A reinforcement learning-based approach for solving multi-agent job shop scheduling problem
| Year of publication: |
2025
|
|---|---|
| Authors: | Dong, Zhuoran ; Ren, Tao ; Qi, Fang ; Weng, Jiacheng ; Bai, Danyu ; Yang, Jie ; Wu, Chin-Chia |
| Published in: |
International journal of production research. - London [u.a.] : Taylor & Francis, ISSN 1366-588X, ZDB-ID 1485085-0. - Vol. 63.2025, 10, p. 3512-3537
|
| Subject: | artificial bee colony algorithm | deep reinforcement learning | job shop scheduling | Multi-agent | release dates | transformer | Scheduling-Verfahren | Scheduling problem | Agentenbasierte Modellierung | Agent-based modeling | Algorithmus | Algorithm | Theorie | Theory | Künstliche Intelligenz | Artificial intelligence | Produktionssteuerung | Production control | Heuristik | Heuristics |
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