amount in an absolute terms but also as a percentage of its total forest. The amount of tropical moist forest recently cleared in Brazil was 12o/o wiTh the majority of the
Thirty-nine f inal land cover classes, def ined in Table 1 , were created as the classification proceeded. Generally, the countries w¡th montane environments were the last to be examined so the montane classes were the last to be defined. Although the primary reliance was on the UNESCO map (UNESCO, 1 98O) classif ication scheme, national maps took precedence in creating some of the labelled classes. Many classes contain obvious overlaps. Within a particular region only a f ew classes,
change in Amazonia and in the Atlantic Coastal Forest. Large losses of closed
forests are also seen in Chile, Bolivia,
generally less than six, could be defined.
Peru, Colombia and Surinam. We estimate
88
Table 1. Gontinental-Scale Estimales of Land Cover, Soñed by Size.
't7,680,200 1,7æ,sn
89
Table
2. Results by country of generalized landcover typ€s for south America from th¡s work.
Becently Closed Trop. Degraded Moist Forest TMF
1.2
Argentina Bolivia
3
Brazil
Degraded
Degraded
519.7
179.4
Chile Colombia
Ecuador
Snow,
Desert,
Closed Closed Degraded Savannah, Savannah, Scrublands, Bare Rock Forest Forest Woodlands Woodlands Grasslands Grasslands Shrublands Soil Water lce Other 0.0 96.8 0.6 755.4 232.4 894.0 37 e 34.0 31.4 35,7
115.5
1.7
12
126.0 1.4 3/s.l
2.5
1285
o.o
o.o
o.o
0.0
Total 2,779.8 5
Fr. Guyana @
Guyana Paraguay Peru
Surinam Uruguay Venezuela
--
TOTAL
0.0
o.2
415.5
9.9
5,909.9 563.4 6,530.7 1,803.7
Unclassified
N.B. AII Values in
3.0
0.0
5.9
33.9 3,109.8
666.9 2,642.0 808.5
1,080.6 331.7
163.2
¿t8.9
2'17.2
17,403.1
313.0 1,0O0s of Sq. Km.
'TMF'includes Tropical Moist, Semi-deciduouE and Gallery Forests "Grasslands' include those seasonally flooded -Closed forest' include TMF, Montane forests, Cool and Temperate Deciduous Foresls and Tropical Seasonal Forests 'Degraded grasslands' lnclude Agricuhure 'Desert, Bare Soil'include inland Salt Marsh communities 'Othe/ includes wet vegetat¡on and mangroves Although not presented here, Brazil can.be subdivided to the slate level
that Brazil has lost or degraded at least 31V" of its total original closed forest while Chile appears to have lost or
sure exists.
We developed reliability rat¡ngs f or all country level classifications and for the large states and regions within Brazil. Three categories of data, LAC data quality, 1 5 km data quality, and ancillary map data quality, were rated by assigning values from 0 to 'l 0 (worst to best). For LAC data, distance from the nadir of the
degraded about 18%.
Major losses or degradations in woodlands are seen in Brazil (18% of national woodlands lost or degraded), Bolivia (23% lost or degraded), Peru (47% lost or degraded), Paraguay (2Oo/o lost or degraded), Venezuela, 154% lost or degraded) and Chile (28o/o lost or
image(s), smoke and haze content, age of
the data, presence of shadows, data noise were rated with the 0 to 10 scale,
deg raded).
and then multiplied by the percentage of the region covered by LAC data. For the
From the work shown here we have estimated that about 9o/o ol the closed tropical moist forests of South America has been cleared recently, perhaps within the last 10 years. Also about 22o/o of The
15 km GVI data ratings were assigned to whether or not the region was classif iable with the 15 km GVI data and whether the classification was a major or a minor one. For the ancillary map data, the quality of the relevant national map or atlas, the similarity of the national map's vegetation classification scheme to the scheme developed in this work, and the age of the nat¡onal map or atlas were all rated. Extremes in each of the three categories result in ratings of 0.0 and 1 .0. Each of the three categories was weighted so that the quality of the LAC data was responsible for 50% of the score, the quality of the 1 5 km classification was responsible lor 1Oo/o of the score and the quality of
closed f orests of South America have been cleared or degraded as have about
19Vo of the woodlands and about 25% o'Í
the grasslands. The
largest losses in absolute terms have occurred in Brazil except in the grasslands category where
the largest amount of degradation was seen in Argent¡na. Comparison of the,results shown here with the work of others will the focus of future work.
the relevant national map or atlas was responsible for 4Oo/o of the score. The mean reliability rating for the entire map was .69 out of a possible 1 .0.
ACCURACY AND RELIABILITY OF RESULTS
It is clear that a more rigorous accuracy
To determine th¡s map's accuracy, one might consider comparing it with other maps; however unless the reference or "ground truth" map is known a priori to be of higher accuracy than the new map,
assessment scheme is needed as we have made numerous assumptions about data quality, geometric accuracies, projections and other map qualities.
the accuracy of the new map cannot be determined. We know of no continental-
coNclusroNs
scale map that was necessarily more accurate than the one that we have produced. Undoubtedly some of the national-scale maps (eg. Venezuela by Huber and Alarcon, 'l 988) are more
The land cover digital map of South America described here is a unique product that has specific advantages and disadvantages compared with other continental-scale land cover maps of South America. lt allows rapid updating as new satell¡te data becomes available and its d¡gital format allows ease of use in modelling. lt has been created solely f rom
accurate than the map produced f rom this
work and could be used to assess accuracy at the national-scale for those countries where such maps exist. Combining these national-scale accuracy
estimates into a
cont¡nental-scale
estimate assume some form of intercomparability between maps that we are not
satellite data and therefore is relatively
91
consistent from country to country. The individual classifications are done objectively based on the digital data from the NOAA AVHRR satellites. The labelling or naming of the classes has been done in a manner that relied on numerical data on vegetation vigor which was related to leaf cover and rate of growth, on elevation, on vegetation seasonality determined from
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the satell¡te data, on visual pattern
Tecnico 1, FAO, Rome.
analysis and by interactive examination of cont¡nental and national-scale vegetation
FAO/UNEP, 1981b: Forest Resources of
maps.
Tropical Asia, United Nations 3216.
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FAO, Rome.
13O1-78-O4, Technical Report 2, FAO/UNEP, 1981c: Forest Resources of Tropical Africa, Parts 1 and 2, United Nations 3216.1301 -78-04, Technical Report 3, FAO, Rome.
that 9% of the closed tropical moist f
orests
of
South America have
been
cleared recently, ThaI 22o/" of the closed
orests
FAO, 1987: Magnetic Tape from FAO,
of
South America have been cleared or degraded as have 18% of the woodlands and 25o/o of the grasslands.
f
Untitled, Rome. FAO, 1985: 1984 Production Yearbook, FAO, Rome.
The methodology described in this paper represents a first attempt at producing a continental-scale digital map based on 1
Green, G. M. and Sussman, R.W., 1990:
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km resolution satellite data and represents
an order of magnitude improvement in available continental-scale land cover mapping f or South America. Similar
215.
products could be produced for all regions of the world with defined accuracies if funds were available to use higher resolution satellite data such as that from Landsat or SPOT to produce a continental-scale sample of imagery data for use in an accuracy assessment. A preli-
minary version
of this digital map
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Center,
Washington, DC. Malingreau, J.P. and Tucker, C.J., 1987: Large Scale Def orestation in the Amazon Basin. Ambio 17(1):49-65.
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World Resources lnst¡tute, 1990: World Resources 1990-1991. Oxford University Press, New York, 383 PP.
G.M. 1991: Eslirnatas, By Remote Sensing, of Deforestation in Central Rondonia, Brazil. Forest Ecology and
93
CALIBRATING AVHRR DATA WITH LANDSAT TM DATA FOR TROPICAL CLOSED FOREST ASSESSMENT IN GHANA Risto Päívínen Juho Pitkänen University of Joensuu, Faculty of Forestry P.O. Box 1'l l, 8OlOl Joensuu, Finland
ABSTRACT
The calibration method for tropical closed forest cover a.ssessrnenf using Advanced Very High Resolution Radiometer (AVHRR) and Landsat Thematic Mapper (TM) data was tested. High-resolution satellite data is used to calibrate the coarse resolution AVHRR data for estimating class proportions within a single AVHRR pixel. The study area was one guarter of TM image in western Ghana. The TM data were ctassified into forest and non-forest classes using ground information and a supervised maximum tikelihood classifier. lroportions
of forest on the TM classification
were calcutated for each coregistered AVHRR pixel corresponding to the area of 33 bV 33 TM pixels. Relationship was determined between forest cover and AVHRR spectral signatures using multipte regression. Regression model was applied and tested for a quarter of other TM image.
pixels have mixed spectral
INTRODUCTION
response
which may lead to biased estimates of forest cover.
One possibility to overcome
Advanced Very High Resolution Radiometer (AVHBR) data of NOAA satellite have been used for large scale assess-
these problems is to estimate class proportions rather than a class label for a single pixel. Linear mixture modelling has been tested for tropical forest cover assessment using AHVRR data by Cross et a/. (1991). ln this method, 'pure' sites of each class of interest are identified, and signatures for these are defined. These 'endmember' signatures are ends of the continuum in spectral feature space. lt is then assumed that the spectral signature of a mixed pixel is a linear combination of the signatures of 'pure' sites, and it varies
ment of tropical f orest extent 1990, Päivinen et
(Cross â1. 1991) and defores-
tation (Malingreau et al. 1989, Malingreau and Tucker 1987, Woodwell et al. 1987, see also Sader ef a/. 1990) with encouraging results. The low data volume, due to the coarse resolution, and low cost of AVHRR data are advantages over Landsat and SPOT data in large scale mapping. ln tropical areas the daily coverage of the AVHRR data is also useful in order to
increase
the probability of
with the relative proportions of
obtaining
cloud-free data. The coarse resolution
(1
.1 km at nadir) of
the AVHRR data causes also
problems:
details of vegetation patterns are lost and
some misclassifications are obvious
ground
classes. Thus, the class proportions for a mixed pixel can be defined according to the position of the signature of the mixed pixel along the continuum in spectral
feature space.
in
heterogeneous areas. Forest or non-forest patches less than a pixel size and edge
ln another variation of mixture modelling remotely sensed data are calibrated using
95
ground or other measurements to provide est¡mates of vegetation cover with¡n the pixel. lverson et al. (1989 a,b) used this method for forest cover assessment in
Closed forests are typically dense, tall (up to 40 m) and have several canopy layers. Cocoa plantations are cleared f rom closed forest and have usually an upper storey of tall forest trees with crown coverage from
the central and southeastern USA with AVHRR and Landsat Thematic Mapper (TM) data. The classified TM image was used to determine the relationship between forest cover and the spectral signature of AVHRR pixels covering the same location. The relationship was
5 to 30 % to shadow the
cultivation.
Cocoa trees are 5-8 m tall, and the crown cover of cocoa is from 70 to 10O %.
Areas cleared f or diff erent kinds of agriculture are usually burnt, cultivated for some years and then left as fallow for some t¡me. Forest fallow refers to the area which is cleared so heavily that it
determined using multiple regression, and
the regression equat¡on was then applied
to the ent¡re AVHRR scene.
cannot be considered as forest anymore.
ln suitable conditions and without any urther disturbance, it can develop to
ln this study, the calibration method ¡s tested for tropical closed forest cover assessment using AVHRR and TM data. The TM data are classified to forest and
f
secondary forest.
non-forest classes, and regression analysis is used to derive an empirical
The ground truth information for the TM classif ication of the study area was
classification, from the calibrated AVHRR
collected during a field trip to Ghana 1 9.1 .-1 3.2.1 990. The ground truth sites were first located on the Landsat TM color composites and then in the field. More than one hundred field sites were
data and from the trad¡t¡onal AVHRR
assessed and assigned
relationship between AVHRR spectral signatures and the percentage forest
cover on the classif ied TM image. Estimates of forest cover from the TM
to vegetat¡on or land use classes with the assistance of
classification are compared.
experts from local forestry
and
environmental agencies. The classes and
the number of field sites in each class were as follows:
THE DATA
The study area was one quarter of TM image (path/row 199/55, quad 4, 20 Dec
-
1986) in central Ghana, west of the town
of
Kumasi. The
test area was f rom
adjacent image (194155, quad 3, 29 Dec 1986). The TM images were cloud-free,
but channels 1 , 2 and 3 were of poor quality because of str¡ping and atmospheric effects. lne RvHnn data
closed forest
(>40
7o crown
coverage)
39
forest fallow cocoa plantation fallow
34
agriculture
16 27
I
METHODS
used were from a local area coverage (LAC) scene of the NOAA-g satellite
The field sites were located on the TM image for tra¡ning sites and verification areas. Some additional training sites were also selected to represent urban areas (towns, villages and roads). Before the TM image was classified, separability of the spectral signatures of the land cover classes was studied.
collected 13 January 1987.
ln this area the remaining closed forests are in managed forest reserves, which form clear blocks. Outside the reserves most of the land is used for agriculture and agro-forestry, especially for cocoa plantation. ln Figure 1 , a subset of closed f
orest map derived using
supervised The TM scene was classified for selected land cover classes using a supervised maximum likelihood algorithm. Only
classification of AVHRR data (Päivinen et
al. 1991) is
presented, including the coverage of two Landsat TM quads used in this study.
channels
96
4, 5 and 7 were used. About
Fígure 7. TheTMscenesof thestudy(195/551 andtest(194/55) areasaredepictedinthe closed forest map derived using supervised classificat¡on of the AVHRR data (black = closed forest, dark grey=agriculture and agro-forestry and light grey=savannal.
one half of the field sites were used for
the
ication, and
calculated
f
or each AVHRR pixel
in
accuracy was tested against the other
corresponding area of TM pixels. ln other words, the TM classif ications were
half
converted to forest proportions maps.
classif
classif ication
.
The TM classification of the test area was obtained from an earlier study (Päivinen e¿ al. 1991) and it was based on few field
Every fourth line and fourth column of the AVHRR pixels of the study area were used to derive an empirical relationship between channel values of AVHRR pixels and percentage forest cover on the TM
plots and maps.
ln the next stage, the AVHRR data were coregistered to the classified TM images,
classif
ication. Correlations
between
AVHRR channel values and percentage
so that a single AVHRR pixel covered the area of 33 by 33 TM pixels. The study site was now covered with 86 by 89 AVHRR pixels, and the test s¡te with 91 by 89 AVHRR pixels. ln the final adjustment of the coregistrations, correlations betwèen AVHRR channel 2 and TM channel 4, and AVHRR channel 3 and TM
f
orest cover were analyzed, Multiple
regression was then used to derive a model to predict forest cover from the spectral response of the AVHRR pixels.
The regression model was applied to all AVHRR pixels of the study and test sites, and estimates of forest cover iq both areas were calculated as an average of the estimates of sìngle pixels. Also, correlation coefficients were determined
channel 5 were employed. The percentage of forest cover was then
s7
on a pixel-by-pixel basis between
The signature analysis of the TM data of the study site indicated that there was spectral overlap between the land cover
the
estimates of AVHRR forest cover model and TM proportions maps.
in the field (Figure 2). Class pairs cocoa plantation/ forest fallow classes defined
For comparison, total f orest
cover estimates were calculated for the study
and test areas from the
and agriculture/ fallow were almost totally
supervised
overlapping, and both of these pairs were to one class, when the TM
maximum likelihood classification of the AVHRR data. This was done by coregistering an earlier made closed forest map (see Päivinen et al. 1991) to the TM
combined
classif ications.
cocoa/f orest f allow and f allow/agriculture)
image was classif ied. However, clear still existed between three
overlapping
main cover classes (closed
f
orest,
after combination.
RESULTS
c)
c H
5
70
cll4
2. The signatures of the land cover classes in TM channels 4 and 5, presented as 90 isoprobability curves derived from covariance matrices. Class means are depicted by the locations of the abbreviat¡ons (closed forest CF, forest fallow FF, cocoa plantation CO, fallow FA and agriculture AGl. Figure o/o
The classified TM image was smoothed by 3 by 3 pixels modal filter algorithm in order to meet the minimum area unit of 0.5 hectares. The classification accuracy
Table 'l , because it was of minor importance (cover < 1o/ol. Approximately 85% of the reference pixels were found to be classified correctly. The area of closed forest was overestimated 2 lo, and the area of forest fallow/cocoa was similarly
was tested against the f¡eld sites, which were not used for classif ication (Table i ). Land cover class 'urban' was classified totally right, but it is not presented in
underestimated.
98
Table 1. The classification error matr¡x (per centl of the TM classification tested against the
classified pixels of 59 field sites.
clæsification CF
reference
FFlCO
27.9
4.4
6,2
31.3
34.1
2.4 38.1
All channels of AVHRR were significantly correlated with the percentage f orest cover on the TM classification. AVHRR channels 2 and 3 had the highest corre-
lation
coeff
icients
(-O.7
=
ao
roo.o
Stepwise regression method was used when selecting a model to predict forest cover over an AVHRR pixel. The selected regression model was of the form
+ ar(255-ch3-ch2)/(25b-ch3+ch2) + ar(2bb-ch3)/ch2 r2
of 0.7b and
forest percentages from the TM classifications and the AVHRR f orest cover model are presented in Figures 4 and 5.
root mean square error of 18.7. The model was then applied to all AVHRR
pixels in the study and test areas. The correlation coeff icient between the est¡mates of AVHRR forest cover model and the TM proportions was 0.86 in the study area, and 0.67 in the test
Compared
to the
AVHRR classification
(Figure 1), regression model produces smoother forest map than class labeling method, but the TM forest percentage map lies somewhere in the middle of these two approaches. The overestimation of the forest cover in the test area is
area.
Estimates of total forest extent in the study and test areas obta¡ned from
due to high coverage of non-forest area, where the model is producing some forest cover for almost all pixels.
different methods are presented in Table 2.The estimates differed from each other less than 3 %. Pixelwise estimates of
2.
27.7
centages associated with the values of 2 and 3 are presented.
4 and -0.69,
The model had an adjusted
Table
40.o
t 25.3 -------¿-27.8 |
AVHRR channels
respectively) and AVHRR channel b the lowest (-0.55). ln Figure 3, the forest per-
CFo/o
32.3
25
Estimates of closed forest cover in study and test areas
forest cover,
study a¡ea
%
test
area
TM supervised classification
32.1
14.5
AVH RR supervised classif ication
29.7
13.6
AVHRR regression model for forest cover
31.O
16.1
99
CF 100
90
fl) 70
60
50
() g)
n 10
0
CF
ïl ;J
"."':
]'r'i"
ooo
o'3¡8.
"."ss":3;":
s:::::;s: ".:.t;.;fl1"ö
tto "o
go
."i;;iåiii! 100
¡lså,¡: 1æ 1Æ 1æ 135 cH3
3. Closed forest percentage from the TM classification ly-axisl for every 16th AVHRR pixel in the study area plotted agaínst the pixel values of AVHRR channels 2 and 3.
Fígure
100
Figure 4. Forest proportion maps in the study area derived from the TM classification (leftl and from the AVHRR forest cover model (black = lOOo/o forest cover, lighter = decreasing forest cover and white = no forests).
Figure 5. Forest proportion maps in the test area derived from the TM classification (left) and from the AVHRR forest cover model.
101
DrscussroN
lverson, L.R.; Cook, E.A. and Graham, R.L., 1989 b: Estimating forest cover
over Southeastern United States using TM-calibrated AVHRR data.
The classificat¡on of AVHRR data has a disadvantage of simplif ication of the
Global Natural Resource Monitoring and Assessments: Preparing for the 21st Century. Proceedings of the
forest/non-forest map of tropical forest. The employed variation of mixture model-
international conference
ling has not this problem, but it gives even too smooth forest cover map. This phenomenon is visible in other similar trials as well (Cross et al. 1991). lt is necessary to study if the smoothing
and
workshop, September 24-30, 1989, Venice, ltaly, Vol.
3, 1252-1262.
Malingreau, J. P. and Tucker, C.J., 1987: The contribution of AVHRR data for measuring and understanding global processes: Large scale deforestation in the Amazon basin. lgarss'87 Proceedings. Ann Arbor, Michigan. pp. 484-489.
effect can be eliminated by improving the applied regression model. The encoura-
ging result was, that the model was working in a similar way when applied to
the neighboring test area.
The use of AVHRR data w¡th mixture modelling techniques has obtained promising results for large scale forest cover assessment in earlier studies (lverson et al. 1989 a and b, Cross et a/. 1 99 1 ). The results of this study also
J.P.; Tucker, C.J. and N., 1989: AVHRR for monitoring global tropical
Malingreau,
Laporre,
deforestation. lnt. J. Sensing, 4-5, 355-867.
validate f urther work with these methodologies. ln tropical areas one
of
Remote
Päivinen, R.; Pitkänen, J. and Witt, R., 1991: Mapping closed tropical forest
important task is to test the robustness of these models when applied to much larger
cover in West Africa using NOAA/ AVHRR-LAC data. Silva Carelica 21, 27-52, in press.
areas.
Sader, S.A.; Stone, T.A. and Joyce, A.T.,
REFERENCES
1990: Remote Sensing of Tropical Forests: An overview of Research
Cross, A.M.; Drake, N.A.; Päivinen, R.T.M. and Settle, J.J., 1990: Subpixel measurement of tropical
Applications Using Non-photographic Sensors. Photogrammetric Engineering and Remote Sensing, Vol. 56, No. 1 0, October 1 990. pp. 1 343-
forest cover using AVHRR data. lnt. J. of Remote Sensing, Vol. 12, No. 5,
1351.
1119-1129.
Woodwell, G.M.; Houghton, R.A.; Stone, T.A.; Nelson, R.F. and Kovalic, W., 1987: Deforestation in the Tropics: New Measurements in the Amazon
lverson, L.R.; Cook, E.A. and Graham,
R.L:, 1989 a: A technique
for
Basin Using Landsat and NOAA Advanced Very High Resolution Radiometer lmagery. Journal of
extrapolating and validating f orest cover across large regions-calibrating AVHRR data with TM data. lnt. J. of
Remote Sensing, Vol. 10, No. 11, 1805-1812.
Geophysical Research, 92, D2, 2157
2163.
to2
-
FOREST INVENTORY IN NEPAL Eka Raj Sharma Forest Survey and Statistics Division Ministry of Forest and Environment P.O.Box 3339, Kathmandu, Nepal
ABSTRACT
National and district levels are the two types of forest inventories taken in Nepal. Due to absence of statistical data the first inventory plots were systematically distríbuted with only the total number of sampling units in mind. Subsequent ¡nventories were designed to get the required precision when statistical information was available. The first national and district level inventories used a cluster of five rectangular plots as a sampling unit, the central plot being permanent and four other plots being temporary.
Since 1967 aerial photo based stratified random sampling was applied. A cluster of three círcular plots was used as a sampling unit. The radii of f¡ve concentríc plots ¡ncreased wíth the diameter of trees tallied. ln later surveys the total number of plots were so based as to est¡mate the volume within five percent accuracy with 95 percent probability. The plots were distr¡buted to strata on proportional allocation with a minimum of four plots in a stratum. Every fifth field plot was assigned to be a permanent plot for remeasurement. Problems of inventory were inaccessibility, stiff terrain, loss of trees due to theft and encroachment and relocation of plots. The present system of forest inventory uses a cluster of three circular plots with four concentric circles. Metric units of measurement have been adapted, and the sampling design criteria is the same as before except a limit of 25 plots as a maximum number per stratum. For national inventory satellite imagery based stratificat¡on w¡th auxiliary data is under development. However, in districts where intensive forest management is intended, inventories coupled with aerial photography will be continued. The planned Forest Resource lnformation Sysfern will combine different data sources and produce national forest information as well as some information for the purpose of districtwise forcst management.
only the total number of plots. When
INTRODUCTION
statistical
inf
ormation is
available,
subsequent inventories are designed to
achieve the required reliability
Two types of forest inventories are in vogue in Nepal. One is national forest inventory designed
to achieve
of
estimates.
data for
national planning and policy purposes and the other is the district inventories taken
PREVIOUS FOREST ¡NVENTORIES
for the purpose of preparing the forest management plans for implementation. Some statistical parameters such as mean volume per unit area and their variation are required to design the inventory. As such information is not available ¡n the first survey, the f¡eld plots are arranged in a systemat¡c pattern with a view to fix
lnventory design
First national inventory in Nepal was taken during 1964-1965 in cooperation
with USAID. The f ield plots
103
were
arranged in a systemat¡c gr¡d of 2x1O miles. A cluster of 5 rectangular plots, each of size 2 chains by 1 chain (66 ft x 132 fTl was used as a sampling unit. The afrangement of the plots in a sampling unit is shown in Figure 1 . The central plot was established as a permanent plot for
table was f irst prepared f rom the old data and the size of the radii of concentric plots was fixed aiming to tally 2 trees in 1 1 " dbh and 1 tree in 20" dbh (20" dbh being the exploitable size). The layout of these plots in a sampling unit is given in Figure 2.
remeasurement, and four other plots were ln such plots pole timbers (5.0" to 10.9" dbh) were tallied in the central strip of 1 32 ft x 1 3.2 ft and saw timber trees (11.0" dbh and large) in the whole plot. To determine the timber drain in the past five years stumps inside the plots were tallied. Five 1/500 acre (2 milli acres) plots located along the cçntral line
temporary.
For other district surveys the total number of sampling units was based on precision criteria. The aim of survey design was to
estimate the total volume within f ive
percent accuracy at 95 percent probability level. The plots were
distributed to various strata (stratif ied by forest type, stand size and density class)
and placed at an interval of 33 ft each were taken in central plot A to determine the proportion of 2 milli acres plots having
1,2,3,4,5-7
us¡ng proportional allocation
or 8 and more sapling/
a
systematic grids was laid over an aerial photograph and each dot lying in the
seedling, number of sapling/seedling by dbh, and proportion of commercial forest
eff ective area of the classif ied according
photograph was
to the stratum
by controlling cover or surface conditions.
lmportant individual tree species
with
minimum of four plots in each stratum. A transparent sheet printed with 25
in
and
which it felled. After classifying the dot
miscellaneous group of trees were tallied of bamboo were also enumerated.
they were added together according to
grids in all the photographs of the d¡strict,
and clumps and culms per clump
the stratum. The systematic selection of dot grid with a random start was done to fix the f ield plots in a stratum, and all the fixed plots in the strata were
The first intensive district inventories for making forest management plans were also done using the same 5 plot cluster design arranged in 2x2 miles grid in the
systematically numbered. These plots
were then
forest reserves of Timber Corporation of Nepal and extended additional plots in
transf
erred
to the aerial
photographs. Plot numbers ending in 0 or
5 were taken as permanent plots f or
Banke and Bardia districts. However, the classical ten percent strip enumeration was carried out in three other distr¡cts.
remeasurement.
