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A Decomposition Based Evolutionary Algorithm with Angle Penalty Selection Strategy for Many-Objective Optimization

机译:多目标优化的基于分解的角度惩罚选择进化算法

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Evolutionary algorithms (EAs) based on decomposition have shown to be promising in solving many-objective optimization problems (MaOPs). First, the population (or objective space) is divided into К subpopulations (or subregions) by a group of uniform distribution reference vectors. Later, subpopulations are optimized simultaneously. In this paper, we propose a new decomposition based evolutionary algorithm with angle penalty selection strategy for MaOPs (MOEA-APS). In the environmental selection process, in order to prevent the solutions located around the boundary of the subregion from being simultaneously selected into the next generation which will affect negatively on the performance of the algorithm, a new angle similarity measure (AS) is calculated and used to punish the dense solutions. More precisely, after selecting a good solution x for a sub population, the solutions whose angle similarity with x exceeding η or pareto dominated by x will be directly punished. Moreover, The threshold η is not fixed, but decided by the distribution of the solutions around x. This mechanism allows to improve diversity of population. The experimental results on DTLZ benchmark test problems show that the results of the proposed algorithm are very competitive comparing with four other state-of-the-art EAs for MaOPs.
机译:基于分解的进化算法(EA)已显示出解决多目标优化问题(MaOP)的潜力。首先,将人口(或目标空间)通过一组均匀分布的参考向量划分为К个子种群(或子区域)。后来,同时优化了亚群。在本文中,我们提出了一种新的基于分解的进化算法,该算法具有针对MaOP的角度罚分选择策略(MOEA-APS)。在环境选择过程中,为了防止将位于子区域边界周围的解同时选择给下一代,这将对算法的性能产生负面影响,因此计算并使用了一个新的角度相似性度量(AS)惩罚密集的解决方案。更准确地说,在为子总体选择了一个好的解x之后,将直接惩罚与x超过η或pareto由x主导的角度相似性的解。此外,阈值η不是固定的,而是由x周围的解的分布决定的。这种机制可以改善人口的多样性。 DTLZ基准测试问题的实验结果表明,与其他四个MaOP的最新EA相比,该算法的结果具有竞争力。

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