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An Evolutionary Algorithm with Heuristic Longest Cycle Crossover for Solving the Capacitated Vehicle Routing Problem

机译:求解车辆停驶问题的启发式最长周期交叉进化算法。

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Crossover is one of the most important parts of an evolutionary algorithm (EA) for solving optimization problems. Many crossover operators have been proposed for solving the capacitated vehicle routing problem (CVRP), a classical NP-hard problem in the field of operations research. This paper aims to improve the search ability of the cycle crossover (CX). The longest cycle selection and the nearest neighbor heuristic are utilized to improve the performance. Experimental results show that the proposed heuristic longest cycle crossover (HLCX) outperforms the original CX and four other operators. Additionally, we apply a search reduction strategy in the local refinement procedure to reduce the computation time at a little cost of solution quality.
机译:交叉是用于解决优化问题的进化算法(EA)最重要的部分之一。已经提出了许多跨界算子来解决有能力的车辆路线选择问题(CVRP),这是运筹学领域中的经典NP难题。本文旨在提高循环交叉(CX)的搜索能力。利用最长的周期选择和最近的邻居启发式算法来提高性能。实验结果表明,所提出的启发式最长循环交叉算法(HLCX)优于原始的CX和其他四个运算符。此外,我们在局部优化过程中应用了搜索减少策略,以减少解决方案质量的代价来减少了计算时间。

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