Multi-agent deep reinforcement learning for multi-echelon inventory management
| Year of publication: |
2025
|
|---|---|
| Authors: | Liu, Xiaotian ; Hu, Ming ; Peng, Yijie ; Yang, Yaodong |
| Published in: |
Production and operations management : the flagship research journal of the Production and Operations Management Society. - London : Sage Publications, ISSN 1937-5956, ZDB-ID 2151364-8. - Vol. 34.2025, 7, p. 1836-1856
|
| Subject: | Multi-Echelon Inventory Management | Multi-Agent Reinforcement Learning | Bullwhip Effect | Agentenbasierte Modellierung | Agent-based modeling | Bullwhip-Effekt | Bullwhip effect | Bestandsmanagement | Inventory management | Lagermanagement | Warehouse management | Lieferkette | Supply chain | Lagerhaltungsmodell | Inventory model | Lernen | Learning | Theorie | Theory |
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