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A Practical Risk-Based Model for Early Warning of Seafarer Errors Using Integrated Bayesian Network and SPAR-H

HIGHLIGHTS: A BN version of the SPAR-H model is used to predict and warn of human errors to avoid maritime accidents and ensure the safety of seafarers. Performance-shaping factors (PSFs) are used as factors contributing to unsafe crew acts (UCAs). The conditional probabilities quantitatively descri...

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Autores principales: Zhang, Wenjun, Meng, Xiangkun, Yang, Xue, Lyu, Hongguang, Zhou, Xiang-Yu, Wang, Qingwu
Formato: Online Artículo Texto
Lenguaje:English
Publicado: MDPI 2022
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC9408227/
https://www.ncbi.nlm.nih.gov/pubmed/36011904
http://dx.doi.org/10.3390/ijerph191610271
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author Zhang, Wenjun
Meng, Xiangkun
Yang, Xue
Lyu, Hongguang
Zhou, Xiang-Yu
Wang, Qingwu
author_facet Zhang, Wenjun
Meng, Xiangkun
Yang, Xue
Lyu, Hongguang
Zhou, Xiang-Yu
Wang, Qingwu
author_sort Zhang, Wenjun
collection PubMed
description HIGHLIGHTS: A BN version of the SPAR-H model is used to predict and warn of human errors to avoid maritime accidents and ensure the safety of seafarers. Performance-shaping factors (PSFs) are used as factors contributing to unsafe crew acts (UCAs). The conditional probabilities quantitatively describe the relationships among PSFs, UCAs, and human errors. The method offers a point for translating the research model into practical application. ABSTRACT: Unsafe crew acts (UCAs) related to human errors are the main contributors to maritime accidents. The prediction of unsafe crew acts will provide an early warning for maritime accidents, which is significant to shipping companies. However, there exist gaps between the prediction models developed by researchers and those adopted by practitioners in human risk analysis (HRA) of the maritime industry. In addition, most research regarding human factors of maritime safety has concentrated on hazard identification or accident analysis, but not on early warning of UCAs. This paper proposes a Bayesian network (BN) version of the Standardized Plant Analysis Risk–Human Reliability Analysis (SPAR-H) method to predict the probability of seafarers’ unsafe acts. After the identification of performance-shaping factors (PSFs) that influence seafarers’ unsafe acts during navigation, the developed prediction model, which integrates the practicability of SPAR-H and the forward and backward inference functions of BN, is adopted to evaluate the probabilistic risk of unsafe acts and PSFs. The model can also be used when the available information is insufficient. Case studies demonstrate the practicability of the model in quantitatively predicting unsafe crew acts. The method allows evaluating whether a seafarer is capable of fulfilling their responsibility and providing an early warning for decision-makers, thereby avoiding human errors and sequentially preventing maritime accidents. The method can also be considered as a starting point for applying the efforts of HRA researchers to the real world for practitioners.
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spelling pubmed-94082272022-08-26 A Practical Risk-Based Model for Early Warning of Seafarer Errors Using Integrated Bayesian Network and SPAR-H Zhang, Wenjun Meng, Xiangkun Yang, Xue Lyu, Hongguang Zhou, Xiang-Yu Wang, Qingwu Int J Environ Res Public Health Article HIGHLIGHTS: A BN version of the SPAR-H model is used to predict and warn of human errors to avoid maritime accidents and ensure the safety of seafarers. Performance-shaping factors (PSFs) are used as factors contributing to unsafe crew acts (UCAs). The conditional probabilities quantitatively describe the relationships among PSFs, UCAs, and human errors. The method offers a point for translating the research model into practical application. ABSTRACT: Unsafe crew acts (UCAs) related to human errors are the main contributors to maritime accidents. The prediction of unsafe crew acts will provide an early warning for maritime accidents, which is significant to shipping companies. However, there exist gaps between the prediction models developed by researchers and those adopted by practitioners in human risk analysis (HRA) of the maritime industry. In addition, most research regarding human factors of maritime safety has concentrated on hazard identification or accident analysis, but not on early warning of UCAs. This paper proposes a Bayesian network (BN) version of the Standardized Plant Analysis Risk–Human Reliability Analysis (SPAR-H) method to predict the probability of seafarers’ unsafe acts. After the identification of performance-shaping factors (PSFs) that influence seafarers’ unsafe acts during navigation, the developed prediction model, which integrates the practicability of SPAR-H and the forward and backward inference functions of BN, is adopted to evaluate the probabilistic risk of unsafe acts and PSFs. The model can also be used when the available information is insufficient. Case studies demonstrate the practicability of the model in quantitatively predicting unsafe crew acts. The method allows evaluating whether a seafarer is capable of fulfilling their responsibility and providing an early warning for decision-makers, thereby avoiding human errors and sequentially preventing maritime accidents. The method can also be considered as a starting point for applying the efforts of HRA researchers to the real world for practitioners. MDPI 2022-08-18 /pmc/articles/PMC9408227/ /pubmed/36011904 http://dx.doi.org/10.3390/ijerph191610271 Text en © 2022 by the authors. https://creativecommons.org/licenses/by/4.0/Licensee MDPI, Basel, Switzerland. This article is an open access article distributed under the terms and conditions of the Creative Commons Attribution (CC BY) license (https://creativecommons.org/licenses/by/4.0/).
spellingShingle Article
Zhang, Wenjun
Meng, Xiangkun
Yang, Xue
Lyu, Hongguang
Zhou, Xiang-Yu
Wang, Qingwu
A Practical Risk-Based Model for Early Warning of Seafarer Errors Using Integrated Bayesian Network and SPAR-H
title A Practical Risk-Based Model for Early Warning of Seafarer Errors Using Integrated Bayesian Network and SPAR-H
title_full A Practical Risk-Based Model for Early Warning of Seafarer Errors Using Integrated Bayesian Network and SPAR-H
title_fullStr A Practical Risk-Based Model for Early Warning of Seafarer Errors Using Integrated Bayesian Network and SPAR-H
title_full_unstemmed A Practical Risk-Based Model for Early Warning of Seafarer Errors Using Integrated Bayesian Network and SPAR-H
title_short A Practical Risk-Based Model for Early Warning of Seafarer Errors Using Integrated Bayesian Network and SPAR-H
title_sort practical risk-based model for early warning of seafarer errors using integrated bayesian network and spar-h
topic Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC9408227/
https://www.ncbi.nlm.nih.gov/pubmed/36011904
http://dx.doi.org/10.3390/ijerph191610271
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