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首页> 外文期刊>Journal of Industrial Engineering International >Solving a bi-objective mathematical model for location-routing problem with time windows in multi-echelon reverse logistics using metaheuristic procedure
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Solving a bi-objective mathematical model for location-routing problem with time windows in multi-echelon reverse logistics using metaheuristic procedure

机译:用元启发式方法求解多级逆向物流中带时间窗的选址问题的双目标数学模型

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During the last decade, the stringent pressures from environmental and social requirements have spurred an interest in designing a reverse logistics (RL) network. The success of a logistics system may depend on the decisions of the facilities locations and vehicle routings. The location-routing problem (LRP) simultaneously locates the facilities and designs the travel routes for vehicles among established facilities and existing demand points. In this paper, the location-routing problem with time window (LRPTW) and homogeneous fleet type and designing a multi-echelon, and capacitated reverse logistics network, are considered which may arise in many real-life situations in logistics management. Our proposed RL network consists of hybrid collection/inspection centers, recovery centers and disposal centers. Here, we present a new bi-objective mathematical programming (BOMP) for LRPTW in reverse logistic. Since this type of problem is NP-hard, the non-dominated sorting genetic algorithm II (NSGA-II) is proposed to obtain the Pareto frontier for the given problem. Several numerical examples are presented to illustrate the effectiveness of the proposed model and algorithm. Also, the present work is an effort to effectively implement the ε-constraint method in GAMS software for producing the Pareto-optimal solutions in a BOMP. The results of the proposed algorithm have been compared with the ε-constraint method. The computational results show that the ε-constraint method is able to solve small-size instances to optimality within reasonable computing times, and for medium-to-large-sized problems, the proposed NSGA-II works better than the ε-constraint.
机译:在过去的十年中,环境和社会要求带来的巨大压力激发了人们对设计逆向物流(RL)网络的兴趣。物流系统的成功可能取决于设施位置和车辆路线的决定。位置路由问题(LRP)同时定位设施,并在既定设施和现有需求点之间设计车辆的行驶路线。在本文中,考虑了在许多现实生活中的物流管理中可能会出现的带有时间窗(LRPTW)和同质车队类型的选址路由问题,并设计了一个多级,容量受限的逆向物流网络。我们建议的RL网络由混合收集/检查中心,回收中心和处置中心组成。在这里,我们提出了一种用于逆向物流中LRPTW的新的双目标数学编程(BOMP)。由于这种类型的问题是NP难题,因此提出了一种非支配的排序遗传算法II(NSGA-II),以获得给定问题的Pareto边界。给出了几个数值示例,以说明所提出的模型和算法的有效性。而且,当前的工作是努力在GAMS软件中有效地实现ε约束方法,以在BOMP中产生帕累托最优解。将该算法的结果与ε约束方法进行了比较。计算结果表明,ε约束方法能够在合理的计算时间内将小尺寸实例求解为最优,对于中大型问题,所提出的NSGA-II比ε约束效果更好。

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