Research on VRPTW optimizing based on k-means clustering and IGA for electronic commerce

Chunyu Ren
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引用次数: 2

Abstract

Vehicle route problem with time windows of logistics distribution is the important step optimizing logistics distribution and indispensability content of electronic commerce activity. For VRPTW optimization under electronic commerce is a special problem that includes many aspects, hybrid strategy is usually introduced to classify and optimize route by two artificial intelligent methods. Therefore, the improved two-phase algorithm needs to be adopted to get solutions. Namely, the customer group can be divided into several regions using k-means algorithm in first phase. And in every region it can be decomposed into small scale subsets according with some restraint conditions using scan algorithm. In second phase, it is route optimization problems of several single TSPTW model. Therefore, the study proposes the improved genetic algorithm. Improved partially matched crossover operators can avoid destroying good gene parts during the course of crossover so as that the algorithm can be convergent to the optimization as whole. According to the traditional genetic algorithm shortcomings of slowly convergent speed, weakly partial searching ability and easily premature, the study adopts the strategy of protecting gene as whole, introduce adopts 2-exchange mutation operator, combine hill-climbing algorithm and construct new genetic algorithm on basis of establishing model of optimizing vehicle route with time windows. New algorithm offers a very effective method to solve problem of distribution vehicle schedule with time windows through the test.
基于k-均值聚类和IGA的电子商务VRPTW优化研究
带时间窗口的物流配送车辆路线问题是优化物流配送的重要步骤,也是电子商务活动不可缺少的内容。由于电子商务下的VRPTW优化是一个涉及多方面的特殊问题,通常采用混合策略,通过两种人工智能方法对路径进行分类和优化。因此,需要采用改进的两阶段算法来求解。即在第一阶段使用k-means算法将客户群体划分为若干区域。在每个区域内,根据一定的约束条件,用扫描算法将其分解成小尺度的子集。第二阶段是多个单一TSPTW模型的路径优化问题。因此,本研究提出了改进的遗传算法。改进的部分匹配交叉算子避免了交叉过程中良好的基因部分被破坏,使算法收敛到整体优化。针对传统遗传算法收敛速度慢、局部搜索能力弱、易早熟等缺点,采用整体保护基因的策略,引入2-交换突变算子,结合爬坡算法,在建立带时间窗的车辆路径优化模型的基础上构建新的遗传算法。通过试验,新算法为解决带时间窗的配送车辆调度问题提供了一种非常有效的方法。
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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