A Dense Explorative ElectroStatic Discharge optimization Algorithm for Photovoltaic Parameters Estimation

2022 IEEE 65th International Midwest Symposium on Circuits and Systems (MWSCAS)(2022)

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摘要
Photovoltaic (PV) systems are becoming one of the most emerging systems for power generation owing to their low cost and clean operation. Due to the high demand for PVs in several small and large-scale applications, their accurate modeling is essential in power systems simulation to obtain reliable results. In this work, an improved ElectroStatic Discharge Algorithm with Dense Explorative Search (ESDADES) is proposed that estimates the parameters of the most popular PV cell models with more accuracy than previous works. More specifically, the dense explorative search proposed in this Work enhances the ESDA capability to search around the regions closer to the best solution found by ESDA more extensively, thus improving convergence accuracy. The proposed ESDADES Was compared to two recently proposed optimization algorithms, namely the Self-adaptive Ensemble-based Differential Evolution (SEDE), the Directional Permutation Differential Evolution (DPDE), and the simple ESDA. The experimental results demonstrated that the proposed algorithm arrives faster at more accurate estimates of the examined PV cell models parameters
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关键词
Metaheuristic algorithms,ESDADES,parameter estimation,optimization,PV models
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