On the value of shipment consolidation and machine learning techniques for the optimal design of a multimodal logistics network
Year of publication: |
2024
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Authors: | Oguntola, Ibrahim O. ; Ülkü, M. Ali ; Saif, Ahmed ; Engau, Alexander |
Published in: |
INFOR : information systems and operational research. - Abingdon : Taylor & Francis Group, ISSN 1916-0615, ZDB-ID 1468358-1. - Vol. 62.2024, 1, p. 1-52
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Subject: | freight transportation | machine learning | multi-criteria decision-making | Optimization | stochastic programming | supply chain sustainability | Künstliche Intelligenz | Artificial intelligence | Lieferkette | Supply chain | Mathematische Optimierung | Mathematical programming | Multikriterielle Entscheidungsanalyse | Multi-criteria analysis | Logistik | Logistics | Logistikunternehmen | Logistics provider | Algorithmus | Algorithm | Güterverkehr | Freight transport | Theorie | Theory |
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