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The Delivery Dispatching Problem with Time Windows for Urban Consolidation Centers

机译:具有时间窗的城市整合中心的交付调度问题

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This paper addresses the dispatching problem faced by an urban consolidation center. The center receives orders according to a stochastic arrival process and dispatches them in batches for the last-mile distribution. The operator of the center aims to find the cost-minimizing consolidation policy, depending on the orders at hand, preannounced orders, and stochastic arrivals. We present this problem as a variant of the delivery dispatching problem that includes dispatch windows and define a corresponding Markov decision model. Larger instances of the problem suffer from intractably large state-, outcome-, and action spaces. We propose an approximate dynamic programming (ADP) algorithm that can handle such instances, using a linear value function approximation to estimate the downstream costs. To design the value function approximation, we construct various sets of basis functions, numerically evaluate their suitability, and discuss the properties of good basis functions for the dispatching problem. Numerical experiments on toy-sized instances show that the best set of basis functions approximates the optimal values with an error of less than 3%. To cope with large action spaces, we formulate an integer linear program to be used within our ADP algorithm. We evaluate the performance of ADP policies against four benchmark policies: two heuristic policies, a direct cost minimization policy, and a post-decision rollout policy. We test the performance of ADP on a variety of networks. ADP consistently outperforms the benchmark policies, performing particularly well when there is sufficient flexibility in dispatch times.
机译:本文解决了城市整合中心面临的调度问题。中心根据随机到达过程接收订单,并分批调度以进行最后一英里的分发。该中心的运营商旨在根据手头订单,预先宣布的订单和随机到货来找到成本最小的合并策略。我们将这个问题作为包括分派窗口的交付分派问题的变体提出,并定义相应的马尔可夫决策模型。问题的较大实例受困于巨大的状态,结果和行动空间。我们提出一种近似动态规划(ADP)算法,该算法可以使用线性值函数近似来估计下游成本,从而处理此类情况。为了设计值函数逼近,我们构造了各种基础函数集,对它们的适用性进行了数值评估,并讨论了用于调度问题的良好基础函数的性质。在玩具大小的实例上进行的数值实验表明,最佳的基函数集以小于3%的误差逼近最佳值。为了应付较大的动作空间,我们制定了一个整数线性程序以用于我们的ADP算法。我们根据四个基准策略评估ADP策略的性能:两个启发式策略,直接成本最小化策略和决策后推出策略。我们在各种网络上测试ADP的性能。 ADP始终优于基准策略,在调度时间有足够的灵活性时,性能尤其出色。

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