Parallel Dynamic Multi-Objective Optimization Evolutionary Algorithm

M. Grid, Leila Belaiche, L. Kahloul, Saber Benharzallah
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引用次数: 1

Abstract

Multi-objective optimization evolutionary algorithms (MOEAs) are considered as the most suitable heuristic methods for solving multi-objective optimization problems (MOPs). These MOEAs aim to search for a uniformly distributed, near-optimal and near-complete Pareto front for a given MOP. However, MOEAs fail to achieve their aim completely because of their fixed population size. To overcome this limit, an evolutionary approach of multi-objective optimization was proposed; the dynamic multi-objective evolutionary algorithms (DMOEAs). This paper deals with improving the user requirements (i.e., getting a set of optimal solutions in minimum computational time). Although, DMOEA has the distinction of dynamic population size, being an evolutionary algorithm means that it will certainly be characterized by long execution time. One of the main reasons for adapting parallel evolutionary algorithms (PEAs) is to obtain efficient results with an execution time much lower than the one of their sequential counterparts in order to tackle more complex problems. Thus, we propose a parallel version of DMOEA (i.e., PDMOEA). As experimental results, the proposed PDMOEA enhances DMOEA in terms of three criteria: improving the objective space, minimization of computational time and converging to the desired population size.
并行动态多目标优化进化算法
多目标优化进化算法(moea)被认为是求解多目标优化问题最合适的启发式方法。这些moea的目标是为给定的MOP寻找均匀分布的、接近最优的和接近完全的Pareto前线。然而,moea由于其固定的人口规模而无法完全实现其目标。为了克服这一限制,提出了一种多目标优化的进化方法;动态多目标进化算法(dmoea)本文研究如何提高用户需求(即在最短的计算时间内得到一组最优解)。虽然DMOEA具有动态种群大小的区别,但作为一种进化算法,它必然具有执行时间长的特点。采用并行进化算法(PEAs)的一个主要原因是,为了处理更复杂的问题,在执行时间远低于顺序算法的情况下获得有效的结果。因此,我们提出了一个并行版本的DMOEA(即PDMOEA)。实验结果表明,本文提出的PDMOEA从改善目标空间、最小化计算时间和收敛到期望的种群大小三个方面对DMOEA进行了改进。
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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