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Dynamic global maximum power point tracking of the PV systems under variant partial shading using hybrid GWO-FLC

机译:使用混合GWO-FLC在变体部分阴影下动态跟踪光伏系统的全局最大功率点

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Maximum power point tracker (MPPT) techniques have been used to extract the maximum power available form photovoltaic (PV) energy systems. Conventional MPPT techniques like perturb and observe (P&O), hill climbing (HC), incremental conductance etc. were good enough to track the maximum power for the unshaded PV systems because it has only one power peak in the P-V curve. In the case of partial shading conditions (PSC), many peaks are created; one global maximum power point (GMPP) and many local maximum power points (LMPPs). Most of conventional MPPT techniques may stick to one of the LMPPs, which reduce the MPPT efficiency of PV systems. Soft computing techniques like particle swarm optimization (PSO), gray wolf optimization (GWO), and Cuckoo search optimization (CSO) etc. can catch the GMPP of PV system under the same PSC. These latter techniques suffer from two problems, the first problem is the high oscillations around the GMPP, the second problem is that, they cannot follow the new GMPP once it changed its position due to the searching agents will be busy around old GMPP caught. The solution of these two problems are the motivation of this research. GWO has been used to catch the GMPP and the problem of oscillations around the GMPP has been solved by hybridizing this technique with fuzzy logic controller (FLC) for soft tune the output generated power at the GMPP. The FLC characterizes by accurate GMPP catching with almost zero oscillations. The second problem is solved in this paper by reinitializing the GWO with two new initialization techniques. The results obtained from GWO-FLC with two different re-initialization techniques have been compared to the results of PSO without reinitializing its particles. The results obtained from this work prove the superior performance of the new proposed technique in terms of dynamic GMPP catching and MPPT power efficiency in case of time variant PSCs.
机译:最大功率点跟踪器(MPPT)技术已用于提取光伏(PV)能量系统可用的最大功率。传统的MPPT技术(如扰动和观测(P&O),爬坡(HC),增量电导等)足以跟踪无阴影PV系统的最大功率,因为​​它在P-V曲线中只有一个功率峰值。在部分阴影条件(PSC)的情况下,会创建许多峰;因此,请参见图5。一个全局最大功率点(GMPP)和许多本地最大功率点(LMPP)。大多数传统的MPPT技术可能会坚持使用LMPP之一,从而降低了光伏系统的MPPT效率。粒子群优化(PSO),灰太狼优化(GWO)和布谷鸟搜索优化(CSO)等软计算技术可以在同一PSC下捕获PV系统的GMPP。后面的这些技术有两个问题,第一个问题是GMPP周围的高振荡,第二个问题是,一旦搜索代理将忙于捕获旧的GMPP,一旦改变了位置,它们就无法跟随新的GMPP。解决这两个问题是本研究的动机。 GWO已被用来捕获GMPP,并且通过将该技术与模糊逻辑控制器(FLC)混合以软调谐GMPP的输出产生功率,解决了GMPP周围的振荡问题。 FLC的特征是精确的GMPP捕获,几乎具有零振荡。通过使用两种新的初始化技术重新初始化GWO,解决了第二个问题。使用两种不同的重新初始化技术从GWO-FLC获得的结果已与不重新初始化其粒子的PSO进行了比较。从这项工作中获得的结果证明,在时变PSC的情况下,在动态GMPP捕获和MPPT功率效率方面,该新技术的优越性能。

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