A New PSO Algorithm Based on Adaptive Grouping for Photovoltaic MPP Prediction

Qiang Fu, Nan Tong
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引用次数: 10

Abstract

Based on the niche idea and the catastrophe theory, a new particle swarm optimization algorithm is suggested in this paper, which can adaptively adjust the swarm grouping. This algorithm proposes that, after obtaining local optimal area, only parts of the particles are left to find local optimal point, while other particles are dealt with by catastrophe, and are restrained in the remaining regions for new search. In this way, the particle swarm can not only improve the convergence rate and precision, but also effectively enhance the ability of global optimization. Therefore, this new algorithm can be applied to predict the maximum power point (MPP) of the photovoltaic cell. Meanwhile, the effectiveness of this algorithm is demonstrated in the experimental findings.
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基于自适应分组的PSO算法在光伏MPP预测中的应用
基于小生境思想和突变理论,提出了一种能够自适应调整粒子群分组的粒子群优化算法。该算法提出,在获得局部最优区域后,只留下部分粒子寻找局部最优点,而对其他粒子进行突变处理,并将其约束在剩余区域进行新的搜索。这样,粒子群算法不仅提高了收敛速度和精度,而且有效增强了全局寻优的能力。因此,该算法可用于光伏电池最大功率点(MPP)的预测。同时,实验结果也验证了该算法的有效性。
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