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Chaotic Iteration Particle Swarm Optimization Algorithm Based on Economic Load Dispatch

机译:基于经济负荷分配的混沌迭代粒子群优化算法

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To solve the non-convex and non-linear economic dispatch problem efficiently, a chaotic iteration particle swarm optimization algorithm is presented. In the global research of particle swarm optimization and local optimum, ergodicity of chaos can effectively restrain premature. To balance the exploration and exploitation abilities and avoid being trapped into local optimal, a new index, called iteration best, is incorporated into particle swarm optimization, and chaotic mutation with a new Tent map imported can make local search within the prior knowledge, a new strategy is proposed in iteration strategy. The algorithm is validated for two test systems consisting of 6 and 15 generators. Compared with other methods in this literature, the experimental result demonstrates the high convergency and effectiveness of proposed algorithm.
机译:为了有效解决非凸和非线性经济调度问题,提出了一种混沌迭代粒子群优化算法。在粒子群优化和局部最优的全球研究中,遍历混沌可以有效地抑制过早发生。为了平衡勘探和开发能力并避免陷入局部最优,将新的索引(称为最佳迭代)结合到粒子群优化中,并通过导入新的Tent映射进行混沌突变,可以在先验知识范围内进行局部搜索,迭代策略中提出了该策略。该算法已针对由6个发电机和15个发电机组成的两个测试系统进行了验证。与文献中的其他方法相比,实验结果证明了该算法的高度收敛性和有效性。

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