由存档劣等解提供方向信息的自适应多目标差分进化

Jingqiao Zhang, A. Sanderson
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引用次数: 41

摘要

针对多目标优化问题,提出了一种新的自适应差分进化算法。为了解决多目标优化中的挑战,我们引入了一个存档来存储最近探索的次优解,这些次优解与当前种群的差异被用作最优解的方向信息,并且在计算拥挤距离时考虑了一个公平度量,以优先选择与最近邻居的距离较大且接近均匀的解。因此,得到的解可以很好地分布在计算的非支配前沿上,并且可以快速地向帕累托最优前沿移动。此外,该算法的控制参数以自适应方式调整,避免了对不同特征问题的参数调整。该算法名为JADE2,在一组22个基准问题上,与NSGA-II和GDE3相比,取得了更好或至少有竞争力的结果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Self-adaptive multi-objective differential evolution with direction information provided by archived inferior solutions
We propose a new self-adaptive differential evolution algorithm for multi-objective optimization problems. To address the challenges in multi-objective optimization, we introduce an archive to store recently explored inferior solutions whose difference with the current population is utilized as direction information about the optimum, and also consider a fairness measure in calculating crowding distances to prefer the solutions whose distances to nearest neighbors are large and close to be uniform. As a result, the obtained solutions can spread well over the computed non-dominated front and the front can be moved fast toward the Pareto-optimal front. In addition, the control parameters of the algorithm are adjusted in a self-adaptive manner, avoiding parameter tuning for problems of different characteristics. The proposed algorithm, named JADE2, achieves better or at least competitive results compared to NSGA-II and GDE3 for a set of twenty-two benchmark problems.
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