Performance comparison of local search operators in differential evolution for constrained numerical optimization problems

S. Domínguez-Isidro, E. Mezura-Montes, G. Leguizamón
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引用次数: 10

Abstract

This paper analyzes the relationship between the performance of the local search operator within a Memetic Algorithm and its final results in constrained numerical optimization problems by adapting an improvement index measure, which indicates the rate of fitness improvement made by the local search operator. To perform this analysis, adaptations of Nealder-Mead, Hooke-Jeeves and Hill Climber algorithms are used as local search operators, separately, in a Memetic DE-based structure, where the best solution in the population is used to exploit promising areas in the search space by the aforementioned local search operators. The "-constrained method is adopted as a constraint-handling technique. The approaches are tested on thirty six benchmark problems used in the special session on "Single Objective Constrained Real-Parameter Optimization" in CEC'2010. The results suggest that the algorithm coordination proposed is suitable to solve constrained problems and those results also show that a poor value of the improvement index measure does not necessarily reflect on poor final results obtained by the MA in a constrained search space.
约束数值优化问题微分演化局部搜索算子性能比较
本文采用改进指标度量来分析Memetic算法中局部搜索算子的性能与约束数值优化问题最终结果之间的关系,改进指标度量表示局部搜索算子的适应度改进率。为了执行此分析,在基于Memetic de的结构中,分别使用了Nealder-Mead, hook - jeeves和Hill攀登者算法的适应性作为局部搜索算子,其中种群中的最佳解决方案用于利用上述局部搜索算子在搜索空间中开发有前途的区域。采用“约束”方法作为约束处理技术。在CEC'2010“单目标约束实参数优化”专题会议上使用的36个基准问题上对这些方法进行了测试。结果表明,所提出的算法协调适用于求解约束问题,并且改进指标度量值较差并不一定反映在约束搜索空间中MA得到的最终结果较差。
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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