Maximum Energy Extraction in Partially Shaded PV Systems Using Skewed Genetic Algorithm: Computer Simulations, Experimentation and Evaluation on a 30 kW PV Power Plant

Gireesh V. Puthusserry, K. Sundareswaran, S. P. Simon, G. Krishnan
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Abstract

This paper presents an improved Genetic algorithm (GA) for Maximum Power Point Tracking (MPPT) in shaded Photovoltaic (PV) power generation systems. The proposed GA uses shrinking population wherein fitter chromosomes are retained for next generations while lesser-performing chromosomes are removed from the population sequentially. This methodology reduces convergence time while retains major advantages of GA. The method is explained lucidly and then computer simulations and experimental results on a prototype fabricated in the laboratory are presented. The practical feasibility of the new method is then showcased by applying the new theory on a 30-kW Photovoltaic (PV) power plant established in an educational institution premise. The PV plant undergoes partial shading conditions (PSC) during morning and afternoon hours due to branches of tall trees grown around the school building. The MPPT algorithm employed in the PV plant is Perturb and Observe (P&O) which fails to track global power peak at several shading conditions leading to loss of energy. The realistic shading patterns occurring on the PV plant were recorded and the new method is shown to exhibit enhanced energy yield.
偏斜遗传算法在部分遮阳光伏系统中的最大能量提取:一个30千瓦光伏电站的计算机模拟、实验和评估
提出了一种改进的遗传算法,用于遮阳光伏发电系统的最大功率点跟踪。所提出的遗传算法采用收缩种群,其中较好的染色体保留给下一代,而表现较差的染色体依次从种群中去除。该方法在保留遗传算法主要优点的同时减少了收敛时间。对该方法进行了详细的说明,并给出了在实验室制作的样机的计算机仿真和实验结果。然后,通过将新理论应用于建立在教育机构前提下的30千瓦光伏发电厂,展示了新方法的实际可行性。由于学校建筑周围生长着高大的树枝,光伏电站在上午和下午经历了部分遮阳条件。光伏电站采用的最大功率跟踪算法是扰动和观察(P&O)算法,该算法在多个遮阳条件下无法跟踪全局功率峰值,导致能量损失。真实的遮阳模式发生在光伏电站被记录和新方法显示出提高能源产量。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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