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Reinforcement Learning for Optimizing Can-Order Policy with the Rolling Horizon Methodopen access

Authors
노지성
Issue Date
Jul-2023
Publisher
MDPI AG
Keywords
can-order policy; mixed-integer linear programming; reinforcement learning; rolling horizon method; inventory management
Citation
Systems, v.11, no.7, pp 350 - 364
Pages
15
Indexed
SSCI
SCOPUS
Journal Title
Systems
Volume
11
Number
7
Start Page
350
End Page
364
URI
https://scholarworks.bwise.kr/erica/handle/2021.sw.erica/114569
DOI
10.3390/systems11070350
ISSN
2079-8954
Abstract
This study presents a novel approach to a mixed-integer linear programming (MILP) model for periodic inventory management that combines reinforcement learning algorithms. The rolling horizon method (RHM) is a multi-period optimization approach that is applied to handle new information in updated markets. The RHM faces a limitation in easily determining a prediction horizon; to overcome this, a dynamic RHM is developed in which RL algorithms optimize the prediction horizon of the RHM. The state vector consisted of the order-up-to-level, real demand, total cost, holding cost, and backorder cost, whereas the action included the prediction horizon and forecasting demand for the next time step. The performance of the proposed model was validated through two experiments conducted in cases with stable and uncertain demand patterns. The results showed the effectiveness of the proposed approach in inventory management, particularly when the proximal policy optimization (PPO) algorithm was used for training compared with other reinforcement learning algorithms. This study signifies important advancements in both the theoretical and practical aspects of multi-item inventory management.
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