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Comparison between MOEA/D and NSGA-III on a set of novel many and multi-objective benchmark problems with challenging difficulties

机译:MoeA / D和NSGA-III与挑战性困难的一套新型和多目标基准问题的比较

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摘要

Currently, evolutionary multiobjective optimization (EMO) algorithms have been successfully used to find a good approximation of many-objective optimization problems (MaOPs). To measure the performance of EMO algorithms, many benchmark multiobjective test problems have been constructed. Among them, DTLZ and WFG are two representative test suites with the scalability to the number of variables and objectives. It should be pointed out that MaOPs can be more challenging if they are involved with difficult problem features, such as objective scalability, complicated Pareto set, bias, disconnection, or degeneracy. In this paper, a set of ten new test problems with above-mentioned difficulties are constructed. Some experimental results on these test problems found by two popular EMO algorithms, i.e., MOEA/D and NSGA-III, are reported and analyzed. Moreover, the performance of these two EMO algorithms with different population sizes on these test problems are also studied.
机译:目前,进化多目标优化(EMO)算法已成功地用于找到许多客观优化问题(MAOPS)的良好近似。 为了测量EMO算法的性能,已经构建了许多基准多目标测试问题。 其中,DTLZ和WFG是两个代表性测试套件,其可扩展性与变量和目标的数量。 应该指出的是,如果涉及困难的问题特征,例如客观可扩展性,复杂的Pareto集,偏差,断开或退化,则Maops可以更具挑战性。 在本文中,构建了一系列具有上述困难的十个新测试问题。 报告并分析了两种流行的EMO算法,即MOEA / D和NSGA-III发现的这些试验问题的一些实验结果。 此外,还研究了对这些测试问题不同群体尺寸的这两个EMO算法的性能。

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