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Enhanced Vibrating Particles System Algorithm for Parameters Estimation of Photovoltaic System

机译:光伏系统参数估计的增强振动粒子系统算法

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To evaluate the performance of a photovoltaic panel, several parameters must be extracted from the photovoltaic. These parameters are very important for the evaluation, monitoring and optimization of photovoltaic. Among the methods developed to extract photovoltaic parameters from current-voltage (I-V) characteristic curve, metaheuristic algorithms are the most used nowadays. A new metaheuristic algorithm namely enhanced vibrating particles system algorithm is presented here to extract the best values of parameters of a photovoltaic cell. Five recent algorithms (grey wolf optimization (GWO), moth-flame optimization algorithm (MFOA), multi-verse optimizer (MVO), whale optimization algorithm (WAO), salp swarm-inspired algorithm (SSA)) are also implemented on the same computer. Enhanced vibrating particles system is inspired by the free vibration of the single degree of freedom systems with viscous damping. To extract the photovoltaic parameters using enhanced vibrating particles system algorithm, the problem can be set as an optimization problem with the objective to minimize the difference between measured and estimated current. Four case studies have been implemented here. The results and comparison with other methods exhibit high accuracy and validity of the proposed enhanced vibrating particles system algorithm to extract parameters of a photovoltaic cell and module.
机译:为了评估光伏面板的性能,必须从光伏中提取几个参数。这些参数对于光伏的评估,监控和优化非常重要。从电流-电压(I-V)特征曲线提取光伏参数的方法中,元启发式算法是当今最常用的方法。本文提出了一种新的启发式算法,即增强的振动粒子系统算法,以提取光伏电池参数的最佳值。五个最新算法(灰狼优化(GWO),蛾-火焰优化算法(MFOA),多宇宙优化器(MVO),鲸鱼优化算法(WAO),蜂群启发算法(SSA))也都在同一算法上实现电脑。增强的振动粒子系统的灵感来自具有粘性阻尼的单自由度系统的自由振动。为了使用增强的振动粒子系统算法提取光伏参数,可以将该问题设置为一个优化问题,其目的是最小化测量电流和估计电流之间的差异。这里已经实施了四个案例研究。结果和与其他方法的比较展示了所提出的增强型振动粒子系统算法提取光伏电池和组件参数的准确性和有效性。

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