automatic monitoring of boundary layer structures with ceilometer

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airfields and meteorological stations. Their primary task is the detection of cloud base layers; automatic monitoring of boundary layer structures has become ...
AUTOMATIC MONITORING OF BOUNDARY LAYER STRUCTURES WITH CEILOMETER Christoph Münkel1, Reijo Roininen2 1

Vaisala GmbH, Schnackenburgallee 41d, 22525 Hamburg, Germany Phone +49 40 83903 132, Fax +49 40 83903 110, E-mail [email protected] 2 Vaisala Oyj, Vanha Nurmijärventie 21, 01670 Vantaa, Finland E-mail [email protected]

ABSTRACT Ceilometers are eye-safe, compact and robust lidar systems designed for unattended operation at airfields and meteorological stations. Their primary task is the detection of cloud base layers; automatic monitoring of boundary layer structures has become another important application of these instruments. An automatic algorithm for online retrieval of boundary layer depth and additional residual structures has been developed that covers not only ideal boundary layer diurnal evolution, but all situations involving clouds, fog, and precipitation. This algorithm is part of the Vaisala boundary layer reporting and analysis tool BL-VIEW. During a two years evaluation period, the U.S. National Weather Service permanently collected backscatter profiles from at least three Vaisala CL31 ceilometers at its test site in Sterling, VA. The automatic algorithm has been tested on this extensive database and on data from the Vaisala test sites in Vantaa, Finland, and Hamburg, Germany. Examples covering a variety of meteorological situations in all seasons are presented that demonstrate the quality of the algorithm and its application in the field of air quality forecasting.

1. Introduction Eye-safe lidar ceilometers are reliable tools for unattended boundary layer structure monitoring around the clock up to heights exceeding 2500 m [1, 2]. Comparison to temperature, humidity, and wind profiles reported by RASS, sodar, radio soundings, and weather mast in-situ sensors has confirmed their ability to detect convective or residual layers [3]. In addition, ceilometers with a single lens optical design enable precise assessment of inversion layers and nocturnal stable layers below 200 m. This design has been chosen for the Vaisala Ceilometers CL31 and CL51 [5].

2. Instrumentation

Figure 1. Vaisala Ceilometers CL51 (left) and CL31 and their optical concept 1

The single lens optical design of the Vaisala Ceilometers CL31 and CL51 uses the inner part of the lens for transmitting and its outer part for receiving light (Fig. 1). This provides overlap of the transmitter light cone and the receiver field-of-view over the whole measuring range and allows reliable detection of also the very low nocturnal stable layers below 200 m not seen by other instrument types. The main performance characteristics of the two instruments are listed in Table 1. The CL31 ceilometer has been chosen as standard cloud height indicator for the Automated Surface Observing System of the U.S. National Weather Service (NWS); currently more than 2100 units are installed worldwide. The CL51 ceilometer has a larger lens and a more powerful laser source to enable cloud base reports up to 13000 m. Its increased signal-to-noise ratio reveals also weak elevated aerosol layers. Table 1. Performance characteristics of the Vaisala Ceilometers CL31 and CL51 CL31

CL51

5m

10 m

10 m

10 m

2s

6s

16 s

36 s

Measuring range for cloud base detection

0 … 7500 m

0 … 13000 m

Backscatter profile range

0 … 7700 m

0 … 15400 m

Range for boundary layer fine structure profiling

0 … 4000 m

0 … 4000 m

Total height

1190 mm

1531 mm

Total weight

31 kg

46 kg

Weight of measurement unit

12 kg

18.6 kg

InGaAs diode

InGaAs diode

910 nm

910 nm

1M

1M

Minimum range resolution Typical range resolution for boundary layer scans Minimum report interval Typical report interval for boundary layer scans

