A new MPPT controller based on a modified multiswarm PSO algorithm using an adaptive factor selection strategy for partially shaded PV systems

Chiheb Ben Regaya, Fethi Farhani, Hichem Hamdi, A. Zaafouri, Abdelkader Chaari
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Abstract

Maximum power point tracking (MPPT) controller is the main element in photovoltaic (PV) systems, which is used to ensure maximum power extraction under different meteorological conditions. A MPPT controller can guarantee good performance criteria even in the presence of climatic changes. To achieve this goal, several techniques have been proposed in the literature to improve robustness of the PV system control, such as artificial intelligence and multiswarm particle swarm optimization (MSPSO) algorithm. Previous research on classical MSPSO has shown that the algorithm search behavior cannot find the optimal solution for certain problems. In this context, we investigate the design of a new MPPT controller based on a modified version of heterogeneous multiswarm particle swarm optimization algorithm using an adaptive factor selection strategy (FMSPSO) for PV systems. The proposed FMSPSO can improve the tracking capability with high accuracy, less oscillations, and high robustness. To validate the proposed solution, a simulation and experimental benchmarking of a PV system are presented and analyzed. The obtained results show the effectiveness of the proposed solution compared with the classical MSPSO, fuzzy logic, and perturb and observe (P&O) control presented in other recent works.
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基于改进型多群 PSO 算法的新型 MPPT 控制器,采用自适应因子选择策略,适用于部分遮阳的光伏系统
最大功率点跟踪(MPPT)控制器是光伏(PV)系统的主要元件,用于确保在不同气象条件下提取最大功率。即使在气候变化的情况下,MPPT 控制器也能保证良好的性能标准。为实现这一目标,文献中提出了多种技术来提高光伏系统控制的鲁棒性,如人工智能和多群粒子群优化(MSPSO)算法。以往对经典 MSPSO 算法的研究表明,该算法的搜索行为无法找到某些问题的最优解。在此背景下,我们研究了一种新的 MPPT 控制器的设计,该控制器基于使用自适应因子选择策略(FMSPSO)的改进版异构多群粒子群优化算法,适用于光伏系统。所提出的 FMSPSO 可提高跟踪能力,具有精度高、振荡小和鲁棒性强的特点。为了验证所提出的解决方案,本文介绍并分析了光伏系统的仿真和实验基准。所获得的结果表明,与近期其他研究中提出的经典 MSPSO、模糊逻辑以及扰动和观测(P&O)控制相比,所提出的解决方案非常有效。
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