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A Big-Data-Analytics Framework for Supporting Logistics Problems in Smart-City Environments

机译:支持智能城市环境中物流问题的大数据分析框架

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Containers delivery management is a problem widely studied. Typically, it concerns the container movement on a truck from ships to factories or wholesalers and vice-versa. As there is an increasing interest in shipping goods by container, and that delivery points can be far from railways in various areas of interest, it is important to evaluate techniques for managing container transport that involves several days. The time horizon considered is a whole working week, rather than a single day as in classical drayage problems. Truck fleet management companies are typically interested in such optimization, as they plan how to match their truck to the incoming transportation order. This planning is a relevant both for strategical consideration and operational ones, as prices of transportation orders strictly depends on how they are fulfilled. It is worth noting that, from a mathematical point of view, this is an NP-Hard problem. In this paper, a Decision Support System for managing the tasks to be assigned to each truck of a fleet is presented, in order to optimize the number of transportation order fulfilled in a week. The proposed system implements a hybrid optimization algorithm capable of improving the performances typically presented in literature. The proposed heuristic implements an hybrid genetic algorithm that generate chains of consecutive orders that can be executed by a truck. Moreover, it uses an assignment algorithm based to evaluate the optimal solution on the selected order chains.
机译:集装箱运送管理是一个广泛研究的问题。通常,它涉及卡车上的集装箱从船到工厂或批发商的运输,反之亦然。由于人们越来越关注通过集装箱运输货物,并且在各个感兴趣的领域交货点都可能远离铁路,因此评估涉及数天的集装箱运输管理技术非常重要。所考虑的时间范围是整个工作周,而不是传统的拖曳问题中的一天。卡车车队管理公司通常会对这种优化感兴趣,因为他们计划如何将其卡车与传入的运输订单相匹配。此计划对于战略考虑和运营考虑都是相关的,因为运输订单的价格严格取决于订单的履行方式。值得注意的是,从数学的角度来看,这是一个NP-Hard问题。在本文中,提出了一种决策支持系统,用于管理要分配给车队的每辆卡车的任务,以优化一周内完成的运输订单数量。提出的系统实现了一种混合优化算法,能够改善文献中通常提出的性能。提出的启发式算法实现了一种混合遗传算法,该算法生成可以由卡车执行的连续订单链。此外,它使用基于分配的算法来评估所选订单链上的最佳解决方案。

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