The plot center marked on the photo was transferred on the ground with the help of two identifiable objects both on the aerial
The areas which had a recent complete coverage of aerial photographs were measured from the maps prepared with
photograph as well as on
the ground. From the center po¡nt three sets of circles were established and enumerated. The
the help of interpreted aerial photographs.
For areas having older photographs
layout of the sampling unit was similar as in figure 2, only the radii of the circles were adlusted f rom one district to
broader classification was done. The old and new photographs of the sample strips
were then compared and the changes
another.
were noted. The ratlo of means est¡mator was used to find out the changes and thus the new area under different strata was worked out.
Measurements in the field plot Field plots were laid out in the forest and the general ref erence of the f ield plot was noted. Two witness trees with species, dbh, azimuth and distance from the plot center were recorded for relocation. The trees were then tallied. For permanent plots the distance of individual trees f rom
Since Bheri-Karnali survey in 1967 a cluster of 3 circular plots was used as a sampling unit in aerial photo based stratified random sampling. Each plot had 5 concentric circles. The radii of these increased progressively with the increase in diameter of trees in the plot. A stand
the reference central line (in case of
104
rectangular plot) or distance and bearing from central point (in case of circular plot) were also recorded. Random checking of field work by the supervisor or the crew who did not establish that plot was done to reduce the location, measurement and
hill survey there was no complete cove-
rage
at ten mile intervals were photographed for comparative study of changes in the land use. As the area was determined by using the ratio of means estimator, it was bound to have sampling errors and the volume estimate was, therefore, subject to both area and volume sampling errors.
recording errors. The tally sheet inf ormation was processed in the office to determine volume per unit area in a stratum. Total volume of the stratum and then volume by area units such as blocks, ranges, districts, regions, etc were obtained.
For
conif
of recent photographs. One mile
wide strips running east-west and placed
PRESENT METHOD
ers growth ring measurement
The number of sampling units required to
was carried out by taking
increment boring. For hardwoods remeasurement of permanent plots was done whenever and
est¡mate
the total volume within 5
percent accuracy at 95 percent probability level is calculated, and the sampling units are distributed to each stratum
wherever possible.
to its proportion'in the total orest area to be inventoried w¡th a restriction of minimum of 4 plots and maximum of 25 plots per stratum.
according f
Accuracy of the survey The forest estimates were subject to two
types of errors, sampling errors
At least 20
and
nonsampling errors. Nonsampling errors such as use of inappropriate tree volume tables/equations, incorrect identification of tree species, errors in measurement,
of a stratum, determination of stratum area and compirecording, classif ication
inf
are
cluster (Figure 2) is used except that there are
only 4 concentric circles with
radii
5,10,1 5 and 20 meters and the minimum
dbh tallied being 1,12,25,4O
cm
respectively.
ln the earlier surveys the plot radius was changed from one district to another according to the per hectare figures of stand d¡str¡but¡on but in general, the radii did not vary considerably. The plot radii have, therefore, been fixed for the Terai
ormation.
Two variables were involved in volume estimate: area and volume per unit area,
and both of them were subject
of the plots
The same three circular plot
lation, were kept to a minimum with repeated checks in the field work as well as in the office compilation. Sampling errors are kept to the specified limit by doing proper design of the forest inventory, that is based on the available stat¡stical
percent
established as permanent. The location of the trees is measured, and the UTM-coordinates for the plots are found out by using a dígital mapping program.
to
sampling errors. However, for the Terai inventory the whole area had a complete
districts.
coverage of recent aerial photographs of 1:12,0OO scale. So, after interpretation of these in the off ice repeated field checking was carried out and three measurements of the same area were taken to get consistency in determining the exact area of a stratum from the map. No area error was therefore assumed for the Terai. The volume e¡rors for the total volume to 4" and 8" top diameters were 2.61 and 3.1 8 percent respectively at 66 percent probability level. Without stratification they were found to be 3.68 and 4.61 . For the
The metric system of measurement have been adapted and volume equations have been developed to f acilitate computer processing of field data. As biomass is
more important, biomass estimates are provided along with volume estimates. More appropr¡ate b¡omass and growth equations are being developed. The following are the estimates and their precision obtained during the inventory of Dang district in 1990.
10õ
Variable
Unit
Mean
Std. Error
Total stem volume
m3/ha
69.4
3.03 2.36
Vol.to 1Ocm top Vol.to 20cm top Total dry mass
50.2 32.5 T/ha
Stem mass Branch mass
3.62 2.56
57.9
Foliage mass Trees/ha
* at 95 percent
2.O2
82.1
no
20.6 3.5 229.01
0.91 0.1 6
16.71
Confidence limitsr
63.43 45.59 28.52 74.95 52.91
- 75.30 - 54.86
- 36.46 - 89.15 - 62.95 18.80 - 22.35 3.23 - 3.86 196.30 -261.78
probability level
PROBTEMS IN DATA COLLECTION
This method does not seem suitable for
Nepal has only 20 percent of her land with flat terrain, and these areas are almost all under agriculture. Forests are located in moderate to steep hill slopes except a narrow stretch on ¡ts south. Roads are limited due to which many
tion is required for national planning and policy purposes. lts role in limited areas is, however, well justified. One of the best ways of doing national ¡nventor¡es may be by using satellite ìmagery and
national inventories where quick informa-
geographical information system.
orest areas become inaccessible. Terrains with 100 and more percentage of slopes are categorized as noncommercial, though
f
Nepal is planning to have its national inventory data by 1993 implementing two-phase sampling through the use of
some limited collection of forest produce
for local use is
satellite imagery, available auxiliary data and field sample. The work has recently started with a pilot area of f ive districts in the Western Development Region. These areas have been photographed last winter to the scale of 1:25,000 and the Landsat TM-satell¡te imageries have been
done even from such
forest areas.
The f ield plots or trees marked f or remeasurement are lost due to encroachment or theft which creates problems for the determination of growth hardwood species. Exact location of field plots becomes a problem specially in a dense hardwood tract. Problem of
of
procured. Now field sample plots are
of f ield plots f or growth measurement renders growth determi-
nuing. The results of this study will be out by the end of 1 992, and the technique thus developed will be utilized to assess the forest resources of the country. The
being laid in the aÍea with f ield measurement, and the study is conti-
relocation
nation
diff
icult.
Sometimes diameter
measurement point specially in young trees are healed due to faster growth.
Forest Resource lnformation System is being developed in the Ministry of Forest and Environment w¡th the assistance of FINNIDA. A four year program is being launched to establish the system and
FUTURE PI.ANS
Forest lnventory system with
Nepalese staff will be trained to maintain and run this system.
aerial
photography is usef ul for a relatively small areas where intensive management operations are to be applied. When th¡s system is used for national forest inventories, it is going to involve lots of aerial photographs which are to be manually interpreted. This involves lot of works besides the huge
expenditure
to take
REFERENCES
aerial photography
District forest lnventory Manual, Forest Survey and Research Office, Department of Forests, HMG, Nepal.
and by the time the inventory report is out it w¡ll be already four to six years old.
106
lnstruct¡ons for Field Data collection in the Forest lnventory of Nepal, 1 963:
Field lnstructions for Forest lnventory, 1 991: Kapilbastu and Rupandehi District, HMG, Ministry of Forest and
Forest Resources Survey, Department
Envlronment, Forest Survey
of Forests, HMG.
Statistics Division, Babar
and
Mahal,
lnventory Report of Dang District, 1990: Forest Survey and Statistics Division, Ministry of Forest and Soil Conservation.
Kathmandu, Nepal.
Forest Statist¡cs for the Hill Region, 1 973: Forest Resources Survey, Department of Forests, HMG, Nepal.
Timber Resources and DeveloPment
Forest Statistics for the Tarai and Adjoining Regions, 1967: Forest
Opportunities in the Lower Bheri and
Resources Survey, Department of Forests, HMG, Nepal in cboperation
Karnali Watershed, 1969: Forest Resources SurveY, DePartment of Forests, HMG in cooperati'on with
with USAID/N.
USAID/N.
lo7
I õi
A
N
Fígure
l.
Figure
The national forest inventory cluster.
2.
District forest inventory cluster. I Otl
UNITED STATES ENVIRONMENTAL MONITORING AND ASSESSMENT PROGRAM: LANDSCAPE CHARACTERIZATION AND REMOTE SENSING Raymond L. Czaplewski Rocky Mountain Forest and Range Experiment Station 240 West Prospect Road Fort Collins, Colorado 80526-2098 USA
Douglas J. Norton U. S. Environmental Protection Agency Vìnt Hill Station Warrenton, VA 22186 USA
Denis Whíte ManTech Environmental Technology, lnc. 200 S.W. 35th Street Corvallis, OR 97333 USA
ABSTRACT The United Sfa¿es Environmental Protection Agency has started the Environntental Monitoring and Assessment Program to monitor status and trends in the condition of all of ecological resources in the llnited SÍa¿es. This program wilt be integrated related prograrns, such as the Forest Health Monitoring system being developed by the lJnited States Forest Service. Remote sensing and the landscape perspective are important to the success ancJ effectiveness of this and other environmental monitoring systerns. Five distinct roles of remote sensing and landscape characterization are given. Past, present, ancl future strateg¡es are briefly discussed.
inf rastructure of its large Forest lnventory and Analysis system. EMAP will monitor and report on the condition of the nat¡on's ecological resources, evaluate the success of cumulative environmental policies and regulations, and identify
¡NTRODUCTION
The United States has started a long-term program to monitor the status and trends of all its ecological resources (Palmer and
emerging problems before they become widespread or irreversible (Messer et a/. 19911. Palmer and Jones (1992)give the
Jones 1992). This program, known
the
Environmental Monitoring
as and
Assessment Program (EMAP), is a multi-
three objectives of EMAP. Remotely sensed and map data are required to
institutional program, which has been developed or evaluated by over 400
achieve these objectives.
scientists, ln cooperation with EMAP, the United States Department of Agriculture (USDAI Forest Service is developing its Forest Health Monitoring program (Shaw
EMAP uses
a
probability-based sample
survey that includes a systemat¡c grid of points covering the entire United States
1992), which builds upon the existing 109
(Palmer and Jones 1992). Each sample unit at the f irst level is a 40-km2 hexagon; sampling intensity is 6 percent by area. Center points of adjacent hexagons are separated by 27-km at 60'angles. There
are 12,600 such cells in the
comprehensive environmental monitoring system for the condition and use of renewable natural resources at the national scale.
United
States. which totals 8 million km2. Small field plots for making indicator measurements on specif
ic
are
Landscape-scale lndicators
Landscape-scale indicators
sub-populations
established within each 40-km2 hexagon. Each major type of ecosystem can have a different sampling frame for f
measurements
of
are
environmentally
meaningf ul features at scales bigger than
field plots, which often require remote sensing and, cartographic methods.
ield measurements, but all sample f rames
are confined to the 40-km2 hexagons. Sampling intensity of 40-km2 hexagons
Examples include distribution
of forest patch sizes, perimeter-to-area ratio,
can change in increments of 1l7tþ, 1l4th,
fractal dimension, contagion index, and
1l3rd, 3, 4, 7, and multiples of these f actors, while maintaining a unif orm spatial distribution. This grid geometry
habitat proportions. These indicators are used to study the possible cause-effect relationships associated with broad-scale environmental phenomena. Objectives
facilitates uniform
interpenetrating subsampling (Palmer and Jones 1992). For example, measures can be made during the first year within one of the 40-
include monitoring condition, extent, change and trends in broad-scale features such as different landscape pattern types that have environmental and social importance.
km2 hexagons in each cluster of 4 hexagons; each subsequent year, measurements are made on a different hexagon in each cluster, i.e., a 4-year
Low-altitude aerial photography can image
remeasurement cycle.
0.25- to 4-km2 plots, and resolve features 0.1- to 1 .0-m2 in size. High-altitude aerial photography can image 20- to 4O-km2 plots, and resolve features 1- to 25-m2 in
ROLES OF REMOTE SENSING IN ENVIRONMENTAT MONITORING
size. Earth resources satellites can image 4,000- to 16,000-km2 plots, and resolve features 0.5- to 2-ha in size. Weather
satellites can image sub-continental
Most indicators of
regions, and resolve f eatures 5- to 4O-km2 in size. Cost per unit area is lowest with
environmental
condition are measured on small f ield plots. However, remote sensing may serve the f ollowing f unctions:
(1 )
weather satell¡te data, and highest with
low-altitude aerial photography.
measure
However, cost of aerial photography can be decreased by sampling rather than complete coverage of large regions, and sample aerial photography can cost less
indicators to study associations between
landscape structure and environmental condition at the regional scale; (21 measure diagnostic indicators that
than satellite data. Landsat satellite pixels are too big to monitor most field
describe the vicinity near each field plot, which are used to study associations between local landscape features (e.9., degree of forest f ragmentationl and forest condition (e.9., defoliation from insects); (3) cost-eff ectively measure ecological condition of f ield plots (e.9., covariates of field measurements in a double sampling framework); (4) develop frames for field sampling of certain ecosystems types
plots, and AVHRR weather satell¡te pixels are too big to accurately register to 40 km2 EMAP hexagons. Landsat film output classif ied with manual photointerpretation techniques at less cost than classification of digital Landsat data; however, classification and spatial detail of manual photo-interpretation is less.
can be
(e.9., wetlands); and (5) estimate area occupied by major ecosystem types, and changes in area of different types. The
There are 4 general technical alternatives to measuring landscape-scale indicators for the 8 million km2 in the United States. (1 ) Each year, aerial photography could be
remaining sections discuss these 5 components, which relate to any
110
level processes are poorly understood,
acquired for a subsample of large plots with low-altitude aerial photography. This might be an ¡nterpenetrating (e.9., 1/4th) subsample each year (e.9., 1 800 4O-km'z EMAP hexagons imaged each year), with a 4-yeil rotation; the expected cost is US$1 million to $10 million per year. (2)
and landscape diagnostic indicators will be used most frequently ¡n exploratory analyses. The scales and mechanisms of
the
of remotely sensed imagery, classification detail, and interpretat¡on techniques. Since our understand¡ng of landscape-level
Landsat digital data could be acquired for
a rotating subsample of current satellite
processes is limited, landscape diagnostic
scenes. This might be an interpenetrating subsample of Landsat scenes, e.9., 1 Landsat scene in each contiguous block of 7 Landsat scenes classified each year with a 7-year rotation. This would sum to
indicators will likely be built using variety of remotely sensed data.
detect within- and between-season spectral patterns that indicate regional
a cost of $5 million to $50 million per year. (3) Photo-interpretation of Landsat film products could be used for a rotat¡ng
env¡ronmental stress (e.g., unusually early senescence of vegetation in a subcontinental region). This might explain responses of field plots in that region. However, seasonal phenology varies among vegetation types, and some kind of prestratif ication by vegetation or
subsample of current satellite scenes. For example, a 1l4th interpenetrating
of Landsat scenes could
be
interpreted each year in a 4-year rotat¡on,
costing $0.1 million to $1 million per year. (4) Annual classif ication of weather
landscape patterns would be required. ln addition, Landsat data could also be used
satellrte data (e.g., 1 .1-km2 pixel AVHRR data) for the entire United States could be
digitally classified, which could cost million
measure
harvesting, defoliation, or moisture stress close to field plots. Landsat could detect changes in local forest fragmentation or
urbanization,
or might produce coarse
characterizations of horizontal vegetation structure near f ield plots f or wildlif e
habitat analyses. Periodic Landsat ications would help study the interactions among forest, agro-
classif
ecosystems, and arid lands f or integrated
stand- and tree-level processes (Saunders et al. 1991 ). Compared to the landscape
assessments. For examPle, Landsat classif ications could provide coarse measures of forest conditions in entire watersheds to analyze effects of land management on the quality of surface waters. Aerial photography obtained for
indicators discussed above, landscapelevel diagnostic indicators are more local km2).
Diagnostic indicators seek associations between responses of ecological resources at the scale of field plots that
other ob¡ect¡ves could provide more detail or certain landscape-level diagnostic indicators.
surrounding
landscape. Land use practices
to
could detect changes in biomass associated with disturbances such as
be
plot can be stressed by disturbances in the surrounding landscape, such as patches of tree defoliation or tree mortality, catastrophic events (such as fire), timber harvest and timber management, and changes in land use (e.9., clearing for agriculture or urban usesl. A fragmented forest landscape can affect
are affected by the
ormation
subsample of satellite scenes. Multispectral leaf area or greenness indices
associated with diff erent types of stress on small field plots. For example, a field
in scale (e.g., 25 ha to 1000
inf
certain sources of environmental stress on field plots. Change detection techniques could be done periodically, such as once every 4-years, for an Interpenetrating
to $10 million per year.
erent landscape f eatures might
or diagnostic
f
$'l
Landscape Data for Diagnostic Purposes Diff
a
AVHRR weather satellite data might
72 scenes per year in the United States at
subsample
landscape-level processes should
determine the type
f
and
interactions among different land cover types may cause some of these changes. Remote sensing might provide data that describes land cover and land uses close to each f¡eld plot. However, landscape-
Remotely Sensed Measurement of Field lndicators
111
is a cost-effective measurement tool for certain indicators of Remote sens¡ng
forest condition on f ield plots.
laser altimeters can accurately measure
heights of tall trees (>15 m). Crown diameters, and crown competition indices for dominant and codominant trees might be more accurately measured with such photography. Another example is the
The
following are examples of indicators that could be measured by, or correlated with
interpretations
of
low-altitude
aerial
photography and videography: rates of individual tree mortality, defoliation, and regeneration; coarse indices
of
area
vertical
and horizontal vegetation structure at diff erent scales, which are related to
Some remotely sensed variables will be
highly correlated with f ield
wildlife and bird abundance and diversity; indicators of tree stocking, gap-dynamics,
calibration estimators will be needed to adjust f or measurement error. These
intercepted photosynthetically active radiation or leaf
statistical approaches require
of
area ¡nd¡ces; prevalence and e{fects of disturbances, such as pest and disease
sensed and field
of
will not eliminate need for field work, but it m¡ght allow longer intervals between some field remeasurements.
individual wetlands, lakes, or riparian s¡tes. Satell¡te imagery could detect major disturbances near f ield plots, today or in the past (with
historical imagery).
Low-altitude, high-resolution aerial photography will be needed to measure most indicators that relate to individual field plots. Cost of low-altitude high-
Compared to f ield sampling, remote sensing might provide less expensive measurements, and perm¡t larger sample size or more frequent remeasurements at the same cost. Cost depends upon the number of different objectives served by the same remote sensing activities. For example, cost of aerial photography for indicator measurements on field plots will be less if the same imagery is also shared for assessing accuracy and calibration of ¡nterpreted satellite data. Some indicators
resolution aerial photography does not permit "wall-to-wall" imagery f or the entire United States. Rather, aerial photography for sample plots is required (e.9., 0.1 to 1.0 percent sample by area of a nation). Locations for sample aerial photography must be established a priori.
Field of view from low-altitude, high-
resolution aerial photography is limited to
1 to 4 km2 for 230 x 230-cm image format. There are numerous potent¡al
be
measured during a narrow phenological window during the year. Compared to
sampling designs and image acquisition
alternatives. The benef its of any alternative cannot be objectively determined until requirements for lowaltitude aerial photography are better
ield work, remote sensing provides ability
to
image and later measure plots at approximately the same season. Also, frequent remeasurements by field crews
defined. Optimal timing of imagery might differ among ecosystems.
unusual
fashion, such as trampling damage field crews.
measurements.
However, remote sensing
and changes in area of
can affect field plots in an
subsample
to develop a statistical model between remotely
disturbance risks, such as fuel loading;
of ecosystem conditions must
a
accurately registered calibration (or
second-phasel plots
outbreaks, land use changes, harvesting,
windthrow, and f ire; magnitude
measure-
ments. However, double sampling or
and crown competition;
f
of certain wetlands, ponds, and
lakes.
by
Some field variables can be measured
rom past imagery. This will permit retrospective analyses, where past
f
Certain indicators might be
better measured with remote sensing techniques
conditions are measured using historical imagery. However, this requires saving suitable imagery. Since low-altitude aerial
than with field protocol. For example,
leaf area index might be more accurately measured with a Normalized Difference
photography is needed f or monitoring most indicators of environmental conditions, this imagery must be acquired and stored now, so that it will be available for historical analyses. This would maintain
Vegetation lndex f rom multispectral satellite data or an airborne spectrophotometer. Photogrammetric analysis of low-altitude aerial photography or airborne
rt2
the option to intensify sample size in the f uture, with minimal initial investment relative to the cost of field plots. Systematic sampling
with
eliminate or reduce redundancy or incompleteness. The selected f rames constrain
the sampling, results, and
low-altitude
aerial photography is not routinely done in
the United States; therefore, cooperating institutions would have to pay directly for
a new, large program. However, there
diff
are opportunities to use the same imagery
or f ield indicators, landscape ecology indicators, landscape-level diagnostic
indicators, f rame development, extent estimation, and aids f or classif ying data.
calibration
of classifications of
f
rames can be applied
bef
ore. these
materials are available. Grid and list f rames can be used together, such as lists of tree plantations within a sample of Landsat scenes. List frames need not
Cost-effectiv eness
increases with the degree of shared benefits. For example, the same imagery used to measure indicators could also be used for accuracy assessment and
identif
y all detailed sub-categories of
resources, but
Landsat data, or prestrat¡f ication of field sampling,
f
both of which provide opportunities for increases in efficiency. To attract cost-
this restricts
prestrati-
ication on these attr¡butes.
There are many different ways to develop frames. (1) The common practice among existing monitoring programs is separate frames that can be optimized for each
sharing by different institutions, the same imagery would have to effectively serve many different objectives; unfortunately, multiple programs and objectives lead to
complex institutional challenges
erent f rames will depend on the
degree of correspondence among f rames. List frames require identifying or mapping of the entire statist¡cal population before samples are selected, whereas grid
f
satellite
inf erences.
Missing resources cannot be estimated, and statistical efficiency suffers if sample units are misclassified. Frames can be improved or replaced in the future, but estimates of changes or trends across
resource or sub-population according to objectives of different inst¡tutions. This reduces costs for any single institution,
and
conflicts, which are rarely solved.
but total costs can be higher, and integration among
diff
erent institutions
Frame Development
requires close cooperation. (2) A single shared frame can be constructed for all
For each population of resources sampled
resources, which was the first EMAP strategy. Such a frame reduces missing resources, but very accurate remotely sensed classifications are required, which can be costly and t¡me-consuming f or
with a
probability design, a tangible representation of the population is
necessary to select a sample. This representation is called a frame. A ,s¿ frame might consist of a list of members
a region is arbitrarily divided into areas, which are analogous to elements of a list. A complete grid of Landsat scenes is an
large regions, and which can quickly become out-of -date if land uses ate changing. This frame also requires classif ications systems and population definitions that are shared by all participat¡ng institutions, and bureaucratic consensus is difficult. (3) A very dense grid would avoid cost and delays from remote sensing, but would preclude any deta¡led prestratification, thus compromising eff iciency. (41 Two separate frames could be used: a grid frame for extensive resources such as forests and agricultural lands, and a list
example of an area frame.
f
of the stat¡stical
population, such as stream locations on a map. A grid f rame is a method to guarantee that any point, line, or area in the geographic area being
covered by the design can be selected
with known
probability
f
or
sample f rame
selection. For example, a grid
could be defined by the center point of each 0.S-degree map in a region. An area rame is a variant of a list f rame in which
f
rame f or discrete resources such as lakes or isolated plantations. This would avoid problems with a shared frame as in (2), and reduce eff ects of misclassif ying similar resources such as small lakes and wetlands. (51 Existing or convenient
For each major resource, the sampling frame must be representat¡ve, complete, and available when needed. lf possible, different frames should be combined to
113
frames could be used in the beginning,
There are several alternative approaches
and eventually modified into an improved and more integrated frame. This current
to
estimate extent. (1 ) Extent for different resources can be estimated with
EMAP strategy allows more time for
independent sampling f rames, either within EMAP or from different institutions. This solves certa¡n pragmat¡c problems, but can lead to contradictory
institutional negotiat¡ons, but may require future adjustments to est¡mates that use multiple frames. (61 A hierarchical frame
could use classif ications f or 10 or f ewer categories of landscape patterns at its f
irst level (e.9.,
interpretat¡on
of
AVHRR
estimates. For example, the USDA Forest Service and Soil Conservation Service use
or
different tree densities to define forests, and estimates of forest extent made by
visual Landsat images), plus
overlays of more detailed wetland and surface water map_s from maps or other remote sensing sources. Within these classif ications, separate f rames would then be developed f or f ield sampling
each institution can differ greatly
in
certain regions. (2) A single integrated sampling frame could be used; estimates would sum to 100 percent, but might be inconsistent w¡th est¡mates from other
within landscape patterns. However, problems would remain in integrating sampling f rames f or extensive and
institutions. (3) Estimates could be made from EMAP field plots alone, but these might have high sampling error. (41
discrete resources. Also, classifications at the first level could change through
Separate frames could be developed for extensive resources such as forests and
landscape-level changes in land use or by
arid lands, and discrete resources such as small lakes and streams. (5) Extent could
registration errors, which could make
with past data, and
statist¡cal estimation diff icult.
be
Extent Estimation
improved methods adopted slowly over time, although this will make estimates of changes and trends in extent difficult.
estimated
The extent of a resource is a measure of its size. Extent is described in units of
area
for extensive
hectares
resources, such as
of forests, arid lands,
EMAP I.ANDSCAPE CHARACTERIZATION STRATEGIES
and
agricultural lands; units of length for linear resources, such as kilometers of streams or riparian zones; or number of discrete resources, such as lakes of certain sizes,
ln May, 1990, the EMAP Landscape team presented an implementat¡on strategy to classif y Characterization
or some types of wetlands. EMAP estimates should be consistent with estimates
resources, develop sampling frames, and estimate changes and trends over time in
of extent from other U.S.
the extent of different ecological
institutions and agencies. Also, est¡mates should sum to 1 00 percent of region, although this could make EMAP est¡mates disagree with those of other institutions because classification systems may be
resources. The strategy called for photo-
interpretation
diff erent.
Extent and condition estimates
are
can be obtained indirectly through ratios of plots sampled weighted by extent of the entire population. For example, the extent of the pine sub-population can be estimated by the proportion of forested
For
lnventory system (Cowardin et al., 1979],, land use concepts were influenced by the U.S. Geological Survey system (Anderson et al., 1 976), arid lands classif ication concepts were affected by the work of
ied in the f ield as pine, by the extent of f orestland
classif
mult¡plied
:40,000-scale aerial
example, wetlands and deepwater habitats were classif ied in a manner compatible with the National Wetlands
frame
development. Extent of sub-populations
plots
1
systems as much as possible.
constrained by success at defining the
statistical populations and
of
photography to classify land use, and digital classification of land cover using Landsat data, with over 500 scenes for the United States. The EMAP classification system used existing institutional
Brown et al. (1979), and forest classes
used
obtained through independent techniques.
