装配订货系统的渐近最优库存控制

Q1 Mathematics Stochastic Systems Pub Date : 2023-03-01 DOI:10.1287/stsy.2022.0099
Martin I. Reiman, Haohua Wan, Qiong Wang
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引用次数: 0

摘要

我们考虑具有一般物料清单和一般确定性交货时间的装配到订单(ATO)库存系统。未满足的需求总是积压。我们应用一个四步渐进框架来制定库存政策,以最小化长期平均预期总库存成本。我们的方法采用多阶段随机规划(SP)来建立库存成本的下界并确定库存控制的参数值。我们的补充政策偏离了传统的恒定基础库存政策,以适应不相同的交货时间。我们的组件分配策略根据积压成本、物料清单和组件可用性来区分需求。我们证明了我们的策略在扩散尺度上是渐近最优的,即随着最长提前期的增长,我们的策略下的平均成本与其下界之间的百分比差收敛于零。在发展这些结果的过程中,我们建立了一个广泛的随机跟踪模型,并证明了我们的策略的渐近最优性作为专门推论的一般收敛结果。资助:本研究基于美国国家科学基金会[Grant CMMI-1363314]支持的工作。
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Asymptotically Optimal Inventory Control for Assemble-to-Order Systems
We consider assemble-to-order (ATO) inventory systems with a general bill of materials and general deterministic lead times. Unsatisfied demands are always backlogged. We apply a four-step asymptotic framework to develop inventory policies for minimizing the long-run average expected total inventory cost. Our approach features a multistage stochastic program (SP) to establish a lower bound on the inventory cost and determine parameter values for inventory control. Our replenishment policy deviates from the conventional constant base stock policies to accommodate nonidentical lead times. Our component allocation policy differentiates demands based on backlog costs, bill of materials, and component availabilities. We prove that our policy is asymptotically optimal on the diffusion scale, that is, as the longest lead time grows, the percentage difference between the average cost under our policy and its lower bound converges to zero. In developing these results, we formulate a broad stochastic tracking model and prove general convergence results from which the asymptotic optimality of our policy follows as specialized corollaries. Funding: This study is based on work supported by the National Science Foundation [Grant CMMI-1363314].
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来源期刊
Stochastic Systems
Stochastic Systems Decision Sciences-Statistics, Probability and Uncertainty
CiteScore
3.70
自引率
0.00%
发文量
18
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