Laser type Laser wavelength Eye-safety class

−9

CL31 Hamburg backscatter density on 10.04.2009 in 10

−1

m

NWS Sterling, VA, Unit B log10 of backscatter on 09.09.2009 in 10−9 m−1 sr−1

−1

sr

3000

2000 20000

Gradient local minimum Cloud

Gradient local minimum Cloud

1800

4

10000 2500

1600

2000

Height in m

2000

1500

1000

500 1000

Height in m, 360 m mean

5000

1400

3.5

1200 1000

3

800 2.5

600 200

400

500 100

0 00:00

03:00

06:00

09:00 12:00 15:00 Time on 10.04.2009

18:00

21:00

2

200 0

50

05:00

07:00 09:00 11:00 Time on 09.09.2009, 1800 s mean

13:00

15:00

Figure 2. Left: Density plot (local time vs. height) of range corrected attenuated backscatter profiles recorded by a CL31 ceilometer at the Vaisala test site Hamburg, Germany, on April 10, 2009 with nocturnal, convective and residual layers. Right: Density plot of range corrected attenuated backscatter profiles recorded by a CL31 ceilometer at the NWS test site Sterling, VA on September 9, 2009. Fixed sliding averaging parameters of 1800 s and 360 m are used that show a nocturnal and a convective layer. On this common day with rain and clouds, fixed averaging parameters do not reveal all aerosol layers in a satisfactory way. 2

3. Method 3.1 Gradient method A widely applied approach to identify the vertical extent of aerosol layers within the planetary boundary layer is the gradient method that searches the range and overlap corrected attenuated backscatter profile for local gradient minima [4]. Its application to ceilometer data involves averaging in time and range. The CL31 recommended report interval for aerosol investigation is 16 s; profile range resolution is 10 m. Applying 1800 s and 360 m time and height sliding averaging reveals local gradient minima within the profiles and thus information about aerosol layers. This approach works generally well for cloudless days (Fig. 2, left). In the right part of Fig. 2 backscatter profiles from a common day with rain and clouds are treated with the gradient method. A low nocturnal layer and a convective boundary layer evolving after about 10:00 local time are visible in this density plot. On the other hand precipitation and cloud bases call for a more sophisticated treatment. The following section describes the steps suggested to turn this standard gradient method into a robust algorithm that is able to identify situations when precipitation or fog prevents the detection of boundary layer height, and does not use high backscatter from preceding clouds for profile averaging. 3.2 Enhanced robust algorithm NWS Sterling, VA, Unit B log

10

−9

of backscatter on 09.09.2009 in 10

−1

m

−1

sr

NWS Sterling, VA, Unit B log

10

2000 1800

−1

sr

1800

4

4

1600

1400

1400

3.5

1200 1000

Height in m

Height in m, 360 m mean

−1

m

Gradient local minimum Cloud

1600

3

800

3.5

1200 1000

3

800 2.5

600

2.5

600

400

400 2

200 0

−9

of backscatter on 09.09.2009 in 10

2000 Gradient local minimum Cloud

05:00

07:00 09:00 11:00 Time on 09.09.2009, 1800 s mean

13:00

2

200 0

15:00

05:00

07:00

09:00 11:00 Time on 09.09.2009

13:00

15:00

Figure 3. Left: Density plot of range corrected attenuated backscatter profiles recorded by a CL31 ceilometer at the NWS test site Sterling, VA on September 9, 2009. A cloud and precipitation filter is applied to the data shown in Fig. 2. Right: Density plot of range corrected attenuated backscatter profiles recorded by a CL31 ceilometer at the NWS test site Sterling, VA on September 9, 2009. All steps of the novel robust algorithm for boundary layer investigation have been applied. The first step towards a robust all weather algorithm is the application of a cloud and precipitation filter. In Fig. 2, the large backscatter values from the single 1300 m cloud at 09:40 are still visible half an hour later when no cloud was detected in that range. High back-scatter from clouds and precipitation should therefore not be used in the averaging process. The result of applying this filter is shown in Fig. 3 (left). It reveals that there was no more precipitation after 06:30 and allows a better view on aerosol backscatter from the vicinity of clouds. Reporting of gradient minima is not done during the precipitation event. Long averaging intervals help preventing false gradi-ent minima hits generated by signal noise. On the other hand, this approach reduces the ability of the algorithm to respond to short scale signal fluctuations in space and time. Signal noise amount is depending on range and time of the day. The enhanced auto-matic algorithm introduces variable averaging parameters that enable a much better view on a stable noc-turnal layer at a height around 100 m that is detected before and after the morning rain shower (Fig. 3, right). The final step towards the enhanced gradient method involves the suppression of false layer hits generated by small fluctuations of the backscatter signal intensity. This is the case around 07:00 at 3

heights between 400 m and 1000 m. Fig. 3 (right) shows a nocturnal layer followed by a convective layer with cloud formation reaching 1600 m in the afternoon.

