在线零售库存布局的项目聚合和列生成

Annie I. Chen, S. Graves
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引用次数: 5

摘要

问题定义:本文研究了网络零售商选择配送中心放置商品的问题。我们将这个问题表述为一个混合整数程序,该程序对数千或数百万件物品进行建模,这些物品将放置在数十个履行中心,并运往数十个客户区域。目标是在一个规划期内尽量减少运输和固定成本的总和。学术/实践相关性:一个好的安置计划可以显著降低运营成本,这对在线零售企业至关重要,因为它们的利润率通常很低。由于大量的物品和执行中心的固定成本和能力限制,使用现有的技术或现成的软件很难解决放置问题。方法:我们提出了一个大规模的优化框架,该框架将项目聚集到集群中,通过列生成解决集群级问题,并将解决方案分解为项目级放置计划。我们开发了最优性差距的先验界,并将该框架应用于包含1,000,000个项目的数值示例。结果:先验界提供了如何选择适当的聚合标准的见解。对于数值示例,我们的框架在几个小时内生成了一个接近最优的解决方案,显著优于近似现状的顺序放置启发式。管理启示:我们的研究为解决在线零售库存布局以及实践中类似的大规模优化问题提供了一种高效的计算方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Item Aggregation and Column Generation for Online-Retail Inventory Placement
Problem definition: This paper studies an online retailer’s problem of choosing fulfillment centers in which to place items. We formulate the problem as a mixed-integer program that models thousands or millions of items to be placed in dozens of fulfillment centers and shipped to dozens of customer regions. The objective is to minimize the sum of shipping and fixed costs over one planning period. Academic/practical relevance: A good placement plan can significantly reduce the operational cost, which is crucial for online-retail businesses because they often have a low profit margin. The placement problem can be difficult to solve with existing techniques or off-the-shelf software because of the large number of items and the fulfillment center fixed costs and capacity constraints. Methodology: We propose a large-scale optimization framework that aggregates items into clusters, solves the cluster-level problem with column generation, and disaggregates the solution into item-level placement plans. We develop an a priori bound on the optimality gap, and we also apply the framework to a numerical example that consists of 1,000,000 items. Results: The a priori bound provides insights on how to select the appropriate aggregation criteria. For the numerical example, our framework produces a near-optimal solution in a few hours, significantly outperforming a sequential placement heuristic that approximates the status quo. Managerial implications: Our study provides a computationally efficient approach for solving online-retail inventory placement as well as similar large-scale optimization problems in practice.
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