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A self-adaptive multi-population differential evolution algorithm

机译:自适应多种群差分进化算法

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Differential evolution (DE) is an efficient population-based search algorithm for solving numerical optimization problems. However, the performance of DE is very sensitive to the choice of mutation strategies and their associated control parameters. In this paper, we propose a self-adaptive multi-population differential evolution algorithm, called SAMDE. The population is randomly divided into three equally sized sub-populations, each with different mutation strategies. At the end of each generation, all sub-populations are updated independently and recombined. Each sub-population uses an adaptive mechanism for selecting how current generation control parameters are generated. An improved mutation strategy, "rand assemble/1", is proposed, its base vector is composed proportionally of three randomly selected individuals. The performance of SAMDE is evaluated on the suite of CEC 2005 benchmark functions. A comparative study is carried out with other state-of-the-art optimization techniques. The results show that SAMDE has a competitive performance compared to several other efficient DE variants.
机译:差分进化(DE)是一种有效的基于种群的搜索算法,用于解决数值优化问题。但是,DE的性能对突变策略及其相关控制参数的选择非常敏感。在本文中,我们提出了一种自适应的多种群差分进化算法,称为SAMDE。将种群随机分为三个大小相等的亚群,每个亚群具有不同的突变策略。在每一代的末尾,所有子种群都将独立更新并重新组合。每个子群体使用自适应机制来选择如何生成当前发电控制参数。提出了一种改进的变异策略“ rand assemble / 1”,其基本向量按比例由三个随机选择的个体组成。 SAMDE的性能在CEC 2005基准测试功能套件上进行了评估。使用其他最先进的优化技术进行了比较研究。结果表明,与其他几种高效DE变体相比,SAMDE具有竞争优势。

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