基于参考点的分布式计算多目标优化

Okkes Tolga Altinöz, K. Deb, A. Yılmaz
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引用次数: 4

摘要

随着问题的计算复杂度和/或目标数量的增加,每一代算法都需要评估大量的种群,这一过程需要更多的计算资源,或者相同的计算资源需要更多的时间。然而,将任务分配到不同的处理器(或核心)中是一个很好的解决方案,可以加快整个过程。针对多目标进化优化算法,提出了一种新颖实用的分布式计算方法。与先前的研究中提出的将目标空间划分为预定义的锥支配原则不同,该方法将在跨越整个目标空间的超平面上初始化的参考点分布分配给不同的处理器,并调用R-NSGA-II程序来寻找各自的部分有效前沿。我们的结果表明,与单处理器方法相比,所提出的分布式计算方法减少了总体计算工作量。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Reference point based distributed computing for multiobjective optimization
As the computational complexity of the problem and/or the number of objectives increases, a large population has to be evaluated at each generation of algorithm, and this process needs more computational resources, or requires more time for the same computational resource. However, distributing the tasks into different processors (or cores) is a good solution in speeding up the process overall. In this study, a novel and pragmatic distributed computing approach for multiobjective evolutionary optimization algorithm is proposed. Instead of dividing the objective space into pre-defined cone-domination principles, as proposed in an earlier study, a distribution of reference points initialized on a hyper-plane spanning the entire objective space is assigned to different processors and the R-NSGA-II procedure is invoked to find respective partial efficient fronts. Our results show that the proposed distributed computing approach reduces the overall computational effort compared to that needed with a single-processor method.
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