LL4
def
initions of the Society
of
19801. A single, comprehensive land classification system {Norton et 31., 1990} was
American Foresters (Eyre,
being developed, and
photo-interpretation
will be applied
by
f
ilm
of Landsat
products. A large experimental study has been started by EMAP, using the highly urbanized Chesapeake Bay watershed
compiled by the EMAP Landscape Characterization team and a subset of 83 priority classes was identified from this system. It was proposed to enter these and other
(160,000 km2) in the eastern United States to test alternatives. Landscapelevel indicators are being researched.
spatial data into a large geographic information system. A plan was evaluated to image all remotely sensed
Practical compromises are being made to
develop f ield sampling f rames more quickly. Efforts are being made to involve other Federal institutions, and remove inStitutional barriers that have stopped development of common national
data between 1988 and 1992, and again between 1 998 and 2OO2 for change detection. lmage interpretation would have cost $56 million for the 1988 to 1992 data, and require 10 years to
standards for land cover classif ication and mapping. Existing land cover classif i-
process.
cations This plan was abandoned as the short-
while
a
will be used where available,
consistent national system is
developed. AVHRR data is being evaluated for environmental monitoring
term EMAP strategy. Field work could not wait until remote sensing produced sampling frames for EMAP field work. Rather, list f rames for surface water sampling were constructed from existing maps, although these maps contain
and ecological indicators.
errors, and some lakes and streams are
missing. Grid frames for monitoring forest health were based on the existing grid used by the USDA Forest Service's Forest lnventory and Analysis projects.
An area f rame was used for
ROLES OF 1ANDSCAPE CHARACTERIZATION TEAM The Landscape Characterization team has 3 distinctly different roles in EMAP. (1)
agro-
ecosystems based on an existing frame maintained by the National Agricultural
They serve as landscape ecologists to study landscapes as distinct resources, which are broader in scale than natural resource as they are commonly defined; (21 they provide operational support to other EMAP teams in the areas of geo-
Statistical Service for annual crop reporting. The National Wetlands lnventory of the F¡sh and Wildlife Service cooperate in development of the wetlands sampling frame, ln addition, the first EMAP strategy was inadequate for est¡mating extent of various resources. Area estimates would be 3 to 10 years out of date when image interpretation was completed, and est¡mates of changes in extent could not be produced until 2003 to 201 0. Rather, existing estimates
will
of extent from other
graphic information systems, remote sensing, and classification systems; and
(31 they provide coordination
and
oversight of remote sensing activities of other EMAP teams for development of landscape-level diagnostic and remotely
sensed indicators. This
includes
identification of innovative opportunities,
government
inst¡tutions in the United States will be
where the same remotely sensed data can effectively serve different objectives, thus providing better data while minimizing
used in the short-term, Also, new emphasis was placed on monitoring landscapes as natural resources, using
additional costs. These roles must be separate to maintain accountability for
concepts from landscape ecology.
different responsibilities. For example, the responsibility for frame development and extent estimation has shifted away
The landscaþe characterization strategy will be revised during the coming year. Existing spatial data for the nation is being entered into the EMAP geographic inf ormation system. A classif ication system for landscape pattern types is
from the Landscape Characterization team and towards other EMAP Ecosystem Resource teams as technical strategies have changed.
11ó
coNclustoNs
Department
of
lnterior, Geological
Survey. 28 pp. Brown, D.E.; Lowe, C.H. and Pase, C.P.,
Remote sensing is important to the success of environmental monitoring, as discussed by Lund (1992). But remote
1979: A d¡gitized
North America, with
sensing and landscape characterization for a
continental-scale monitoring system can
the Southwest. Journal of
the Arizona-Nevada Academy of Science
Probability of success depends on image analysis methods and statistical sampling designs. But a larger factor in success is
14:1-16. Cowardin, L.M.; Carter, V.; Golet, F.C. and LaRoe, E.T., 1979: Classification of wetlands and deepwater habitats of the United States. FWS/OBS-79/ 31, U. S. Dept. of lnterior, Fish and Wildlife Service. 131 pp.
as
existing infrastructure and the success of
institutional strategic planning. Success requires sound goals, precise objectives, and a clear identification of the various roles of remotely sensed data and those who produce these data. lt may not be
Eyre, F.H. (ed.),
possible to implement the ideal monitoring system ¡n the short-term, but a general
natural resources. Paper presented at the IUFRO S 4.02.05 lnternational Conference on Permanent Plots for
World Forest Monitoring. 1992 January 13-17; Pattaya, Thailand.
The authors thank Drs. Dan McKenzie,
Norton, D.J.; Slonecker, E.T. and Mace,
T.H., 1990: EMAP Landscape
Dave Mouat, Eric Hyatt, and Craig Palmer with the U.S. Environmental Protection
Characterization Research and lmplementation Plan. Review Draft,
Agency f or help with the conceptual development of this paper, and Gyde Lund and Susan Franson and Kristen Stout for reviewing this paper. The
EPA-600/X-90/1 099A, U. S. Environ-
mental Protection Agency, Washington, DC. 224 pp.
information in this paper has been f unded in part by the United States
Norton, D.J. and Slonecker, E.T., 1990:
Landscape Characterization: the Ecological Geography of EMAP.
Environmental Protection Agency. lt has
for
Forest cover
Lund, H. G., 1992: A primer on permanent plots f or monitoring
ACK]ìIOWLEDGEMENTS
approved
1980:
types of the United States and Canada. Society of American Foresters, Bethesda, MD. 148 pp.
long-term vision of an ideal system will maximize the probability that short-term decisions will help today's compromises evolve into a better future svstems.
been subjected
community
(series) and association examples for
be large and complex endeavors.
the ¡nst¡tutional environment, such
classif ication
system for the biotic communities of
to
Agency review and publication. Mention of
GeolnfoSystems
trade names or commercial products does not const¡tute endorsement or recommendation for use.
1
:33-43.
Messer, J.J.; Linthurst, R. A. and Overton, W.S., 1991: An EPA program f or monitoring ecological status and trends. Environmental Monitoring and Assessment 17:. 67-
78.
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Palmer,
for use with
C. and Jones, K. 8.,
United States
Anderson, J.R.; Hardy, E.E.; Roach, J.T. and Witmer. R.E., 1976: A land use and land cover classification system
1992:
Environmental
remote sensor data.
Monitoring and Assessment Program: an overview. Paper presented at the IUFRO S 4.02.05 lnternational
U.S.
Conference on Permanent Plots for
Professional Paper
964,
116
World Forest Monitoring. January'l
l gg2
Shaw,
3-17 ; Pattaya, Thailand.
C. G., 1992: Forest
health
monitoring -- a new program of the USDA Forest Service and the Environmental Protection Agency.
A.; Hobbs, R. J. and C. R., 1991: Biological consequences of ecosystem fragmentation, a review.
Saunders, D. Margules,
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Pattaya, Thailand.
Lt7
RESOURCE POTENTIAL: POLICIES FOR SCALING UP TO GLOBAL SIGNIFICANCE K.D. SÍngh Food and Agrículture Organization of the United Nations Via delle Terme di Caracalla 00100 Rome, ltalY
!NTRODUCTION
It is possible, as will be demonstrated
As a result of interest in studies of global C-budget, a demand has arisen for informat¡on on the status of global biomass and its f lux over time. This would not be a difficult problem, had every country of the world a continuous forest inventory which could be compiled to provide a
this ad hoc status information cannot substitute the estimates obtained from statistically designed global biomass inventories. Such inventories are not
later, to have a reasonably good picture of status of the global biomass but not its rates of changes based on the use of existing data. lt must be remarked that
too expensive as will be shown later, based on the studies of Forest Resources Assessment 1 990 necessarily
global synthesis of
inf ormation on rate of change. biomass status and
Project.
However, the state of national surveys by end 199O does not provide a very optimistic picture to accomplish this task, as only less than half the planet has been
ANALYTICAL MODEL FOR ESTIMATION OF GLOBAT BIOMASS STATUS AI{D BATE OF CHANGE
statistically studied. There are major gaps in the knowledge of
changes in the tropical zone. Regarding the surveys in the temperate zone, these cover the woody vegetat¡on only and
The total biomass (w) could be expressed as a function of three macro variables: vegetation area (xl, quantity of vegetation per unit area (y) and biomass conversion factor (z): the last one is needed to convert vegetal quantity per un¡t area into biomass units. Expressed statistically:
even here the survey data, due to def iciency in design, do not Permit
calculation of biomass changes over time. There are only very few countries which have operational continuous forest inventories with permanent plots wh¡ch are a basic tool for reliable estimations of
w=x.y.z.
forest biomass dynamics.
The associated uncertaintY ¡n estimation of biomass status could be expressed in terms of relative variance (RV) as:
ln spite of very unsat¡sfactory state of the
current situation, the best possible stat¡stical estimate is necessarY to be made to serve the needs of global
RV(w) =RV(x) +nV(Y) +RV(z)
C-modellers. The term 'statistical' here is
intended
to
Where relative variance of a variable is obtained by dividing the square of the
imply the use of objective
technique(sl which could provide not only the mean value but also some measure of its reliability. This is in contrast to the term "guesstimate', which gives a rough estimate of the mean and no idea about ef ror.
standard error of the variable by the square of the mean of the variable' The advantage of using relative variance lies in
the f act that terms aÍe additive
variables are independent (Cunia 1985,
119
if
USDA
1
986). The above model for
categories on the basis of mean value of biomass per unit area. Many studies on
propagation of error shows that all the three components have equal importance so far as the total biomass is concerned.
primary productivity of the world follow this approach. For example Lieth (197g) stratif¡es the world vegetal cover into
ln the above expression the relative variance of the each term inclüdes random errors arising due to sampling, errors of observation and systematic errors (or bias) arising due to use of
orests, woodland, grassland, deserts, cultivated land, etc. The FAO Forest Resources Assessment 1 990 project, in
f
cooperat¡on with lnternat¡onal lnstitute f or
Vegetation Mapping, Toulouse, has prepared a broad vegetat¡on and eco-floristic zone maps of the tropical zone which off er new opportunity f or biomass stratif ication and biomass
survey model or measurement procedure.
With particular ref erence to biomass estimation it is well known that the location of sample plots, if not done using
an objective technique but made on
sampling.
a
subjective basis, could contribute to bias. For example, location of plots in well stocked or undisturbed forest areas, could become a major source of bias and give rise to higher biomass estimates per unit
Remote sensing has opened up new opportunities for this purpose. A number of studies have been done to estimate
actually is. ln case of permanent plots, it is important that they do not have any conspicuous markings. Otherwise, they may be treated in a
mean biomass over an area, based on high resolution and coarse resolution satellite data (Cook et al. 1g9g,t. The results obtained so far indicate that it is possible to def ine uncertainty in the estimation of biomass mean per ha.
One common way
For the study of biomass change, let us assume that survey has been done on two occasions with the following results:
area than
it
different manner leading to biased results (Sinsh 1985).
to reduce variance of biomass estimation is to strat¡fy the vegetal formations of the world into broad
x1, y1, z1 x2, y2, z2
The relative change in total biomass (w1 / w 2l and the relative variance:
RV (wl lw2l
= Addition
=
RVt(x'l /x2) +(v1
is
RV(x'l /x2)
Where VAR (x1) and VAR (xZl
relative variance terms
and
lV
1
x2.
\
This equation shows that reliab¡lity of is
change estimation can be improved, if the
possible as the three compound variables lx1 lx2l ,
are
variance of x1 and x2 respectively and COV (x1, x2) is covariance between,xl
lV2l+þ1 lz2ll
RV(x1/x2) + RV(y1 ly2l +Rv(21 lz2l
of
= VAR(x1) + VAR(x2)-2COV(x1 ,x2)
two surveys for estimating x1 and x2 could be correlated with one another.
lV2l , þ.1 lz2l are ¡ndependent.
This suggests use of sampling techniques based on continuous forest inventory concepts, where a part or all of the plots are remeasured and hence data observed are correlated (Cunia 1974l,.
Considdr now the relative variance of change in any of the three terms, for example, RV (x1lx2). This expression could be written as:
t20
The above considerations hold for all the
three components (or
OPTIONS FOR ASSESSMENT OF GLOBAL BIOMASS
macro-variables)
involved in biomass estimation. lt would be a very cost-effective approach to plan and implement a comprehensive survey design, in which area, volume/ha and
Three approaches to global biomass monitoring, diff ering in the level of
biomass conversion factor are observed in
certainty will be presented here.
an ¡ntegrated and continuous manner.
Option
Relative Degree of Certainty
(1) Estimat¡ons based on existing data. (2) Remote Sensing-based area estimation (3)
combined with existing biomass data. Remote Sensing based area est¡mation combined with statistically-designed field sampling for biomass.
The costs of assessment and complexity
involved in implementation of
Low Medium High
specific statistics on main parameters. The new estimates are expected to be
the
programme increase with the increasing demand on 'certainty'.
available by mid 1992. For the temperate forests, a major effort prepare a status report for the reference year 1980 was made by joint FAO/ECE Agriculture and Timber Division, Geneva, who published a synthesis of information in 1985. An assessment for the reference year 1 990 is currently on-going which is expected to be completed in early 1992.
to
Estimation þased on exìsting data The f irst effort on a global tropical bas¡s was made by FAO in Forest Resources Assessment 1 980 Project, to compile the
existing reliable stat¡stics on area and volume and adjust these to a common concept, classif ication and ref erence date,
viz. 1 980. The data were compiled at the country level. Based on these figures,
FAO Forest Resources Assessment 1990
Project is expected to produce a global synthesis of the results of the two
area and biomass by end 1980 were calculated (FAo 1988).
assessments towards mid 1992.
This approach has been improved by FAO
Forest Resources Assessment 1 990
The remote sensing based estimatíons
Project. Existing forest area information is used in conjunction with a model to describe the state and rate of change of forest area at various points of time. The
Forest Resources Assessment 1 990 Project has demonstrated that high resolution satellite images (LANDSAT
figures are reported by country as well as by ecofloristic zones. Another distinctive feature of the 1 990 approach is use of
TM/MSS, SPOT and others) can provide a reliable est¡mate of global vegetation cover area and its changes in time on a
erenced vegetat¡on,
continuous bas¡s. The f irst round of survey for the tropical zone is presently
geographically
ref
ecological and demo-graphic information
in a
cartographic f orm which
are
being implemented. The current state of
combined with statistical data on forest area and biomass. These provide location
forest cover is derived from the interpretation of a recent satellite image; the
t21
orest cover change
ormation
is
Remote sensíng based estimation com-
the recent and a historical image for the same
bined wíth statÍstícally desígned field
f
inf
estimated from the comparison
of
sampling of bíomass
location (FAO 1990).
This option is considered as the most
The selection of the monitoring sites, which is being done using statistical sampling techniques, permits the estimation of global values of forest cover and its rate of change together with the associated error. The forest change
comprehensive approach. The procedure
involves use
including area and volume/ha.,
data allows study of the
underlying causes of tropical deforestation and forest degradation (FAO 1 991 ).
reliability at
(1
regional and global levels, but not at the
) Survey with help of
hoped that the
area into biomass classes and in selection of sampling units for the next phase.
study of the trends of tropical deforestation at local and national levels.
(21 Detailed study of the selected sampling units with help of High
The interpretation and validation of the satellite images is being carried out in cooperat¡on with regional and national
Resolution Satellite Data: This phase
serves many purposes, viz. estimation of forest cover area close to 1 990; and estimation of the forest
remote sensing institutions. The Project is providing methodological guidance with
cover area changes during 1981-90. The recent high resolution data could also be used to calibrate results of the coarse resolution satellite data.
the objective of strengthening capacity of these institutions, thus enabling them to continue monitoring of forest resources in the future.
(3) permit delineation of biomass strata but not their complete mapping. The Project satellite
images with 1 km resolution to make a map of tropical moist f orests of the world observe 'patterns biomass distribution.
of forest
Use of bio-climatic data and
sampling units) is laid. Their distribution over various strata is determined after an analysis of the
and
first and second phase results. maps
Ultimately all the data collected in the three phases are statist¡cally analyzed to produce results on area and biomass/ha. and changes on a global basis.
available on a global basis combined with
existing ¡nventory data
expected
to
pro-vide
of
Field sampling: This phase should not
be seen as pure validation, but a source of statistics for correlation with the second phase. ln areas sampled with high resolut¡on satellite data, permanent filed plots (tertiary
The remote sensing sample ciata would
and
Coarse
Resolution Satellite Data: This step would enable stratification of survey
continuat¡on of sampling over a period of time will provide a complete cover of all the tropical forests. This will also allow
is also using NOAA AVHRR
a
present purposes the following three-step approach is outlined in Singh (1990):
actual tropical forest cover area, adequate
level. lt is
are
There are many options to combine remote sensing and f ield sampling as discussed in Singh (1986). For the
The sampling intensity chosen by the Prolect is currently about 10% of the
country
as
logically integrated in the framework of continuous monitoring design.
information combined w¡th other ancillary
to give a high degree of
of remote sensing
described earlier and field sampling for biomass. All components of the survey,
countries
the basis
is
for
estimating biomass mean value by strata under this option. The area and mean biomass per ha could be combined to produce an estimate of the total biomass.
Two measurements on permanent sample plots are necessary to estimate changes
t22
in biomass/ha. However, one time survey
data combined with modelling
non-tropical zones of the world. The precision of estimates for the biomass change in Option 1 are unknown, the other f¡gures are based on guesst¡mates only. The specification of precision for the area and area changes in Option 2 are based on sample survey design investigations described in FAO 1991; those for
could
provide a provisional estimate of rate of change of biomass in the first round of survey.
EVATUATIOIT OF OPTIONS FOR
biomass and biomass changes are based precision
GLOBAT BIOMASS ESTIMATION
on guesstimates only. The
A very approximate comparison will be
Option 3 are the same as those for Option 2. The estimated precision for biomass
estimates
area and area change in
and biomass change in Option
made in the following table of the three options f or global biomass estimation
3
are
extrapolated from a study of Schmid-Hass (1983). The cost est¡mates are based on experience of Forest Resources Assessment 1990 Project. The numbers quoted should be taken as indicative of the broad other of precision and cost.
presented earlier.
Some qualifying remarks are necessary on The
the figures quoted in Table 1 .
coverage is global including tropical and
Table
of
1. Comparison of cost-effectiveness of three alternative methods for estimating total
biomass and its rate of change
Option State
Estimated precision at 9S% confidence Change Assessment
Assessment
Area
Biomass
Total
Area
Biomass
Total
Estim.
Cost
MiI US$
1
1Oo/o
lOo/o
1
4Vo
20lo
Unknown
Unknown
2
2
5o/o
1Oo/o
11o/o
1Oo/"
3OV"
31o/"
4
3
5Vo
5o/o
lOo/o
1Oo/o
14%
þ
7
o/o
From the figures in Table 1, it would be
Chart. lt is hoped that this programme
obvious that the f ield sampling of biomass on continuing basis is an essential requirement f or an accurate modelling of
will be realized and a global monitoring of forest and natural resources realized in the near future.
C-budget and, in particular, its changes. This should not be a difficult task as the
The global continuous biomass inventories
Project experience suggests. A prerequisite for implementation of such a design is establishment of standards for field measurements and their acceptance by countries. Further, a minimum of funding must be assured by the internat¡onal community to undertake regular remote sensing and field measurements on selected sites and dates. Training of staff in the countr¡es on the common methodology must be provided. These ideas are contained in the Expanded Scope 1
of
would serve an invaluable purpose to
wide range of global scientists
a
and
modellers. As the human impact on the planet increases, so the need increases for a global continuous monitoring. Now
is the right time to start such a programme.
ACKNOWLEDGEMENT The author wishes to acknowledge the assistance of Mr. Klaus Janz, Senior
Forest Resources Assessment
990 Project, illustrated in the attached
t23
Forestry Officer (Resources Appraisal and
Monitoring) Forestry Department,
FAO, 1991 : The Sample Survey Design". Forest Resources Assessment 1 990 Project, Rome, ltaly.
FAO
and of Mr. Walter Marzoli, Consultant to the Forest Resources Assessment 1 990 Project in reviewing the paper and to
Lieth, H.F.H., 1978: Patterns of Primary
thank Ms. Pauline Simonetti for preparing
Production in the Biosphere. Dowden, Hutchinson & Ross, lnc. Pennsylvania
the manuscript.
USA.
P., 1983: Swiss Continuous Forest lnventory twenty years experience". Proceedings of the Renewable Resources Monitoring Changes and Trends. College of Forestry, Oregon State, University of Corvallis, USA.
Schmid-Haas,
REFERENCES Cook 4.E., lverson R.L. and Graham R.1., 1 989: Estimat¡ng Forest Productivity
with Thematic Mapper and
Biogeo-
graphical Data. Remote Sensing and
Environment 28:131-141
.
Elsevier
Science Publishing Co. lnc.
Singh, K.D., 1985: Non-Statistical
Cunia T., 1974: Monitoring Forest Environment Through Successive
Report of Tenth UN/FAO lnternational
Training Course on Application of Remote Sensing to Monitoring Forest
Sampling, Conference Proceedings.
State University of New
York
Lands. FAO, Rome ltaly.
College of Environmental Sciences and Forestry, Syracuse USA.
Singh, K.D., 1986: Conceptual Framework for the Selection of Appropriate
Cunia T., 1985: On the Error of Biomass Estimates in Forest lnventories, Part 1: lts Major Components. SUNY
College
of
and
Statistical Aspects of Monitoring. ln
Remote Sensing Technologies. ln
Practical Applications
of
Remote
Sensing in Forestry. Martinus Nijhoff Publishers for the United Nations.
Environmental Sciences
and Forestry, Syracuse USA. Faculty of Forestry Miscellaneous Publication Number 8 (ESF 85-0041.
of a Global Resources Assessment. Photogrammetric Engineering and Remote Sensing
Singh, K.D., 1990: Design
Tropical Forest
FAO, 1988: An lnterim Report on the State of Forest Resources ¡n the
56(
Developing Countrles. Forestry Department, Rome, ltaly.
1
0):1 353-4.
United States Department of Agriculture,
1986: Estimating Tree Reg ressio
FAO, 1990: Problems Associated with Estimations of Def orestation and
ns and
Th
Biomass
eir
Error.
Workshop Proceedings. State University of New York College of
Proposed Methodologv for the Project. Forest Resources Assess-
Environmental Sciences & Forestry, Syracuse USA.
ment 1990 Project, Rome, ltaly.
t24
ESTABLISHMENT AND ANALYSIS OF PERMANENT SAMPLE PLOTS Simo Poso Department of Forest Mensuratíon and Management University of Helsínki, Uníoninkatu 4O B 0Ol 70 Helsinki, Fínland
principles. Still, separate experimental plots are needed f or improving the
WHY PERMANENT SAMPLE PLOTS?
efficient use of land. The technical development in the field of data capture by remote sensing and data
The establishment of permanent plots
analysis and storage by electronic computers has been rapid. The development in the f ield of forest
offers a good aid in finding out how the land resources develop under alternative regimes. Thereby, it is possible to get data for building scenarios needed f or
inventory has not been as rapid as could have been expected and needed. lt
sustained development. Building of production models for alternative land use combinations may help to get the land
that the
potentials are not recognized well enough. lt is the duty of
seems
use under control.
international scientific organizat¡ons such as IUFRO to discuss the possibilities and to try to improve the level of knowledge needed for sustained development.
Decrease
LOCATING
of f orest area in
AND MEASURING A
tropical countries seems inevitable because of the pressure caused by the high rate of birth.
PERMANENT SAMPLE PLOT
lntegration of producing agricultural and forestry and other products inked o environment and nature protection is
The term sample plot refers to locating the plot by sampling, i.e. objectively. By this way it represents the population or a part of population according to the rules familiar from the statistics. lt may be
regarded as necessary. ln genera, there is much too little relevant data to build reliable scenarios and alternatives to get rid of uncontrolled and probably
diff
icult to f ollow strictly these
rules.
However, it is important to know the rules and deviate from them only for a
dangerous development.
good reasons.
The problems lie basically in the demand and supply situation. The supply of wood may be improved by making the use of products more efficient, cf . ¡mprovement
Proportional allocation of plots over large areas using equidistant placing can be the
in
first alternative to start with. There are at least two common reasons which cause deviations from this choice.
stronger.
First, the areas of interest may
burning technique. However, the opposite effect due to increase of the human population seems to be much
dif f er
much in physical conditions
There is a big demand for reliable ground
and
importance. This leads to stratification. ln each stratum the permanent sample plots are then established by own rules.
truth data especially in tropical conditions. lnventory and monitoring of forests by remote sensing requires ground truth collected and maintained according to the requirements of GIS and sound statistical
Second, travelling costs from a plot to another may become high. This leads to
t26
It is very important to make the
decision that the plots are to be measured ¡n clusters. ln national forest inventories clustering is a common technique.
measurements in well defined standardized form. Requirements for standardi-
zation have been presented by IUFRO many times earl¡er. The role of sound measurements should be increased over ocular estimations and classif ications. For example, the concept and role of forest land requires new thinking. This is
Whichever choice for stat¡stical sampling is used, each unit should be selected and located in general x- and y- coordinate
to enable the application of geographic information systems principle. ln addition to x- and y- coordinates two other variables are recommended : a for altitude and to for time of measurement. system
because of integral land use and subjec-
tivity of classifications. lt could be better to f avor post-classif ications of sample units based on the measurements.
It is most important to establish the plot
in the field in a way which makes it possible to find the plot easily enough after a period regarded as suitable. Specif ic marks can be made on the
DATA STORAGE AND ANALYSIS
ground and to the trees. Drawing maps
describing the location of the plot in relation to the environment is usually
Very many f ield measurements have been made without good storage and analysis. The inf ormation value of accurate measurements somet¡mes grows along
needed. Satellite based global positioning system may be used for help if the forest is not too dense.
the time, for example, in studying the The form and size of a plot may vary in
long run effects.
erent conditions. However, it is important to map the individual trees in the plot. A good technique is to apply polar coordinate system. ln this, every tree is supplied by data on the bearing diff
To avoid losses, specif ic responsibility system on data storing should be established in official form.
The analysis of measurements should primarily be done by computers. PCmicros are efficient enough. The power of the permanent sample plots is can be recognized only after 2 or 3 remeasure-
and distance from the plot centre.
The recording of location and data for each tree independently offers possibilities for effective analyses. The development of each tree can be followed. This gives a chance to study the dynamics of f orest stand by tree species and diameter classes and the
suitable program packages for the analysis should be intensified rapidly. This calls for international cooperation.
removal of trees and possible degradation by natural mortality and cuttings. Mapping of the individual trees often helps finding of the exact location of the permanent plot.
