A Species-based Particle Swarm Optimization with Adaptive Population Size and Deactivation of Species for Dynamic Optimization Problems

Delaram Yazdani, D. Yazdani, Donya Yazdani, M. Omidvar, A. Gandomi, X. Yao
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引用次数: 1

Abstract

Population clustering methods, which consider the position and fitness of the individuals to form sub-populations in multi-population algorithms, have shown high efficiency in tracking the moving global optimum in dynamic optimization problems. However, most of these methods use a fixed population size, making them inflexible and inefficient when the number of promising regions is unknown. The lack of a functional relationship between the population size and the number of promising regions significantly degrades performance and limits an algorithm’s agility to respond to dynamic changes. To address this issue, we propose a new species-based particle swarm optimization with adaptive population size and number of sub-populations for solving dynamic optimization problems. The proposed algorithm also benefits from a novel systematic adaptive deactivation component that, unlike the previous deactivation components, adapts the computational resource allocation to the sub-populations by considering various characteristics of both the problem and the sub-populations. We evaluate the performance of our proposed algorithm for the Generalized Moving Peaks Benchmark and compare the results with several peer approaches. The results indicate the superiority of the proposed method.
基于种群大小自适应和种群失活的动态优化问题粒子群算法
种群聚类方法在多种群算法中考虑个体的位置和适应度形成子种群,在跟踪动态优化问题的全局移动最优方面表现出很高的效率。然而,这些方法大多使用固定的人口规模,使得它们在有希望的地区数量未知时缺乏灵活性和效率。缺乏种群大小和有希望区域数量之间的函数关系会显著降低性能,并限制算法响应动态变化的敏捷性。为了解决这一问题,我们提出了一种新的基于物种的粒子群优化算法,该算法具有自适应种群大小和亚种群数量。该算法还受益于一种新的系统自适应去激活组件,该组件不同于以前的去激活组件,通过考虑问题和子种群的各种特征,使计算资源分配适应子种群。我们评估了我们提出的广义移动峰值基准算法的性能,并将结果与几种同类方法进行了比较。结果表明了该方法的优越性。
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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