Dynamic Inventory Repositioning in On-Demand Rental Networks

S. Benjaafar, Daniel R. Jiang, Xiang Li, Xiaobo Li
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引用次数: 10

Abstract

We consider a rental service with a fixed number of rental units distributed across multiple locations. The units are accessed by customers without prior reservation and on an on-demand basis. Customers can decide on how long to keep a unit and where to return it. Because of the randomness in demand and in returns, there is a need to periodically reposition inventory away from some locations and into others. In deciding on how much inventory to reposition and where, the system manager balances potential lost sales with repositioning costs. Although the problem is increasingly common in applications involving on-demand rental services, not much is known about the nature of the optimal policy for systems with a general network structure or about effective approaches to solving the problem. In this paper, first, we show that the optimal policy in each period can be described in terms of a well-specified region over the state space. Within this region, it is optimal not to reposition any inventory, whereas, outside the region, it is optimal to reposition but only such that the system moves to a new state that is on the boundary of the no-repositioning region. We also provide a simple check for when a state is in the no-repositioning region. Second, we leverage the features of the optimal policy, along with properties of the optimal cost function, to propose a provably convergent approximate dynamic programming algorithm to tackle problems with a large number of dimensions. This paper was accepted by David Simchi-Levi, optimization.
按需租赁网络中的动态库存重新定位
我们考虑在多个地点分布固定数量的租赁单元的租赁服务。客户无需事先预约即可按需使用。顾客可以决定保留多长时间以及在哪里退货。由于需求和回报的随机性,有必要定期将库存从一些地点转移到另一些地点。在决定要重新定位多少库存以及在哪里重新定位时,系统经理要平衡潜在的销售损失和重新定位成本。虽然这个问题在涉及按需租赁服务的应用程序中越来越普遍,但对于具有一般网络结构的系统的最佳策略的性质或解决这个问题的有效方法所知不多。在本文中,我们首先证明了每个时期的最优策略可以用状态空间上的一个指定区域来描述。在该区域内,不重新定位任何库存是最优的,而在该区域外,重新定位是最优的,但仅使系统移动到位于无重新定位区域边界上的新状态。我们还提供了一个简单的检查状态何时处于无重定位区域。其次,我们利用最优策略的特征,以及最优成本函数的性质,提出了一个可证明收敛的近似动态规划算法,以解决具有大量维度的问题。本文被David Simchi-Levi接受,优化。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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