The use of Bayesian Belief Networks (BBNs) to probe deeper into railway safety management systems – two studies from Great Britain and Italy
The use of Bayesian Belief Networks (BBNs) to probe deeper into railway safety management systems – two studies from Great Britain and Italy
The importance of Safety Management Systems (SMS) to the railway industry is underlined by the fact that all organisations operating on UK railways are required by law to have one. Analysing SMSs can provide a reliable systemic tool to identify hazards and weaknesses within complex systems like the railway, making it possible to significantly increase safety, reducing the odds of near misses and accidents. However, there is little empirical research evidence to determine the impact on safety of a structured SMS. The current paper describes two studies which use Bayesian Belief Networks (BBN) to conceptualise SMSs and their impact on front-line performance. The paper presents the usefulness of BBNs to compare complex systems and reconcile cultural differences within the railway industry, identifying factors that are deemed vital within Italy and Britain. The two studies allowed us to identify the most influential factors within a SMS and how they interact with each other, as well as the strength of the identified relationships. A BBN is particularly useful in estimating how changing some of the node states (e.g., by making safety leadership present) affected the other factors. The current study showed that safety leadership has an impact on the SMSs of the British and Italian railway industries.
Humans, United Kingdom, Bayes Theorem, Accidents, Safety Management, Italy, Railroads
103968
Cooper, Alistair
260196bc-648a-4da7-9486-78c0a3bc5145
Mazzeo, Francesco
b7e4a6e7-4ecc-4674-bdd6-00118cdcd26d
Waterson, Patrick
708fcc53-ddcc-45d1-9360-7a92b815cb3b
Young, Mark S.
3f79589e-2000-4cb0-832a-6eba54f50130
Louis, Dominique
456ab8ca-3bc5-4d82-98e1-8da963c8c6a7
May 2023
Cooper, Alistair
260196bc-648a-4da7-9486-78c0a3bc5145
Mazzeo, Francesco
b7e4a6e7-4ecc-4674-bdd6-00118cdcd26d
Waterson, Patrick
708fcc53-ddcc-45d1-9360-7a92b815cb3b
Young, Mark S.
3f79589e-2000-4cb0-832a-6eba54f50130
Louis, Dominique
456ab8ca-3bc5-4d82-98e1-8da963c8c6a7
Cooper, Alistair, Mazzeo, Francesco, Waterson, Patrick, Young, Mark S. and Louis, Dominique
(2023)
The use of Bayesian Belief Networks (BBNs) to probe deeper into railway safety management systems – two studies from Great Britain and Italy.
Applied Ergonomics, 109, , [103968].
(doi:10.1016/j.apergo.2023.103968).
Abstract
The importance of Safety Management Systems (SMS) to the railway industry is underlined by the fact that all organisations operating on UK railways are required by law to have one. Analysing SMSs can provide a reliable systemic tool to identify hazards and weaknesses within complex systems like the railway, making it possible to significantly increase safety, reducing the odds of near misses and accidents. However, there is little empirical research evidence to determine the impact on safety of a structured SMS. The current paper describes two studies which use Bayesian Belief Networks (BBN) to conceptualise SMSs and their impact on front-line performance. The paper presents the usefulness of BBNs to compare complex systems and reconcile cultural differences within the railway industry, identifying factors that are deemed vital within Italy and Britain. The two studies allowed us to identify the most influential factors within a SMS and how they interact with each other, as well as the strength of the identified relationships. A BBN is particularly useful in estimating how changing some of the node states (e.g., by making safety leadership present) affected the other factors. The current study showed that safety leadership has an impact on the SMSs of the British and Italian railway industries.
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Accepted/In Press date: 10 January 2023
e-pub ahead of print date: 31 January 2023
Published date: May 2023
Additional Information:
Copyright © 2023 Elsevier Ltd. All rights reserved.
Keywords:
Humans, United Kingdom, Bayes Theorem, Accidents, Safety Management, Italy, Railroads
Identifiers
Local EPrints ID: 480019
URI: http://eprints.soton.ac.uk/id/eprint/480019
ISSN: 0003-6870
PURE UUID: f938e035-8787-4c18-bf83-bac73f092294
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Date deposited: 01 Aug 2023 16:34
Last modified: 10 Jan 2025 03:16
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Contributors
Author:
Alistair Cooper
Author:
Francesco Mazzeo
Author:
Patrick Waterson
Author:
Mark S. Young
Author:
Dominique Louis
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