A New Algorithm Based on Differential Evolution for Combinatorial Optimization

André L. Maravilha, J. A. Ramírez, F. Campelo
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引用次数: 5

Abstract

Differential evolution (DE) was originally designed to solve continuous optimization problems, but recent works have been investigating this algorithm for tackling combinatorial optimization (CO), particularly in permutation-based combinatorial problems. However, most DE approaches for combinatorial optimization are not general approaches to CO, being exclusive for per mutational problems and often failing to retain the good features of the original continuous DE. In this work we introduce a new DE-based technique for combinatorial optimization to addresses these issues. The proposed method employs operations on sets instead of the classical arithmetic operations, with the DE generating smaller sub problems to be solved. This new approach can be applied to general CO problems, not only permutation-based ones. We present results on instances of the traveling salesman problem to illustrate the adequacy of the proposed algorithm, and compare it with existing approaches.
一种基于差分进化的组合优化算法
差分进化(DE)最初是为了解决连续优化问题而设计的,但最近的工作已经开始研究这种算法来解决组合优化(CO),特别是基于排列的组合问题。然而,大多数用于组合优化的DE方法并不是通用的CO方法,只能用于突变问题,并且往往不能保留原始连续DE的良好特征。在这项工作中,我们引入了一种新的基于DE的组合优化技术来解决这些问题。该方法采用对集合的运算而不是经典的算术运算,使得DE生成更小的待解子问题。这种新方法可以应用于一般的CO问题,而不仅仅是基于排列的问题。我们给出了旅行推销员问题实例的结果来说明所提出算法的充分性,并将其与现有方法进行了比较。
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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