4. Results From the extensive CL31 database available from the NWS test site Sterling, a winter day with precipitation and low cloud layers, and a summer day with a high residual layer have been picked as examples. A comparison between the two Vaisala Ceilometers CL31 and CL51 at Vantaa, Finland, shows the advantage of the improved signal-to-noise of the new CL51. 4.1 A winter day with clouds and precipitation The first example (Fig. 4, left) shows data from January 10, 2009. A 100 m layer rises from 00:00 till 05:00 and stays at 500 m until 10:00 local time. Its altitude is confirmed by the 07:00 Sterling radio sounding that shows a virtual potential temperature rise at that altitude. Rain showers start at 14:30; there are no more layer reports until 19:00. The virtual potential temperate profile at that time confirms a 250 m boundary layer reported by the automatic algorithm. −9

CL31 NWS Sterling Unit A backscatter density on 10.01.2009 in 10

−1

m

−1

−9

sr

3000

CL31 NWS Sterling Unit B backscatter density on 18.08.2008 in 10

58%

296.1 K

63%

Gradient local minimum Cloud

84%

Gradient local minimum Cloud

307.2 K

Virt.pot.temp.

294.3 K

94%

26%

10000

294.4 K

2500

305.5 K

33% 86%

303.0 K

87%

302.9 K

305.4 K

88%

302.7 K

305.4 K

89%

302.7 K

5000 98% 100%

306.1 K

97%

10000

99%

5000

304.1 K

96%

2000

−1

sr

20000 19%Rel.humidity

78%

2500

−1

m

3000

20000 Rel.humidity Virt.pot.temp.

305.5 K

87%

2000

292.3 K

288.8 K

90%

1500

288.2 K 100%

64%

293.6 K

51%

285.4 K

59%

277.4 K

275.1 K

272.5 K

287.9 K

92%

285.9 K

73%

68%

1500

63%

284.2 K

302.4 K

91% 89%

282.3 K

58%

43%

03:00

06:00

272.0 K

09:00 12:00 15:00 Time on 10.01.2009

305.1 K

500

53%

200

56%

279.4 K

276.1 K

302.3 K 302.0 K

61%

500

301.3 K

92%

275.1 K

93%

274.7 K

18:00

21:00

305.0 K

305.0 K

44%

200

40%

100

100 69%

0 00:00

1000

68%

302.4 K

1000 91%

96%

Wind

77%

305.3 K 67%

500

281.6 K

63%

500

1000

287.7 K 100%

1000

2000

99%

Height in m

Height in m

2000 96%

50 Wind

Wind

0 00:00

299.1 K

90%

03:00

06:00

289.1 K

09:00 12:00 15:00 Time on 18.08.2008

304.9 K

33%

18:00

36%

305.2 K

21:00

00:00

50 Wind

Figure 4. Left: Density plot of range corrected attenuated backscatter profiles recorded by a CL31 ceilometer at the NWS test site Sterling, VA on January 10, 2009. The automatic algorithm extracts all layer information from the profiles and suppresses reporting of gradient minima during the precipitation event starting at 14:00 local time. Radiosonde data from a co-located launch site are available twice daily at 07:00 and 19:00. Solid lines with attached numbers show the virtual potential temperature profiles, dashed lines give relative humidity. Wind barbs are plotted left of the density plot for the 07:00 sounding and right of it for the 19:00 sounding. Right: Density plot of range corrected attenuated backscatter profiles recorded by a CL31 ceilometer at the NWS test site Sterling, VA on August 18, 2008 (see text for details). 4.2 A summer day with a high residual layer On August 18, 2008, a uniform aerosol layer reaching up to 2500 m dominates all other layer evolution on that day (Fig. 4, right). This high layer is confirmed by the soundings showing virtual potential temperature rises and relative humidity drops at that height. The nocturnal layer forming at 03:00 is also confirmed by sounding data. 4.3 CL31 and CL51 The advantage of the increased signal-to-noise ratio of the CL51 ceilometer is demonstrated in Fig. 5. An elevated layer between 2000 m and 3000 m is hardly recognizable in the CL31 profiles, but is reported by the CL51.

