Chaotic-based Particle Swarm Optimization with Inertia Weight for Optimization Tasks

N. Mobaraki, R. Boostani, M. Sabeti
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引用次数: 2

Abstract

Among variety of meta-heuristic population-based search algorithms, particle swarm optimization (PSO) with adaptive inertia weight (AIW) has been considered as a versatile optimization tool, which incorporates the experience of the whole swarm into the movement of particles. Although the exploitation ability of this algorithm is great, it cannot comprehensively explore the search space and may be trapped in a local minimum through a limited number of iterations. To increase its diversity as well as enhancing its exploration ability, this paper inserts a chaotic factor, generated by three chaotic systems, along with a perturbation stage into AIW-PSO to avoid premature convergence, especially in complex nonlinear problems. To assess the proposed method, a known optimization benchmark containing nonlinear complex functions was selected and its results were compared to that of standard PSO, AIW-PSO and genetic algorithm (GA). The empirical results demonstrate the superiority of the proposed chaotic AIW-PSO to the counterparts over 21 functions, which confirms the promising role of inserting the randomness into the AIW-PSO. The behavior of error through the epochs show that the proposed manner can smoothly find proper minimums in a timely manner without encountering with premature convergence.
基于混沌的惯性权粒子群优化算法
在各种基于元启发式群体的搜索算法中,具有自适应惯性权重的粒子群优化(PSO)被认为是一种通用的优化工具,它将整个群体的经验融入到粒子的运动中。尽管该算法的利用能力很大,但它不能全面探索搜索空间,并且可能通过有限的迭代次数被困在局部极小值中。为了增加其多样性并增强其探索能力,本文在AIW-PSO中插入了一个由三个混沌系统产生的混沌因子和一个扰动阶段,以避免过早收敛,特别是在复杂的非线性问题中。为了评估所提出的方法,选择了一个包含非线性复函数的已知优化基准,并将其结果与标准PSO、AIW-PSO和遗传算法(GA)的结果进行了比较。经验结果证明了所提出的混沌AIW-PSO相对于21个函数的优越性,这证实了将随机性插入AIW-PSO中的有希望的作用。通过历元的误差行为表明,所提出的方法可以及时平滑地找到合适的极小值,而不会遇到过早收敛的问题。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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