基于物流和高斯映射的混沌自适应粒子群优化求解三次成本经济调度问题

C. Rani, E. Petkov, K. Busawon, M. Farrag
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引用次数: 4

摘要

针对三次成本经济调度问题,提出混沌自适应粒子群算法(CAPSO)。该算法引入了混沌局部搜索算子(CLS),避免了算法的过早收敛。该算法的基本策略是将粒子群算法与自适应惯性权重因子(AIWF)和自适应惯性权重因子(CLS)相结合,利用自适应惯性权重因子(AIWF)和自适应惯性权重因子(CLS)进行全局搜索,利用自适应惯性权重因子(CLS)进行挖掘,找到最优解。运用物流和高斯图技术实现了CLS,并对结果进行了比较。在一个标准的5发电机测试系统上验证了该方法的适用性和高可行性。仿真结果表明,该算法能够给出高质量的解,且收敛速度快。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Chaotic Adaptive Particle Swarm Optimisation using logistics and Gauss map for solving cubic cost economic dispatch problem
This paper proposes Chaotic Adaptive Particle Swarm Optimisation (CAPSO) algorithm to solve Cubic Cost Economic Dispatch (CCED) problem. A Chaotic Local Search operator (CLS) is introduced in the proposed algorithm to avoid premature convergence. The basic strategy of the proposed algorithm is combining PSO with Adaptive Inertia Weight Factor (AIWF) and CLS, in which PSO with AIWF is applied to perform global exploration and CLS is used to perform exploitation to find the optimal solution. Logistics and Gauss map technique is used in performing CLS and the results are compared. The applicability and high feasibility of the proposed method is validated on a standard 5-generator test system. The simulation results confirm that this algorithm is capable of giving higher quality solutions with fast convergence characteristics.
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