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Cellular Differential Evolution Algorithm

机译:细胞差分进化算法

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This paper presents a cellular version of Differential Evolution (DE) algorithm. The notion behind the geographical distribution of DE population with local interaction is to study the influence of slow diffusion of information throughout the population. The study was carried out using the" compact configuration of neighborhood from which all the auxiliary parents for DE recombination were selected. The empirical study was carried out using a standard benchmark suite consisting of 10 functions. The results show that the structured population with local interaction improves the convergence characteristics of DE and the performance improvement was also verified using scalability study. A brief comparison with cellular GA was also included.
机译:本文介绍了差分进化(DE)算法的蜂窝版本。具有局部交互作用的DE人口地理分布背后的概念是研究信息在整个人口中缓慢传播的影响。该研究是使用“邻域的紧凑配置,从中选择了所有用于DE重组的辅助亲本”进行的。实证研究是使用由10个函数组成的标准基准套件进行的。结果表明,具有局部相互作用的结构化种群改进了DE的收敛特性,并通过可扩展性研究验证了性能的提高,还包括与蜂窝GA的简要比较。

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