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A Novel Bat Algorithm Strategy for Maximum Power Point Tracker of Photovoltaic Energy Systems Under Dynamic Partial Shading

机译:动态偏观下光伏能量系统最大功率点跟踪器的一种新型BAT算法策略

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Power versus voltage curves of partial shading photovoltaic (PV) systems contain several local peaks (LPs) and one global peak (GP). Most conventional maximum power point tracker (MPPT) techniques may not follow the GP under partial shading conditions (PSC). The use of metaheuristic techniques such as the bat algorithm (BA) and particle swarm optimization (PSO) can overcome these obstacles. All problems inherent in the using of BA as MPPT of PV systems has been discussed and solved in this paper. The first problem is the random initial values of bats that may cause premature convergence. Therefore, the initial values of bats were modified to be close to the anticipated positions of peaks to reduce the convergence time and improve the chance of capturing the GP. The second problem occurs when shading pattern changes the value and position of the GP which is not configurable because all bats are concentrated at the previous GP; this can be resolved by BA re-initialization. The the third problem is the GP memorized in the execution of the BA code forces the PV system to work at the duty ratio of the highest GP ever seen, which may not be the real GP. This problem is solved by updating the memorized GP. This paper also proposes a new criterion for selecting the optimal swarm size against number of peaks to reduce the convergence time and improve the chance of capturing the GP. To the authors & x2019; knowledge, most of these problems inherent in the BA have hitherto not been addressed in the literature. The simulation and experimental results obtained from the proposed modified BA (MBA) with re-initialization have been compared to the PSO and grey wolf optimization (GWO) techniques which show the superiority of using MBA strategy in the MPPT of partial shading PV systems.
机译:部分遮阳光光伏(PV)系统的功率与电压曲线包含几个本地峰(LPS)和一个全局峰(GP)。大多数传统的最大功率点跟踪器(MPPT)技术可能无法在部分着色条件(PSC)下进行GP。使用诸如BAT算法(BA)和粒子群优化(PSO)的诸如诸如BAT算法(BA)和粒子群优化(PSO)的使用的使用。本文讨论了BA使用中所固有的所有问题,并解决了PV系统的MPPT。第一个问题是蝙蝠的随机初始值可能导致过早收敛。因此,修改蝙蝠的初始值以接近峰值的预期位置,以减少收敛时间并提高捕获GP的机会。当着色模式改变GP的值和位置时,发生第二个问题,因为所有蝙蝠集中在先前的GP中;这可以通过BA重新初始化来解决。第三个问题是在执行BA码的情况下记忆的GP强制PV系统以获得曾经看到的最高GP的占空比工作,这可能不是真实的GP。通过更新记忆的GP来解决这个问题。本文还提出了一种用于选择最佳群体尺寸的新标准,以减少收敛时间并改善捕获GP的机会。给作者&x2019;知识,大多数这些问题在文献中没有解决迄今为止的迄今为止。与重新初始化的提出的修饰BA(MBA)获得的模拟和实验结果与PSO和灰狼优化(GWO)技术进行了比较,其示出了在部分遮阳PV系统的MPPT中使用MBA策略的优越性。

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