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  4. Robust berth scheduling using machine learning for vessel arrival time prediction
 
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Robust berth scheduling using machine learning for vessel arrival time prediction

Citation Link: https://doi.org/10.15480/882.4854
Publikationstyp
Journal Article
Date Issued
2023-03
Sprache
English
Author(s)
Kolley, Lorenz  orcid-logo
Rückert, Nicolas 
Kastner, Marvin  orcid-logo
Jahn, Carlos  orcid-logo
Fischer, Kathrin  orcid-logo
Institut
Quantitative Unternehmensforschung und Wirtschaftsinformatik W-4  
Maritime Logistik W-12  
TORE-DOI
10.15480/882.4854
TORE-URI
http://hdl.handle.net/11420/13962
Journal
Flexible services and manufacturing journal  
Volume
35
Start Page
29
End Page
69
Citation
Flexible Services and Manufacturing Journal 35: 29–69 (2023-03)
Publisher DOI
10.1007/s10696-022-09462-x
Scopus ID
2-s2.0-85137204772
Publisher
Springer
In this work, the potentials of data-driven optimization for the well-known berth allocation problem are studied. The aim of robust berth scheduling is to derive conflict-free vessel assignments at the quay of a terminal, taking into account uncertainty regarding the actual vessel arrival times which may result from external influences as, e.g., cross wind and sea current. In order to achieve robustness, four different Machine Learning methods-from linear regression to an artificial neural network-are employed for vessel arrival time prediction in this work. The different Machine Learning methods are analysed and evaluated with respect to their forecast quality. The calculation and use of so-called dynamic time buffers (DTBs), which are derived from the different AIS-based forecasts and whose length depends on the estimated forecast reliability, in the berth scheduling model enhance the robustness of the resulting schedules considerably, as is shown in an extensive numerical study. Furthermore, the results show that also rather simple Machine Learning approaches are able to reach high forecast accuracy. The optimization model does not only lead to more robust solutions, but also to less actual waiting times for the vessels and hence to an enhanced service quality, as can be shown by studying the resulting schedules for real vessel data. Moreover, it turns out that the accuracy of the resulting berthing schedules, measured as the deviation of planned and actually realisable schedules, exceeds the accuracy of all forecasts which underlines the usefulness of the DTB approach.
Subjects
(Arrival time) prediction
Berth allocation problem
Machine learning
Robust optimization
Uncertainty
MLE@TUHH
DDC Class
600: Technik
620: Ingenieurwissenschaften
Funding(s)
Projekt DEAL  
Funding Organisations
Behörde für Wissenschaft, Forschung und Gleichstellung  
Publication version
publishedVersion
Lizenz
https://creativecommons.org/licenses/by/4.0/
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