A multi-objective reinforcement learning approach for resequencing scheduling problems in automotive manufacturing systems
Year of publication: |
2023
|
---|---|
Authors: | Leng, Jinling ; Wang, Xingyuan ; Wu, Shiping ; Jin, Chun ; Tang, Meng ; Liu, Rui ; Vogl, Alexander ; Liu, Huiyu |
Published in: |
International journal of production research. - London [u.a.] : Taylor & Francis, ISSN 1366-588X, ZDB-ID 1485085-0. - Vol. 61.2023, 15, p. 5156-5175
|
Subject: | color-batching | multi-objective optimization | multi-objective reinforcement learning | Scheduling | sequence adherence | Scheduling-Verfahren | Scheduling problem | Multikriterielle Entscheidungsanalyse | Multi-criteria analysis | Lernprozess | Learning process | Produktionssteuerung | Production control | Theorie | Theory | Produktionssystem | Manufacturing system | Kfz-Industrie | Automotive industry | Lernen | Learning |
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