Optimization Models for Autonomous Transfer Hub Networks
Autonomous trucks are expected to fundamentally transform the freight transportation industry. In particular, Autonomous Transfer Hub Networks (ATHN), which combine autonomous trucks on middle miles with human-driven on the first and last miles, are seen as the most likely deployment pathway of this...
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Zusammenfassung: | Autonomous trucks are expected to fundamentally transform the freight
transportation industry. In particular, Autonomous Transfer Hub Networks
(ATHN), which combine autonomous trucks on middle miles with human-driven on
the first and last miles, are seen as the most likely deployment pathway of
this technology. This paper presents three methods to optimize ATHN operations
and compares them: a constraint-programming model, a column-generation
approach, and a bespoke network flow method. Results on a real case study
indicate that the network flow model is highly scalable and outperforms the
other two approaches by significant margins. |
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DOI: | 10.48550/arxiv.2201.06137 |