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A new proposal for multi-objective optimization using differential evolution and rough sets theory

机译:使用差分演化和粗糙集理论进行多目标优化的新提案

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This paper presents a new multi-objective evolutionary algorithm (MOEA) based on differential evolution and rough sets theory. The proposed approach adopts an external archive in order to retain the nondominated solutions found during the evolutionary process. Additionally, the approach also incorporates the concept of paε-dominance to get a good distribution of the solutions retained. The main idea of the approach is to use differential evolution (DE) as our main search engine, trying to translate its good convergence properties exhibited in single-objective optimization to the multi-objective case. Rough sets theory is adopted in a second stage of the search in order to improve the spread of the nondominated solutions that have been found so far. Our hybrid approach is validated using standard test functions and metrics commonly adopted in the specialized literature. Our results are compared with respect to the NSGA-II, which is a MOEA representative of the state-of-the-art in the area.
机译:本文提出了一种基于差分演化和粗糙集理论的新型多目标进化算法(MOEA)。所提出的方法采用外部档案,以保留在进化过程中发现的未发现的溶液。此外,该方法还包括PaE-优势的概念,以获得保留的解决方案的良好分布。该方法的主要思想是使用差分演进(DE)作为主要搜索引擎,试图将其在单目标优化中展出的良好收敛性能转化为多目标情况。在搜索的第二阶段采用粗糙集理论,以改善到目前为止已经发现的非目标解决方案的扩散。我们的混合方法是使用专业文献中的标准测试函数和指标进行验证。我们的结果与NSGA-II相比,这是该地区最先进的MOEA。

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