首页> 外文会议>IEEE Photovoltaic Specialists Conference >Particle Swarm Optimization with Reducing Boundaries (PSO-RB) for Maximum Power Point Tracking of Partially Shaded PV Arrays
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Particle Swarm Optimization with Reducing Boundaries (PSO-RB) for Maximum Power Point Tracking of Partially Shaded PV Arrays

机译:用于减少边界(PSO-RB)的粒子群优化,用于部分阴影的PV阵列的最大功率点跟踪

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Multiple Local Maximums (LM) and one Global Maximum (GM) can be present on the Power-Voltage (P-V) output curve during partial shading conditions of a Photovoltaic system. Particle Swarm Optimization (PSO) can consistently find the GM 100% of the time when the swarm size is large enough but the time to find the GM also increases as the swarm size increases - thus reducing the speed of tracking. In this work, we present the performance results of a modified PSO algorithm with dynamically reduced boundary (PSO-RB) for the search space of the particles. Our results indicate that the global maxima search time can be significantly improved while maintaining the accuracy by implementing the PSO-RB algorithm. A direct comparison between the original PSO algorithm and the new PSO-RB algorithm showed that PSO-RB can find the GM point 54.3% (over 2 times) faster than the conventional PSO.
机译:在光伏系统的部分遮蔽条件期间,可以在电力电压(P-V)输出曲线上存在多个局部最大值(LM)和一个全局最大值(GM)。粒子群优化(PSO)可以一致地找到100%的群体尺寸足够大的时间,但发现通用汽车的时间也随着群体的增加而增加 - 从而降低了跟踪的速度。在这项工作中,我们介绍了用于粒子的搜索空间的动态减少边界(PSO-RB)的改进PSO算法的性能结果。我们的结果表明,通过实现PSO-RB算法,可以在保持精度的同时显着提高全局最大值搜索时间。原始PSO算法与新PSO-RB算法之间的直接比较显示PSO-RB可以比传统PSO更快地找到GM点54.3%(超过2倍)。

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