Parameters Identification of Photovoltaic Models Using a Multi-Strategy Success-History-Based Adaptive Differential Evolution

Parameters identification of photovoltaic (PV) models based on measured current-voltage characteristics curves is significant for the simulation, evaluation and control of PV systems. To accurately and reliably identify the parameters of different PV models, a novel optimization algorithm, multi-str...

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Main Authors: Qinzhi Hao, Zhongliang Zhou, Zhenglei Wei, Guanghui Chen
Format: Article
Language:English
Published: IEEE 2020-01-01
Series:IEEE Access
Subjects:
Online Access:https://ieeexplore.ieee.org/document/9003262/
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spelling doaj-efebd675dce940b19747dc425767d4ca2021-03-30T02:02:30ZengIEEEIEEE Access2169-35362020-01-018359793599410.1109/ACCESS.2020.29750789003262Parameters Identification of Photovoltaic Models Using a Multi-Strategy Success-History-Based Adaptive Differential EvolutionQinzhi Hao0Zhongliang Zhou1Zhenglei Wei2https://orcid.org/0000-0002-2530-8365Guanghui Chen3Air Traffic Control and Navigation College, Air Force Engineering University, Xi’an, ChinaAir Traffic Control and Navigation College, Air Force Engineering University, Xi’an, ChinaInstitute of Aeronautics Engineering, Air Force Engineering University, Xi’an, ChinaSchool of Pharmacy, Fourth Military Medical University, Xi’an, ChinaParameters identification of photovoltaic (PV) models based on measured current-voltage characteristics curves is significant for the simulation, evaluation and control of PV systems. To accurately and reliably identify the parameters of different PV models, a novel optimization algorithm, multi-strategy success-history based adaptive differential evolution with linear population size reduction (MLSHADE), is proposed. MLSHADE mainly divides evolutionary process into two phases during every generation. According to the definition of class probability variable, the population individuals of first phase are assigned to different two populations for exploration and exploitation, respectively. The novelty of MLSHADE algorithm lies primarily in three improvements: (i) a new weighted mutation strategy is used to enrich the population diversity of later iterations for differential evolution population in the first phase; (ii) inferior solutions search (ISS) technique is presented to avoid falling into local optimum for covariance matrix adaptation evolution strategy population in the first phase; and (iii) Eigen Gaussian random walk strategy is proposed to help maintain effectively the balance between the global exploration and local exploitation abilities in the second phase. The experiments on CEC 2018 test suite illustrate that the proposed MLSHADE exerts the better performances against the stat-of-the-art algorithms in terms of accuracy, reliability and time consumption. The proposed MLSHADE is used to solve the parameters identification problems of different PV models including single diode, double diode, and PV module. Comprehensive experiment results and analyses indicate that MLSHADE can obtain a highly competitive performance compared with other state-of-the-art algorithms, especially in terms of accuracy and reliability.https://ieeexplore.ieee.org/document/9003262/Differential evolution operatormulti-strategy LSHADEnumerical optimizationparameters identification of photovoltaic
collection DOAJ
language English
format Article
sources DOAJ
author Qinzhi Hao
Zhongliang Zhou
Zhenglei Wei
Guanghui Chen
spellingShingle Qinzhi Hao
Zhongliang Zhou
Zhenglei Wei
Guanghui Chen
Parameters Identification of Photovoltaic Models Using a Multi-Strategy Success-History-Based Adaptive Differential Evolution
IEEE Access
Differential evolution operator
multi-strategy LSHADE
numerical optimization
parameters identification of photovoltaic
author_facet Qinzhi Hao
Zhongliang Zhou
Zhenglei Wei
Guanghui Chen
author_sort Qinzhi Hao
title Parameters Identification of Photovoltaic Models Using a Multi-Strategy Success-History-Based Adaptive Differential Evolution
title_short Parameters Identification of Photovoltaic Models Using a Multi-Strategy Success-History-Based Adaptive Differential Evolution
title_full Parameters Identification of Photovoltaic Models Using a Multi-Strategy Success-History-Based Adaptive Differential Evolution
title_fullStr Parameters Identification of Photovoltaic Models Using a Multi-Strategy Success-History-Based Adaptive Differential Evolution
title_full_unstemmed Parameters Identification of Photovoltaic Models Using a Multi-Strategy Success-History-Based Adaptive Differential Evolution
title_sort parameters identification of photovoltaic models using a multi-strategy success-history-based adaptive differential evolution
publisher IEEE
series IEEE Access
issn 2169-3536
publishDate 2020-01-01
description Parameters identification of photovoltaic (PV) models based on measured current-voltage characteristics curves is significant for the simulation, evaluation and control of PV systems. To accurately and reliably identify the parameters of different PV models, a novel optimization algorithm, multi-strategy success-history based adaptive differential evolution with linear population size reduction (MLSHADE), is proposed. MLSHADE mainly divides evolutionary process into two phases during every generation. According to the definition of class probability variable, the population individuals of first phase are assigned to different two populations for exploration and exploitation, respectively. The novelty of MLSHADE algorithm lies primarily in three improvements: (i) a new weighted mutation strategy is used to enrich the population diversity of later iterations for differential evolution population in the first phase; (ii) inferior solutions search (ISS) technique is presented to avoid falling into local optimum for covariance matrix adaptation evolution strategy population in the first phase; and (iii) Eigen Gaussian random walk strategy is proposed to help maintain effectively the balance between the global exploration and local exploitation abilities in the second phase. The experiments on CEC 2018 test suite illustrate that the proposed MLSHADE exerts the better performances against the stat-of-the-art algorithms in terms of accuracy, reliability and time consumption. The proposed MLSHADE is used to solve the parameters identification problems of different PV models including single diode, double diode, and PV module. Comprehensive experiment results and analyses indicate that MLSHADE can obtain a highly competitive performance compared with other state-of-the-art algorithms, especially in terms of accuracy and reliability.
topic Differential evolution operator
multi-strategy LSHADE
numerical optimization
parameters identification of photovoltaic
url https://ieeexplore.ieee.org/document/9003262/
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AT zhengleiwei parametersidentificationofphotovoltaicmodelsusingamultistrategysuccesshistorybasedadaptivedifferentialevolution
AT guanghuichen parametersidentificationofphotovoltaicmodelsusingamultistrategysuccesshistorybasedadaptivedifferentialevolution
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