A survey of the opportunities and challenges of supervised machine learning in maritime risk analysis
A survey of the opportunities and challenges of supervised machine learning in maritime risk analysis
Identifying and assessing the likelihood and consequences of maritime accidents has been a key focus of research within the maritime industry. However, conventional methods utilised for maritime risk assessment have been dominated by a few methodologies each of which have recognised weaknesses. Given the growing attention that supervised machine learning and big data applications for safety assessments have been receiving in other disciplines, a comprehensive review of the academic literature on this topic in the maritime domain has been conducted. The review encapsulates the prediction of accident occurrence, accident severity, ship detentions and ship collision risk. In particular, the purpose, methods, datasets and features of such studies are compared to better understand how such an approach can be applied in practice and its relative merits. Several key challenges within these themes are also identified, such as the availability and representativeness of the datasets and methodological challenges associated with transparency, model development and results evaluation. Whilst focused within the maritime domain, many of these findings are equally relevant to other transportation topics. This work, therefore, highlights both novel applications for applying these techniques to maritime safety and key challenges that warrant further research in order to strengthen this methodological approach.
AIS data, Machine learning, accidents, maritime, navigation safety, risk assessment
108-130
Rawson, Andrew, David
2f5d38d7-f4c9-45f5-a8de-c7f91b8f68c7
Brito, Mario
82e798e7-e032-4841-992e-81c6f13a9e6c
2 January 2023
Rawson, Andrew, David
2f5d38d7-f4c9-45f5-a8de-c7f91b8f68c7
Brito, Mario
82e798e7-e032-4841-992e-81c6f13a9e6c
Rawson, Andrew, David and Brito, Mario
(2023)
A survey of the opportunities and challenges of supervised machine learning in maritime risk analysis.
Transport Reviews, 43 (1), .
(doi:10.1080/01441647.2022.2036864).
Abstract
Identifying and assessing the likelihood and consequences of maritime accidents has been a key focus of research within the maritime industry. However, conventional methods utilised for maritime risk assessment have been dominated by a few methodologies each of which have recognised weaknesses. Given the growing attention that supervised machine learning and big data applications for safety assessments have been receiving in other disciplines, a comprehensive review of the academic literature on this topic in the maritime domain has been conducted. The review encapsulates the prediction of accident occurrence, accident severity, ship detentions and ship collision risk. In particular, the purpose, methods, datasets and features of such studies are compared to better understand how such an approach can be applied in practice and its relative merits. Several key challenges within these themes are also identified, such as the availability and representativeness of the datasets and methodological challenges associated with transparency, model development and results evaluation. Whilst focused within the maritime domain, many of these findings are equally relevant to other transportation topics. This work, therefore, highlights both novel applications for applying these techniques to maritime safety and key challenges that warrant further research in order to strengthen this methodological approach.
Text
A survey of the opportunities and challenges of supervised machine learning in maritime risk analysis
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More information
Accepted/In Press date: 25 January 2022
Published date: 2 January 2023
Additional Information:
Funding Information:
This work was supported by Horizon 2020 Framework Programme [grant number 723526]; Southampton Marine and Maritime Institute.
Publisher Copyright:
© 2022 The Author(s). Published by Informa UK Limited, trading as Taylor & Francis Group.
Keywords:
AIS data, Machine learning, accidents, maritime, navigation safety, risk assessment
Identifiers
Local EPrints ID: 454729
URI: http://eprints.soton.ac.uk/id/eprint/454729
ISSN: 0144-1647
PURE UUID: 1caab839-25d2-4179-9751-e3267f83bb34
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Date deposited: 22 Feb 2022 17:35
Last modified: 17 Mar 2024 03:14
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Author:
Andrew, David Rawson
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