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Grouped grey wolf optimizer for maximum power point tracking of doubly-fed induction generator based wind turbine

机译:分组灰狼优化器,用于基于双馈感应发电机的风力发电机的最大功率点跟踪

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This paper proposes a novel grouped grey wolf optimizer to obtain the optimal parameters of interactive proportional-integral controllers of doubly-fed induction generator based wind turbine, such that a maximum power point tracking can be realized together with an improved fault ride-through capability. Under the proposed framework, the grey wolves are divided into two independent groups, including a cooperative hunting group and a random scout group. The former one contains four types of grey wolves (i.e., alpha, beta, delta, and omega) to accomplish an effective hunting based on their hierachical cooperation and three elaborative maneuvers in the presence of an unknown environment, e.g., prey searching, prey encircling, and prey attacking, of which the number of beta and delta wolves is increased to achieve a deeper exploitation. On the other hand, the latter one undertakes a randomly global search and realizes an appropriate trade-off between the exploration and exploitation, thus a local optimum can be effectively avoided. Three case studies are carried out which verify that a better global convergence, more accurate power tracking and improved fault ride through capability can be achieved by the proposed approach compared with that of other heuristic algorithms. (C) 2016 Published by Elsevier Ltd.
机译:本文提出了一种新颖的分组灰狼优化器,以获取基于双馈感应发电机的风力发电机的交互式比例-积分控制器的最优参数,从而可以实现最大功率点跟踪以及改进的故障穿越能力。在提议的框架下,灰狼分为两个独立的组,包括合作狩猎组和随机侦察组。前一种包含四种类型的灰狼(即alpha,beta,delta和omega),可以根据它们的层级合作和在未知环境中(例如,猎物搜索,猎物包围)进行三种复杂的操作来完成有效的狩猎和猎物攻击,其中增加了beta和delta狼的数量,以实现更深入的利用。另一方面,后者进行随机全局搜索并实现了勘探与开发之间的适当折衷,从而可以有效地避免局部最优。进行了三个案例研究,证明与其他启发式算法相比,该方法可以实现更好的全局收敛性,更精确的功率跟踪和改善的故障穿越能力。 (C)2016由Elsevier Ltd.出版

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