基于提前供应信息的保修库存优化

IF 0.1 4区 工程技术 Q4 ENGINEERING, MANUFACTURING
J. Khawam, W. H. Hausman
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引用次数: 0

摘要

在保修库存管理中,客户退回据称有故障的产品以进行更换。有用的产品可以通过测试和/或再制造过程回收。公司必须决定每期从生产线上购买的新产品的数量。该决策取决于一系列复杂因素,包括随机需求率、测试和再制造过程的概率收益率、随机反向渠道和公司采购决策产生的多种供应来源,以及有关反向管道库存的不同信息水平。我们将后一种概念称为提前供应信息(ASI)。在本文中,我们将所有这些元素结合起来,形成一个模型来分析这些战术决策和ASI在这种情况下的价值。我们使用动态规划来开发分析模型,以确定在不同级别的反向通道可见性下的最优排序决策。维度的诅咒使我们无法在所有情况下找到最优策略;因此,我们使用聚合状态空间开发启发式动态程序,该空间允许可处理的模型,同时结合从管道可见性中获得的信息。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Warranty Inventory Optimization with Advance Supply Information
In warranty inventory management, customers return allegedly malfunctioning products for replacement. Useful products may be recovered through testing and/or remanufacturing processes. The company must decide on the number of new units to purchase from a production line each period. This decision depends on an array of complex factors including stochastic demand rates, probabilistic yields from both the testing and remanufacturing processes, multiple sources of supply originating from both the stochastic reverse channel and the company's purchasing decisions, and varying levels of information regarding reverse pipeline inventory; we call this latter concept Advance Supply Information (ASI).In this paper we combine all of these elements to formulate a model that analyzes these tactical decisions and the value of ASI in this setting. We use dynamic programming to develop analytical models that determine the optimal ordering decisions under various levels of reverse channel visibility. The curse of dimensionality prohibits us from solving for optimal policies in all cases; thus, we develop heuristic dynamic programs using an aggregated state space that allow for tractable models while incorporating information gained from the pipeline visibility.
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来源期刊
Manufacturing Engineering
Manufacturing Engineering 工程技术-工程:制造
自引率
0.00%
发文量
0
审稿时长
6-12 weeks
期刊介绍: Information not localized
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