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Cooperative differential evolution with fast variable interdependence learning and cross-cluster mutation

机译:具有快速变量相互依赖学习和跨集群变异的合作差分进化

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Cooperative optimization algorithms have been applied with success to solve many optimization problems. However, many of them often lose their effectiveness and advantages when solving large scale and complex problems, e.g., those with interacted variables. A key issue involved in cooperative optimization is the task of problem decomposition. In this paper, a fast search operator is proposed to capture the interdependencies among variables. Problem decomposition is performed based on the obtained interdependencies. Another key issue involved is the optimization of the subproblems. A cross-cluster mutation strategy is proposed to further enhance exploitation and exploration. More specifically, each operator is identified as exploitation-biased or exploration-biased. The population is divided into several clusters. For the individuals within each cluster, the exploitation-biased operators are applied. For the individuals among different clusters, the exploration-biased operators are applied. The proposed operators are incorporated into the original differential evolution algorithm. The experiments were carried out on CEC2008, CEC2010, and CEC2013 benchmarks. For comparison, six algorithms that yield top ranked results in CEC competition are selected. The comparison results demonstrated that the proposed algorithm is robust and comprehensive for large scale optimization problems. (C) 2015 Elsevier B.V. All rights reserved.
机译:协作优化算法已成功应用于解决许多优化问题。但是,它们中的许多在解决大规模和复杂的问题(例如那些具有交互变量的问题)时常常失去其有效性和优势。合作优化中涉及的关键问题是问题分解的任务。本文提出了一种快速搜索算子来捕获变量之间的相互依赖性。根据获得的相互依赖性执行问题分解。涉及的另一个关键问题是子问题的优化。提出了跨集群的变异策略,以进一步加强开发和探索。更具体地说,每个操作员都被识别为偏重开发或偏重勘探。人口分为几个集群。对于每个集群中的个人,均应采用利用偏向的运算符。对于不同集群中的个体,将使用探索偏向的算子。提出的算子被并入原始的差分进化算法中。实验是在CEC2008,CEC2010和CEC2013基准上进行的。为了进行比较,选择了在CEC竞争中获得最高排名的六个算法。比较结果表明,该算法对于大规模优化问题具有鲁棒性和综合性。 (C)2015 Elsevier B.V.保留所有权利。

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