A Comparative Study of Two Metaheuristic MPPT Techniques to Extract Maximum Power from PV Array under Different Partial Shading Patterns

A. Refaat, A. Kalas, A. Khalifa, M. Elfar
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Abstract

Partial Shading (PS) substantially affects the energy produced from the solar PV array where multiple maximum power points (MPPs) are clearly manifested on the P-V characteristic curves. These MPPs involve multiple local peaks (LPs) in addition to a unique global peak (GP). Due to the complex nonlinear PV characteristics curves that are produced under the PS phenomenon, conventional MPP tracking (MPPT) techniques are not capable for tracking the GP and may be trapped in LP. Therefore, it is essential to utilize sophisticated MPPT techniques based on AI techniques to successfully trace the GP. In this manuscript, two metaheuristic techniques for MPPT are investigated based on the Flower Pollination Algorithm (FPA) in addition to the Deterministic Particle Swarm optimization Algorithm (DPSOA). A comparative study has been performed to assess the dynamic performance of the PV array under various PS patterns. Based on the simulation results, both techniques can successfully trace the GP with rapid convergence speed and zero failure rate. Despite the FPA is capable for following the GP, the DPSOA is superior with lower convergence speed and less steadystate oscillation around the GP.
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两种元启发式MPPT技术在不同遮阳模式下提取光伏阵列最大功率的比较研究
部分遮阳(PS)对太阳能光伏阵列产生的能量有很大影响,其中多个最大功率点(mpp)在P-V特性曲线上清晰地表现出来。这些mpp除了一个唯一的全局峰值(GP)外,还涉及多个局部峰值(lp)。由于在PS现象下产生复杂的非线性PV特征曲线,传统的MPP跟踪(MPPT)技术无法跟踪GP,并且可能被困在LP中。因此,利用基于人工智能技术的复杂MPPT技术成功追踪GP至关重要。在本文中,研究了基于花授粉算法(FPA)和确定性粒子群优化算法(DPSOA)的两种MPPT元启发式技术。对不同PS模式下PV阵列的动态性能进行了比较研究。仿真结果表明,两种方法均能成功跟踪GP,且收敛速度快,故障率为零。尽管FPA能够跟随GP,但DPSOA具有较低的收敛速度和较少的围绕GP的稳态振荡。
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