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首页> 外文期刊>IEEE computational intelligence magazine >Explicit Control of Implicit Parallelism in Decomposition-Based Evolutionary Many-Objective Optimization Algorithms [Research Frontier]
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Explicit Control of Implicit Parallelism in Decomposition-Based Evolutionary Many-Objective Optimization Algorithms [Research Frontier]

机译:基于分解的进化多目标优化算法中隐式并行的显式控制[研究前沿]

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Over the past two decades, Evolutionary Multi-objective Optimization (EMO) algorithms have demonstrated their ability to find and maintain multiple trade-off solutions in two and three-objective problems, making EMO as one of the most emergent and exciting fields of research and application within Computational Intelligence (CI) area. The main reason for EMO's success is that the population-based EMO operators are able to establish an implicit parallel search within an evolving population to find multiple Pareto-optimal regions of the search space parallelly. For many-objective optimization problems involving a largedimensional objective space, the extent of implicit parallelism is argued here to be too generic, compared to the same in a lower-dimensional objective space. Decomposition-based EMO algorithms - a recent trend in EMO literature - which divide the overall computing task into a number of sub-tasks of focusing within a region of the search space have found to be successful in solving many-objective problems. In this paper, we study the effect of explicit control of an algorithm's implicit parallelism mechanism for achieving an enhanced performance of decomposition-based EMO algorithms. We consider three decomposition-based many-objective evolutionary algorithms (EAs) - MOEA/D, MOEA/D-M2M, and NSGA-III - for this purpose. We also investigate another explicit control strategy of suitably choosing a normalization method of objectives for improving the performance of MOEA/D and MOEA/D-M2M methods, and report much improved performance than their original counterparts. The principles of this study are valid for any population-based search and optimization algorithms and can be extended to improve the performance other single-objective EA, EMO, and other relevant CI methods.
机译:在过去的二十年中,进化多目标优化(EMO)算法证明了它们能够发现和维护针对两个和三个目标问题的多种折衷解决方案的能力,从而使EMO成为研究和开发领域中最新兴,最令人兴奋的领域之一。在计算智能(CI)领域中的应用程序。 EMO成功的主要原因是基于人口的EMO运营商能够在不断发展的总体中建立隐式并行搜索,以并行找到搜索空间的多个帕累托最优区域。对于涉及大维目标空间的多目标优化问题,与低维目标空间中的隐式并行度相比,此处隐式并行的程度被认为过于笼统。基于分解的EMO算法-EMO文学中的最新趋势-将整体计算任务划分为专注于搜索空间区域内的多个子任务,已成功解决了许多目标问题。在本文中,我们研究了显式控制算法的隐式并行机制对实现基于分解的EMO算法的增强性能的影响。为此,我们考虑三种基于分解的多目标进化算法(EA)-MOEA / D,MOEA / D-M2M和NSGA-III。我们还研究了另一种明确的控制策略,即适当选择目标的归一化方法以提高MOEA / D和MOEA / D-M2M方法的性能,并报告其性能比原始方法大得多。这项研究的原理适用于任何基于人群的搜索和优化算法,并且可以扩展以提高其他单目标EA,EMO和其他相关CI方法的性能。

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