Cellular direction information based differential evolution for numerical optimization: an empirical study

被引:0
作者
Jingliang Liao
Yiqiao Cai
Tian Wang
Hui Tian
Yonghong Chen
机构
[1] Huaqiao University,College of Computer Science and Technology
来源
Soft Computing | 2016年 / 20卷
关键词
Differential evolution; Cellular topology; Neighborhood information; Direction information; Mutation operator; Numerical optimization;
D O I
暂无
中图分类号
学科分类号
摘要
Differential evolution (DE) is a well-known evolutionary algorithm which has been successfully applied in many scientific and engineering fields. In most DE algorithms, the base and difference vectors for mutation are randomly selected from the current population. That is, the useful population information cannot be fully exploited to guide the search of DE through mutation. Furthermore, the selection of parents in mutation has been verified to be critical for the DE performance. Therefore, to alleviate this drawback and improve the performance of DE, a novel DE algorithm with a directional mutation based on cellular topology is proposed in this study. This proposed algorithm is named as Cellular Direction Information based DE (DE-CDI). In DE-CDI, the cellular topology is employed first to define a neighborhood for each individual of population and then the direction information based on the neighborhood is incorporated into the mutation operator. In this way, DE-CDI not only utilizes the neighborhood information to exploit the regions of better individuals and accelerate convergence, but also introduces the direction information to guide the search to the promising area. To evaluate the performance of the proposed method, DE-CDI is applied to the original DE algorithms, as well as several advanced DE variants. Experimental results demonstrate the high performance of DE-CDI for most DE algorithms studied.
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页码:2801 / 2827
页数:26
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