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DCA for solving the scheduling of lifting vehicle in an automated port container terminal

机译:DCA解决自动港口集装箱码头中起重车辆的调度问题

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摘要

The container was introduced as a universal carrier for various goods in the1960s and soon became a standard worldwide transportation. The competitiveness of a container seaport is marked by different success factors, particularly the time in port for ships. Operational problems of container terminals is divided into several problems, such as assignment of vessels, loading/unloading and storage of the containers, quay cranes scheduling cite, planning yard cranes cite and assignment of storage containers cite. In this work, the study will focus on piloting yard trucks. Two different types of vehicles can be used, namely automated guided vehicles (AGVs) and lifting vehicles (LVs). An AGV receives a container from a quay crane and transports containers over fixed path. LVs are capable of lifting a container from the ground by itself. The model that we consider is formulated as a mixed integer programming problem, and the difficulty arises when the number of binary variables increases. There are a lot of algorithms designed for mixed integer programming problem such as Branch and Bound method, cutting plane algorithm,... By using an exact penalty technique we treat this problem as a DC program in the context of continuous optimization. Further, we combine the DCA with the classical Branch and Bound method for finding global solutions.
机译:该容器在1960年代被引入为各种货物的通用运输工具,并很快成为世界范围内的标准运输工具。集装箱海港的竞争力以不同的成功因素为特征,尤其是船舶在港口停留的时间。集装箱码头的操作问题分为几个问题,例如船只的分配,集装箱的装卸和存储,码头起重机的调度引用,规划堆场起重机的引用以及存储容器的引用。在这项工作中,该研究将集中于驾驶院子卡车。可以使用两种不同类型的车辆,即自动引导车辆(AGV)和起重车辆(LV)。 AGV从码头起重机接收集装箱并通过固定路径运输集装箱。 LV能够自行将容器从地面抬起。我们考虑的模型被公式化为混合整数规划问题,并且当二进制变量的数量增加时会出现困难。针对混合整数编程问题,设计了很多算法,例如Br​​anch and Bound方法,切割平面算法等。通过使用精确罚分技术,我们在连续优化的情况下将此问题视为DC程序。此外,我们将DCA与经典的Branch and Bound方法结合起来以找到全局解决方案。

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