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Simplified swarm optimisation for the solar cell models parameter estimation problem

机译:太阳能电池模型参数估计问题的简化群优化

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摘要

Solar energy applications and research are becoming increasingly popular, and photovoltaics (PVs) are among the most significant solar energy applications. To simulate and optimise PV system performance, the optimal parameters of the solar cell models should be estimated exactly. In this study, improved simplified swarm optimisation (iSSO), a recently introduced soft computing method based on simplified swarm optimisation, is proposed to minimise the least square error between the extracted and the measured data for the solar cell models parameter estimation of the single- and double-diode model problems. Based on the new all-variable difference update mechanism and survival of the fittest policy, the proposed algorithm is able to find an improved approximation for estimating the parameters of single- and double-diode solar cell models. As evidence of the utility of the proposed iSSO, the authors present extensive computational results for two benchmark problems. The comparison of the computational results supports the proposed iSSO algorithm outperforms the previously developed algorithms for all of the experiments in the literature.
机译:太阳能应用和研究正变得越来越普及,光伏(PV)是最重要的太阳能应用之一。为了模拟和优化光伏系统的性能,应准确估算太阳能电池模型的最佳参数。在这项研究中,提出了一种改进的简化群优化算法(iSSO),这是一种最近引入的基于简化群优化的软计算方法,旨在将提取的数据与实测数据之间的最小平方误差最小化,以用于单电池的太阳能电池模型参数估算和双二极管模型问题。基于新的全变量差异更新机制和最适策略的生存时间,该算法能够找到改进的近似值,用于估计单二极管和双二极管太阳能电池模型的参数。作为提出的iSSO实用性的证据,作者针对两个基准问题提出了广泛的计算结果。计算结果的比较支持所提出的iSSO算法优于文献中所有实验的先前开发的算法。

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