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Self-organization and Evolution Combined to Address the Vehicle Routing Problem

机译:自组织和进化相结合解决车辆路径问题

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The paper deals with a self-organizing system in a evolutionary framework applied to the Euclidean Vehicle Routing Problem (VRP). Theoretically, self-organization is intended to allow adaptation to noisy data as well as to confer robustness according to demand fluctuation. Evolution through selection is intended to guide a population based search toward near-optimal solutions. To implement such principles to address the VRP, the approach uses the standard self-organizing map algorithm as a main operator embedded in a evolutionary loop. We evaluate the approach on standard benchmark problems and show that it performs better, with respect to solution quality and/or computation time, than other self-organizing neural networks to the VRP presented in the literature. As well, it substantially reduces the gap to some classical Operations Research heuristics.
机译:本文在进化框架中研究了一种自组织系统,将其应用于欧几里德车辆路径问题(VRP)。从理论上讲,自组织旨在适应噪声数据,并根据需求波动赋予鲁棒性。通过选择进行进化旨在指导基于种群的搜索朝着接近最佳的解决方案发展。为了实现解决VRP的此类原则,该方法使用标准的自组织映射算法作为嵌入进化循环中的主要算子。我们对标准基准问题的方法进行了评估,结果表明,相对于解决方案质量和/或计算时间而言,该方法的性能要优于文献中针对VRP的其他自组织神经网络。同样,它也大大缩小了与某些经典运筹学启发法的差距。

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