4

−9

CL31 Vantaa backscatter density on 25.+26.04.2010 in 10

−1

m

−1

−9

sr

4000

CL51 Vantaa backscatter density on 25.+26.04.2010 in 10

Height in m

3000

10000

2000

2000

1000

1500

500

500

0 19:00 20:00 21:00 22:00 23:00 00:00 01:00 02:00 03:00 04:00 05:00 Time on 25.+26.04.2010

20000

3500

5000

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1000

−1

sr

Gradient local minimum Cloud

3000

Height in m

3500

−1

m

4000

20000 Gradient local minimum Cloud

2000

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10000

0 19:00 20:00 21:00 22:00 23:00 00:00 01:00 02:00 03:00 04:00 05:00 Time on 25.+26.04.2010

200

100

50

Figure 5. Density plots of range corrected attenuated backscatter profiles recorded by a CL31(left) and a CL51 ceilometer at the Vaisala test site Vantaa, Finland.

5. BL-VIEW In July 2010, Vaisala has launched its planetary boundary layer reporting and analysis tool BL-VIEW, a PC-software package designed as a support and decision tool for air quality monitoring, research and wind energy applications. Fig. 6 shows the default online view of BL-VIEW (CL31 in Hamburg, Germany), Fig. 7 gives offline views from a spring day (CL51 in Vantaa, Finland). The advantage of full overlap in the very near range is demonstrated by the precise monitoring of a low weak plume over Vantaa, Finland (Fig. 8).

Figure 6. BL-VIEW online view with current boundary layer and cloud base heights and density plots (June 21, 2010, Hamburg, Germany

5

Figure 7. BL-VIEW snapshots of backscatter profiles collected on May 12, 2010, in Vantaa, Finland. The upper part shows rendering with default settings, the lower part is a blow up of fine structures during the night hours of that day; averaging parameters have been changed to 40 m and 60 s to reveal more details of weak structures (backscatter intensity < 500*10-9 m-1 sr-1) within the boundary layer.

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Figure 8. BL-VIEW snapshot of backscatter profiles collected on June 24, 2010, in Vantaa, Finland, showing a weak plume (backscatter intensity < 10-6 m-1 sr-1. This example demonstrates the advantages of the one lens optical concept and the high signal-to-noise ratio of the CL51 ceilometer.

6. Conclusions Applying the enhanced gradient method introduced in this paper to a large variety of ceilometer profiles has confirmed its applicability for automatic boundary layer structure investigation. It has been integrated in the planetary boundary layer reporting and analysis tool Vaisala BL-VIEW. This supportive PC-software package is designed as a support and decision tool for air quality monitoring, research and wind energy applications.

7. Acknowledgments The authors would like to thank the NWS for granting the permission to use the Sterling ceilometer test data for this publication.

References [1] Emeis, S., K. Schäfer, C. Münkel, 2009: Observation of the structure of the urban boundary layer with different ceilometers and validation by RASS data. Meteorol. Z., 18, 149-154. [2] Haman, C., B. L. Lefer, M. E. Taylor, G. Morris, B. Rappenglueck, 2010: Comparison of Mixing Heights using Radiosondes and the Vaisala CL31 Mixing Height Algorithm. 15th Symposium on Meteorological Observation and Instrumentation at the 90th AMS Annual Meeting (Atlanta, GA). [3] Münkel, C., S. Emeis, K. Schäfer, B. Brümmer, 2009: Improved near-range performance of a low-cost one lens lidar scanning the boundary layer. In: Picard, R. H., K. Schäfer, A. Comeron, E. I. Kassianov, C. J. Mertens (Eds.): Remote Sensing of Clouds and the Atmosphere XIV, Proc. SPIE, Bellingham, WA, USA, Vol. 7475. [4] Münkel, C., 2007: Mixing height determination with lidar ceilometers - results from Helsinki Testbed. Meteorol. Z., 16, 451-459. [5] Münkel, C., R. Roininen, 2008: Mixing layer height assessment with a compact lidar ceilometer. Symposium on Recent Developments in Atmospheric Applications of Radar and Lidar at the 88th AMS Annual Meeting (New Orleans, LA).

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