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Scheduling trucks in cross-docking systems: Robust meta-heuristics

机译:跨站台系统中的调度卡车:鲁棒的元启发式

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摘要

Cross-docking is a logistics technique that minimizes the storage and order picking functions of a ware-house while still allowing it to serve its receiving and shipping functions. The idea is to transfer shipments directly from incoming to outgoing trailers without storage in between. In this paper we apply five meta-heuristic algorithms: genetic algorithm (GA), tabu search (TS), simulated annealing (SA), elec-tromagnetism-like algorithm (EMA) and variable neighbourhood search (VNS) to schedule the trucks in cross-dock systems such that minimize total operation time when a temporary storage buffer to hold items temporarily is located at the shipping dock. A design procedure is developed to specify and adjust significant parameters for CA, TS, SA, EMA and VNS. The proposed procedure is based on the response surface methodology (RSM). Two different types of objective functions are considered to develop multiple objective decision making model. For the purpose of comparing meta-heuristics, makespan and CPU time are considered as two response variables representing effectiveness and efficiency of the algorithms. Based on obtained results, VNS is recommended for scheduling trucks in cross-docking systems. Also, since for real size problems, it is not possible to reach optimum solution, a lower bound is presented to evaluate the resultant solutions.
机译:交叉配送是一种物流技术,可以最大程度地减少仓库的存储和订单拣选功能,同时仍允许其履行其收货和运输功能。这个想法是将货物直接从进站拖车转移到出站拖车,而无需在它们之间进行存储。在本文中,我们应用了五种元启发式算法:遗传算法(GA),禁忌搜索(TS),模拟退火(SA),类似电磁的算法(EMA)和可变邻域搜索(VNS)来调度卡车在跨码头系统,这样可以在将临时存放物品的临时存储缓冲区位于装运码头时最大程度地减少总操作时间。开发设计程序以指定和调整CA,TS,SA,EMA和VNS的重要参数。所建议的程序基于响应面方法(RSM)。考虑使用两种不同类型的目标函数来开发多目标决策模型。为了比较元启发式算法,将makepan和CPU时间视为代表算法有效性和效率的两个响应变量。根据获得的结果,建议使用VNS在交叉对接系统中调度卡车。同样,由于对于实际尺寸问题,不可能达到最佳解,因此提出了一个下限来评估所得解。

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