The original measurements should be stored carefully. Many estimat¡ons are made through models. These models should be always stored. Later, new and
The main task in the measurement of permanent sample plot is to gain
better models can be introduced. T):lese can also be applied to older matêrial in order to find the changes mgst reliably.
ments. The development and application
of
information on forest characteristics and
the changes through increment
The data should be measured and stored in a way that it is possible to get answers to the most important problems. ln many
and
removals. Also the changes in land use are important. Putt¡ng emphasis on the integration in land use one should be
cases
ready to'establish permanent plots on the areas in which it is possible to grow trees. General coordinate system offers a good
inf
it is very ¡mportant to
get
ormation about the effect of treatments
on forest and agricultural production
in
relevant physical measures. This calls for corresponding cooperation.
frame for sampling also in this respect.
r26
APPLICATION
OF
organizations such as FAO and IUFRO and
PERMANENT
hopefully aid organizations as well
PLOTS
After some remeasurements it ¡s possible to f ind out the changes in land use and in tree- and forest stand- variables. This makes
are
interested in promoting these activities.
it
possible
WHY GUIDELINES?
to build models and to
calibrate general models for estimating the production of trees and other vegetation. This, again, is necessary for building
long run scenarios f or practicing
Too little is known about the dynamics and changes in natural forests. The state
an
appropriate land use policy.
of technical and methodological development and the rapid decrease of forests
Satellite imagery is a powerful tool which enables monitoring of changes over large areas. The problem in using this technique is that ¡t requires a reliable field data. Permanent sample plots could offer
call for deliberation and cooperation.
The questions are: what is needed, how the data should be measured and how the
work should be organized. lt
ideal material f or the purpose. lt is pref erable to use satellite imagery in combination of permanent sample plots. Thus, the danger of biased results if only permanent plots are used can be kept under control. ln principle, permanent sample plots should be secret to avoid exceptional treatments. The treatments
seems
appropriate to try to answer the questions
using international platform. A sensible
way f or promotion could be to give common principles to be followed and construct guidelines for establishing and analysing permanent sample plots.
The work with permanent sample plots
shouldn't be dependant on the consciousness of the existence of the plots. ln practice, this is not easy to
must not be necessarily very high; some 1 ,000 plots could be enough for most of the countries. The critical thing is .to know how to work. With good planning of the work overlapping of efforts can be
arrange successfully.
minimized and
Forest inventory and monitoring and forestry planning are important issues on
eff iciency maximized. Establishment of permanent sample plots could turn out to be economical procedure in respect to alternative decisions. An important task is to f ind good experts and good organization to do the work.
local, regional, national and international
levels. These separate efforts can be integrated. lntegration seems very reasonable and explains why international
127
DATA REGISTRIES FOR GROWTH AND YIELD PLOTS IN ASEAN A NETWORK TO REVIEW CURRENT PERMANENT SAMPLE PLOTS IN THE TROPICS Hashim bin Saad Chung Kueh Shin ASEAN lnstítute of Forest Management Kuala Lumpur, 504O0, Malaysía
ABSTRACT
An important component of ASEAN cooperation in addressing foresf assessments and other management pr¡orities is the task of collecting or acquiring data from permanent sample plots (PSP), particularly the data which is essential for defining the productivity of the forest land base and for projecting forest inventories. Such data, wh¡ch is a scarce commodity in many instances in ASEAN, is difficult and costly to acquire. The collaboration of ASEAN through AIFM ìn respect of the provision of information and the sharing of data, can be beneficial. These include extending the value of the existing data base available to individual countries and influencing the method and manner of future data collection to produce mutual benefits, but in keeping with individuat country requirements. The collaboration will also consolidate guidelines for fhe establishment of a network of permanent monitoring site at the AIFM. The registries contain descriptive data only..4ccess to the registries enables usets to search
the files and to identify the nature and jurisdiction of PSP located in ASEAN member countries. Upon finding plots which are potentially relevant to their needs, users may then approach the proprietors and negotiate the sharing of information.
BACKGROUND
knowledge in growth & yield modelling, to
support the establishment of ASEAN standards and to set up a regional
The concept of Data Registry was first mooted by AIFM at the Second Meeting
network.
A
of the Forest Opèlation and Work Studies Technical Working Group held in Thailand in March 1988. The intention was to set up a computerized registry at the AIFM f
paper on "Proposal for Creating and Maintaining A Registry of Growth and
Yield Plots
in ASEAN" was also put
forward at the ASEAN Seminar "lnformation for Forest Management" in Johor Bahru, Malaysia in November 1988.
or all silvicultural, ecological and
plantation sample plots and trials which
have been established in the ASEAN region. The registry would help to avoid
Previous to this proposal, there were some information on growth studies in
duplication (by facilitating the location of existing information before scheduling of growth and yield studies), to promote the
the region stored at the library of the University of Philippines at Los Banos and
of data and research information, to upgrade sharing and exchange
the Yale School of Forestry and Environ-
mental Studies in the U.S.A.
tzg
(Revilla
1988). This information is incomplete and contains little on growth stud¡es. There is also a report on "Register of Current Growth and Yield Besearch Sample plots in lnsular and Peninsular South East Asia" published by FAO in 1976 and contained some growth data for the region (FAO 1976).
METHODOLOGY
Two Registries have been constructed, one for natural forests and the other for plantation forests. Both contain headers (fields) to describe PSP parameters. These
are stored in dBASE lV,
a
database
management software.
INTRODUCTION The basic design of the Registries uses
To date, growth data in the
a
Forest lnventory (CFl) data and'Malaysia has plantation data. ln the State of Sarawak (Malaysia), a comprehensive
two-dimensional spread sheet. The column shows the names of each plot while the row shows the related plot information. By selecting headers of any combination, a selection of datasets can be scanned, viewed and retrieved. The file structure of these Registries is listed
method
in the Appendix.
ASEAN
Region has been accumulated using diffe-
rent formats, approaches and objectives.
As such, the Philippines has Continuous
of data collection for
natural
mixed dipterocarp forests was developed by FAO in the early eighties (Hutchinson 1982).
The Data Registry is a
portable
information system and is designed to
operate on an IBM-compatible
A Data
Registry can categorize and document Growth and Yield plots in a systematic manner because it contains records for each growth and yield plot in
microcomputer equipped with MS-DOS, hard-disk drive, and dBASE lV. Although the user need not be familiar with DOS to learn dBASE lV, some experience w¡th
a manner similar to a library catalogue or
DOS
the entries in an address book.
It's our intention not to maintain a data bank of complete plot records at the lnstitute due to high cost involved. The
concept is similar to that of a catalogue service, i.e. a user draws up a shopping list, goes to the catalogue, finds the items and then orders them. However the Data Registry has several advantages over an
cost of operating a catalogue system only is estimated to be significantly less than maintaining a data bank. Reimer (1977l,
address book, the card system in a library or a catalogue service because ¡t supports the following functions.
-
new entries can be added easily
systematically
as they
will be helpful.
The
estimated
the cost of operating a
catalogue system was only 10% of the later method. The earlier is considered to be much more desirable in term of f inance
and
and practicality.
become
available.
-
manpower
necessary to maintain the data bank were
estimated to exceed US $sO,Ooo/year in 1976 in the Washington and British Columbia Regions. Considering the legal
information can be easily retrieved. Criteria need only to be specified to
-
that the costs in and computer resources
Reimer estimated changes to old data captured in the Data Registry are simple.
pull out the records of interest.
aspects of crossing international
information can be saved and stored.
data which would have
inf
ormation can be printed into
variety
of
useful formats such
boundaries in ASEAN, the large volume of to be updated annually, the large number of changes in data recording formats which agencies are continually making, the high operating costs, and the proprietary nature of the data, this alternative is non feasible.
a
as
customized list, mailing label and letter form.
130
CONTENTS
OF
THE
DATA
cies in the ASEAN countries.
REGISTRIES
*
representatives f rom each ASEAN
Relevant data for 212 permanent sample plots from natural forests and 1 267 plots
from plantation forests have
member country.
*
been
collected. The collection was made available to Malaysia, lndonesia, philippines, and Thailand. Brunei Darussalam and made
Registries f rom lndonesia, Malaysia,
through:
*
members of various AIFM Technical Working Groups.
The following two tables show the outline of data distribution available in the Data
Singapore have yet to submitted their pSp
to AIFM. The collaboration were
the members of the AIFM Growth and Yield Study Group which comprises
Philippines and Thailand. The tables serve
to brief the reader before embarking on search of the Registries.
direct correspondence between the lnstitute and the various forest agen-
Table 1. Growth and yield plots of natural forests in ASEAN
lndonesia
Sumatera Selatan Riau
1
Jambi
Kalimantan Kalimantan Kalimantan Kalimantan
2 1
Tengah
1
Barat
3
Selatan
1
Timur
1
1
Malaysia
Johor Kelantan Pahang Perak Sabah
Sarawak Selangor N. Sembilan Philippines
Mountain Province Zambales Palawan
Camarines Norte Negros Oriental Western Samar Southern Leyte Zamboanga del Sur Misamis Oriental Benguet Province Nueva Vizcaya Ouirino lsabela Cagayan Ouezon
Total Plots
131
1
2 2 1
128 27 1 1
,
a
Table
2.
Forect Plantation
Growth and yield plots of plantation forests in ASEAN.
Cor
Þrnr¡i
rntrv
Nln n{ Plnfc
Sumatera Selatan Sumatera Utara Kalimantan Selatan Sulawesi Selatan Sulawesi Utara
lndonesia
Jawa Barat Jawa Timur Jawa Tengah Flonnl¿r
Malaysia
rlr
17
46 12 10 7
257
265 314 a
r
2
Johor Pahang
1
4 257
Perak Sabah
Sarawak
48
Selangor
18
frl aamhil Tntel
1
Plnfc
1
coNcLUsroNs
)^7
The methodology described in this paper will be adopted by lnternational Tropical timber Organization (ITTO) coordinated by ANUTECH, the consulting arm of the Australian National University in Canberra,
This paper describes a method to facilitate the sharing and exchanging of growth and yield data for the improvement of forest management. lt will have
Australia. The data base will
be
expanded to cover non-ASEAN countries.
the following potent¡al benefits for the ASEAN.
+
ACKNOWLEDGMENTS extending the value of existing data base available to individual country.
*
The authors wish
future data collection to
to thank
those who
gave information, suggestions and advice for the construction of the Reg¡stries. Without their assistance these Data Registries would not have been
influencing the method and manner of produce
mutual benefits. One of the central l¡mitat¡ons of the data registry is the varying sets of parameters each country and agency used ¡n the past. lt would be helpf ul in the f uture for
completed.
- Forest Department lndonesia - Forest Department Peninsular
ASEAN working committees to design and promote a flexible set of standards
Malaysia
- Forest Department Sabah - Forest Department Sarawak - Sabah Foundation - Sabah Softwood Sdn Bhd - Sabah Forest Development Authority - Sabah Forest lndustries - Forest Research lnstitute Malaysia - Forest Management Bureau
coùer¡ng parameters to be measured, data entry and updating procedures and data sharing prerequisites.
The constant improving, updating and control of the data registry is of importance. At present it contains only part of existing PSP data from the ASEAN member countr¡es. ASEAN foresters and researchers should assist AIFM to improve the expansion of a comprehensive registry.
-
Philippines Ecosystem Research and Development Bureau (ERDB) Philippines
Boyal Forest Department Thailand
r32
REFERENCE
8000, Cary, NC, USA.
FAO, 1976: A Register of Current Growth and Yield Research Sample Plots in lnsular and Peninsular South East
Reimer, D.R., 1977:
Asia. Project Working Document N0. 48, Food and Agriculture
the
MacMillan Bloedel Limited, Forestry Operations, Nanaimo, B.C. Canada.
Organization of The United Nations, Regional Office for Asia and the Far East, Bangkok, Mataysia.
A.V. Jr. and Gregorio, M.C., 1988: Proposal for Growth and Yield Studies in the ASEAN
Revilla,
Hutchinson, 1.D., 1982: Field Enumeration of Permanent Sample Plots in the Mixed Dipterocarp Forest of
Sarawak. Forest
Report of
Committee on Standards of Measure and Data Sharing.
countries. ASEAN lnstitute of Forest
Management, Kuala Lumpur, Malaysia.
Department, Smith, S., 1988: Report ASEAN lnstitute of Forest Management Mid Term Assessment. Stephen Smith & Associates, Forestry Consultants
Kuching, Sarawak. Linden, C.4., 1987: SASIFSP Guide for
Personal Computers
Version 6Edition. SA,S lnstitute lnc. Box
lnc. Victoria, Canada.
133
APPENDIX
FILE STRUCTURE
A.
2.
PLOT LOCAL NUMBER: Character.
The name by which the plot is known in the country. Such as AIFMNUMBER 0001 is known as
NATURAL FORESTS
4.1 DATABASE FOR NATURAL
"Gunung Tebu" in Malaysia.
FORESTS DATA REGISTRY 3
The Registry Database consists of two
iles, namely 'AlFMNG35.dbf ' and "AlFMNG35.dbt'. lt is a logical f ile structure similar to a 2-dimènsional
lndicates the origin of data.
f
1 2 3 4 5 6
spread sheet (Table). Every record (row)
on this file describes a specific growth and yield plot. Each record consists of 35
fields as detailed below. The file name
constructed based
on the
is
following
naming convention:
4
dbr
code for Johor.
(6)
21 22 23 24 25 26 27 28 29
number of fields. extension file name for database which holds all the fields except the memo field. extension file name for database which holds only the memo f ield. )
Riau
211 Jawa Barat 212 Jawa Timur 2'l 3 Jawa Tengah
NUMBER, (6} LONGITUDE, (7) LATITUDE, (13) NUMBER OF PLOTS, (14) ESTABLTSHMENT DATE, (15) PLOT AREA, (18)
31 Johor 32 Kelantan 33 Pahang 34 Perak 35 Sabah 36 Sarawak 37 Selangor 38 Sembilan 39 Terengganu 41 Mountain Province 42 Zambales 43 Palawan 44 Camarines Norte 45 Negros Oriental 46 Western Samar
DATE OF FINAL FELLING, and (29) NUMBER OF MEASUREMENTS. In numeric field, -99 will display if data is not available. ln character field, F will display. Plot general information
.
Sumatera Selatan Sumatera Utara
Jambi Kalimantan Tengah Kalimantan Barat Kalimantan Selatan Kalimantan Timur Sulawesi Selatan 210 Sulawesi Utara
All entries ate coded except (1 AIFMNUMBER, (21 PLOT LOCAL
1
PROVINCE: Numeric code. Province
lndicates administrative location of the plot, such as 31: 3 is a country code for Malaysia; 1 is a provincial
memo.
35 dbf
Brunei lndonesia Malaysia Philippines Singapore Thailand
is also interpreted as "state".
AIFM : the lnstitute. N Natural Forests. G General lnf ormation consisting of (1) plot general information; (2) environmental data; (3) tree measurement; (41 silvicultural
treatment; (51 soil type;
COUNTRY: Numeric code.
AIFMNUMBER: Numeric four digits.
A unique running number assigned by AIFM to identify each ASEAN Growth and Yield plot in the database. AIFMNUMBER runs from
0001.
134
2 3 4
47 48 49
Southern Leyte Zamboanga del Sur Misamis Oriental 410 Davao oriental 411 Benguet Province 412 Nueva Vizcaya
Lampang
10.
lndicates average gradient across the plot.
with the
ownership. Such as 1 is for Forest Department.
1 2 3
Address (location) appears in the memo field.
1 Forest Department 2 Sabah Foundation 3 Sabah Softwoods 4 Sabah Forest Development
1
1.
Ecosystem Research
12.
is used. This classif ication is
categorized in the following codes:
1 upper montane 2 lower montane 3 upper monsoon 4 conif erous 5 lower monsoon 6 dipterocarp 7 mixed evergreen 8 dry deciduous 9 mixed deciduous
and
(ERDB}
9
Forest Research Centre Bogos lndonesia (FRDC) 20 Forest Management Division
10 submarginal
LONGITUDE: Numeric in degree.
LATITUDE: Numeric in degree.
decimal.
STATUS: Numeric code.
Relates
1
1 savanna
1
2 beach
13 health 14 fresh water swamp 15 peat swamp 16 mangrove
Records to the nearest one decimal.
Records to the nearest one
FOREST TYPE: Numeric code.
The forest classification proposed by the AIFM for the ASEAN region
Development Bureau Philippines 1
and
address.
Malaysia
8
REPORT: Character code.
such as abstract, author
Benguet Consolidated lnc. Taggat lndustr¡es Zambeles Timber Corp. 10 Western Palawan Timber Corp. 11 Heirs of Leonardo Mendoza 12 Negros Timber Co. lnc. 13 Basey Wood lndustries 14 Silago Timber Co, lnc. 15 Sta. Clara Timber Co. lnc. 16 P.N. Roa Ent. lnc. 17 Pahamutang Logging
1
2O%+
lndicates report availability. lf "yes",
5 Sabah Forest lndustries 6 Forest Research lnstitute 7 I 9
O -5o/o 5o/o - 2Oo/o
detail is shown in the memo field
Authority
8.
SLOPE CLASS: Numeric code.
AGENCY: Numeric code.
Associates
7.
Numeric
1 0-300meters 2 300 - 1000 meters 3 1000 + meters
416 Ouezon
6.
destroyed
code.
41 5 Cagayan
5.
closed
9. ELEVATION CLASS:
413 Ouirini 414 lsabela
61
dormant
the current position or
13.
NUMBER OF PLOTS: Numeric.
14.
ESTABLISHMENT DATE: Numeric. Refers to the establishment of PSP and records year in numeric four
status. 1 active
digit format.
13ã
15.
PLOT AREA:
Numeric.
24.
CROWN - POSIT|ON tN CANOPY: Character code.
The unit is in hectares.
16.
STEM MAP: Character
lndicates that the plot has a
maP. 17.
lndicates f orm measurement f or
code.
crown.
25. CROWN -
stem
VIRGIN OR CUTOVER: Numeric
T for "yes" and F for "no"
code.
1
2
DAMAGE: Character
code.
26. TREE - VIGOUR:
virgin cutover
18. DATE OF FINAL
Character
code.
lndicates examination of
the
as health, cylindrical f orm
and
physical condition of the tree such
FELLING:
Numeric.
stra¡ghtness. Records year ¡n numeric four digit
format. ENVIRONMENTAL
19.
DATA
27.
code. PRECIPITATION: Numeric code.
lf yes, deta¡l is specif ied in the
lndicates annual average rainfall in
memo field.
mm.
28.
1 less than 1000 2 1000 - 2000 3 2000 - 3000 4 3000+ 20.
OTHER MEASUREMENTS: Character
MEASUREMENT PERIODICITY: Numeric code. lndicates the periodic frequency of repetitive occurrence.
1 2 3 4
TEMPERATURE: Numeric code.
lndicates annual average degrees in Celsius.
29.
1 0-20 2 20-30 3 30+
measured measured measured measured
NUMBER
annually biannually triennially irregularly
OF
MEASUREMENTS:
Numeric.
lndicates
the sum of
measurements
repetitive
which have
been
taken. Tree measurement
21.
STEM - DBH: Character code. lndicates diameter measurement stem.
22.
STEM - HEIGHT: Character
Silvicultural treatment
for
30.
TREATMENT: Character code. lndicates the type of treatment(s). lf treatment is applied, detail is shown in the memo field.
code.
lndicates height measurement for
stem. 23.
STEM - DAMAGE: Character
Soil type
code.
31.
lnd¡cates damage measurement for stem.
TEXTURE: Character code.
lndicates the relative proportions of the various soil types separated into
136
- Definition of parameters - Sampling inf ormation such
sand, silt and clay as descr¡bed by the classes of soil texture.
32.
as
intensity, buffer zone and allocation of sample
SOIL DEPTH: Character code.
- Others lndicates the depth of forest floor in Litter, A Horizon, Effective, Total and Rooting.
33.
When memo field contains informa-
tion, its marker is shown in the uppercase letters "MEMO'. When
CHEMICAL ANALYSIS: Character
the memo field is empty, its marker
is shown in
code.
lowercase letters
"memo". lndicates the chemical constitution, properties, and reactions of soils.
34.
A.2
PH: Character code.
lndicates the degree alkalinity of a soil.
ADDITIONAL FILES
Three additional f iles
of acidity or
namely
COUNTRY2.DBF, AGENCY2.DBF and TREE3.DBF that display the coding systems for each of these three f ields were created. These subsidiary files are useful as they
Memo file - general comments
provide easy access when decoding
35.
MEMO:
is required. COUNTRY2.DBF has two f ields: country code and
A memo f ile ref erence
country name. AGENCY2.DBF has two f ields: agency code and agency
containing descriptive material.
This wr¡te-up f ile contains
the
name whereas TREE3.DBF has three fields: tree code, genus and species. TREE3.DBF contains only plantation species. Decoding other relatively small files are done manually.
Measurement of other species such as palm, bamboo and rattan - Previous logging history
AIFMNG35.DBF, COUNTRY2.DBF
f
ollowing
inf
ormation:
- Agency's address - Objective of the study - Report writing
lf one wants to view
- Regeneration measured
-
and AGENCY2.DBF simultaneously,
one needs
137
to link them together.
Diagram
1.
The linkage between
fil.es in nâturat forests
AI FI'ING35.DBF 1
.
AI
F],INUMBER
2. LOCANUMBER 3. COTJNTRY 4. PROV¡NCE 5. AGENCY 6. LONGITUDE 7. LATITUDE 8. STATUS 9. ELEVATCLAS
10.
SLoPECLASS
1 1
REPORT FORESTTYPE NOOFPLOTS ESTABDATE PLOTAREA
.
12. 13, 14. 15. 1ó. 17.
18. 19.
sTEt{l'lAP VIRGINOCUT FFELLDATE
PRECIPITAT
20. TEMPERATUR 21. STEMDBH 22. STE}IHEIGHT 23. STEMDAI,IAGE 24. CROIJNPIC 25. CROI.INDAMAG 2ó. TREEVIGOR 27. OTI'IIEASURE 28. PERIOD 29. NUMBER 30. TREATMENT 31. TEXTURE 32. SOILDEPTH
33. cA 34. PH 35. MEMO
138
B.
PLANTATION FORESTS
Plot general information
B.1 DATABASE FOR PLANTATION 1 .
AIFMNUMBER: Numeric four digits.
FORESTS DATA REGISTRY
A unique running number assigned by AIFM to identify each ASEAN
The Registry Database consists of three
fi!es, namely "AlFMPG34.dbf., "AlFMPG34.dbt" and "A|FMPCS3.dbf
The f ile names "AlFMPG34.dbt"
Growth and Yield plot in
the database. AIFMNUMBER runs from
'.
" and are constructed based "AlFMPG34.dbf
0001.
2.
PLOT LOCAL NUMBER: Character.
on the following naming convention:
The name by which the plot AIFM: the lnstitute. P Plantation Forests. G General lnformation
ting of inf
consis-
) plot
(1
ormation; (21
4.
dbr
ile name
or database which holds all the f ields except the memo f ield. f
PROVINCE: Numeric code.
Province is also interpreted as "state". Similar to the province code of natural forests and refer to page
number of fields.
extension
COUNTRY: Numeric code.
Similar to the country code of natural forests and refer to page 8.
environ-
(6) memo.
:
3.
general
mental data;(3) tree measurement; l4l silvicultural treatment; (5) soil type; 34 dbf
is
known in the country
f
8.
extension file name for database which holds only the memo field.
5.
All entries are coded except (1 AIFMNUMBER, l2l PLOT LOCAL NUMBER, (6) LONGITUDE, (7) LATITUDE, (12) PLANTING AGE, (14) NUMBER OF )
PLOTS, (15) ESTABLISHMENT DATE, (16) PLOT AREA, and (28) NUMBER OF
Similar to the agency code of natural forests and refer to page 9.
6.
LONGITUDE: Numeric in degree. Records to the nearest one decimal
7.
MEASUREMENTS. ln the numeric field, -99 will display if data is not available. ln the character field, F will display.
AGENCY: Numeric code.
LATITUDE: Numeric in degree. Records to the nearest one decimal.
8.
STATUS: Numeric code.
The descriptions of A|FMPCS3.dbf are:
AIFM:
Similar to the status code of natural forests and refer to page 9.
the lnstitute.
P
Plantation Forests.
c
Country where seed
source
9.
ELEVATION CLASS: Numeric code.
is originated. S
specres.
3
number of fields.
dbf
extension
f
ile name
Similar to the elevation class code of natural forests and refer to page f
9.
or
database which holds all the
fields except the memo
f
10. SLOPE CLASS: Numeric
All entries are coded except (1
Similar
The description of the lields are
to the slope class code
of
natural forests and refer to page 1 0.
)
AIFMNUMBER.
f
code.
ield.
1
1.
REPORT: Character code.
as
lndicates report availability. lf yes,
ollows:-
139
detail is shown in the memo field such abstract, author and address.
12.
PLANTING YEAR:
as
23.
Numeric.
CROWN - POSITION Character code.
lN
CANOPY:
lndicates that crown has form measurement.
Refers to the year of planting. 1
3.
code.
PLANTING METHOD: Numeric
24.
14. 1
5.
bare root container
measurement.
25. TBEE - VIGOUR: Character code.
NUMBER OF PLOTS: Numeric. ESTABLISHMENT DATE:
Records year of plot
PLOT AREA:
DAMAGE: Character
lndicates that crown has damage
stock
in numeric four digit
16.
-
code.
1 seeded
2 3
CROWN
lndicates that the physical
Numeric.
conditions of the tree are recorded.
establishment 26. OTHER MEASUREMENTS: format. Character code.
Numeric.
lf yes, detail is specified in the memo field.
Unit are ¡n hectares.
17.
STEM MAP: Character
27.
code.
lndicates that the plot has a
map.
MEASUREMENT PERIODICITY: Numeric code.
stem
Similar to the measurement periodicity code of natural forests and refer to page
Environmental
18.
data
28.
lndicates the sum of measurements taken to date.
Numeric
code.
Silvicultural treatment
Similar to the temperature code of natural forests and refer to page 1 1 .
Tree
29. TREATMENT: Character in the memo field.
STEM - DBH: Character code.
lndicates that stem has
diameter
measurement.
SOIL TYPE
30.
STEM - HEIGHT: Character code.
lndicates that stem has
22.
code.
lndicates the type of treatments. lf treatment is applied, detail is listed
measurement
measurement.
.
MEASUREMENTS:
PRECIPITATION: Numeric code.
19. TEMPERATURE:
21
OF
2.
Numeric.
Similar to the prec¡pitation code of natural forests and refer to page 1 1 .
20.
NUMBER
1
lndicates the relative proportions of the various soil types separated into sand, silt and clay as described by classes of soil texture.
height
STEM - DAMAGE: Character code.
31.
lndicates that stem has damage
measurement.
TEXTURE: Character code.
