混沌速度夹持(CVC-PSO)粒子群优化

Mohammad Hoseein Mojarrad, P. Ayubi
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引用次数: 7

摘要

本文提出了一种结合混沌和速度夹持的粒子群优化方法,旨在消除粒子群算法在搜索空间边界上继续搜索的缺点。这一问题降低了算法的全局最优求解性能。这种启发式方法被称为混沌速度箝位PSO (CVC-PSO)。混沌学研究的是对初始条件极其敏感的非线性动态系统,称为蝴蝶效应。为了给由于速度更新大而离开搜索空间的粒子提供全局搜索的可能性,本文采用logistic方程生成全混沌和全随机序列。最后,将CVC-PSO算法与遗传算法(GA)、带惯性权重的标准PSO算法和改进的帝国主义竞争算法(CICA)等算法的实验结果分别列在不同的表格中进行比较。所得结果表明CVC-PSO算法相对于其他算法是成功的。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Particle swarm optimization with chaotic velocity clamping (CVC-PSO)
This article proposes a novel approach in particle swarm optimization (PSO) that combines chaos and velocity clamping with the aim of eliminating its known disadvantage that enforces particles to continue searching in search space boundaries. This problem reduces the performance of algorithm in obtaining the global optimum. This heuristic approach is called PSO with chaotic velocity clamping (CVC-PSO). Chaos is the study of non-linear dynamic systems which have extreme sensitivity to initial conditions called butterfly effect. In this paper, we use logistic equation to generate fully chaotic and randomness sequences in order to provide the global exploration possibility for particles which have left the search space because of having large velocity update. Finally, the experimentally obtained results of CVC-PSO and other algorithms, such as genetic algorithm (GA), standard PSO with inertia weight and improved imperialist competitive algorithm (CICA), are listed in different tables for comparison. The obtained results represent the success of CVC-PSO against other algorithms.
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