基于邻域搜索的差分进化

Yuzhen Liu, Shoufu Li
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引用次数: 3

摘要

为了提高差分进化算法的邻域搜索能力,针对全局优化问题,提出了一种基于线性邻域搜索的差分进化算法LiNDE。LiNDE采用从进化种群中随机抽取的三重向量的线性组合。LiNDE的主要特点是参数少,邻域搜索能力强。在一个基准集上进行了实验研究,结果表明LiNDE显著提高了DE的性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Differential Evolution with Neighborhood Search
In order to improve the ability of neighborhood search of differential evolutionary (DE) algorithm, we propose a new variant of DE with linear neighborhood search, called LiNDE, for global optimization problems (GOPs). LiNDE employs a linear combination of triple vectors taken randomly from evolutionary population. The main characteristics of LiNDE are less parameters and powerful neighborhood search ability. Experimental studies are carried out on a benchmark set, and the results show that LiNDE significantly improved the performance of DE.
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