A novel multivariant optimization algorithm for multimodal optimization

Changxing Gou, Xinling Shi, Baolei Li, Tiansong Li, Lan-juan Liu, Qinhu Zhang, Yajie Liu
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引用次数: 1

Abstract

This paper provides a detailed description of a novel multivariant optimization algorithm (MOA) for multi-modal optimization with the main idea to share search information by organizing all search atoms into a special designed structure. Its multiple and variant group property make MOA capable on multi-modal optimization problems. The capability of the MOA method in locating and maintaining multi optima in one execution is discussed in details in this paper and two experiments are carried out to validate its feasibility in multi-modal optimization problems. The experimental results are also compared with those obtained by the species-based PSO, the adaptive sequential niche PSO and the memetic PSO. The experiment results show that MOA has high success rate and convergence speed in multi-modal optimization problems.
一种新的多变量多模态优化算法
本文详细描述了一种新的多变量优化算法(MOA),其主要思想是通过将所有搜索原子组织成一个特殊的设计结构来共享搜索信息。它的多变群特性使其能够解决多模态优化问题。本文详细讨论了MOA方法在一次执行中定位和维护多个最优点的能力,并通过两个实验验证了该方法在多模态优化问题中的可行性。实验结果还与基于物种的粒子群算法、自适应序位粒子群算法和模因粒子群算法进行了比较。实验结果表明,MOA算法在多模态优化问题中具有较高的成功率和收敛速度。
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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