求解单目标有界约束问题的混合采样进化策略

Geng Zhang, Yuhui Shi
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引用次数: 56

摘要

本文提出了一种结合协方差矩阵适应进化策略(CMA-ES)和单变量采样方法的混合采样进化策略(HS-ES)。尽管单变量抽样一直被广泛认为是一种只能解决可分离问题的方法,但分析和实验证明,它实际上对解决多模态不可分离问题是非常有效的。由于单变量采样是CMA-ES的补充算法,在解决单峰不可分问题方面具有明显的优势,因此本文提出的HS-ES试图利用这两种算法的优势来提高其搜索性能。在CEC-2018上的实验结果证明了所提出的HS-ES的有效性。
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Hybrid Sampling Evolution Strategy for Solving Single Objective Bound Constrained Problems
This paper proposes an evolution strategy (ES) algorithm called hybrid sampling-evolution strategy (HS-ES) that combines the covariance matrix adaptation-evolution strategy (CMA-ES) and univariate sampling method. In spite that the univariate sampling has been widely thought as a method only to separable problems, the analysis and experimental tests show that it is actually very effective for solving multimodal nonseparable problems. As the univariate sampling is a complementary algorithm to the CMA-ES which has obvious advantages for solving unimodal nonseparable problems, the proposed HS-ES tries to take advantages of these two algorithms to improve its searching performance. Experimental results on CEC-2018 demonstrate the effectiveness of the proposed HS-ES.
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