Self-Adapting the Brownian Radius in a Differential Evolution Algorithm for Dynamic Environments

M. D. Plessis, A. Engelbrecht, A. Calitz
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引用次数: 2

Abstract

Several algorithms aimed at dynamic optimisation problems have been developed. This paper reports on the incorporation of a self-adaptive Brownian radius into competitive differential evolution (CDE). Four variations of a novel technique to achieving the self-adaptation is suggested and motivated. An experimental investigation over a large number of benchmark instances is used to determine the most effective of the four variations. The new algorithm is compared to its base algorithm on an extensive set of benchmark problems and its performance analysed. Finally, the new algorithm is compared to other algorithms by means of reported results found in the literature. The results indicate that CDE is improved the the incorporation of the self-adaptive Brownian radius and that the new algorithm compares well with other algorithms.
动态环境下微分进化算法中的布朗半径自适应
一些针对动态优化问题的算法已经被开发出来。本文研究了竞争差异进化中引入自适应布朗半径的问题。提出了一种实现自我适应的新技术的四种变体,并提出了动机。通过对大量基准实例的实验研究,确定了四种变量中最有效的一种。在一组广泛的基准问题上,将新算法与原有算法进行了比较,并对其性能进行了分析。最后,通过文献报道的结果将新算法与其他算法进行比较。结果表明,CDE算法在引入自适应布朗半径后得到了改进,与其他算法相比具有较好的效果。
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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