SOIL DEPTH: Character code.
lndicates the depth of the forest
140
floor in Litter, A Horizon, Effective, Total
planted.
and Rooting.
32.
101 ACACIA AURICULIFORMIS 102 ACACIA LAEFORMIS 201 ACROCARPUS TRAVIFOLIUS 301 AGATHIS MACROPHYLLA 302 AGATHIS ROBUSTA 401 ANGSANA 501 ANTHOCEPHALUS CHINENSIS 601 ARAUCARIA CUNNINGHAMII 602 ARAUCARIA HUNSTEINII 7O1 AZAOERACHTA EXCELSA 801 BALSA 901 BRUGUIERA PARVIFLORA
CHEMICAL ANALYSIS: Character code.
lndicates the chemical constitution, properties, and reactions of soils.
33.
PH: Character code.
lndicates the degree alkalinity of a soil.
of acidity
or
1OO1 CALAMANSAI
Memo file - general comments
34.
MEMO:
A
memo
f
ile
1101 CALAMUS CAESIUS 1
containing descriptive material. Similar
to the memo file of
natural
forests and refer to page 1 2.
8.2 1
.
AIFMPCS3.dbf AIFMNUMBER: Numeric four digits.
It ¡s a
series
of plot
this
NATION: Numeric code.
lndicates the country where the
seed is originated. The number is continued from the country code noted in 4.1.
7 Australia I Bahamas 9 British Honduras 1 0 Cuba 1 Fiji 2 Gambia 1 3 Ghana 1
1
14
5 6 17 18 19 1 1
the name of
CUPPRESSUS
DUABANGA MOLUCCANA
3OO1 MACROPHYLLA 3101 MAESOPSIS EMINII
3201 3301 3302 3303 3304 3305 3306 3307 3308 3309
SPECIES: Numeric code.
lndicates
CEDRELA MEXICANA CEDRELA ODORATA CEIBA PENTANDRA CORDIA ALLIODORA
2701 INTSIA PALEMBANICA 2801 KHAYA 2901 LEUCAENA LEUCOCEPHALA
Guatemala Honduras lndia Nicaragua Nigeria Papua New Guinea Solomon Spanish Honduras
20 21 22 Sri Lanka 23 Taiwan
3.
CECOOPTA
2OO1 2OO2 2OO3 2OO4 2OO5
Registry.
2.
CALAMUS OPTIMUS CALAMUS SCIOPIONUM CALLIANDRA CALOTHYRSUS
DURIO ZIBETHINUS EUCALYPTUS ALBA EUCALYPTUS BRASSIANA EUCALYPTUS CAMALDULENSIS EUCALYPTUS CITRIODORA EUCALYPTUS CLOESIANA 2006 EUCALYPTUS DEGLUPTA 2OO7 EUCALYPTUS GONIOCALYX 2OO8 EUCALYPTUS GRANDIS 2OO9 EUCALYPTUS MICROCORYS 201 O EUCALYPTUS SALIGNA 201 1 EUCALYPTUS TERETICORNIS 21 O1 EUSIDEROXYLON ZWAGERI 2201 FLINDERSIA MAESOPSIS 2301 GMELINA ARBOREA 2401 HEKENYA FILICIFOLIA 2501 HIBISCUS ELATUS 2601 HYMENEA
number
by the AIFM f or
designed
'I02 CALAMUS MANAN
1103 1 104 1201 1301 1401 1402 1501 1601 1701 1801 1901
reference
species
L4l
MAHAGONY MELIA AZADERACH MELIA COMPOSITA MELIA BUKIT MELIA EMINII MELIA MELANTAI MELIA PUNAI MELIA SARANG MELIA SERAYA MELIA TEMBAGA
3401 3501 3601 3602 3603 3604 3605
3606 3607 3608 3609 3610 3701 3801 3802 3901
4103 4104 4105 4201 4301 4401 4501 4601 4701 4801
PAKIA JAVANICA PARASERIENTHES FALCATARIA PINUS BAHAMENSIS PINUS CARIBAEA
PINUS PINUS PINUS PINUS PINUS PINUS PINUS PINUS
ELLIOTII HONDURENSIS
INSULARIS KESIYA
MASSONIANA MERKUSII
OOCARPA PATULA RACOSPERMA MANGIUM RHIZOPHORA APICULATA RHIZOPHORA MUCRONATA ROBUSTA
CHLOROPHORA EXCELSA PODOCARPUS TEYSMANII
One can View
The Iinkage between
between files in plantation forests.
fites ìn plantation
forests
A¡FII1PG34.DBF
AI FMPCS3.DBT TREE3 . DB
1. 2. 3.
TREE
F
CODE
AIFMPG34.DBF,
The following diagram shows the linkages
4OO1 SALIGNA
2.
TAXODIUM TECTONA GRANDIS TERMINALIA IVORENSIS
COUNTRY2.DBF AND AGENCY2.DBF at the same time or AIFMPCS3.DBF, COUNTRY2.DBF and TREE2.DBF.
4101 SHOREA ALBIDA 41 02 SHOREA HEMSLEYANA. Diagram
SHOREA MACROPHYLLA SHOREA PINANGA SHOREA TALURA SWIETENIA MACROPHYLLA TABEBNIA
1. 2.
3.
1. AIFMNUI,IBER 2. LOCANUMBER 3. COUNTRY 4. PROVINCE 5. AGENCY ó, LONGITUDE 7. LATITUDE 8. STATUS 9. ELEVATCLAS
AIFMNUIIIBER NAT¡ON SPPCODE
GENUS
SPECIES
COUNTRY2 . DBF
10.
SLoPECLASS
1 1
REPORT
.
12. 13. 14. 15. 16.
PLANTYEAR PLANTMETHO NOOFPLOTS ESTABDATE PLOTAREA
1
STEMTIAP
7.
18. 19.
20. 21. 22. 23. 24. 25. 2ó.
27. 28. 29. 30. 31
.
32. 33. 34.
PREC¡PITAT TEI.IPERATUR STEI.IDBH
STEI'IHEIGHT STE¡IDAI4AGE
cROtJNPtc CROt.,NDAT,IAG
TREEVIGOR OTMEASURE
PERIOD NUI'iBER TREATI'.IENT TEXTURE SOI LDEPTH
cA PH l,rEMo
L42
AGENCY2 . DBF 1 . AGENCYCOÐE
2.
AGENCYNAME
FOREST AREA ESTIMATES : SAMPLING ERROR AND CLASSIFICATION PROBLEMS Chrístoph Kleinn Díeter R.Pelz Uníversität Freiburg Abteilung für Forstliche Bíometríe Freiburg, Germany
ABSTRACT Area estimates are integral part of most forest inventories. Several problems arise when forest inventories are carried out to assess areas and to monitor area changes. Two problems are especially important, one related to the errcr estimation, the other related to the compatibility of area estimates from different inventories, which is in part a classification problem.
ln area estimation often a systematic dot grid is being used, which more efficient than randome sampling. However, the sampling error cannot be calculated with standard statistical methods. Empirical methods are prcsented for estimating the sampling error from a single dot grid sample. Such an estimnate can be used to assess the precision of dot grid area calculations, both for state and change assess/.renf. The area error, although rarely specified explicity, is a maior contributor to the total error of a forest inventory. Therefore, it should be determined and be recognized in a total error budget.
ln most cases, a sampling approach will
INTRODUCTION
be
pref
erable. Standard
samPling
methods for area estimations are dot grids
and line transects. Both methods are being used in forest inventories and in other areas as well, f or examPle in
Forest areas are being estimated in most
forest inventories, differentiated in two (forest/nonforest) or several classes (forest types). The area can be calculated by several methods. The direct measure-
ecology
or microbiology. ln
forest
inventories these sampling approaches are
being used
in terrestrial surveys and
ment of the area on maps or photographs
remote sensrng.
is only possible when the population is relatively small or when little detail is required. This delineation can provide exact results, however it cannot be
ln the following, problems associated with the calculation of the sampling error are
discussed for the case of forest/nonforest area. This binomial problem can easily be extended to the multinomial case (i.e., several forest classes) by treating each
verified (FAO 1981, p. 79) as subjective influences occur, the results depend on experience, prior knowledge, and possible bias of the interpreter.
stratum separately.
143
The use of the f ormulae f or random sampling will result in an overestimation
SAMPLING ERROR
of the actual error. This often is accepted as this error is on the conservative side,
ln area determination often it is assumed that no error occurs, or inappropriate error
however,
estimat¡on methods are being used. Standard statistical procedures used f requently f or the calculation of the reliability of dot grid estimates assume random distr¡bution of points. For practical reasons, however, systematic
accurate . estimate
is
are to be ¡nvestigated. ln the following, the maps in Figure 1 will be used to exemplify the problems. For each of the maps the true standard error
has been calculated by simulation. For each dot grid density with random
selection is preferred. These dot grids are easier to apply and the results can be
starting point and random direction of the grid, sampling was performed with 1O0 replications. Thus, we had 100 est¡mates for the area. The standard error of these estimates is equal to the sampling error. The absolute area is calculated from the
presented in graphical form as raster maps. However, no estimate of sampling
error can be made easily. ln
an
important, especially when area changes
the
following, an approach based on empirical methods will be presented that allows the est¡mation of the sampling error, under the assumption that quadratic dot grids are used.
number
of points in the f orest.
We
assume that each point in the quadratic grid of w¡dth so represents an area sn'.
FÍgure 7. Example of three forest cover maps as used in a simulation study for the sampling error of dot grid sampling. The results are given in Figure 2.
"\
o-o B{ ô-
Mop J
Mop2
-ô Mop
1
-i:
Fígure 2. True sampling error for the three sample maps in Figure 1 . The standard error percent is given
.Þ be L'-J
Ø
as a function of the number of
points in forest area.
The
uppermost line gives the error fo¡ a random process. o.1 0 2.O
I44
To present the relation of standard error and grìd density, a logarithmic scale is
lection. With increaslng number of points in the forest stratum the diff erence between random and
used, where the standard error in percent number of points in the forest is the independent variable. ln Figure 2 the results of the simulations are presented. For compa-
is the dependent and the
systematic select¡on becomes bigger.
For map 1 (see Figure 1l with a number of 6,000 points inside forest the error for the systemat¡c dot grid is about 1 l1O of the error for random
rison, the standard error for random sampling is given also. The following main points can be inferred
-
sampling.
:
- the sampling error of the dot grid estimate is inf luenced by the
the relation is linear in the log scalethe standard errors of dot grids are
fragmentation of the forest area. The simple map in Figure 1 is estimated with much higher precision than the
always lower than the one for random selection
-
map. These diff erences become more pronounced with more scattered
the difference between random and systematic sampling is lowest for wide grids. This can be explained by the f act that f or wide grids the
increasing number of points.
-
correlation between adjacent points is low and approaching the random se-
random selection
Mapl: Map2: Map3:
:
log SE% logSE% logSE% logSE%
a simple linear model for estimating the standard errors of area estimates for these maps is as follows :
= 2.00000 - 0.50000
= 1.97111-0.72972 = 1.97808 - 0.67812 = 1.98398 - 0.62714
log log log log
n n n n
no-., the number of points in stratum 0 with a direct neighbor in vertical or
The formula for the random selection is a f unctional relationship that can be derived from a Poisson process with density n/F, where F = âr€ô, n = expected value of
horizontal direction ¡n stratum 1 we are
the dot grids become lowers.
obtaining a simple measure for the spatial distribution. lf this number is low we have a relatively simple spatial structure, if the number is high the structure is more complicated. This number is also influenced by the scale, i.e., the ratio of dot grid width and dimension. This measure,
A simulation study was conducted that
however, has the advantage thât it can be calculated from a single sample, prior
the number of points in the area. The
formulae for the three maps are based on
simulation. For small n the relation
is
similar as for the random selection, with increasing n the standard error values for
was based on 60 digitized forest maps, which included 30 to 27,5O0 polygons. Based on this study, an estimation formula has been developed that can be used to estimate the sampling error of systematic dot grids
inf
=
1
on the structure is
not
lf this measure is included in the estimation formula for the sampling error, we obtain the following formula, based on simulations of 60 maps :
:
log SE%
ormation
necessary.
.920397 - 0.688748 log n
log SE%
with a 12 = 09.9475 (in log scale).
= 1.60894-1.1O57 log n +0.55296
log
n*,
where n0.., is the number of transitions from stratum 0 to 1 in the perpendicular raster directions. The estimation of the
This estimation formula does not take the
spatial distribution into account, but it is very simple to use. A higher degree of
sampling error can be improved with the addition of this variable (R2 : 0.9788 in
accuracy can be reached if we consider the spatial pattern as well. lf we define
log scale).
r45
the number of po¡nts in a stratum and the
CLASSIFICATION
Spatial patterns also
inf
luence
number of points in a given stratum having a direct neighbor in the other stratum. This formula takes the spatial distribution into account, but no prior inf ormation on the spatial structure is
the
accuracy of the estimation of forest area. ln many inventories an area is defined to be forest if the crown cover is higher than some given percentage. To investigate the effects of different forest definitions and how the accuracy of area estimates
is influenced by the definition and
needed.
There is a correlation between spatlal distribution and standard error. Simple
patterns are est¡mated more precisely
the
than more complicated patterns. Stratification could be advisable if the patterns are very heterogeneous, the grid width for simple patterns can be larger as the width for complicated patterns. Although the calculations have only be performed for
spat¡al structure, a simulation study was performed on several forest maps (Kleinn 1992).
A point was classif ied f orest if
the
surrounding square with side s, had at least a coverage of c.. The simulation study used several maps. Each map
the binomial case, they easily can be extended to the multinomial case. The calculation of the precision of the area in forest inventories is rather important, as it can be a major contribution to the total error of the inventory. ln calculating area changes, the assessment of the error of
composed of 630 x 630 units. Squares with dimension s, x sr were defined from s, : 25 s, = to 75 units. Cover ranged from c. = 0.1 to c,,, : 0.5 in different spatial structures.
the area estimates is even more important, as it is the basis for interpreting the
The simulation study showed how much
area change correctly.
the forest area estimates are dependent on the definition criteria and the spatial structure of the forest. For a aggregated forest cover distribution the change of forest definition from a cover of 0.1 to 0.2 resulted in a reduction of forest percentage from 38%
to 36%.
For
The variable forest area is very sensitive
to the
def inition used and the spatial pattern of the forest. lf definitions are
changed over time, or if diff erent inventories are being compared, the results may not be very meaningf ul. Area est¡mates over t¡me from the same map
a
highly fragmented forest the reduction was from 78o/o To 63Yo.
or remote sensing image are problematic
if the spatial pattern between the
These results indicate how sensitive the variable forest area reacts to the change in definition of the forest - an important point if Inventories are to be compared over different regions or over time when the definition criteria have been changed, or if the spatial pattern changed and the f orest became more f ragmented over
inventories has changed.
REFERENCES Chevrou, R., 'l 973: lnventaire des haies. Revue Forestiere Francaise, 15, S.4753.
trme.
Chevrou, R., 1976: Précisions das mesures de superf icie est¡mée par grille de points ou intersections de parallèles. Ann. Sci. forest. 33(4): s.257-269.
SUMMARY
Systematic dot grids allow the estimation of areas eff iciently. Based on simulations
of actual f orest maps an est¡mat¡on
FAO, 1981: Manual of Forest lnventory
formula for calculating the sampling error of these systematic samples has been derived. The independent variables are
Tropical Forests. FAO Forestry Paper
with Special 27, Rome.
146
Ref
erence
to
Mixed
lity and Statistics. ln Honour of
Kleinn, Ch., 1990: Estimating the area of irregular-shaped objects by dot
Gunnar Blom. (Hrsg. J. Lanke und G. Lindgren), 5.243-257 , Department of
counts. ln : Forest lnventories in Europe with Special Ref erence to
Mathematical Statistics, Lund,
Statist¡cal Methods. Proceedings of the lnternational IUFRO S.4.02 and
Sweden.
G., 1970: La théorie variables régionalisées et
Matheron,
5.6.04 and S.6.04 Symposium, May Birmensdorf, 14-16, 1990.
des ses
applications. Les cahiers du Centre de
Switzerland.
Morphologie Mathériratique Kleinn, Ch., 1992: On the Compatibility
of Forest lnventory Results. The Problem of compatible Forest
'
initions. ln:
lntegrating Forest Management over Space and Time. IUFRO Conference, 1 3-1 7 January 1 992, Canberra, Australia. Def
991
1
:
lnventory Systems Forest lnventories
National Forest
in Europe. ln
:
in Europe with Special Ref erence to Statistical
lnternational IUFRO Symposium, May
14-16,
Global Natural
Resource Monitoring and Assessments
1
990, Birmensdorf
,
Switzerland.
: Preparing f or the 21th Century. lnternational Conference and
Rhody, 8.,
Waldf
Workshop-Sept. 24-40, 1989,
986: Erfassung von lächenund 1
Vorratsstrukturverhältnissen mittels
Venedig, S. 32-40.
satel liten
Mahrer, F., 1976: Abgrenzungsnormen zur Erf assung der Waldf lächen im
b
ild o rientierte
r
Waldverbreitungskarten. Forstarchiv
57.J9.,Nr.5,
schweizerischen Landesf orstinventar (LFl). Eidg. Anstalt für das Forstliche
Zöhrer, F.,
Versuchswesen S. 29-53, Birmensdorf
Pelz, D.R.,
Methods (M. Köhl und D.R. Pelz, Proceedings of the Hrsg. ).
Lund, H.G., 1989: From Terras lncognitas
to llluminations. ln :
de
Fontainbleau, Fasc. 5.
S.1 74-1 80.
1976: Die Genauigkeit der von Waldf lächen durch
Ermittlung
systematische Punktstichproben
, Berich Nr. 1 67.
(Einzelf
s.294-301.
Matern, 8., 1985: Estimating area by dot counts. ln : Contributions to Probabi-
L47
I
lächen). Forstw. Cb. 95,
THE USE OF PERMANENT PLOTS FOR MONITORING VEGETATION CHANGE lN SOMALIA: PROBLEMS OPPORTUNITIES. RECOMMENDATIONS R.M.Watson J.M.Nimmo Resource Management & Research
l6b West Central Street London WCIA 1JJ, UK
FOREWORD
ln 1977 the World Bank recognized that Somalia, a poor, arid/semi-arid "state" of 650,000 km2 at the North East corner of Africa needed to be able to monitor and
of many modern paradoxes is the growing capacity of scientists to study the earth's surface at global scales, in a One
eventually manage changes in its vegeta-
tion at a national level. They financed
geopolitical world where their capacity to
react, or
ectively warn threatened adverse environmental trends, is at best static and probably receding. To put it a more graphic way: When the last few children of man are huddled under the planet's last tree, eating the world's last mango, the event will be recorded in great detail f rom scores of sophisticated satell¡tes. The ext¡nction of the human race, then, will be the best forecast and recorded event in human history. eff
populations
a
multi million dollar programme to establish a National Range (ie. vegetation) Agency and initiated a series of vegetat¡on
of
surveys.
Resource Management &
Research (RMR) was inv¡ted
to conduct
these surveys and this paper highlights the problems they confronted, and how
they dealt with them. The
authors continue by looking at how they might do the same task today in Utopian socio-
economic conditions, and conclude by offering some general recommendations about the use of permanent plots in world vegetation monitoring.
INTRODUCTION THE SOMATIA SURVEYS - GENERAL
The nation state ¡s likely to remain the
principal unit
f
or social and
Although the National Range Agency (NRA) terms of reference specified the production of vegetation maps (together with other natural resource inventories and mapping such as wildlife and live-
natural
resource management for some time to come. lt is argued therefore that it is essential to concentrate on monitoring vegetat¡on' change at national levels, as in this way the probabilities that such
monitoring can
eff
stock counts, water source assessments,
ect and inf luence
management are maximized.
' "Vegetation" and "Forest" are not taxonomically or physiognomically synonymous. However the observation of communities of plants growing at a fixed location over long periods of time (as is implied by tho term "monitoring") is a process we prefer to term "vegetation monitoring" 1o avoid introducing unnecessaÍy semantic corriplications, L4S
counts of houses, assessments
of
SOMALI,A MONITORING SITES -
land
use and agriculture, etc.) as
its
¡n the vegetation of Somalia could
be
PROBLEMS
requirement from RMR, it quickly became apparent that the puroose of the NRA, at least for the vegetation work, was to establish a base line from which changes
of a national network vegetation monitoring sites posed a number of interesting, challenging, and a few insurmountable, problems. These The establishment
of
monitored.
When the survey commenced in 1977 satellite remote sensing could already
were:
provide a means of looking simultaneously
at all Somalia's vegetation at a
1.
coarse
scale of "information resolution". lt was
at the time f orecast (correctly as it happens)
The use of fixed vegetat¡on plots to describe features of a larger vegetation "universe" inherently implies that
that satell¡te remote sensing
would inevitably become increasingly precise (temporally, spat¡ally and
they are being used as sampling plots. ln point of fact the rigours of
entropically) and it was expected that Somalia would be able to take best advantage of this favourable trend by
formal sampling methods (Cochran 19631 (in terms of site location and numbers of sites) make it entirely impractical to apply formal sampling
laying down a large number of fixed sites
(pôints, locations, plots, quadrats
are
synonymous terms) at which the vegetation and other ecologically relevant data could be precisely recorded. The records taken at these fixed sites were of course useful also in the derivation of vegetation descriptions to be attributed to the 496 land system units into which the Somalia land surface has been divided. (Watson ef
al. 1979, Watson 1982,
Watson
Representativeness
rules in selecting monitoring sites. lt must be appreciated by all involved that vegetation changes recorded at monitoring site(s) (permanent plots) can only be attributed to areas surrounding the site(s) or areas judged f or some reason to resemble the site(s), using common sense rather than statistics. For this reason (see
and
Nimmo 1985.
paragraph
3
below)
it
makes little
sense to assemble large volumes of precise data at monitoring sites. This is an insurmountable problem, not
Between 1977 and 1984, working almost of RMR usually deployed as a three person (including the
continuously, the staff
just for Somalia, but for
second author) team travell¡ng in 2 f our-wheel drive ve-þicles located and described 1 695 monitoring sites.
all
vegetation monitoring by fixed plots. ln Somalia the network of sites was selected using these criteria:
-
The first author carried out the aerial photography of these monitoring sites a few weeks or months after they had been located and described, overflying them in logistically convenient clusters. A few sites (112) in extremely difficult terrain
iciently close to a track (apart f rom those visited by STOL aircraft) to be cheap to suff
visit and conveniently relocated,
but not so close as to be affected by ecological events associated with the track
which would have required long and
arduous camel safaris, were visited by the
first author (alone or with one colleague)
distributed
using a PA 1 8 aircraft and short take-off and landing (STOL) flying techniques. Such techniques require a 50-60 m clear area to be found close to the site.
each land system unit and/or distinct vegetation related facet of the land system unit has not less than two mon¡toring sites
The cost of locating and describing these 1695 monitoring sites to the NRA (which includes the RMR prof it) was about $ 160,000 or $94.4 per site.
distributed so that any particularly dynamic or interesting
so that in
general
vegetat¡on boundary
(e.9.
severely eroding areas, Juniperus
150
including massive two ton trig. points. A simple fixed marker does not enable relocation of a site, but rather guarantees intense pastoral use of the site until all traces of the marker have been removed. Every passing herder will linger with his livestock as he makes his own contribution to eliminating the alien
mist forest relicts in open areas,
large f ire scars, etc.)
has
monitoring sites at the boundary.
It is hoped by the consultants,
RMR, suff iciently extensive (3.4 monitoring sites per land system unit and 383.5 km2 per
that the network is
monitoring site) that the sites will enable the Somali Government to:
- use them to
illustrate
to
element in his landscape.
RMR devised a method of map marking using permanent, or semipermanent, conspicuous features
the
public and/or students and/or
donors in support of educational/ management programmes, most of the types of change which occur in Somali vegetation
termed "primary points", f rom which a route to the site is described by
compass bearings and measured distances, using secondary and tertiary points (i.e. less permanent and less conspicuous features). Sketches and photograpþs were made to clarify the route.
- study the processes of a selection of change types in more detail
-
-
detect most of the economically important vegetation changes in
The site itself is marked at its centre point by a small stone, bone, or other semi-durable object found near the site. ln the case of stones, the
the country,
enabling more intensive networks to be laid down where critical changes seem to be taking place provide "ground
number of the site was marked in paint on the underside.
truth' data for
The latitude and longitude to the nearest minute of arc was recorded from 1 :100,000 scale topographical
the more accurate interpretation of satellite derived data covering the whole of Somalia
-
maps, on which the site was marked.
The details of the
make "common sense" analysis of vegetation change nationally,
and reasonable forecasts of future change
-
develop sustainable management programmes for Somali vegetat¡on f or exploitation, conservation, protection and rehabili-
tat¡on in a harmonious
primary,
secondary, tertiary, etc. po¡nts were recorded in lndian ink on A4 80 gsm card, and a sketch of the route to the centre point via the primary point, showing the nearest mapped feature
were also so marked. Black and white prints, where relevant, were mounted on the same reference card.
This card is called the site location
and
economically strategic balance.
map card. Clearly the relocatability of sites will depend on the length of time elapsing between visits and on the durability
Unfortunately it ¡s still too early, and Somalia is too chaotic at present, to have any feedback on this expectation.
of
primary
points. Within a
few
of the original location, of sites were relocatable
months
lOOo/" according to tests made by RMR. lndeed all the sites of S. Somalia
2. Location and Re-location
Somalia presents special problems here, common to a few other African
were relocated from the site location maps cards by the first author from a slow flvinq aircraft which is how the aerial photographs (see belowl were
countr¡es but rare elsewhere. Somali nomads destroy any foreign and nonnatural body they find on their land,
taken.
151
ln the likely event of centre
transparency
po¡nts
Sixteen photo-
at each site,
namely:
-
three aerial photographs taken semi-vertically f rom 1,000 feet (304.8 m), using 24 mm,50 mm and 1 35 mm lenses to provide three scales of aerial view,
the original vegetation elements are st¡ll in place.
it is not at present possible in Somalia to try to relocate sites. lt was envisaged and planned by RMR to revisit sites after ten years Unfortunately
(i.e. between 1988 and 1994). The intentioî had been to make a new marking of centre points, using any technological advances and/or better
-
one general view of the whole site to best show the vegetation, usually taken from the direct¡on of the primary point towards the centre point
-
three ground photographs taken
ideas, during first and subsequent monitoring revisits. Marking by buried steel pegs and steel wire was already planned for the next round of visits, to enable metal detectors to assist in relocation. lf a revisit programme
was started today it is likely that
film.
graphs were taken
being kicked out of place by wildlife/ livestock the centre point is fairly easily relocated by a triangulation method using the photographs taken at the site, assuming at least some of
from head height (say 1 .5 m) using a 24 mm lens along a magnetic north axis f rom the site
centre point. The first photograph is of the ground including the centre point. The second frame is of the ground from the upper boundary of the first f rame. The last frame is a view to the horizon.
an
advanced global positioning system (GPS) could permanently solve the problem of site location/relocation.
