Reinforcement learning for logistics and supply chain management: Methodologies, state of the art, and future opportunities

With advances in technologies, data science techniques, and computing equipment, there has been rapidly increasing interest in the applications of reinforcement learning (RL) to address the challenges resulting from the evolving business and organisational operations in logistics and supply chain ma...

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Veröffentlicht in:Transportation research. Part E, Logistics and transportation review Logistics and transportation review, 2022-06, Vol.162, p.102712, Article 102712
Hauptverfasser: Yan, Yimo, Chow, Andy H.F., Ho, Chin Pang, Kuo, Yong-Hong, Wu, Qihao, Ying, Chengshuo
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Sprache:eng
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Zusammenfassung:With advances in technologies, data science techniques, and computing equipment, there has been rapidly increasing interest in the applications of reinforcement learning (RL) to address the challenges resulting from the evolving business and organisational operations in logistics and supply chain management (SCM). This paper aims to provide a comprehensive review of the development and applications of RL techniques in the field of logistics and SCM. We first provide an introduction to RL methodologies, followed by a classification of previous research studies by application. The state-of-the-art research is reviewed and the current challenges are discussed. It is found that Q-learning (QL) is the most popular RL approach adopted by these studies and the research on RL for urban logistics is growing in recent years due to the prevalence of E-commerce and last mile delivery. Finally, some potential directions are presented for future research. •An introduction to reinforcement learning methodologies is provided.•State-of-the-art applications for logistics and supply chain management are reviewed.•Current trends of reinforcement learning applications are presented.•Future directions for methods and applications are proposed.
ISSN:1366-5545
1878-5794
DOI:10.1016/j.tre.2022.102712