计算机科学
盈利能力指数
供应链
随机规划
运筹学
存货理论
提前期
线性规划
利润(经济学)
强化学习
库存管理
供应链管理
数学优化
Python(编程语言)
库存控制
供应链网络
运营管理
经济
微观经济学
业务
人工智能
数学
营销
财务
操作系统
算法
作者
Héctor D. Pérez,Christian D. Hubbs,Can Li,Ignacio E. Grossmann
出处
期刊:Processes
[Multidisciplinary Digital Publishing Institute]
日期:2021-01-06
卷期号:9 (1): 102-102
被引量:47
摘要
An inventory management problem is addressed for a make-to-order supply chain that has inventory holding and/or manufacturing locations at each node. The lead times between nodes and production capacity limits are heterogeneous across the network. This study focuses on a single product, a multi-period centralized system in which a retailer is subject to an uncertain stationary consumer demand at each time period. Two sales scenarios are considered for any unfulfilled demand: backlogging or lost sales. The daily inventory replenishment requests from immediate suppliers throughout the network are modeled and optimized using three different approaches: (1) deterministic linear programming, (2) multi-stage stochastic linear programming, and (3) reinforcement learning. The performance of the three methods is compared and contrasted in terms of profit (reward), service level, and inventory profiles throughout the supply chain. The proposed optimization strategies are tested in a stochastic simulation environment that was built upon the open-source OR-Gym Python package. The results indicate that, of the three approaches, stochastic modeling yields the largest increase in profit, whereas reinforcement learning creates more balanced inventory policies that would potentially respond well to network disruptions. Furthermore, deterministic models perform well in determining dynamic reorder policies that are comparable to reinforcement learning in terms of their profitability.
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