Available online at www.sciencedirect.com
ScienceDirect Energy Procedia 74 (2015) 608 – 615
International Conference on Technologies and Materials for Renewable Energy, Environment and Sustainability, TMREES15
Optimization of a Multi-Source System with Renewable Energy Based on Ontology
Djamel Sabaa, Fatima Zohra Laallamb,Abd Elkader Hadidia, Brahim Berbaouia a
Unité de Recherche en Energies Renouvelables en Milieu Saharien, URER-MS, Centre de Développement des Energies Renouvelables, CDER, 01000, Adrar, Algeria b
Université de Kasdi Merbah, Ouargla, Algeria
Abstract This article presents a contribution to the optimization of a multi sources system with renewable energy system. Following the limits of conventional design methods in the reasoning aspect, also renewable energy hybrid systems are distributed nature, open and includes huge detail information needs a formal representation and a shared conceptualization by dynamic contribution to the change in weather conditions of installation site of hybrid system. We propose an approach based on hybridization between sizing techniques and ontology domain. The introduction of ontology in such systems allows the shared knowledge representation of a common area of a unit. Moreover, these will conceptualization of knowledge that can be updated without changing the system goals. The aim of the work presented in this paper is essentially the conceptualization of the ontology after the presentation of the proposed approach. “Protege2000” is used for editing the ontology. The purpose of this work is a knowledge base which contains a representation of all concepts and informational system details. © 2015 The Authors. Published by Elsevier Ltd. This is an open access article under the CC BY-NC-ND license © 2015 The Authors. Published by Elsevier Ltd. (http://creativecommons.org/licenses/by-nc-nd/4.0/). Peer-review under responsibility of the Euro-Mediterranean Institute for Sustainable Development (EUMISD). Peer-review under responsibility of the Euro-Mediterranean Institute for Sustainable Development (EUMISD) Keywords: Optimization, Multi sources to renewable energy system, Reasoning system, Distributed system, Formal and common representation, Conditions weather, Sizing techniques, Domain ontology, Protege2000
* Corresponding author. Tel.: +213-668-030-454; fax: +213-499-604-92, E-mail address:
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1876-6102 © 2015 The Authors. Published by Elsevier Ltd. This is an open access article under the CC BY-NC-ND license (http://creativecommons.org/licenses/by-nc-nd/4 .0/). Peer-review under responsibility of the Euro-Mediterranean Institute for Sustainable Development (EUMISD) doi:10.1016/j.egypro.2015.07.787
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1. Introduction The renewable energies appear in our days and for a long-term as the adequate solution which covers this energy need by decreasing the major inconvenience emitted by the fossil fuels. The work presented in this article is a part of the optimization and the engineering of the knowledge for the renewable energy multi-Sources systems. The ontology is the most used approach for the formal representation and the knowledge capitalization in the modeling field [1, 2]. The deployment of ontology in modeling allows the intelligent integration of information and the knowledge management. The ontology allows supplying a shared and common knowledge on a given domain. They define primitive and essential for their representation, as well as their semantics in a particular context [3, 4]. Besides, the reuse and the division of the knowledge, allow facilitating the communication between the actors of the various bodies, in particular the realization of the interoperability between the various systems. They allow not only the creation of system with knowledge but also to argue about this knowledge and to contribute in providing its current news [5, 6]. This article is organized as follows: the section 2 presents the domain and the type of systems concerned by our study. It contains, in particular, an overview on the essential elements of these systems. The section 3 is dedicated to the presentation of the approach proposed for our conception. The section 4 illustrates the techniques of sizing specifically. The section 5 is reserved for the construction of ontology of the domain. We end with a conclusion and perspectives.
Nomenclature Ci
Initial cost
Ci_wt
Initial cost of the wind system
Ci_pv
Initial cost of the Photovoltaic system
Ș pvg
Ci_bat
Initial cost of the storage system
Șr
Ci_inv
Initial cost of the inverter
N bat
Battery number
Sinv mw
Apparent power of the inverters Maintenance cost Maintenance cost of the wind system
m pv
Maintenance cost of the Photovoltaic system
m bat
Ppv Gt A pvg
Photovoltaic power generation (W) Global solar irradiation (W/m2) Surface of photovoltaic generator (m2)
Efficiency of conversion Photovoltaic module reference efficiency Temperature coefficient ȕ Solar cell temperature (° C) Tc Reference solar cell temperature (° C) Tc ref Ambient temperature (° C) Ta NOCT Nominal operating cell temperature Wind speed in anemometer level(m/s) V(Z) V(Za ) Wind speed in the desired level (m/s) Coefficient characterized wind cutting Į Za , Z Height wind turbine (m) Cap bat Battery bank capacity(Ah) Load demand (W) E ld Number of autonomy days Nja Battery discharging efficiency Șdis Installation voltage U Wind speed (m/s) V Șinv Inverter efficiency Photovoltaic generator power production E pv
Cm
minv
Maintenance cost of the storage system Maintenance cost of the inverter system
dvsys
Life time of the system (years)
dv wt
dv bat
Life time of the Wind generator system (years) Life time of the Photovoltaic generator system (years) Life time of the storage system (years)
dvinv
Life time of the inverter system
Cg
System global cost
dv pv
(years)
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2. System description The renewable energy multi-Sources systems concerned by our study. See fig.1, consists of two renewable sources energy (photovoltaic, wind), battery bench for energy storage, load and control current equipment’s.
Fig. 1.
Synoptic diagram for multi-sources system
3. The proposed approach 3.1
Approach principle
Sizing hybrid energy systems techniques “HES” are numerous. This approach principle is to select the most appropriate technique with the available climate data of the site concerned by the installation from the 'nӋ1' techniques existing in the literature, see Fig.2.
