Comparing lbest PSO niching algorithms using different position update rules

Xiaodong Li, K. Deb
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引用次数: 25

Abstract

Niching is an important technique for multimodal optimization in Evolutionary Computation. Most existing niching algorithms are evaluated using only 1 or 2 dimensional multimodal functions. However, it remains unclear how these niching algorithms perform on higher dimensional multimodal problems. This paper compares several schemes of PSO update rules, and examines the effects of incorporating these schemes into a lbest PSO niching algorithm using a ring topology. Subsequently a new Cauchy and Gaussian distributions based PSO (CGPSO) is proposed. Our experiments suggest that CGPSO seems to be able to locate more global peaks than other PSO variants on multimodal functions which typically have many global peaks but very few local peaks.
比较使用不同位置更新规则的最佳粒子群小生境算法
小生境是进化计算中多模态优化的重要技术。大多数现有的小生境算法仅使用一维或二维多模态函数进行评估。然而,这些小生境算法在高维多模态问题上的表现尚不清楚。本文比较了PSO更新规则的几种方案,并研究了将这些方案结合到使用环拓扑的最佳PSO小生境算法中的效果。随后提出了一种新的基于柯西高斯分布的粒子群算法(CGPSO)。我们的实验表明,在多模态函数上,与其他PSO变体相比,CGPSO似乎能够定位到更多的全局峰,而其他PSO变体通常有许多全局峰,但很少有局部峰。
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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