An Effective Algorithm based on Search Economics for Multi-Objective Optimization

Tzu-Tsai Kao, Chun-Wei Tsai, Ming-Chao Chiang
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引用次数: 1

Abstract

An effective multi-objective search algorithm based on a new meta-heuristic algorithm, named search economic (SE), is presented in this study. The basic idea of SE is to first partition the solution space into a certain number of regions to keep the diversity. Then, it will determine the later search directions by the so-called expected value that is composed of the objective values of the best-so-far solution of each region, the searched solutions, and the number of searches invested on a region. More important, the proposed algorithm will invest limited computing resources on promising regions to find a better Pareto optimal set (POS). Different from other search economics-based algorithms, the proposed method uses two transition operators of differential evolution and adds a self adaptive mechanism to tune its parameters. Experimental results show that the proposed algorithm outperforms all the other metaheuristic algorithms compared in this study in most cases in the sense that it can get a more uniformly distributed POS and a smaller distance to the Pareto optimal front.
一种基于搜索经济的多目标优化算法
本文提出了一种有效的多目标搜索算法,该算法基于一种新的元启发式算法——搜索经济算法。SE的基本思想是首先将解空间划分为一定数量的区域,以保持解空间的多样性。然后,它将通过所谓的期望值来确定后续的搜索方向,该期望值由每个区域的迄今最佳解的客观值、搜索的解和在一个区域上投入的搜索次数组成。更重要的是,该算法将有限的计算资源投入到有希望的区域,以寻找更好的帕累托最优集(POS)。与其他基于搜索经济的算法不同,该方法采用差分进化的两个转移算子,并增加了自适应机制来调整其参数。实验结果表明,在大多数情况下,本文提出的算法优于本文比较的所有其他元启发式算法,因为它可以获得更均匀分布的POS,并且距离Pareto最优前沿的距离更小。
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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