-
However as things stand one must
realistically expect that at the moment 80% of sites could be relocated with reasonable efficiency,
three ground photographs as described above along a magnetic east axis
-
and the other 2Oo/o would simply take
too long to find to make it worth-
three ground photograPhs
as
described above along a magne-
tic south axis
while, unless a critical environmental change were involved. By the year 2000 the percentage of f indable sites may have fallen to 60%.
-
three ground photographs
as
described above along a magne-
tic west axis.
3.
the site environment were collected,
General indications about Scope of data to be recorded
concerning these features:
Altitude,
TopograPhy, Geomorphology, Geology,
Because of representativeness problems referred to in paragraph f . it was judged unsuitable to assemble a large volume of analysed data at each site, and pref erence was given to
making
which
Erosion, Drainage, Termitaria, Grazing/Browsing, Vegetation,
Soil, Cropping, Villages
a
photographic record, on measurements and quanti-
and
Water, Archaeology.
f
At the specific request of the client,
a fixed pattern using a 24 mm lens for the ground based views and 24
was stat¡st¡cally more or less unusable for monitoring, and not particularly usable f or base line
ication could be perf ormed retrospectively should they seem relevant. Photographs were taken according to
despite RMR's pointing out such data
vegetat¡on descriptions, vegetation cover was recorded using a modified
mm, 50 mm and 135 mm lenses for
the aerial views, a 35 mm format
camera, employing 100
point transect method.
ASA
L62
Standardisation
4
of data
scattered among the torn papers and
collecting/recording methods
human faeces which littered the f loor.
ln short the place had been
and wilfully destroyed,
small areas are wooded. True forest such as people in Thailand are familiar with does not exist, and the nearest approach, a Juniperus,/Baxus closed canopy mist forest only covers a f ew hundred km2 of Somalia.
A fire was burning vigorously in the room next to the Monitoring and Documentation Centre, and the only people seen were gun carrying looters, who occasionally fired bursts AK47 f¡re at enemies seen in
of
neighbouring buildings or into the air.
developed f or Somalia could be applied at all sites, but they were f
ound diff icult
With the assistance of
to use in the
sites which were located in very dense and
thorny vegetation. ln woodland/f orest sites the
SOS
Kinderdorf lnternational, an Austrian
based lnternational Children's Charity,
the originals of all monitoring
dense
photobe recording only the
site
photographs and site location map
graphs tend to lower levels of vegetation. Had thorn
cards were removed to the RMR office in Nairobi. Here they were cleaned and re-filed. The lnterim Government of Somalia has now requested that they should be kept there until new facilities are built to house them in Mogadishu, unfortu-
thicket andlor f orest been more widespread vegetation types in Somalia, diff erent data collection methods would have had to be developed, although f or methodological/analytical purposes the data recording format would if possible
nately a rather distant prospect.
These rather desperate
have been retained.
and dangerous measures could have been
avoided had comolete sets
Storage and security of, and access
the consultants' offices.
RMR placed all the originals of monitoring site records in a room devoted to their storage at the National Range Agency. This included the 35 mm photographs as 35 mm slides, the site location map
all
Unfortu-
nately there was insufficient money
available at the time to have copies of
the 35,000 slides made.
All textual and digital data collected at the monitoring sites has been
cards, 1 :100,000 maps marked with site locations, and notes collected at sites. The room was to have been air conditioned, dust free and access to
the originals should have
of
monitoring site records been copied and stored, one in Somalia and one in
to, plot records
stored in a database which is based in
the RMR office in London 1
been
6,
carefully controlled.
(Nimmo
991 ).
lnstitutional support necessary to ensure continuity of monitoring
When the f irst author visited Mogadishu on 27th January 1991
Even before the catastrophic sacking of Mogadishu the Government was so discredited with donors that there
after President Siyaad Barre had fled the ruins of his palace he visited the
Monitoring and
even
desecrated.
The data collecting/recording methods
5.
looted
Most of Somalia is too arid to support very dense low vegetation and only
Documentation
was no budget for properly looking after the invaluable records of the
Centre, as this special room was known. lts doors and window had been smashed and the cabinets holding the original photographs and
monitoring sites. Even the Herbarium specimens were more or less eaten by fungi and arthropods.
slides (held in transparent wallets, in
A4 ring binders) had been thrown to the ground. Many slides were
As f ar as raising f unds to make second visits and put in better
1õ3
this possibility disappeared in about 1 986. The possibility of physically travell¡ng
new costs any
bildits, and now it would require a
to offer attract¡ve possibilities to
helicopter supported tank brigade to
the work cheaper, and to overcome some
relocation methods/devices,
modif
ications would
introduce. At present only the roughest est¡mate can be made of these.
to the sites was by then already f raught with risks of attacks by
However certa¡n new technologies seem make
attempt any field work in Southern
of the
Somalia.
RMR in their first programme. These are:
It is obvious that RMR did not foresee changes of this magnitude, and in any
case could not have
1.
influenced
It is today inconceivable that
the problem of location/relocation would be solved using a map marking
ln the long term, when or if condit¡ons retùße to levels of safety such that finance can be found to pay for the re-visit of all sites, and when it is safe to do so, there will clearly be a need to rapidly take stock of the new vegetat¡on conditions and the
method. There is no doubt that
of
a
moöern GPS would allow monitoring
sites
to be effectively
located
and
relocated with much higher efficiency at appreciably lower cost.
changes which have occurred. ln this event these monitoring site records will prove of exceptional value.
effectiveness
Low cost Ground Positioning Systems IGPS}
events.
L Cost
problems only partly solved by
2.
Low cost aer¡al and ground based photographic, video and photogrammetric methods in data recording
vegetat¡on
monitoring in the context of a very poor th¡rd world state
The methods employed here by RMR were rather original and low cost. ln today's technological environment the
The cost of collecting the monitoring
most likely modifications would be the taking of Hi8 video film records (chiefly for educational, media and
site data for the 1 695 sites Somalia has been
S1
in
60,000 at 1 978-
promot¡onal purposes),
84 values. This is a large sum for Somalia, and it remains to be proved whether this spending was worthwhile.
ln the authors' view, however this level
of
investment
in
inf
ormation
with such high potential value
f
and
the
switch from film to digital cameras. These latter would allow storage of vegetation information which could þe either turned into an image for illustration, or fed into an analysis programme. There is no doubt that technique has immense potential, although ¡t will be some years before it also offers a cost saving.
or
t-his
guiding future exploitation, management and conservation programmes for Somalia's chief known economic resource (i.e. its vegetation) is likely to prove highly cost-effective in the
3.
lonq term.
Ground radar methods of recording rainfall and satellite remote sensing methods of assessing other ¡mportant environmental variables
lf a vegetation monitoring
site programme were to be started today one would hope that its funding and
FOSSIBLE MOD¡FICATIOITS OF THE METHOD TO USE NEW TECHNOLOGICAL DEVELOPMENTS
managing agents
lf
RMR were
would
caref ully
consider how the use of the wide array of real time or near real time satellite derived data, and the use of
to start the same exercise
today, would they work differently? Part of this answer depends clearly upon the
real time ground radar derived data on
L54
rainfall could be linked with the monitoring site records, so that it would be possible to understand the causes and effects of the monitored vegetation changes in terms which
taken in digital form. This would solve
serious problem
affordable by Somalia.
modifications (really additions) would be too expensive to be introduced
RECOMMENDATIONS BASED ON THE SOMALI EXPERIENCE
into Somalia in the foreseeable future.
Geographic lnformation Systems (GlS) and databases
Some general recommendations ate offered here based on the author's
lf
experience over the last 13 years with the Somali national vegetation monitoring site work and on consideration of recent
RMR were
to start the vegetation
monitoring site programme today an
appropriate GIS and/or database programme would be selected/ designed to optimise access/analysis possibilities. Field reports would be formatted for rapid translation into a
global environmental events. These recommendations concern the use of permanent plots (monitoring sites) f or world forest (vegetation) monitoring.
monitoring site database.
The greater
eff
1
iciency this
.
modif i-
cat¡on would provide would result in expenstve.
culturo-historical base lines and records, illustrations of important environmental processes, or indicators of management needs, are not
Hardware, especially data storage and
necessarily compatible.
CD
technologies
When the Somali
data
sources for precise scientific studies, educational and opinion forming aids,
and database software is not very
retrieval systems and linked
The specific use to which permanent plots are to be put should be caref ully considered, as their applications to
different purposes, such as
an overall cost savino, as suitable GIS
5.
a
access, retrieval, analysis and security. lt would probably be a cost effective modification
permit forecasting and management of changes at a national' level. Such
4.
in terms of
vegetation
monitoring site work started in 1978, RMR was working with an Apple lle
computer. Today the additional capacity of a Compaq Desk pro 38612Oe, with 1 10 Mb of srorage
would revolutionise the laborious business of putting field notes into permanent legible form, and immeasurably enhance the accessibility and usef ulness of
2.
Permanent plots should be located by intelligent selection rather than f ormal sampling procedures.
3.
The scope of data recorded should be concentrated on those features of forest/vegetation change which have
(or are likely to have) relevance for
global environmental issues.
4.
The linking of a network of permanent global vegetation plots to other networks at Regional, National and local scales and to "globally" available
monitoring site records. Some 35,000 photographic slides at present occupying a large cabinet and
remotely sensed data should be at the design stage to
considered
needing constant vigilance to keep safe and in good condition could be
ensure maximum
eff
iciency
in
forest/vegetat¡on monitoring work. The role of permanent plots in a
stored as digital data, and indeed (see 2 above) photographs could even be
mult¡-t¡ered methodological strategy is
' At.the global/regional/continental level it is even more important to be able to relate vegetation change to.ch.anges in the global atmospheric and hydrologic systems. Global vegetation moniioring networi,s
which merely say how the world's vegetation is changing are to som-e extont missinglheir main
function.
15ó
of critical importance, and should be dominant feature in tho design of
ACKNOWLEDGEMENT
a a
network of recording permanent
vegetation plots.
The authors would like to thank Finnida and the University of Joensuu for support towards their travel costs to Thailand.
5. Costs of effective
forest/vegetation monitoring by permanent plots should be
minimized by appropriate use of global positioning systems, photo-graphy, video recording, and photogrammetry, low cost
low levol aerial platforms, GIS and Database softwaro, and hardware designed to handle a wide range of
REFERENCES
analogue and digital data. Methods should be constantly roviewed to take advantage of technological advances in this dynamic f
6
Cochran, W.G., 1963: Sampling Techniques, 2nd ed. Wiley, New York.
ield.
Nimmo, J.M., 1991: Development of a database system for the evaluation of
Since monitoring is necessarily a long term process, the design of a perma-nent plot monitoring programme should incorporate high levels of flex¡bil¡ty to accommodate the unfore-seen. For the same reason the
land resources f or planning and development in Somalia. D. Ph¡l
Thesis, University of York.
likely longevity of personalities and all institutions involved should be critically
Watson, R.M., 1982: Northern Rangelands Survey. 4 Volumes.
consid ered.
7.
National Range Agency, Mogadishu
The standardisation of data
recording methods should sorve the purpose(s) of
Watson, R.M.; Tippett, C.l.; Beckett, J.J.
and Scholes, V., 1979: Central Rangelands Survey. 4 Volumes.
the network, and it must be recog-nized that the diversity of plots may dictate a diversity of recording methods. Similarly
National Range Agency, Mogadishu
the d¡stribution of plots should reflect the
notwork's purpose, and a
Watson, R.M. and Nimmo, J.M., 1985:
regular
Southern Rangelands
dist¡ibution of plots must be seen to have
no inherent value, and many inherent drawbacks, as I distribution pattern
Survey.
4
Volumes. National Range Agency, Mogadishu
option.
156
PERMANENT PLOTS FOR MULTIPLE OBJECTIVES: DEFINING GOALS AND RESOLVING CONFLICTS Jerome K. Vanclay Royal Veterinary and Agrículturat lJníversity Thorvaldsensvej 57, DK-lB7l Frederiksberg, Denmark
ABSTRACT Many research and mon of results depends upon of such plots that can b as
possible'
a from permanent plots, and the validity these data. Resources timit the number essential that alt plots sat¡sfy as many needs
This requirement impinges on the placement, design and procedures
for existíng paper examines compatibitities and cánflicti between the demands of growth model development' of ecological monitoring systems, and of ground truth for remote sensing' Whilst conventional procedures provide basic data for ail these applications, and proposed
plots'
Th.e
of the data with negligible extra cost. ment of plots, and for increased utility may enable us do more with less, to inferences from these data.
r
INTRODUCTION
* *
Some of the objectives of this workshop include:
promoting the establishment
"...
of
ln formulating our information needs, we
health involves very
Before we rush ¡nto this task, we need to consider carefully our information needs,
and enables very Optimal sampling
and then to identify the data that are required to provide th¡s information. "What to measure" is an issue which all too often precedes these more important considerations, with the frequent result that data collected may be sub-optimal. We should first resolve our information
requires diff erent
procedures than for monitoring change.
All too often the data available in
an
Our information requirements should
be
information system determine its users, rather than the reversel
d-rt,
identif
reouirements, and then decide onìhã
ied explicitly and stated
clearly,
concisely and completely. ln the planning and design of a monitoring system, it is important to identify the real information needs and not to be constrained by the f easibility and costs of obtaining this information, as needs tend to be durable
sampling . design and measurement procedures with these needs in mind. Only then can we resolve:
r
uses these data; how to measure it, and how much data are required.
must be quite specific in defining what we need know and what we hope to infer from this information. For example, the monitoring of forest area, of forest quality
a
permanent sample plot network ...", and to specify the data to collect ..."
needs, translate these ,t"
who measures, who pays, and who
what, when and where to measure; L67
establish a trend (Vanclay 1991). We need to anticipate information needs ten or more years hence, and thus our plot measurement and management procedures must be flexible and robust. We
wh¡lst technology continually alters the easibility and cost of gathering the necessary data (Vanclay 1990a). Failure
f
to identify the real information needs may lead to important attributes being omitted
should f ocus on basic stand variables which can be quantitatively measured
from measurement procedures, and may diminish the value of the system.
rather than subjectively est¡mated. Those
who design and initiate the system may not be the ones who use it, so the design APPLICATIONS DEMANDING
and rationale should be .
PERMANENT PLOTS
documented. Procedures and standards should be established, documented and maintained, and changes should be few
There is no doubt that permanent sample plots can be very useful, but efficiency may favour other forms of sampling for
and upwardly-compatible,
many applications. To qualify
caref ully
as
PLOTS SERVING MANY PURPOSES
permanent sample plots, there must be both an intention and a plan to remeasure them. This involves considerable additional cost over temporary samples, so why and where should permanent plots be used? ln some cases, there is no
One way we can increase eff iciency is to make the same plots serve several purposes, provided that the objectives are compatible. Table 1 illustrates some f undamental diff erences in the design
alternative, but f or many applications, temporary plots are both f easible and efficient, and should be considered. ln general, permanent plots are necessary
only where detection of change
oblectives of some applications. Wh¡lst all these applications can be satisfied by permanent plots, two can be served most
is
required.
eff
iciently by temporary
Resource inventory diff
samples.
ers f rom
most
Where permanent plots are necessary, it is essential that they be managed efficiently to minimize costs and maximize benefits. This requires careful attention to information needs and to data collec-
other applications as sampling should maximize variance within plots and minimize variance between plots in any
tion procedures. We should not
stratum. ln contrast, most
other
applications require homogeneous plots.
only
This different fundamental requirement
focus on existing needs, but should also consider future needs. ln many applications, measurement errors are relatively
continuous f orest inventory schemes which attempt to provide estimates of
large compared to the rate of change, and
both status and change.
may limit the
eff
icacy of
traditional
five or ten years may be necessary to
Table I . Characteristics of some sampling applications.
Pp rma np
Âra
nnp
Resource inventory
Temp or Perm
Growth estimation Site monitoring Ground truth
Permanent Permanent
Silrri¡r rltr rrel pvntç
Temp or Perm Þa rm ¡ non+
1ó8
Variable Fixed Fixed Bis \/arioc
Plnt \/arianne Heterogeneous Homogeneous Homogeneous Homogeneous l-{nmnncncnr
rç
Some useful information regarding environmental change and degradation may be provided by plots designed to provide data for growth model development (e.9. Vanclay 1990b), but additional variables should be measured to provide compre-
proposed) system deliver the information we needT
How big is the sample? Are the plots the right size, shape and orientation for our needs? How many plots are there: are there enough or too many?
hensive site monitoring. The same
sampling designs may be used in silvicultural experiments, but it is often pref erable to customize the design to specif
ic
experimental
Whilst it somet¡mes is more efficient to
needs.
work within an existing system. we should not blindly join an established
Ground truth for remote sensing can be provided
system just to freeload on another budget, as we may not get the information we want. Sometimes it is more efficient to combine several needs into a single sampling system; sometimes ¡t is better to adopt separate systems, and to
by either permanent or temporary plots, but inaccuracies in image registration indicate larger plot areas than those customarily used in other applications. Since we may extract much useful information from existing plots, we should carefully appraise our information needs before we promote the establishment of
combine the data later (Vanclay 1990a). Simple practical matters may be decisive. For example, timber inventory should be
additional plots.
Some additional attributes may
conducted
measured and recorded in existing permanent sample plot systems with minimal extra cost. Where this is possible, this offers a cost effective way to obtain additional inf ormation, and reduces the signif icant burden of plot
ma¡ntenance. There are f
good
plots may be best conducted at dawn using survey crews with different skills.
SAMPL¡NG SCHEME
several
advantages to such an approach, but we should not assume that we can satisfy
our needs simply by
in broad daylight for
visibility, whilst bird surveys on the same
be
reeloading
When we have resolved our information needs, the required permanence of the plots, and the scope for shared plots, we then have to face the diff icult question of sampling design. The question is: what is optimal placement and management of
on
existing permanent sample plot systems.
There are several issues that should
be
examined. Principal among these is the question: will the existing system efficiently satisfy our needs, or are we just trying to avoid paying for our own requirements? This question has a converse: would a new system for our specif ic requirements deprive other worthwhile sampling efforts of resources,
these plots? There is no single best sampling scheme for all applications: the optimal design depends upon information
needs and resources available, so this
paper can only discuss some general principles.
or lead to the neglect of existing sampling systems? Both questions require that we look into the adequacy of existing systems and the resources devoted to
2 (adapted from H.C. Dawkins, pers. comm. ) identif ies some considerations which inf luence the Table
them. We need to
resolve the same issues that arise when designing a new
selection of a sampling design. lt takes
the form of a binary key which may be used to select an appropriate method. For example, it indicates that if we seek a reliable estimate and require ¡nterpolation to prepare a site quality or forest type map, we should employ systemat¡c
system, and we need to give special attention to two matters:
How were the plots located: 'Subjectively or oblectively, systematically or randomlyT Will placement of plots
sampling. Alternatively, if our estimate ¡s critical, is to have known precision, and is to be obtained using a small sample, we should use stratified random sampling.
introduce bias into our sampleT
ln short, will the existing
(or
1ã9
Table
2.
Some considerations in sampling design.
Crifcria & Cnncenrrpnnps
Âltarnetirrac,Q,
Nature of estimate Forest Characteristics Representative selection Time and resources
Critical Unknown/Diverse Unreliable
Objective r Go to 2 Absent Can be estimated
Bias Precision
Periodicity lnterpolation Estimate of Precision
Possible/Unknown
Not required Required
Random - Go to 3 Correct estimate
Samolino Error Periodic Bias Pattern in population Sampling intens¡ty 3
lnherent risks Pattern in population
4
Calculations
*
expedient, even though each stratum may contain as few as two plots (Schumacher and Chapman 1954); Once stratification has been refined
Probably inflated
Hish
Unrestricted random nlr
rsfprinn
Possiblv comolicated
of interest in truthing of remote sensing, as the classification of these can then be considered explic¡tly. However, the "typical" stands should also be sampled, and the decision to sample deliberately should be documented.
NUMBER OF PLOTS REOUIRED
as
Statistical formulae often dictate more plots than the forest manager can afford, and this raises several questions. Are the appropriate formulae being used, is the specified precision really required, and if so, is there a danger that the system will
as far as practicable, further by
cost more than the resulting data
sampling proportional to the variance observed within the stratum.
are
worth (Hamilton 1979)7
Permanent plots usually provide worthwhile data, even if the precision does not
Where a small sample is proposed, it may be desirable to deliberately sample to include extremes. Extremes are essential in regression analyses for growth models
reach the desired level. So a comprom¡se may be to establish as many plots as you can afford. But don't overestimate your capability, as a few good plots are better than many incomplete or inaccurate plot records. The importance of this cannot be overstated, as too many monitoring efforts lie abandoned, rendered useless by
Vanclay 1 991 ). in environ-
Extremes are also important
as it is at
Necessary
Unimportant Systematic Sampling
Visible or Well known Statistical blocking
*
mental monitoring,
Unlikely or Known
Obscure/Unknown Geometrical blocks
The precision of the f¡nal est¡mate is inf luenced most by the initial stratif ication; Precision is gained by dividing the
,
lnl¿nnr¡rn
Samnle
precision for a fixed outlay:
1991
I
Absent or Unlikely
prior information is available. Three principles offer the greatest possible
et al.
Unavoidable
Belatively low Strat.random - 4 Misiudoe oattern
blocking may be used, depending on what
(Beetson
Very limited Subjective Sampling
Clear or Likely
For many applications, some form of ied random sampling may be optimal. Either statistical or geometric
improvement can be achieved
Unimportant/Personal Familiar or Uniform
Þnccihlo
Simole
population into as many strata
ltÁa+ha¡l
Unlikelv
stratif
+
Qamnlin¡
Reliable
Suff icient
1
2
ônrimal
the
extremes where many changes will be first manifested. Extremes may also be
160
insuff
icient attention to detail
and
inadequate clerical procedures.
Efficiency is further enhanced by making
full use of existing data, and by ensurini that new proposals satisfy all existing anã anticipated needs. When formulating
new
proposal, discuss
it with
a
your colleagues and make sure that it satiéfies
all compatible needs of your own
and
the proposal and have it reviewed
by
other local inst¡tutions. Then document
international experts. A l¡ttle extra tim;
and
eff ort in¡tially can save frustration and waste later!
a lot of
tions is diff icult to determine directly from
the soil chemical composition, but s¡te index provides a suitable surrogate. Where a plantation has not yet Leen established, the presence or absence of certain plant species may provide a
reliable indication of productivity (Vanclay 1 992). These concepts may be extended
to other aspects of assessment. Whilst it rs easy to monitor the turbidity, salinity
and acidity of streams, monitoring oi other pollutants is more diff icult, and there is always the difficulty that the real problem is the chemical you.re not testing
for. An alternative may be to monitor thã
development of amphibians, either those occurring naturally in the stream, or some raised in water samples in the laboratory (Tyler 1983). Amphibian developmeni could indicate the water quality in the same way as site index (tree height at a given reference age) ,rpr"r"nta the integration of many site f actors. Surrogates may provide an efficient and effective way to monitor many aspects of the environment; the challenge is to find suitable surrogates for our needs.
WHAT TO MEASURE lf information needs are expressed clearly and concisely, and then translateO intá corresponding data requirements, the
parameters to be measured will become obv¡ous. Many papers (e.g. Adlard 1990,
Curtis 1983, Vanclay 1991, Whitmore 1989) have considered what and how to measure, and their guidelines will not be repeated here. Their suggestions provide
Pivotal
or
keystone species are those
which are critical to the functioning of an
a start¡ng point, and can serve as a check list for your own requirements.
Some attributes you should consider
include those f rom the f ollowing four
categories: 1
) Plot
establishment details should include descriptive location and
the rainforest. ln turn, these species may be dependent upon a limited number oi plant species, especially during períods when alternative foods are scarce. Other plant species may have a crucial role in nutr¡ent cycling, through nitrogen fixing or retrieval of nutrients from deep in the soil prof ile. The health and abundance of these pivotal species may provide a good indication of the overall f unctioning of the
numeric co-ordínates, plot dimensions
and or¡entation, and f ull documen_ tat¡on.
2l Site variables should include f ull descriptive and numerical characterizatio
forest type and 3) Trees should be
numbered, tag attributes recorded should include co_ . ordinates, species, s¡ze, vigour, etc. 4) Other species present (shrubs, herbs
forest.
and other species) and their abundance should also be
SOME EXAMPTES
documented.
Suppose we want to monitor the area of closed forest worldwide. We could do this remotely using satellite imagery, and would requíre ground truth data in several
D¡rect measurement of some parameters of interest may be diff icult, and it may be
necessary to adopt an indirect alternative.
For example, site productiv¡ty ¡n planta-
locations for calibration. Such ground 161
truth need not comprise permanent plots; temporary plots would be sufficient' lt remains critical that standard definitions (e.g. of forestl are used, that plots are of a reasonable size, and that the date of
potential users can save time and resources by sharing, co-operating and co-ordinating. We should anticipate f uture inf ormation needs and data requirements, express these needs clearly and concisely, document methods, maintain standards, sample extremes, and not be too ambitious, but "do what you do do well".
measurement is known. An unconstrained analysis of such data may
provide diff erent regional and global estimates of f orest atea than those obtained in other studies (e.g. FAO's survey data), and it may be interesting to conduct an analysis constrained so that
the regional totals agree. lf both such analyses aÍe comPleted, it maY be informative to conduct additional ground
REFERENCES
survey in areas where the constrained and
Adlard, P.G., 1990: Procedures for monitoring tree growth and site
unconstrained classifications' differ' Again, such ground surveY need not
change. Tropical Forestry Papers No 23, Oxf ord Forestry lnstitute' 188 p.
comprise permanent plots, and temporary plots will be adequate if the appropriate standards are maintained.
T.; Nester, M. and VanclaY, J.K., 1991: Enhancing a Permanent
Beetson,
Strat¡fication is more important in forest
plot system in natural forests.
type and/or biomass
assessment. Existing satellite sensors do not provide a good correlation between spectral signature and biomass, so multi-stage sampling within a stratification based on prior information may improve estimates'
Proceedings of IUFRO Conference on
"The Optimal Design of
Curtis, R.O., 1983: Procedures for
Suitability of prior inf ormation is determined mainly by its accuracy, and
establishing and maintaining permanent plots for silvicultural and yield research. USDA Forest Service General Technical Report PNW-155.
many kinds of information may be useful'
Existing vegetat¡on type maps may be employed, or strata can be generated
rom more basic data such as digital climatic, topographic and geological
f
Hamilton, D.4.,
databases (e.g. MackeY et al. 1988). However, where such digital data are utilized, it is critical to employ the right variables. ln particular, it may be the climatic extremes (e.9. droughts, floods
precision
and the mensurationist. Journal of Forestry 7 7 11 0l:667 -67 O. Mackey,. B.G.; Nix, H.A'; Hutchinson, M.F.; Macmahon, J.P. and Fleming, P.M., 1988: Assessing representativeness of places for conservation
and frosts) rather than the averages,
and heritage listing. Environmental Management
reservation
changes in
forest type, biomass or biodiversity may
12(4):501-514.
require more sophisticated stratification, since political and socio-economic f actors
may be major determ¡nants of
1979: Setting
for resource inventories: The manager
which shape vegetation Patterns.
ln contrast, monitoring f or
Forest
Experiments and Forest SurveYs", 10-13 September 1991, London.
