遗传算法中使用盲交叉算子求解路由问题的适用性分析

E. Osaba, R. Carballedo, F. Díaz, A. Perallos
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引用次数: 23

摘要

遗传算法是解决组合优化问题最成功的技术之一。它的一般特性使其能够应用于不同类型的问题:车辆路线,规划,调度等。本文表明,在应用于路由问题时,算法步骤的基本结构存在争议。具体来说,在本文中,我们证明了交叉(CX)在优化过程中没有任何优势。要解决这些问题,最重要的步骤是突变和个体选择。这两个步骤有助于详尽地分析解空间并赋予遗传算法优化能力。为了证明我们的假设,我们将分析使用不同的盲交叉算子来解决TSP(旅行商问题)的多个实例的结果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Analysis of the suitability of using blind crossover operators in genetic algorithms for solving routing problems
Genetic algorithms (GA) are one of the most successful techniques in solving combinatorial optimization problems. Its general character has enabled its application to different types of problems: vehicle routing, planning, scheduling, etc. This article shows that there is controversy in the basic structure of the algorithm steps when it is applied at routing problems. Specifically in this paper we show that the crossover (CX) offers no advantage in the optimization process. To solve such problems, the most important steps are mutation and selection of individuals. These two steps are what help to analyze the solution space exhaustively and give GA optimization capability. To prove our hypothesis we will analyze the results obtained by applying different blind crossover operators to solve multiple instances of the TSP (Travelling Salesman Problem).
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