A Self-adaptive Algorithm with Newton Raphson Method for Parameters Identification of Photovoltaic Modules and Array

被引:0
作者
Patrick Juvet Gnetchejo
Salomé Ndjakomo Essiane
Abdouramani Dadjé
Pierre Ele
Daniel Eutyche Mbadjoun Wapet
Steve Perabi Ngoffe
Zhicong Chen
机构
[1] University of Douala,Laboratory of Technologies and Applied Sciences
[2] University of Yaounde 1,Signal, Image and Systems Laboratory, Higher Technical Teacher Training College of Ebolowa
[3] University of Ngaoundéré,School of Geology and Mining Engineering
[4] University of Yaounde 1,Laboratory of Electrical Engineering, Mechatronic and Signal Treatment, National Advanced School of Engineering
[5] Fuzhou University,College of Physics and Information Engineering
来源
Transactions on Electrical and Electronic Materials | 2021年 / 22卷
关键词
Photovoltaic modelling; Parameter identification; Solar cells; Photovoltaic modules; Drone Squadron Optimization; Metaheuritic algorithms;
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中图分类号
学科分类号
摘要
The word’s demand for renewable energy has be rinsing incrementally. One of the solutions for the energy crisis is photovoltaic. However, the design and development of better performing photovoltaic cells and modules requires accurate extraction of their intrinsic parameters. Metaheuristic algorithms have been reported to be the best methods for obtaining accurate values of these intrinsic parameters. However, local convergence goes against the recently devised heuristic methods and inhibits them from producing optimal result. This paper proposes a hybrid method that is based on the Newton Raphson method and a self-adaptive algorithm called the Drone Squadron Optimisation. The latter is an artifact technique inspired by the simulation of a drone squadron from a command centre. It is proposed that this hybrid method can help extract the best intrinsic parameters of photovoltaic cell and module. This study also provides insights and clarification on the reported approaches that have been recently proposed to formulate the objective function. Further, this study also computes and compares the ten best recently published heuristics algorithms in the domain of photovoltaic estimation. The study’s results obtain point to the difference between the two formulations and the accuracy of the best formulation. The results obtained from the six case studies covered in this study present the combined performance of the Newton Raphson method and Drone Squadron Optimisation to extract the accurate parameters of a photovoltaic module.
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页码:869 / 888
页数:19
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