Deep Q-network and knowledge jointly-driven ship operational efficiency optimization in a seaport
| Year of publication: |
2025
|
|---|---|
| Authors: | Guo, Wenqiang ; Zhang, Xinyu ; Ge, Ying-En ; Du, Yuquan |
| Published in: |
Transportation research : an international journal. - Oxford : Pergamon, Elsevier Science, ISSN 1878-5794, ZDB-ID 2013782-5. - Vol. 197.2025, Art.-No. 104046, p. 1-29
|
| Subject: | Cooperative metaheuristic algorithm | Deep Q-network | Knowledge | Port Call Optimization | Ship operational efficiency | Hafen | Port | Mathematische Optimierung | Mathematical programming | Operations Research | Operations research | Effizienz | Efficiency | Wissensmanagement | Knowledge management | Schifffahrt | Shipping | Algorithmus | Algorithm | Data-Envelopment-Analyse | Data envelopment analysis | Hafenwirtschaft | Port management |
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