Schumacher, F.X. and ChaPman, R.4., 1954: SamPling methods in forestrY
such
change. Thus for such monitoring, it may be wise to ¡ncorporate nations as a strata additional to environmental strata.
and range management.
Duke
University School of Forestry, Bulletin
7 (revised). 222
Tyler, M.J.,
P.
1983:
Natural Pollution
monitors. Australian Natural History
SUMMARY
21(11:31-33.
Permanent sample plots can sat¡sfy most
of the needs of most users, so all
Vanclay, J.K., 1990a: lntegrated resource
].62
mon¡tor¡ng: an Austral¡an perspective needs.
Vanclay, J.K.,
of current trends and future
for
ln: Global Natural Resource Monitoring and Assessments: Preparing for the 21 st century, Proceedings of the international
iropical moist forests. Commonwealth Forestry Review 70 (31, in press.
Vanclay, J.K.,
conference and workshop, Sept 24. 30, 1989, Venice, ltaly. American
Society
f
or
Photogrammetry
1991: Data requirements
developing growth models ,for
1992:
Assessing site
productivity in tropical moist forests, Forest Ecology and Management, ia.
and
Remote Sensing, USA. Pp 650-658.
press.
Whitmore, T.C.,
Vanclay, J.K,, 1990b: Effects of selection logging on rainforest productivity. Australian Forestry
1989:
Guidelines to
avoid remeasurement problems in permanent sample'plots in tropical rainf orests. Biotropica 21 (3l':282283.
53 (3):200-214.
163
THE IMPORTANCE OF PERMANENT PLOTS FOR GROWTH AND YIELD STUDIES OF FOREST PLANTATION SPECIES IN NIGERIA John O. Abayomí Forestry Research lnstitute of Nigeria, lbadan
ABSTRACT Eoth permanent sample plot data and, to a greater extent, temporary sample plot data have been utilized for growth and yield studies on forest plantation species in Nigeria. This paper
critically reviews past studies, achievements and permanent plot procedures plantation growth and productivity research, and makes proposals for the future.
in
forest
The need rs sfressed for the establishment of an adequate network of spacing and thinning trial plots, crop plots and continuous forest inventory plots for carrying out future studies on site-productivity relationship and stand dyn,amics as well as devetoping accurate growth and yield models. The requirements for achieving the above goal are hightighted.
INTRODUCTION
thinning
Although f orest plantations presently
provenance/progeny trials may be found in Technical Notes wr¡tten respectively by Horne (1962), Cooper (1962) and Jones (1 967), No specific procedures have yet been laid down for spacing and thinning trials. lt should be noted that species trial plots and provenance/progeny trial plot are after about ten years treated more or
trials. The PSP procedures for the forest plantations, species trials and
constitute only 2.24 percent of the total forest estate of 96,518 km2 in Nigeria, emphasis has been shifting over the last three decades towards forest plantation establishment because of the relatively
poor timber yields from
natural
regeneration methods. Growth and yield
studies
to
f
acilitate the planning
less like crop plots, that is,
and
been carried out
in both permanent
sample plots (PSP'S) and,
PSP's
established subjectively within state forest plantations. No forest plantation inventory has been embarked upon by FRIN, but FDF has inventoried a number of extensive forest plantation areas with the a¡d of temporary sample plots. lt ¡s hoped that these plots can be relocated and reassessed in the future to generate data for Continuous Forest lnventory
management of forest plantations have
to a greater
extent, temporary sample plots (TSP's) by Forestry Research lnstitute of Nigeria (FRlNl, Federal Department of Forestry (FDF) and the Forestry Departments of Nigeria Universities. The forest plantation programmes of the thirty state Forestry Departments are being coordinated by
(cFt).
FDF, which has national
policy, programme development and monitoring f unctions.
PREVIOUS GROWTH AITD YIELD
The growth and yield studies undertaken
STUDIES ON FOREST PI.AIUTATION SPECIES IN NIGERIA
by
FRIN cover PSP's in State f orest plantations, species trials, provenance/ progeny trial as well as spacing and
Growth and yield studies on forest plantation species in Nigeria started about
16ó
the 1950's with the establishment
exot¡c tree species have been studied more than indigenous tree species with
and
periodic measurement of forest plantation
PSP's in
diff
erent f orest
regards to the effect of its conditions, planting space and thinning treatment on
reserves.
Summaries of productivity per hectare at varying ages of the PSP's of species such
growth and
as
Tectona grandis, Gmelina arborea, Nauclea didenichii, Terminalia invorensis, Triplochiton scleroxylon and Meliaceae
yield. Site
productivity
studies have been carried out on Tectona grandis and Gmelina arborea; planting space studies have been done on Tectona grandis, Gmelina arborea. Pinus caribaea, Cedrela odorata and Terminalia species. Thinning studies appear to have received the least attent¡on, only Tectona grandis
species have been prepared and studied.
The PSP data have ben used to draw conclusions from the comparative growth
and productivity data f or different species, localities and silvicultural
having been dealt with. Lowe (1970) used the techniques of pattern analysis and stand curve analysis on PSP data to
treatments.
of TSP data have been used f or computing volume regression Large volumes
equations and preparing volume tables for
determine the effect of tree competition on the productivity of some f orest plantation species in the high forest zone.
different forest plantation, species and different localities. The preparation of
The recent development in the growth
volume tabl¿s
f
or f orest
and yield studies of forest 'plantation species in Nigeria is the mathemat¡cal description and prediction of stem diameter distribution. Okojie (1 981 , 1 983) used the Chi-square test to assess the normality of the stem diameter distributions of some partially thinned plantations of indigenous Meliaceae, and also used the 3-way Weibull distribution f unction to construct whole stand/ diameter distribution models for some
plantation
species dates as far back as the 1 960's. Jone (1964) constructed a local volume
table f or Tectona grandis in Gambari, Olokemeji and Akilla Forest Reserves of South-western Nigeria. Other species for
which volume tables have
been
constructed include Gmelina arborea,
Nauclea diderrichii and
Terminalia
ivorensis,
Meliaceae plantations. Adegbehin
Yield tables have been computed using data from forest plantation sample plots
most of which were temporary. The
earliest yield table in Nigeria is probably that of Horne (1966) who prepared an
abbreviate yield table
f
or Ouality
(1
985)
used some stand attributes and site factors to predict the Weibull parameters of the stem diameter distributions of Eucalyptus and Pine stands of various ages.
1
plantation Teak in Nigeria based on the
Ouality
l
table from "Yield and stand
tables for plantation Teak" of the Forest Research lnstitute, Dehra Dun, lndian Forest Records, Volume 9, No.4 (1957). Other yield tables and models have also been developed for forest plantations of Tectona grandrs and Gmelina arborea. No
yield tables have apparently
PERMANENT PIOT PROCEDURES IN FOREST PIANTAT¡ON GROWTH AND PRODUCTIVITY STUDIES
Crop Plots
been
published yet for any indigenous forest plantation species in the high forest zone
of
Nigeria, although yield tables
Crop plots have been established by FRIN normally in easily accessible locat¡ons ¡n order to reduce costs of plot establishment, maintenance and remeasurement, Very swampy areas and areas with large gaps are usually avoided so as to obtain more or less fully stocked plots. Rather few forest plantation PSP's have so far been established in Nigeria due mainly to
are
available for Savanna forest plantations of
Azadirachta
indica. Yield prediction
models have been computed from PSP data by Adegbenin (1985) for plantations of Eucaly'ptus cloeziana, E. tereticornis and Pinus caribaea in the Northern Guinea and Derived Savanna Zones of Nigeria.
constraints of f unds, manpower and equipment. The most important forest
As in the case of yield table preparation,
166
plantation spec¡es in Nigeria are Gmelina arborea, Tectona grandis, Prnus species, Eucalyptus species, Terminalia ivorensís,
silvicultural treatment if great care is not taken. The numbering of crop plot trees should be done earlier than presently scheduled so as to f acilitate accurate estimation of main crop volumes of very young plots through the sample tree method. The numbering should be done after about 90 percent of the trees are of
Nauclea diderrichii, Triplochiton
scleroxylon and Cedrela odorata. At least 1 0O crop plots each ol Gmelina arborea and Tectona grandis,60 crop plots each of Pinus and Eucalyptus species and 30 crop plots each of the last four species should be established within the next ten years considering the total areas and
7 cm diameter and above, or after the top height of the crop is about 1 2 metres.
Newly established crop plots
ranges of site conditions covered by these
are
species throughout the country. The newly established crop plots should be concentrated within a f ew important
described as fully as possible, information being given on items such as situation, relative elevation, slope, aspect, climate,
soil,
vegetation, depth and nature of soil and
forest reserves of different
topographic and climatic conditiòns so that the results of detailed growth studies
carried out
on given sites can
geologic f ormation. The date and method
of planting, the objective of the sample plot, details of treatments to be applied and the age of the crop at first measure-
be
extrapolated to other areas of similar site conditions.
ment are also given. The condition of the
crop is described f rom time to time,
Crop plots in Nigeria are usually four-sided
including any marked variation within the plot. However, owing to constraint of funds, manpower and equipment, adequate data cannot be collected from
with areas ranging between 0.1 2 and 0.40 hectare and with surrounds of at least two rows of trees. Although small plots are more economical to maintain to assess, large plots are less
individual crop plots
on ground f lora ore and after planting as well as physical and chemical soil conditions. These data are very useful for site
and easier
bef
adversely affected by a given measurement error and more closely represent the stocking conditions of the
productivity studies and for extrapolating
surrounding compartment. The minimum
numbers
the results of growth studies to areas of
of 25O and 30 trees are
similar site conditions.
recommended for newly established crop plots at establishment and the end of the rotat¡on respectively (Abayomi 1973).
crop plots are expected to be thinned by the state Forestry Departments as these plots are supposed to receive the same treatment as the compartments surrounding them. However many state forest plantations are not regularly thinned due to limitations of funds, manpower and equipment. The problem of deciding on
Two maps are usually produced for newly established crop plots. One is a large
scale plan for calculating the plot
from horizontal distances and
area
true bearings, while the other is a small scale location map. Large scale plot charts are also drawn showing the arrangements of trees in different newly established crop plots.
the most suitable intensity, type and periodicity of thinning treatment for a given species, site and object of management atso probably militates against the regular thinning of state forest plantations. To improve on the thinning
These plot charts are continually rectified
as stockings decrease due to
treatment of crop plots, FRIN should intensify its thinning research studies so that objective and standardized thinning treatments can be recommended to the
natural
mortality and thinning treatment.
Standing trees of newly established crop plots are numbered and marked at breast
state f orestry departments.
height with paint to render them conspicuous for easy relocation and remeasurement
of the plots.
crop plots are expected to be remeasured
every
The
disadvantage of conspicuous crop plots is
3 to 5
alternating
that they are likely to receive biassed
years, f ull assessment
with partial assessment.
ln
partial assessments, volume estimation is
167
are applied f or main crop
excluded while height assessment is optional. However, shortage of funds usually leads to long delay in plot re-
volume determination where sample tree volume measurements are not taken.
measurement resulting in poor definition
of growth trends. Plot basal atea
assessment involves the girthing of all trees (main crop and thinning) not below 7.5 cm d.b.h. Average d.b.h. of the 100
Spacing and Thinning Trial Plots FRIN has established spacing trials of different species replicated both in time
largest stems per hectare is calculated in addition to mean d.b.h. The double d.b.h.
and space in experimental areas representative of diff erent ecological zones. Thinning experiments are
the dominance/f orm classification of all standing trees assessment and
to be superimposed later on of these spacing trial plots to
spec¡fied in the Nigerian PSP procedure are usually ignored during plot
expected
assessment because of time and financial constraints.
determine the effect of different thinning treatments on volume production. State f orest services also allow portions of their unthinned forest plantat¡ons to be used f or thinning experiments by FRIN and
some
For the estimation of top height and mean
height, about 25 sample trees
are
University Forestry Departments. Detailed inf ormation on soil, .topogra-
systematically selected from the array of d.b.h. classes, in addition to the largest 10 trees in the plot. These sample trees are measured for height usually with a Haga Altimeter or a Spiegel Relascope. The old method of estimating top height and mean height was to, use graphs of
phical and climatic conditions of the spacing/thinning tr¡al plots is obtained to f acilitate the extrapolation of experimental results to other localities of similar site conditions,
height against basal area. This was replaced later by the development of height/d.b.h. regression models. The usual practice now is to simply calculate the arithmetic means of the heights of sample tree represent¡ng the entire main crop and the largest 100 stems per hectare respectively. Although very simple and time saving, the last method
Spacing/thinning trial plots established by FRIN normally measure 40 metres square including a surround of at least 10 metres width. The surround is meant to minimize the inf luence of root competition between plots of different stock¡ngs on the trees
within the assessment core of a g¡ven treatment plot. Depending on the nature and variation of site and crop conditions, the completely randomized, block or lat¡n Square design is adopted f or a given
usually gives height estimates not much diff
erent f rom those of the f irst two
methods.
Main crop volume is estimated
or thinning trial. Combined spacing/thinning experiments have not yet received serious attention in Nigeria. lt is advisable to restrict the replication of treatments in such experiments so as to minimize the total number of plots required and therefore the size of the spacing
rom sectional diameter/height measurements on about ten trees selected systematically from the height sample trees. Formerly, these measurements were taken by a tree climber, while the volume of the upper inaccessible portion of the stem to a top f
experiments layout. A reasonable minimum total number of plots is 1 8, which is required for two replications of a 3 x 3 factorial experiment comparing a thinning and 3 spacing treatments within
diameter limit of 7.5 cm was estimated with the aid of the taper-line method. The spiegel Relascope or the Wheeler pentaprism Caliper is however now being used f or stem volume est¡mat¡on on
a randomized block layout.
standing trees. The analysis of the sample tree data had been formerly by using the Keen's method of drawing an
The establishment, procedures
of
demarcation, survey, mapping and description for spacing and thinning trial plots are similar to those of crop plots.
average volume/basal area line, and later by computing simple linear regressions of volume on basal area. Suitable volume tables or reliable estimates of from factor
These are usually f our diff erent spacing or
thinning treatments in a given trial, and
168
these tend to cover a wide range with the standard management treatment falling roughly midway.
except where World Bank and African
The inclusion of unthinned plots as
tion projects are involved. Small circular ïSP's of about 0.04 to 0.05 ha are being
control in thinning trials is quite
usef ul
low sampling intensity and on small areas Development Bank assisted forest planta-
a
for
used in the large scale inventories instead
the affect of thinning on growth and productivity. Residual assessing
of PSP's. lt
should be noted that inventory sample plots aÍe located randomly or systematically in order to obtain a representative sample of the population, whereas crop plots are subjectively located to obtain management data f or specif ic site conditions. PSP's in CFI's are expected
number of stems or basal area per hectare is the usual criterion of thinning intensity in the thinning trials. There is however the possibility of stem diameter
distribution and hence residual volume varying between replicates of the same thinning treatment.
to receive the same silvicultural treatment as their compartments, and they are ideal
Spacing and thinning trials are expected
or estimating the periodic charges in volume and other forest stand f
to be long-term, possibly lasting to full rotation age, with remeasurements in
parameters.
thinning trials coinciding with the thinning cycle. Unfortunately, shortage of funds and manpower has not enabled FRIN to establish an adequate national network of regularly treated and assessed spacing and thinning trials. Although d.b.h., basal
For future CFI programmes in Nigeria, the use of only PSP's is being recommended as against the combined use of PSP's and PSP's, that is in sampling with partial replacement (SPR) because the use of
area and height assessment have been carried on various spacing and thinning trials the assessment of taper and volume production has received relatively little
only PSP's involves less enough
attention. Estimates of both current
have been obtained from the assessments
of spacing and thinning trials. Statistical tests of significance are varied out on the treatment means and increments using the Analysis of Variance appropriate to the experimental design used. The comparing
the
ef f
ects
data
to allow many to be laid and
PSP's. The PSP trees should
be
numbered and marked at breast height to
facilitate the relocation of the plots for inspection or assessment. Great care has
average d.b.h. increment of the largest 250 or 100 stems per hectare is very
ul f or
icult
assessed per unit-area, and large enough to have more or less the stocking characteristics of the surrounding compartments. lnitial stocking of about 1 50 trees are recommended for these
treatment means and average treatment increments for diff erent stand parameters
usef
diff
computation and statistical analysis. The PSP's should be f our-sided and small
to be taken to
ensure that the PSP's receive the same silvicultural treatment as the compartments containing them. Both random and systematic sampling methods
of
different thinning treatments. Adequate data are however not presently available for developing accurate growth and yield prediction models from the spacing and thinning trial plot already established.
have been used in the inventory of forest plantations in Nigeria, but systemat¡c sampling appears to be a letter choice for
the future as it is more practicable
and
usually less costly than random sampling.
Contínuous Forest lnventory Ptots Although some State Forestry services establish and assess forest plantation sample plots to obtain management data,
CONCLUSION
no actual programme of continuous inventory of forest plantations has
Plantation forestry in Nigeria still leaves much room f or improvement. The establi-
apparently been established anywhere in
shment and management of f orest plantations as well as growth and productivity studies aÍe faced with
the country. lnventory of state forest plantations is commonly done with
a
very
169
and
Adequate financial support therefore has
éocio-economic problems. The annual
planting targets of the State Forestry services are far from being met, while
to be given for the successful execution of research studies on growth and yield, stand dynamics and site productivity
most of the existing forest plantations are
relationship.
f
inancial, technical, administrative
poorly maintained and
managed. Permanent sample and research plots for
growth and productivity studies are limited in number and susceptible to
REFERENCES
illegal felling or destruct¡on by fire. Abayomi, J.O., 1973: The measurement
of growth of tree crops in Nigeria, with special ref erence to volume tables, permanent sample plot procedures and growth models.
Forest plantation management depends on growth and yield research, and vice versa. Growth and yield research in Nigeria should be well developed to provide sound scientif ic and technical
M.Sc. Thesis, University
basis f or the establishment and
management of forest plantations. On the other hand, State forest plantations need to be properly maintained and
Abayomi, J.O. and Nwaigbo, 1.C., 1985:
Growth and yield studies of forest
plantation species in . Southern Nigeria. Research MonograPh, Forestry Research lnstitute of
managed to provide suitable media for growth and productivity research. The
development of plantation f orestry in Nigeria calls for greater co-operation and
Nigeria, lbadan (ln press).
coordination between the various forestry
in the planning and execution of forest plantation
1985: Growth prediction in some plantations of exotic
Adegbehin, J.O.,
organizations
programmes and research studies growth and yield.
tree species in the Northern Guinea
in
and Derived Savanna Zones
Cooper, L.G., 1962: lnstructions f or species trials Tech. Note No. 19,
scope of study or obtain additional useful
ormation. An adequate national network of crop plots, spacing and thinning trial plots as well as CFI plots should be set up through the joint deliberation of various forestry organizations. Periodic assessment of permanent plots requires adequate provision of suitable equipment and well
Dept. For. Res. lbadan, Nigeria.
inf
Horne, J.E.M., 1962: Nigerian samPle plot procedure. Tech. Note No. 1 6,
Fed. Dept. of Forest
Research
Nigeria.
Jones, N.,
1967:
in the breeding
Procedure
trained personnel, including biometricians and computer programmers. Electronic
Nigeria forest tree
process¡ng facilities should be adequately provided for the computation analysis and storage of data. Basic
Nigeria Tech. Note No. 39.
programme. Dept.
data
individual trees of several plantation in Nigeria. Dissertation
species
f or degree of Ph.D. University of lbadan, lbadan,
submitted Nigeria.
Okojie, J.A. 1981. Testing for normality in populations of some Plantation tree spec¡es in Sapoba, Nigeria. Nig.
lnadequate research back up has been ¡dent¡fied by Umeh (1991) as one of the conf
ronting
f
of For. Res.
Lowe, R.G., 1970: Some eff ects of stand density on the growth of
permanent plot summaries of stocking, diameter, basal area and height data are available (Abayomi and Nwaigbo, 19851 but regression analyses need to be carried out to provide accurate est¡mates of main crop and total crop volumes.
plantation development in
of
Nigeria Ph.D. Thesis, University of lbadan, lbadan, Nigeria.
Growth and yield research is best done with permanent plots although temporary plots can also be used to increase the
major problems
of
Aberdeen.
orest
Journ. of For. 1 1 l1l : 24-32.
Nigeria.
170
Okojie, J.4., 1983: The Weibult distribution function as a management tool. Paper presented at IUFRO Workshop on Applying Results of Forest Research, Edinburgh,
1
Umeh, L.1., 1991: Forest Management in
Nigeria-Problems and the Needed strategies. lnvited paper for the Distinguish seminar series of Forestry Research lnstitute of Nigeria, July 17,1991,21 pp.
5 pp.
t7L
THE ITC/RFD HUAI KHA KHENG PERMANENT SAMPLE PLOT (1987I Sydney G.Banyard ITC Forestry Department The Netherlands
ABSTRACT
A single large sguare permanent sample plot of l6 hectares was created by trainees of ITC (The Netherlands) in Dry Evergreen Forest in Huaí Kha Kheng Wildlife Sanctuary, Thailand in 1978 for inventory training purposes. All living trees of all species with diameters above I O em were included. Tree locations were plotted during fieldwork and later digitized. The plot was accurately located on aerial photographs. Observations and recommendations resulting from this exercise are listed.
INTRODUCTION
f
ieldstation.
As part of their annual tropical forestry f ieldwork training programme for 1987, students of the lnternational lnstitute for Aerospace Survey and Earth Sciences (lTC), with the support of the Royal
The creation of this plot addresses the
Forest Department of Thailand, created a single 1 6 hectare permanent sample plot
increasing importance being given to PSPs in natural tropical forests, and was
(PSP) in Huai Kha Kheng Wildlife Sanctuary in Uthai Thani Province. The forest is classified as Dry Evergreen Forest, the
specif
o&rEcTtvEs
ically created with training and lt was not intended to be part of a network of PSPs. Several aspects of forest inventory - including research in mind.
dominant species is Hopea odorata and in 1987 there was little evidence of either
aerial photointerpretation, land surveying,
past or present human activities (other than fire). The average annual rainfall is
forest mensuration, computer handling are involved. A large squâre PSP was intentionally chosen as this would best
above 1500 mm/yr, the terrain is flat, the plot elevation is 50O metres above sea level and soils are red-yellow podsolic.
satisfy another training objective, namely
the application of computer
aided
sampling exercises (using Lotus 1-2-3,
The location of the plot is shown on the map in Figure 1. The approximate location of the Hopea dominated forest was found by aerial photointerpretat¡on. The actual location of the PSP in the field was done using a random start along a cut access line. Tree stem maps were
BASIC) , on the resulting database. ln the long term, it is intended to carry out growth and change studies after remeasurement in 1992.
prepared.in the field on
a per hectare basis. The plot boundaries have been accurately plotted on 1 :8000 aerial
MEASUREMENTS
photograph enlargements (see Figure 2). The plot is close to a footpath and about 40 minutes walk from the Kapuk Kapieng
All trees of all species were included
dBase
lV,
the inventory. The plot, which
in is
4O0 by 4OO metres, has two components
173
1(r
]
NA
i.:N
1.,'
t74
:.*i
y,t
dtr IJ.J
fr
f,
g lJ-
rr;.ti
isili; il,i ç'#,
t7ó
which are distinguished by the lower diameter limit used. For a 300 by 300 metre t hectare Plot, trees with a diameter of 1O cm or above were included (mean of 480 trees per ha). For the other 7 hectares, all trees with a . diameter of 1 5 cm or above were included (the only reason f or this difference relates to the limited time available for gathering data in the field).
in the field having been inked over after control for errors.
For the location of trees in 1992, the digitized tree maps will be plotted by computer at scale 1:250 and waterproof prints taken to the field. lt is expected
that these will ensure accurate
tree
location. Figure 4 shows one hectare reduced to scale (approx) scale 1 :400
All hectare boundaries were set out using an Ushikata surveying compass with telescope. Other lines were set out using
surveying compass and Jacob staff . Tree heights to crown point were estimated for
all trees with the aid of a 4 metre pole with periodic checks using a clinometer. All trees were plotted in the field on tree stem maps (scale 3.5 mm per 1 metre). ln all, 250 man days were spent in the f ield on all activities related to the
SOME OBSERVATIONS AND RECOMMENDATIONS Based
on the
experience gained in
creation of this PSP. The tree stem maps
creating this PSP, the following observations and recommendations can be made:
database having one record per tree and
-
were d¡gitized in the off ¡ce and the resulting coordinates merged into a
the fields: Tree Number, X coord, Y coord, dbh, Height, Volume, SPecies
Even when well trained and motivated
staff ate involved in
f
ieldwork
activities, numerous mistakes
can
occur (in this case all participants were
code. Tree stem volume was estimated from the products of an assumed form factor of 0.7, tree basal area, and bole
B.Sc graduates specializing in forest survey)
height.
-
As mentioned above, it is the intention of
lt was found essential that plot layout, plot enumeration and the creation of
the tree stem maps were clearlY def ined as 3 distinct activities otherwise there was frequent conf usion and a multitude of errors
the ITC Forestry Department to remeasure this Permanent Sample Plot in May 1992.
Checks in 1987, after fieldwork, already indicated that errors existed in the original database. Many of these - mainly related to location and measurement - were corrected in 1988. However, it is known that some errors st¡ll exist and that these will have to be addressed in 1992. Those relating to species identification will need
were introduced
-
However well trained, the local tree spotters cannot be expected to accurately identify all tree species. Forest botanists are required and material for identification will probably have to be collected in the field.
-
Tally sheet data and tree stem maps
special expert attention before the database can be used for detailed analysis at the species level.
have to be cross checked as earlY as possible in the field. Daily checks and correct¡ons of work already carried out were a feature of setting up this PSP
Table 1 gives a list of the more important features of the ITC/RFD PSP. These were
based on recommendations f ound in Tropical Forestry Paper 14 of the Commonwealth Forestry lnstitute, Oxf ord; FAO Forestry Paper 2212; FRI Bulletin 48 of the New Tealand Forest Service.
-
Figure 3 shows part of an original field tree stem map - the original pencil entr¡es
t76
Even during the creation of this PSP, boundary posts and tree number tags were removed by elephant. lt is clear that without tree stem maPS the accurate identification of individual
Table
1.
