Optimized control of DFIG based wind generation using swarm intelligence

Yufei Tang, Haibo He, J. Wen
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引用次数: 4

Abstract

In this paper, a particle swarm optimization with ε-greedy (ePSO) algorithm and group search optimizer (GSO) algorithm are compared with the classic PSO algorithm for the optimal control of DFIG wind generation based on small signal stability analysis (SSSA). In the modified ePSO algorithm, the cooperative learning principle among particles has been introduced, namely, particles not only adjust its own flying speed according to itself and the best individual of the swarm but also learn from other best particles according to certain probability. The proposed ePSO algorithm has been tested on benchmark functions and demonstrated its effectiveness in high-dimension multi-modal optimization. Then ePSO is employed to tune the controller parameters of DFIG based wind generation. Results obtained by ePSO are compared with classic PSO and GSO, demonstrating the improved performance of the proposed ePSO algorithm.
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基于群智能的DFIG风力发电优化控制
针对基于小信号稳定性分析(SSSA)的DFIG风力发电最优控制问题,将ε-greedy (ePSO)算法和群搜索优化器(GSO)算法与经典粒子群优化算法进行了比较。在改进的ePSO算法中,引入了粒子间的合作学习原理,即粒子不仅根据自身和群中最优个体调整自身的飞行速度,而且根据一定的概率向其他最优粒子学习。在基准函数上对该算法进行了测试,证明了该算法在高维多模态优化中的有效性。然后利用ePSO算法对DFIG风力发电的控制器参数进行整定。通过与经典粒子群算法和粒子群算法的比较,验证了ePSO算法的性能改进。
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