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Transshipment service through crossdocks with both soft and hard time windows

机译:通过带有软时间窗和硬时间窗的跨码头转运服务

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摘要

Recently, crossdocking techniques have been successfully applied in responsive supply chain management. However, most researches focused on physical layout of a cross-dock, or scheduling operations within a crossdock. In this paper, we study a multi-crossdock transshipment service problem with both soft and hard time windows. The flows from suppliers to customers via the crossdocks are constrained by fixed transportation schedules. Cargos can be delayed and consolidated in crossdocks, and both suppliers and customers have specific hard time windows. In addition to hard time windows, customers also have less-restrictive time windows, called soft time windows. The problem to minimize the total cost of the multi-crossdock distribution network, including transportation cost, inventory handling cost and penalty cost, can be proved to be NP-hard in the strong sense and hence efficient heuristics are desired. We propose two types of meta-heuristic algorithms, called Adaptive Tabu Search and Adaptive Genetic Algorithm, respectively, to solve the problem efficiently. We conduct extensive experiments and the results show that both of them outperform CPLEX solver and provide fairly good solutions within realistic timescales. We also perform sensitivity analysis and obtain a number of managerial insights.
机译:最近,交叉配送技术已成功应用于响应式供应链管理中。但是,大多数研究集中在跨坞的物理布局或调度跨坞内的操作上。在本文中,我们研究了具有软时间窗和硬时间窗的多跨码头转运服务问题。通过固定码头从供应商流向客户的流量受到固定运输时间表的限制。货物可能会延误并在跨码头合并,并且供应商和客户都有特定的困难时段。除了硬性时间窗口外,客户还具有较少限制的时间窗口,称为软性时间窗口。可以证明使多码头配送网络的总成本(包括运输成本,库存处理成本和罚款成本)最小化的问题在严格意义上被证明是NP难题,因此需要有效的启发式方法。为了有效地解决该问题,我们提出了两种类型的元启发式算法,分别称为自适应禁忌搜索和自适应遗传算法。我们进行了广泛的实验,结果表明它们两者都优于CPLEX求解器,并在现实的时间范围内提供了相当不错的解决方案。我们还进行敏感性分析并获得许多管理方面的见解。

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