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Application of genetic algorithms to solve the multidepot vehicle routing problem

机译:遗传算法在解决多车场车辆路径问题中的应用

摘要

This paper deals with the optimization of vehicle routing problem in which multiple depots, multiple customers, and multiple products are considered. Since the total traveling time is not always restrictive as a time window constraint, the objective regarded in this paper comprises not only the cost due to the total traveling distance, but also the cost due to the total traveling time. We propose to use a stochastic search technique called fuzzy logic guided genetic algorithms (FLGA) to solve the problem. The role of fuzzy logic is to dynamically adjust the crossover rate and mutation rate after ten consecutive generations. In order to demonstrate the effectiveness of FLGA, a number of benchmark problems are used to examine its search performance. Also, several search methods, branch and bound, standard GA (i.e., without the guide of fuzzy logic), simulated annealing, and tabu search, are adopted to compare with FLGA in randomly generated data sets. Simulation results show that FLGA outperforms other search methods in all of three various scenarios.
机译:本文讨论了考虑多个仓库,多个客户和多个产品的车辆路径优化问题。由于总行驶时间并不总是受时间窗口约束的限制,因此本文考虑的目标不仅包括总行驶距离引起的成本,还包括总行驶时间引起的成本。我们建议使用一种称为模糊逻辑引导遗传算法(FLGA)的随机搜索技术来解决该问题。模糊逻辑的作用是在连续十代之后动态调整交叉率和变异率。为了证明FLGA的有效性,使用了许多基准问题来检查其搜索性能。而且,采用了几种搜索方法,即分支定界法,标准GA(即,在没有模糊逻辑指导的情况下),模拟退火法和禁忌搜索法,与FLGA在随机生成的数据集中进行比较。仿真结果表明,FLGA在三种情况下均优于其他搜索方法。

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