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An age layered population structure genetic algorithm for the multi-depot vehicle problem

机译:多仓库车辆问题的年龄分层种群结构遗传算法

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The vehicle routing problem is experienced in several industries such as transportation, distribution and logistics. We study the Multi-depot vehicle routing problem (MDVRP) a variant of the classical VRP with several depots and customers as a multi-objective problem where both the number of vehicles and total distance travelled are minimized simultaneously. A multipopulation structure, i.e., the age layered population structure genetic algorithms (ALPS-GA) with inter-layer transfer strategies is proposed. An empirical study is carried out using well-known MDVRP benchmark problems and using both the weighted sum and Pareto ranking fitness evaluation strategies. A comparative study with previously published genetic algorithms results shows the effectiveness of the proposed ALPS-GA approach.
机译:车辆路线问题在运输,分销和物流等多个行业中都遇到过。我们将多仓库车辆路径问题(MDVRP)作为具有多个仓库和客户的经典VRP的变体进行了研究,这是一个多目标问题,其中车辆数量和总行驶距离同时最小化。提出了一种多种群结构,即具有层间转移策略的年龄分层人口结构遗传算法(ALPS-GA)。使用众所周知的MDVRP基准问题,并使用加权和和Pareto排序适应性评估策略,进行了一项实证研究。与先前发布的遗传算法结果进行的比较研究表明,提出的ALPS-GA方法是有效的。

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