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Enhanced leader particle swarm optimisation (ELPSO): An efficient algorithm for parameter estimation of photovoltaic (PV) cells and modules

机译:增强型前导粒子群优化(ELPSO):一种用于光伏(PV)电池和模块参数估计的高效算法

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摘要

Today, photovoltaic (PV) systems, are generating a significant share of electric power. Parameter estimation of photovoltaic cells and modules is a hot research topic and plays an important role in modelling PV systems. This problem is commonly converted into an optimisation problem and is solved by nietaheuristic optimisation algorithms. Among metaheuristic optimisation algorithms, particle swarm optimisation (PSO) is a popular leader based stochastic optimisation algorithm. However, premature convergence is the main drawback of PSO which does not let it to provide high-quality solutions in multimodal problems such as PV cells/modules parameter estimation. In PSO, all particles are pulled toward the leader, so the leader can significantly affect collective performance of the particles. A high-quality leader may pull all particles toward good regions of search space and vice versa. Therefore, in this research, an improved PSO variant, with enhanced leader, named as enhanced leader PSO (ELPSO) is used. In ELPSO, by enhancing the leader through a five-staged successive mutation strategy, the premature convergence problem is mitigated in a way that more accurate circuit model parameters are achieved in the PV cell/module parameter estimation problem. RTC France silicon solar cell, STM6.40/36 module with monocrystalline cells and PVM 752 GaAs thin film cell have been used as the case studies of this research. Parameter estimation results for various PV cells and modules of different technologies confirm that in most of the cases, ELPSO outperforms conventional PSO and a couple of other state of the art optimisation algorithms.
机译:如今,光伏(PV)系统正在产生大量电力。光伏电池和组件的参数估计是一个热门研究课题,在光伏系统建模中起着重要作用。通常将此问题转换为优化问题,并通过神经启发式优化算法解决。在元启发式优化算法中,粒子群优化(PSO)是一种流行的基于领导者的随机优化算法。但是,过早的收敛是PSO的主要缺点,它不允许它在多模式问题(例如PV电池/模块参数估计)中提供高质量的解决方案。在PSO中,所有粒子都被拉向引导者,因此引导者会严重影响粒子的整体性能。高素质的领导者可能会将所有粒子拉向搜索空间的良好区域,反之亦然。因此,在这项研究中,使用了具有增强前导的改进PSO变体,称为增强前导PSO(ELPSO)。在ELPSO中,通过采用五阶段连续突变策略来增强领导者,以在PV电池/模块参数估计问题中获得更准确的电路模型参数的方式来缓解过早的收敛问题。 RTC France硅太阳能电池,带单晶电池的STM6.40 / 36模块和PVM 752 GaAs薄膜电池已作为本研究的案例研究。各种PV电池和不同技术的模块的参数估计结果证实,在大多数情况下,ELPSO优于传统的PSO和其他几种最先进的优化算法。

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