Fig. 2.
The proposed approach for system optimization
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3.2
Proposed solution steps
Refers to all development stages of proposed solution, from design to its implementation, see: Fig.3 and Fig.4.
Fig. 3.
Fig. 4.
Proposed solution stages
Proposed solution stages (continued)
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The objective of such a division is to minimize errors and set interim milestones that validate the development of a future application. 4. Sizing techniques The design is an indispensable tool for the analysis and comparison of different possible combinations of sources used in HES (hybrid energy system). [7, 8] The main design factors are: site environmental conditions (wind speed, irradiance, temperature and humidity), load profile, requirements and customer preferences and financial resources. 4.1
Photovoltaic generator power
The performance of photovoltaic modules depends on several parameters, namely the illumination temperature and the charge state. In the case of the hybrid system we use a simple model of the “PV” array that can calculate the power produced at any time if the temperature and irradiation Gt (W/m2) are known [9]:
Ppv
K pvg Apvg Gt
(1)
Where Apvg (m2) is the Surface of photovoltaic generator (m2), K pvg is the efficiency of conversion [10]:
K pvg
Kr ª1- E Tc - Tc ref º ¬
(2)
¼
Where Kr is the photovoltaic module reference efficiency, E is the temperature coefficient which is assumed to be constant and for photovoltaic cells based on silicon E is in the range 0.004 to 0.006 (1 / ° C), Tc ref is the reference solar cell temperature (°C), Tc is the solar cell temperature (° C), given by: Tc
§ NOCT - 20 · Ta ¨ ¸ Gt 800 © ¹
(3)
Where Ta (°C) is the ambient temperature (° C), NOCT (°C) is the nominal operating cell temperature. 4.2
Wind generator power
A simple model can simulate the output power:
Pwt V
V Vmin ° Pn V V n min °° ® Pn ° 0 ° °¯
Vmin d V Vn V Vmax V
d Vn d Vmax Vmin
(4)
Where Pn is the nominal power, V is the wind speed, Vn is the nominal speed, Vmin is the minimum speed, Vmax is the maximum speed. 4.3
Storage battery capacity
Battery capacity in terms of “Wh” energy depends mainly on the number of day’s autonomy of energy for each day by renewable resources without the storage system, and the daily energy consumption by the load.
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Capbat
Eld .Nja Cdis .U
(5)
Where Capbat is the battery bank capacity “Ah”, Eld is the load demand (W), Nja is the number of autonomy days, Cdis is the discharge coefficient, U is the installation voltage. 5. Knowledge of domain ontology Knowledge in ontology is mainly formalized using five types of components namely: Concepts (or classes), relations (or properties), functions, axioms (or rules) and bodies (or individuals). 5.1
Classes List and their attributes
We will mention some classes of our system: Table 1. Photovoltaic generatorclass Class Name
Class Description
Attribute of Class
Attributes description
Attributety pe
Ppv
Photovoltaic power generation
Float
Photovoltaic generator power production
Float
Photovoltaic
Renewable energy
E pv
Generator
source
K pvg
Efficiency of conversion
Float
A pvg
Surface of photovoltaic generator
Float
Attributes description
Attributety pe
Table 2. Wind generatorclass Class Name Wind Generator
Class Description
Attribute of Class
Vn
Nominal speed
Float
Renewable
Vmin
Minimum speed
Float
energy source
D
Helix diameter Wind power generation
Float
Pwt
Float
Table 3. Storage class Class Name
Storage (Battery)
Class Description
Energy storage system
Attribute of Class
Attributes description
Attributet ype
Cap bat
Battery bank capacity
Float
Șch
Battery charging efficiency
Float
SOCbat min
Minimum allowable storage capacity
Float
SOCbat max
Maximum allowable storage capacity
Float
Șdis
Battery discharging efficiency
Float
Attribute of Class
Attributes description Inverter efficiency
Attributet ype
Table 4. Inverterclass Class Name
Class Description
Șinv Inverter
A system converter
Float
Ci inv
Initial cost of the inverter
Float
minv
Maintenance cost of the inverter system
Float
dvinv
Life time of the inverter system
Integer
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Djamel Saba et al. / Energy Procedia 74 (2015) 608 – 615 Table 5. Load class Class Name Load
5.2
Class Description Required energy
Attribute of Class
Attributes description
Attribute type
Pld
Power demand
Float
E ld
Load demand
Float
Nja Min
Minimum number of autonomy days
Integer
Relations List
We will mention some relations of our system: Table 6. Some relations of our system Relationship
5.3
Associated Classes
Supply-Storage-Load
Storage, Load
Supply- Photovoltaic Generator-Storage
Photovoltaic Generator, Storage
Supply- Photovoltaic Generator- Load
Photovoltaic Generator, Load
Supply- Wind Generator – Storage
Wind Generator, Storage
Influence-Irradiation-Photovoltaic Generator
Irradiation, Photovoltaic Generator
Edition of the ontology
For editing the ontology, the “Protege 2000” software “Version 3.4.4” is selected as the editing tool, our choice is justified by the benefits that characterize [11, 12]. The graphical ontology editor can encode formal ontology obtained in the previous step. Graphically extract ontology, see fig.5:
Fig. 5.
Graphic presentation “first version” of system ontology
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6. Conclusion and prospects This work focuses on building ontology for a renewable energy hybrid system. This will thus be a knowledge base for the hybrid systems optimization (photovoltaic, wind). We based on mathematical models of each system element to define the concepts, attributes and relationships between concepts; we also based on conventional sizing techniques in the calculation of the optimal configuration, but due to the limit of these techniques in the reasoning part we thought to domain ontology. In terms of outlook, we quote: x Revisit the approach proposed; x Develop the necessary rules for good reasoning system. References [1]
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