A Many-Objective Evolutionary Algorithm with Pareto Front Estimation and Angle-Based Selection

Changshun Chen, Maowei He
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Abstract

Evolutionary algorithms have been gaining increasing attention from the evolutionary computation research community. However, the performance of the algorithms deteriorates progressively in handling many-objective optimization problems due to the sensitivity of the curve of the Pareto front, which is usually hard to obtain beforehand. Convergence and diversity strongly depend on the geometry of the Pareto front. This paper proposes a novel algorithm consisting of an angle-based selection strategy and Pareto front estimation method. These two strategies are employed in the environment selection to select promising solutions. The proposed algorithm is compared with five representative algorithms on nine test problems. The experiment results show that the proposed algorithm outperforms state-of-the-art compared algorithms.
基于Pareto前估计和角度选择的多目标进化算法
进化算法越来越受到进化计算研究界的关注。然而,在处理多目标优化问题时,由于Pareto前沿曲线的敏感性,算法的性能逐渐下降,而Pareto前沿曲线通常难以事先获得。收敛性和多样性强烈依赖于帕累托锋面的几何形状。本文提出了一种由基于角度的选择策略和Pareto前估计方法组成的新算法。在环境选择中采用这两种策略来选择有前途的解决方案。在9个测试问题上与5种代表性算法进行了比较。实验结果表明,本文提出的算法优于现有的比较算法。
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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