Can Deep Reinforcement Learning Improve Inventory Management? Performance on Dual Sourcing, Lost Sales and Multi-Echelon Problems

Joren Gijsbrechts, R. Boute, J. V. Mieghem, Dennis J. Zhang
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引用次数: 46

Abstract

Problem definition: Is deep reinforcement learning (DRL) effective at solving inventory problems? Academic/practical relevance: Given that DRL has successfully been applied in computer games and robotics, supply chain researchers and companies are interested in its potential in inventory management. We provide a rigorous performance evaluation of DRL in three classic and intractable inventory problems: lost sales, dual sourcing, and multi-echelon inventory management. Methodology: We model each inventory problem as a Markov decision process and apply and tune the Asynchronous Advantage Actor-Critic (A3C) DRL algorithm for a variety of parameter settings. Results: We demonstrate that the A3C algorithm can match the performance of the state-of-the-art heuristics and other approximate dynamic programming methods. Although the initial tuning was computationally demanding and time demanding, only small changes to the tuning parameters were needed for the other studied problems. Managerial implications: Our study provides evidence that DRL can effectively solve stationary inventory problems. This is especially promising when problem-dependent heuristics are lacking. Yet, generating structural policy insight or designing specialized policies that are (ideally provably) near optimal remains desirable.
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深度强化学习能改善库存管理吗?双源、销售损失和多梯队问题的绩效分析
问题定义:深度强化学习(DRL)在解决库存问题方面是否有效?学术/实际意义:鉴于DRL已成功地应用于电脑游戏和机器人,供应链研究人员和公司对其在库存管理方面的潜力感兴趣。我们在三个经典和棘手的库存问题:销售损失、双重采购和多级库存管理中提供了严格的DRL绩效评估。方法:我们将每个库存问题建模为马尔可夫决策过程,并针对各种参数设置应用和调整异步优势参与者-评论家(A3C) DRL算法。结果:我们证明了A3C算法可以媲美最先进的启发式和其他近似动态规划方法的性能。尽管初始调优需要大量的计算和时间,但对于其他研究的问题,只需要对调优参数进行微小的更改。管理启示:我们的研究提供了证据,证明DRL可以有效地解决固定库存问题。当缺乏问题依赖启发式时,这尤其有希望。然而,产生结构性政策见解或设计(理想情况下可证明)接近最优的专门政策仍然是可取的。
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