Adaptive Electromagnetic Field Optimization Algorithm for the Solar Cell Parameter Identification Problem

Solar cell parameter identification problem (SCPIP) is one of the most studied optimization problems in the field of renewable energy since accurate estimation of model parameters plays an important role to increase their efficiency. The SCPIP is aimed at optimizing the performance of solar cells by...

Full description

Bibliographic Details
Main Author: Ilker Kucukoglu
Format: Article
Language:English
Published: Hindawi Limited 2019-01-01
Series:International Journal of Photoenergy
Online Access:http://dx.doi.org/10.1155/2019/4692108
id doaj-0ccfc42588984ab3bc7b4d75152fb5c7
record_format Article
spelling doaj-0ccfc42588984ab3bc7b4d75152fb5c72020-11-25T01:52:34ZengHindawi LimitedInternational Journal of Photoenergy1110-662X1687-529X2019-01-01201910.1155/2019/46921084692108Adaptive Electromagnetic Field Optimization Algorithm for the Solar Cell Parameter Identification ProblemIlker Kucukoglu0Department of Industrial Engineering, Bursa Uludag University, Bursa, TurkeySolar cell parameter identification problem (SCPIP) is one of the most studied optimization problems in the field of renewable energy since accurate estimation of model parameters plays an important role to increase their efficiency. The SCPIP is aimed at optimizing the performance of solar cells by estimating the best parameter values of the solar cells that produce an accurate approximation between the current vs. voltage (I−V) measurements. To solve the SCPIP efficiently, this paper introduces an adaptive variant of the electromagnetic field optimization (EFO) algorithm, named adaptive EFO (AEFO). The EFO simulates the attraction-repulsion mechanism between particles of electromagnets having different polarities. The main idea behind the EFO is to guide electromagnetic particles towards global optimum by the attraction-repulsion forces and the golden ratio. Distinct from the EFO, the AEFO searches the solution space with an adaptive search procedure. In the adaptive search strategy, the selection probability of a better solution is increased adaptively whereas the selection probability of worse solutions is reduced throughout the search progress. By employing the adaptive strategy, the AEFO is able to maintain the balance between exploration and exploitation more efficiently. Further, new boundary control and randomization procedures for the candidate electromagnets are presented. To identify the performance of the proposed algorithm, two different benchmark problems are taken into account in the computational studies. First, the AEFO is performed on global optimization benchmark functions and compared to the EFO. The efficiency of the AEFO is identified by statistical significance tests. Then, the AEFO is implemented on a well-known SCPIP benchmark problem set formed as a result of real-life physical experiments based on single- and double-diode models. To validate the performance of the AEFO on the SCPIP, extensive experiments are carried out, where the AEFO is tested against the original EFO, AEFO variants, and novel metaheuristic algorithms. Results of the computational studies reveal that the AEFO exhibits superior performance and outperforms other competitor algorithms.http://dx.doi.org/10.1155/2019/4692108
collection DOAJ
language English
format Article
sources DOAJ
author Ilker Kucukoglu
spellingShingle Ilker Kucukoglu
Adaptive Electromagnetic Field Optimization Algorithm for the Solar Cell Parameter Identification Problem
International Journal of Photoenergy
author_facet Ilker Kucukoglu
author_sort Ilker Kucukoglu
title Adaptive Electromagnetic Field Optimization Algorithm for the Solar Cell Parameter Identification Problem
title_short Adaptive Electromagnetic Field Optimization Algorithm for the Solar Cell Parameter Identification Problem
title_full Adaptive Electromagnetic Field Optimization Algorithm for the Solar Cell Parameter Identification Problem
title_fullStr Adaptive Electromagnetic Field Optimization Algorithm for the Solar Cell Parameter Identification Problem
title_full_unstemmed Adaptive Electromagnetic Field Optimization Algorithm for the Solar Cell Parameter Identification Problem
title_sort adaptive electromagnetic field optimization algorithm for the solar cell parameter identification problem
publisher Hindawi Limited
series International Journal of Photoenergy
issn 1110-662X
1687-529X
publishDate 2019-01-01
description Solar cell parameter identification problem (SCPIP) is one of the most studied optimization problems in the field of renewable energy since accurate estimation of model parameters plays an important role to increase their efficiency. The SCPIP is aimed at optimizing the performance of solar cells by estimating the best parameter values of the solar cells that produce an accurate approximation between the current vs. voltage (I−V) measurements. To solve the SCPIP efficiently, this paper introduces an adaptive variant of the electromagnetic field optimization (EFO) algorithm, named adaptive EFO (AEFO). The EFO simulates the attraction-repulsion mechanism between particles of electromagnets having different polarities. The main idea behind the EFO is to guide electromagnetic particles towards global optimum by the attraction-repulsion forces and the golden ratio. Distinct from the EFO, the AEFO searches the solution space with an adaptive search procedure. In the adaptive search strategy, the selection probability of a better solution is increased adaptively whereas the selection probability of worse solutions is reduced throughout the search progress. By employing the adaptive strategy, the AEFO is able to maintain the balance between exploration and exploitation more efficiently. Further, new boundary control and randomization procedures for the candidate electromagnets are presented. To identify the performance of the proposed algorithm, two different benchmark problems are taken into account in the computational studies. First, the AEFO is performed on global optimization benchmark functions and compared to the EFO. The efficiency of the AEFO is identified by statistical significance tests. Then, the AEFO is implemented on a well-known SCPIP benchmark problem set formed as a result of real-life physical experiments based on single- and double-diode models. To validate the performance of the AEFO on the SCPIP, extensive experiments are carried out, where the AEFO is tested against the original EFO, AEFO variants, and novel metaheuristic algorithms. Results of the computational studies reveal that the AEFO exhibits superior performance and outperforms other competitor algorithms.
url http://dx.doi.org/10.1155/2019/4692108
work_keys_str_mv AT ilkerkucukoglu adaptiveelectromagneticfieldoptimizationalgorithmforthesolarcellparameteridentificationproblem
_version_ 1724994438905724928