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Interval Multiobjective Optimization With Memetic Algorithms

机译:膜算法的间隔多目标优化

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摘要

One of the most important and widely faced optimization problems in real applications is the interval multiobjective optimization problems (IMOPs). The state-of-the-art evolutionary algorithms (EAs) for IMOPs (IMOEAs) need a great deal of objective function evaluations to find a final Pareto front with good convergence and even distribution. Further, the final Pareto front is of great uncertainty. In this paper, we incorporate several local searches into an existing IMOEA, and propose a memetic algorithm (MA) to tackle IMOPs. At the start, the existing IMOEA is utilized to explore the entire decision space; then, the increment of the hypervolume is employed to develop an activation strategy for every local search procedure; finally, the local search procedure is conducted by constituting its initial population, whose center is an individual with a small uncertainty and a big contribution to the hypervolume, taking the contribution of an individual to the hypervolume as its fitness function, and performing the conventional genetic operators. The proposed MA is empirically evaluated on ten benchmark IMOPs as well as an uncertain solar desalination optimization problem and compared with three state-of-the-art algorithms with no local search procedure. The experimental results demonstrate the applicability and effectiveness of the proposed MA.
机译:实际应用中最重要且广泛的优化问题之一是间隔多目标优化问题(IMOPS)。 IMOPS(IMOEAS)的最先进的进化算法(EAS)需要大量的客观函数评估,以找到一个良好的收敛性甚至分布的最终帕累托。此外,最终的帕累托前线具有很大的不确定性。在本文中,我们将几个本地搜索纳入现有的IMOEA,并提出了一种遗料算法(MA)来解决IMOPS。在开始时,现有的IMOEA用于探索整个决策空间;然后,使用超级潜水镜的增量来为每个本地搜索程序开发激活策略;最后,通过构成其初始群体进行本地搜索程序,其中心是一个具有较小不确定性和对超潜水的贡献的个体,从而为其健身功能提供了个体的贡献,并进行传统遗传运营商。拟议的MA是对十个基准IMOPS以及不确定的太阳海水淡化优化问题进行了经验评估,并与三种最先进的算法相比,没有本地搜索过程。实验结果表明了拟议的MA的适用性和有效性。

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