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Optimal Parameter Estimation of Solar Cell using Simulated Annealing Inertia Weight Particle Swarm Optimization (SAIW-PSO)

机译:模拟退火惯性权重粒子群优化算法(SAIW-PSO)的太阳能电池最佳参数估计

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The operation of Photovoltaic (PV) system mainly rely on appropriate modeling of solar cells and optimum approximation of parameters associated with them. Recently, various hybrid, numerical and analytical techniques were proposed to extract optimal parameters of PV cell. This paper presents an efficient approach, A Simulated Annealing Inertia Weight Particle Swarm Optimization (SAIW-PSO) for optimal estimation of PV parameters for double and single diode models. In addition, fitness indicator is guided using the Newton Raphson Method (NRM) that supports SAIW -PSO to explore the optimal solution. The premature convergence problem of typical PSO is resolved by the proposed framework. The strength of proposed approach is validated under standard test conditions (STC) on RTC France Silicon Solar cell. The SAIW-PSO is capable to explore optimum solution in smaller number of iterations and less computation time. The obtained results clearly depict that the proposed framework is fast, efficient and much accurate for PV cells parameters approximation.
机译:光伏(PV)系统的运行主要取决于对太阳能电池的适当建模以及与之相关的参数的最佳近似值。最近,提出了各种混合,数值和分析技术来提取光伏电池的最佳参数。本文提出了一种有效的方法,一种模拟退火惯性权重粒子群优化算法(SAIW-PSO),用于对双二极管和单二极管模型的PV参数进行最佳估计。此外,使用支持SAIW -PSO的牛顿拉夫森法(NRM)来指导健康指标,以探索最佳解决方案。提出的框架解决了典型PSO的过早收敛问题。在标准测试条件(STC)上,在RTC France硅太阳能电池上验证了所提出方法的强度。 SAIW-PSO能够以更少的迭代次数和更少的计算时间探索最佳解决方案。获得的结果清楚地表明,所提出的框架对于PV电池参数逼近而言是快速,有效且非常准确的。

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