Main characteristics of the lTc/RFD HUAI KHA KHENG pêrmanent sample plot in THAILAND : Established in 1987 as part of the rrc rropicar Foreetry Fierdwork program.
MAIN CHARACTERISTICS
AS APPLIED IN THE ITC-RFD PSP:HUAI KHA KHENG WILDLIFE SANCTUARY
1, 2.
Numbor of plots
Only one large pormanent plot was created.
Plot size
The plot-is a 1 6 hectare block (divided into 1 6 single but contiguous one hectare blocks).for all trees larger than or equal to I s cm ãi"-"tur. Fo-r 9 of tne prots ail trees largor than or equal to 10 cm diameter were measured. nãctare
3.
Plot shape
squaro blocks of t hecta¡e were used to form the 4oo by 4oo metre 1 6 hecta¡e plot (and also the 3O0 by 3OO metre 9 hectare floti.
4.
Plot subdivisions Each
5. 6.
Sapling design
Thore is no "sample" as such-just ono large permanent plot.
Plot location
purposively selected on aorial photographs bur tho exact I!u,j91""a,"_1"n{ .wa.s locatlon ot the block was made using a randomly ôelectã¿ i¡"t"^^o frnm ¿¡ exa.ctly located starting point (footpath'"ro""inj siåam). ãn ot the ptot on enlarged aorial photographs was done as coffrrmed tn the ott¡ce by superimposing photographs and he
t ha block was divided into loo quadrats of 1o m by .l o m. These were the field recording units.
same scale.
7.
Permanent
Durab
block.
posts.
:
block
of the
Y n
1gg2.
8.
Plot description
The following information was rocorded : (a) Full dotails of the locat¡on of the permanent plot. (b) A description of stable s¡te foatures suctr a" ioit-iyfr, slope,-geology (c) A description of rhe ¡nitial srate of the flora and 1?,p9"t, (d,
faiãa.
Goneral ¡ntormation on the location such as temperature, rainfall and other
climatic data.
9.
Treo numbering
TAc!, wlt! punched numbers were naited to each tree. The
lags yî!-UylI]y-Y 9 ntacgg exactty.2O cm.ABOVE the point of measurement (pom) of tÈe relerence diametor (rd) and always on the NoRTH side of each stem. Each tree has a uniquo number WITHIN EACH IIECTARE BLOCK.
1O. Tree stem map
Tree positions are indicated by circles and tree numbers on the final tree stem
Taps' The circles,
although nor drawn ro map scare, indiòaté iáråt¡*-iiå"
diameter differences. The t-ree stem maps ¡lave Seen made at scale 1:250. ln were.ptotred on a fiétdsheet having a S.S mm squããsr¡¿ l!: ligldl.locgtions represent¡ng I metre in the field. Measurement and plottíng was to th'e n"ui""t for Hopea odorata are fiiled-in on the tre;-sù'' ,nup.-to uia rn 9r2-5,1. -circles llold locatron11
.
Borderline
lrees
The decision on whether to includo borde¡lino trees was based on the centre of
the.slem at the.Po¡nt of measurement. No half tr""" w"ru tuk"n. decisions were difficult, remeasuroments wore made using necessary.
'i2. 13' i
4.
Marking "pom"
point of measuroment is rocated by measuring holding the number tag of each tree.
The.
"
Whero
nigüài-fi""i"läà i
20 cm BELow tho
nair
Trees measurod ALL LIVING trees of ALL SPEclEs having a diameter at po¡nt of measurement GREATER THAN 10 cm (or 15 cm, see iabove) were unum"ruted and giuuñ u unique number within a one hectare bock. Tree diameter measts
177
Table
1
continued. to crown point wers aided by placing a long (4 or 5 m) bamboo pole against each tree.
15.
Tree hoight est¡mates
16.
Remeasurements lt is planned to remeasure the block every 5 years (1987, 1992, 1997 etc'). (fteq)
17.
Remeasurements ltisplannedtoremeasuretheblockinthesameseason(beforo) therainsinMay(time) June) on every occasion.
Ocular estimatos of the height
-fully located on aerial photographs.
trees at a later date would be almost impossible in this PSP. W¡th them it is
-
expected that such problems'can be overcome.
Careful consideration should be gíven
to
using hand held comPuters f or
record¡ng data in the f¡eld. It was found that recording errors were dramatically reduced when numbers (eg. diameters) were reported in digital form (in English "one, three" rather
than "thirteen" which is
REFERENCES
not
infrequently recorded as "thirty") and repeated aloud by the tally man. This became a rigid rule.
FAO, 1980: Forest volume estimat¡on and
yield prediction. Forestry Paper 2212 FRI New Zealand, 1983: lndigenous forest survey manual,Bulletin No 48. New Zealand Forest Service.
Although these are generally disliked by users, steel diametef tapes have to be recommended. lf linen tapes are
ITC Tropical Forestry Fieldwork Reports, 1 987, 1 988
used, these must be regularly checked for they can stretch considerably (cm not mm) after only a few days use.
Lauprasert, M., 1988: The creation of
permanent sample Evergreen Forest
Remeasurements during checks in 1 988 suggested that some trees had
smaller diameters after one
Plot in
of Thailand,
a
DrY
MSc.
Thesis
year
Synnott, T.J., 1979: Tropical Forestry
(negative growth?!Þ
Papers, When available, plots should be care
No 14.
Commonwealth
Forestry lnstitute, Oxford
178
FIGURE 3
AA
BLOCK
.U
Name Date
Time in Tirrc out Scale 3.5 mm
Sue.Ae{K
r/qlzt
HA
L
F E
D
t0:lc
c
thof
A
B
-1
779
FIGURE 4 }T.IAI K}IA KHENG WLDLIFE SAI{CTURY UTtlAl Ttl,ANl PROVINCE: TtL ILANO xecrmeA 2
PCRTIAT{ENT SAI'PLE PLOT
j. ár
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å, o
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oo !a
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lo nd any cdr-lloña lo tha llo Uu. ùa..qu-lad Fd-lay Dapùtlúl rñr. lh. dala¡¡ wlll b. l.pl u, lo ûla' by lrc la u.y_Juna rat2 Phnn.d d¡la ol t.È.urúÍl
Cr-tad òt
ITC
Fd-lrt OaPütffi|,
lro9bal toa-try
cÙ- x ''l' o'Þ'lMt
ll¡at ìd fr!!) fhh lh. full cogtllld ol tñ. iot¡l b't
180
.
I
ra5
.9 ro
-.- -
ùô"
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.
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r
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,'7,
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!.7
.
.?.o
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to.r
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teZ -
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3o
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'
PERMANENT RESEARCH SAMPLE PLOTS IN PENINSULAR MALAYSIA : ESTABLISHMENT, MAINTENANCE AND PROBLEMS Ismaíl Harun Azman Hassan Khali Aziz Hamzah Forest Research lnstitute of Malaysia Kuala Lumpur, Malaysía
ABSTRACT To better manage the 4l .9% of the totat forested land of Peninsular Malaysia,.several types of permanent sample plots were established to gather the appropriate informations. Examples
of permanent sample plots available in the country are silvicultural ptots, phenotogical ptots, b¡g tree plots and virgin jungle reserves. This paper will highlight several of these plots; their obiectives, establishment procedures, maintenance, data collection and problems encountered.
INTRODUCTION
85.5% are forested area which have been as Permanent Forest Estate (PFE) for the purpose of production and protection. An area of 2.81 mill. ha of production forest is being managed to serve the purpose of sustainable forest
allocated
The unique natural tropical rainforest of Malaysia is rich and varied in flora and fauna. lt is estimated that there are some 14,500 species of flowering plants, of which 8000 flowering plants is found in
management. Pertinent to this, basic informations and knowledgés such as
Peninsular Malaysia (Cranbrook 1988). ln addition to this , there are thousands of fauna species available in the country. ln
forest structure, tree growth etc. need to be gathered to formulate sound management and silvicultural system.
order to conserve and preserve these bio-diversity, a total of 12.55 million hectares have been allocated for Permanent Forest Estate (PFE) which is to be managed under sustained
t¡on
to this,
another
One
yield. ln addi6 million ha
national parks, wildlife sanctuaries and nature reserves. A further 6.20 million hectares are Stateland Forests which is managed to serve the economic develop-
of the country (Othman
1990). All in all the total land area under f orest for Malaysia amounts to 20.10 million ha.
ln
1
99'l
plots located in this country. TYPES AND OB.'ECTIVES OF PSP
, the total forested
estimated
at
collect
Malaysian tropical forests is by establishing Permanent Research Sample Plots (PSP) all over the country. Several types of PSP have been established in the country with specific f unctions and representing each of the forest type. This paper will highlight and discuss several aspects of permanent research sample
1 .1
outside of the PFE have been legislated as
ment needs
of the methods used to
reliable information and data of Peninsular
area was about 5.51 million ha or
Virgin Jungle Reserves (VJRSI
.9% of total mass area of Peninsular Malaysia (Thang 1 991 ). Out of this, 41
The establishment of Virgin 181
Jungle
in Peninsular Malaysia was initiated in 1950 primarily to serve as permanent nature reserves and natural arboreta, control for exploited and Reserves
which are related to f lowering and fruiting habit of some selected indigenous species. The importance of these plots is
of their close connection with seedling recruitment, f orest regeneration, tree
silviculturally treated forests
and undisturbed natural areas for general ecological and botanical studies (Putz
physiology and forest composition. The objectives of having this type of plot are
1978). Subsequent to this, almost all permanent research sample plots in the country were established within Virgin Jungle Reserves.
f
irst, to obtain inf ormation,
f
rom
numbered and identified individual trees on the time taken f rom f lower opening to f
Virgin Jungle Reserves in the country were set up to meet six malor objectives. Firstly is to provide control against which the results of silvicultural
ruit-ripening.
Second,
to obtain
inf
ormation over
a
period of years, on the frequency of flowering and fruiting. Third, to obtain information over a period of years, on the vegetative growth cycle. Fourth, to study
operations may be assessed. The'second
objective is to provide undisturbed area for hydrological water management and
the rate of growth of the numbered trees.
other scientific research. Thirdly, to form
and finally to serve as part of a network of observation areas to give early warning of general f ruiting.
Fifth, to serve as seed collection areas
the nuclei f or a network of Forest Research Areas. Fourthly, to ensure natural supplies of seed for reforestation.
Last but not least is to
conserve
representative samples of all existing types of forest, together with the plants and animals they contain, which might otherwise become extinct and to protect
Big Tree Plots
of giant trees in easily accessible places, near
These are small isolated stands
some of the more scenic forested areas for present and future development into touristic, educational and recreational fo
public roads, preserved as Natural Nature Monument. The management of productive forest on rotations of 80 years or less will result in timber stands of mediumsized trees only. Whereas giant trees
rest.
which take 300 years or more to reach size maturity will be conserved in VJR
Silvicultural Plots
but for demonstration purposes. Big Tree Plots have a special value because of their
Silvicultural plots are all plots previously known as Sample Plots with the exception of phenological plots. The f irst
visibility, as living museum pieces.
silvicultural plots were established in 1915 and by'l 975 it reached a total of 62 plots. All these plots are used for the purpose of monitoring growth perf or-
These plots were established and
mance of trees under various silvicultural conditions. Specif ically some of the researches include study on regeneration
composition of f orests, changes in species composition and the rate of
Ecological Plots
managed by ecologist to study the natural
status, growth of natural and planted
growth of trees under natural conditions.
indigenous trees and to mon¡tor effects of silvicultural treatment given to the forest. The coordination of researches on these plots is being done by researchers at
ESTABLISHMENT AND
FRIM.
MAINTENAI{CE
Phenological Plots
Virgin Jungle Reserues (VJRsl
These plots were established primarily to study the periodic phenomena particularly
Up
to 1974,
hectarage
182
of
of 66 VJR with total 18,706 ha were established
a total
in P. Malaysia (Forestry Department of p. Malaysia 1975). These VJRs represent all forest types lying from coastal forest up to montane forest. However due to land development, 1 1 VJRS have been
prepared annually.
Eight phenological plots have
been
excised. For
established in Peninsular Malaysia from 1936 to 1 973. Location of these plots are as shown in Figure 4.
being proposed for this purpose. Location of these VJRs are as in Figure 1 .
Big Tree Plots
replacement, 18 more suitable sites have been identified and
B¡g tree plots are normally located near roads to ensure maximum visibility and ease of access. Normally, simple plot record are immediately opened for each plot during the establishment and trees should be measured for girth and height annually. Accessibility inside the plots are made possible by providing ,jungle tracks and paths which are continuously
Silvicultural Plots Silvicultural plots are normally located in natural or managed forest but as far as possible be near or inside VJRs. The size
of these plots will depend on their objectÍves. As an example, each of
growth and yield permanent sample plot which was established in early 1960s is a 2OO x 20 meters (0.4 ha) plot consisting of 40 sub- plots of 1O meters quadrats (Wan Razali 1986). Detail of each plot,
maintained
only two big tree plots were established in the country as indicated on Figure 4.
quadrats and diameter classes measured are as in Figure 2. Measurement of each individual trees in this plot are carried out at 3-year intervals.
Ecological plots
Up to 1975,61 silvicultural plots were established in the country. Location of all plots are as in Figure 3. By the year
Ecological plots should as far as possible be located within VJRs. During establ¡sh-
ment, a plot record shall be prepared to record all necessary informations. FRIM,
1985, some of these plots have been excised to other purposes resulting in only 55 plots left to be managed.
staff are responsible in observing measuring these related
the plots.
and
ormation of Only f ive plots have been inf
established between 1947 to 1955 consisted of Lowland and Hill Dipterocarp Forests (Figure 4).
Currently, FRIM is reviewing the status of these plots and computerizing previous data into a database. The data collected shall be assessed after each measurement and as soon as the objectives have been
realized,
by Distr¡ct Forest Off ice.
Tree-labels and a big sign-board are also placed to draw public attent¡on. Currently
A
the results analyzed f or
synthesis
of rules concern¡ng the
governing and maintaining of all these plots are attached as Appendix 1, 2, 3, 4
publication.
and 5. Phenological Plots
Phenological Plots are normally established with¡n 6 km of a meteorological station and pref erably
PROBLEMS AND
within VJRs.
Measurements and observat¡on are being made by FRIM staff. Observations of these plot are being carried out at least once a month while measurement be made ¡nitially for all numbered trees. Girth are being
RECOi,IMENDATIONS It should be noted that a majority of the
remeasured every year. Related to data measured, an assessment and analysis of
the results and a summary are
PSPs in Peninsular Malaysia were established during the 50's and 60's. Since
then several problems that need to
being
183
be
Fìgure
1.
Distribution of virgin jungle reserves in Peninsular Malaysia.
184
Subploc no.
l0
'39
a
,3ó,
3¡
,r4 ,t
Â1J. sub¡lJ.ots: measure
9
; 7
:
nreÍrsure
al.1 È,rees 2O cm dbh
al1 Èrees l0
+
cnr dblt +
z, Øi)
2
J-6.;(
t
Spot
>
multi-
spectrozonal
and
spectral resolution, and especially it is depending on the distribution of the objects on the terraln and as well as on their area. Landsat MSS imageries are suitable for the production of maps of small scale
For special resolution :
RECOMMENDATION
-
Landsat and USSR colour synthesized imageries are both suitable for forest
with scales : 1:250,000 :500,000 with general f eatures on f orest resource base, f or monitoring variations on large extent of lands over mapping
uses and land resources. USSR colour synthesized photographs
1
and Landsat MSS imageries provide
-
good
for this study can
interpretation is directly proportionate to the tone (and/or colour) contrast on
(1/500,000 - 1/1,000,000) and when general features on large extent of lands are required, they are very suitable for follow up variations in land
-
ormation through
summarized as follows: For spectral resolution :
the
-
inf
nterpretation. The assessment on various imageries i
further research on the matter.
- The accuracy
-
Spot imageries have the merits of both scanning and photography in space survey are of high spacial resolution and thus can provide high reliability and
quality
space and satellite imageries.
this kind of
during
tnterpretatton.
more effective results for forestry than black and white photographs.
-
a zone or nation-wide. Spot imageries can be used for forest
USSR multispectral (including spectroz
mapping up to maximum scale of 1:50,000. When combining with aerial photographs, ground surveysr it is
onal) imageries are very suitable for
possible
Landsat MSS imageries bear all the features of a picture map.
forest mapping at scale
1/1
to produce forest maps for individual districts, and forest
00,000,
enterprises with high quality.
their 'Stereoscopic parallax" allows the
286
FOREST RESOURCES ASSESSMENT AND MONITORING IN VIETNAM Tran Van Chat Mai Van Mon Forest lnventory & Planning lnstitute Thanh tri, Hanoi, Vietnam
The forests, apart from supplying wood
the system of management, monitor¡ng the changes of inventories, formulated
as an endless resources, take a very important role in the protect¡on of environment and genetic source, in
forest resources.
Up to three quartors l3l4l of the total territory of Vietnam is covered by hills and mountains, it is why, the f orest resources is of significant importance in its economy as well as preservation and
scientific study, culture and tourism; that is of significance not only within any locality or even a country but the whole world.
Forest is a biological resources and its motion f ollows particular rules in the environment of ecosystem of which it is a intergral component. Each impact can
protection of environment. During the second half of this century there have
been many national f orest inventories. But during those inventories, due to the requirements of economy and limit in knowledge on forests, attent¡on was paid only to forest area and the growing stock
lead to the break down of the ecosystem
balance unless scientif ic implemented thoroughly,
research
otherwise
(wood and bamboos). The alsided assessment of forest resources could only
unforeseen catastrophy will happen and
impossible to overcome towards the human life (destroy or degrade the forest
happen in some of the vital areas aiming at the immediate objectives. As far as
resources, increasing disasters.) lt is why each measure of f orest management should strictly follow the principles of the f orest ecosystem. This requires the alsided and deep assessment of man to eff ectively harvest and utilize f orest
the technical question is concerned, there was only the 1 981 -1 983 f orest inventory which followed the systematic method and error assessment. All aforesaid forest inventories concerned no assessment and monitoring the changes of f orest
resources. The evaluation of forest
resources based on not only its present state but also the variation in relation to
resources.
other factors of the ecosystem to find out the reasons of such variation and possibly help the forecast operations for the future use of the forests reasonably and to protect and develop forest resources.
Forest inventory is the requirement of the
State Management in case
Forest lnventory and Planning lnst¡tute to implement the project : INVENTORY AND
ASSESSMENTOF
Global Assessment of Forest Resources Project 1 990-2000 for the preparation of
THE
RESOURCES VARIATION
FOREST
OF VIETNAM
PERTOD t 99t -1995.
The
The Project is the f irst phase of the proposed Programme taking place over
neighbouring countries as Laos, Thailand, Myanmar, Malaysia, lndonesia, the
Philippines,
forest
Vietnam dated August 12, 1991). lt is why, the Government appointed the
Many developed and developing countries in the world have considered the monitoring and evaluating the variation of the forest resources. FAO develops the
the G lobal Strategy f or XXl.
of
resources and environment (Prov¡sion 8Law of Protection and Development of Forest of the Socialist Republic of
etc. have many times
many 5-year periods with
implemented the national forest resources
development objective that is
267
the
to step
by
the primary units is designed coinciding to the cordinators of the UTM map
step supply information on the alsided forest resources assessment as well as the trend of the¡r changes in the relation to the soc¡o-economic operations of the country to serve the State Management towards the f orest resources and the forestry productions. The concrete objectives in the initial phase (1 9911
facilitating the field work. The primary
units are located permanently not only f or the period 1991-1995 but also the suceeding periods. Based on this
intention, the laying out of the sample plots should follow the principles so that
the suceeding ¡nventory can collect correctly and adequately what had happened in the sample plots of the
995) aim at the assessment of the forest
of
the
resources recently
and
resources alsidedly, analysis
variation
of
previous inventory. The delineation of the
establising the system of monitoring the
forest resources continuously
a
forestry land boundaries in the primary units (100 ha) to supplement the area inventory on the satellite images. Two
To construct the present land-use and
they are in the right angles in each primary unit, each range consists of 20 sample plots with an area of 500 m2. Total area to be sampled is 20,000 m2. The contents of inventory in each promary unit is very plentif ul. Beside the sampling of the quality and quantity of
and
permanently to serve the formulation of
strategy and plan of socio-economic development, planning and utilizing reasonably land and forest resources
ranges of sampling are established so that
nationally and zonally.
forest map (land atea surveY) LANDSAT/TM, SPOT and aerial
photographs and inf ormation from ground survey including those of from forest
woods and non-wood producgs-including living and dead trees and stumps of the main storey, the regenerated storey, bushes...the factors of site conditions,
management of the forestry production units will be used. ln 5 years, land area survey is at least implemented twice.
orest situation, wildlif e survey, soil survey, and socio-economy and population concerning the inventory area... Prof ile is drawn f or each
The satellite images used in this inventory have high resolution comparing to that of the 1 991 -1 983 inventory (LANDSATiMSS having the resolution of 70 X 70 meters, 1 : 500,000 scale aerial photos
f
inventor¡ed units to serve the research of silviculture and ecology. The soil profiles should be taken to analyse the physical and chemical charateristics... Each year it is about 1/5 to be inventoried regarding
comparing to that of LANDSAT/TM having the resolution of 30 x 30 meters and 1 : 250,000 scale aerial photos,
SPOT IMAGES having the resolution 10 x
mentioned content (660 primary units) basing on the even sYstem throughout the country. Thus, new
10 meters and 1 : 100,000 scale aerial photos) However, to increase the quality and productivity of photo interpretation
the
LANDSAT/TM ANd SPOT it iS to complete the photo key for interpretation and coming towards the digital processing on the computer. On
the
inventory data can be obtained annually in each zone, which allows the f ollowing the variation of the forest resources
necessary
continuously. The data and documents will be registered on the computer and processed by FlPl and other based units.
the LANDSAT/TM and SPOT ¡r is possible to deeply research regarding ecology and environment as map construct¡on, wildlife habitat maps...
To assess the quality and present use of
the forest resources, beside the data taken from the PrimarY units, supplemented inventories on some
The inventory of forest production and quality over the system of the sample plots has been improved greatly. The
subjects will be implemented to construct the silviculture, wildlife, pest and iseases maps non-wood products reports, volume
surveyors determined the numbers of the sample plots so that the error of volume/ha of each forest range (of over 70 forest'blocks in an area) is 10% and the common error is less than 10%. Base on this, a system of the primary units 8 x
table construct¡on, mapping the forest ecological vegetations, soil maps.. f or each province and zone. The operations of forest inventory should be up-to-date paralelling to the modern opinions on forest and forest resources which access
8 km in the forestry land throughout the country is established. The location of
268
the systematic point of view.
The f ormer
and forecast on the var¡ation of the forest
ormation on
resources, proposing reasonable strategy
orest resources, socio-economv (based on the system of registering of the government) will be gathered, the variation of forest resources will be analysed in relation to the socio-economical operations to find out the reasons and the principles of such variation to form the function for forecast on resources combining with the socioeconomic paramounts...to serve the working out of the strategies of protect¡on and development f or the future. inf
f
f
or the protecti9on, utilization,
and
development forest resurces of the whole country and each zone, forestry database
and the system of monitoring assessment
the forest
and
resources
continuously... which will contribute to the correct assessment the potential of the Vietnam forest resources.
At present, the work of the initial years of the project is being implemented (1991) 660 primary units are under inventory on the basic of a regulation and good results were obtained... lf the prolect was regularly and timely supplied with fund during the implementation, the project will perform well what required.
The organization of monitor¡ng the foresl résources will be implemented through the system of the permanent primary
units and periodically monitoring, the Many colegues and experts both in and outside of the country highly evaluated af oresaid project. The project was implemented almost coincide with the FAO/UNDP Global FRA-20O0 project and it is probably to be harmony with the f orestry operations of the world over. Comparing to the project VIE 761O14
system of databases by time and space, and the system of up-to-date information
from the forestry product¡on and management units... With such a system
of scientific management, from the later periods, it is possible to f ollow and mon¡tor strictly the f orest resources variation, research the forest increment as well as the process of degradation or increasing of the forest resources and
implemented in 1 981-1 983 (sponsored by UNDP/FAO wlth less than 2 million US$
forest land.
excluding the countyerpart contribution) this project (the tentative f und annually is
All
documents and data of f orest inventory as well as other f indings
less than 250,000 US$) will supply many f
concerned (hydrology, pedology, dlimate,
soil assortment, ecological
indings and would
be
implemented
scientifically. Comparing to some of the
zoning,
pro.jects NFI of the neighbouring countries
population and nationality distribution, the
this project consists of some of technical
system of national, provincial and the forest road system transportat¡on) will be arranged into database on the forest resources for all zones and country as a whole. A database consists of data,
equivelent.
To successfully performed the project, it is better to make closed operation with the scientif ic institutions in and outside of
paper documents, maps, and photos (GlS) are registered by a range of time, will be applied in the registslation and processing data for the project. These database is
the country, particularly the case
of technical transformation and equipments and the modern techniques as digital data processing by computer, the techniques
usually up-to-dated and stored permanently in FlPl and in the base inventory units to serve the forest
of GlS, the supplying of satellite images with high quality... The changes in the
system of the State
Management,
many scientific reports on the tropical
stable system of
production
forest of Vietnam, the svstem of analysis
arrangement).
management of the Forestry Sector as well as the other institutions concerned.
Beside data and maps
Sectoral Management on the f orest resources will be important ensurences for the successful of the project (the system of management ¡nformation, the
published
temporarily each year and 5 year period,
265
Collection of
d¡ta in p¡i¡àry units
Dat¡ B¡se
II
bv llation,
legion,
Pnovince
llide I¿vels P¡inciples of Fo¡est
Ch¡nges
lesults of the Prograne fon
l{e thodo I
ogi cal
Corpletion
fl¡tion, legion, P¡ovinc¡ llide
kvels
Fígure 7. Flowchart of work system in forest resources assessment and monitoring
1991-1995. 270
t
¡ tn
li
It
,i
to
,t
¡t
ill'"
in
TN
lr
¡a
¡t
l0
tn
t!
af
It
an
tl ßo
to
tt ¡t m
tt lm lni I
tt
I
ro
il!
tt!
ltn
Ito
t¡r
ti
lrr
¡n
trt
ttr ll0
I
ln
ltt
I
tr
l¡o
tñil
tin
ttr
lao
ti0
lß!
t6t
Ito
Irr lin
rl
lit ltr ,
Itt
tt
,ly
m
rrlån'
Fígure 2. Primary unit network.
I ! = ! = g= o
'l =
primary unit primary un¡t primary unit primary unit pr¡mary unit primary unit
in 1990 & 1996 in 1991 ¡n 1992 in 1993 ¡n 1994 in 1995
27L
ACTIVITIES