Predicting Occupational Struck-by Incident Probability in Oil and Gas Industries: a Bayesian Network Model

Risk of injury or death due to occupational incidents in the oil and gas industries is higher than that of major incidents such as fire or explosion. In 2017, the largest proportion (36%) of fatalities and greatest number of incidents (24%) in the oil and gas industries were categorized as Struck-b...

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Main Authors: Yaser Shokouhi, Parvin Nassiri, Iraj Mohammadfam, Kamal Azam
Format: Article
Language:English
Published: Tehran University of Medical Sciences 2018-12-01
Series:International Journal of Occupational Hygiene
Subjects:
Online Access:https://ijoh.tums.ac.ir/index.php/ijoh/article/view/400
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spelling doaj-f65a6300fca44b62985ac6e5a3a4031c2020-12-07T08:45:57ZengTehran University of Medical SciencesInternational Journal of Occupational Hygiene2008-51092008-54352018-12-01104Predicting Occupational Struck-by Incident Probability in Oil and Gas Industries: a Bayesian Network ModelYaser Shokouhi0Parvin Nassiri1Iraj Mohammadfam2Kamal Azam3Department of Occupational Hygiene, School of Public health, Tehran University of Medical Sciences, Tehran, IranDepartment of Occupational Hygiene, School of Public health, Tehran University of Medical Sciences, Tehran, IranCenter of Excellence for Occupational Health (CEOH) and Research Center of Health Sciences, Hamadan University of Medical Sciences, IranDepartment of Epidemiology and Biostatistics, School of Public health, Tehran University of Medical Sciences, Tehran, Iran Risk of injury or death due to occupational incidents in the oil and gas industries is higher than that of major incidents such as fire or explosion. In 2017, the largest proportion (36%) of fatalities and greatest number of incidents (24%) in the oil and gas industries were categorized as Struck-by. This study was aimed to develop a Bayesian network (BN) model for predicting occupational struck-by incident probability. Nineteen struck-by causal factors were extracted from the literature. Expert knowledge in addition to Dempster-Shafer theory was used to construct a BN. A questionnaire was developed to measure conditional probabilities of causal factors among participants. Struck-by probabilities of different states of causal factors were also estimated. The prior probability of struck-by incident was 3.09% (approximately 31 per 1000 operational workers per year). Belief updating predicted that preventing workers from being in improper position (in line of fire) would decrease the struck-by incidents by 37%. In contrary, failure of hazard warning (true state) and violation of procedures increased the struck-by probability by 4.08% (an increase of 32%) and 3.96% (an increase of 28%), respectively. The proposed BN model predicted that preventing workers from being in improper position (in line of fire) would decrease the struck-by occupational incidents by 37%. This approach was a step toward quantification of risks associated with occupational incidents. It had advantages including graphical representation of causal factors relationships, easily customizing model, and simply introducing of new evidence (belief updating). https://ijoh.tums.ac.ir/index.php/ijoh/article/view/400Bayesian networkIncident predictionOil industryStruck-by incident
collection DOAJ
language English
format Article
sources DOAJ
author Yaser Shokouhi
Parvin Nassiri
Iraj Mohammadfam
Kamal Azam
spellingShingle Yaser Shokouhi
Parvin Nassiri
Iraj Mohammadfam
Kamal Azam
Predicting Occupational Struck-by Incident Probability in Oil and Gas Industries: a Bayesian Network Model
International Journal of Occupational Hygiene
Bayesian network
Incident prediction
Oil industry
Struck-by incident
author_facet Yaser Shokouhi
Parvin Nassiri
Iraj Mohammadfam
Kamal Azam
author_sort Yaser Shokouhi
title Predicting Occupational Struck-by Incident Probability in Oil and Gas Industries: a Bayesian Network Model
title_short Predicting Occupational Struck-by Incident Probability in Oil and Gas Industries: a Bayesian Network Model
title_full Predicting Occupational Struck-by Incident Probability in Oil and Gas Industries: a Bayesian Network Model
title_fullStr Predicting Occupational Struck-by Incident Probability in Oil and Gas Industries: a Bayesian Network Model
title_full_unstemmed Predicting Occupational Struck-by Incident Probability in Oil and Gas Industries: a Bayesian Network Model
title_sort predicting occupational struck-by incident probability in oil and gas industries: a bayesian network model
publisher Tehran University of Medical Sciences
series International Journal of Occupational Hygiene
issn 2008-5109
2008-5435
publishDate 2018-12-01
description Risk of injury or death due to occupational incidents in the oil and gas industries is higher than that of major incidents such as fire or explosion. In 2017, the largest proportion (36%) of fatalities and greatest number of incidents (24%) in the oil and gas industries were categorized as Struck-by. This study was aimed to develop a Bayesian network (BN) model for predicting occupational struck-by incident probability. Nineteen struck-by causal factors were extracted from the literature. Expert knowledge in addition to Dempster-Shafer theory was used to construct a BN. A questionnaire was developed to measure conditional probabilities of causal factors among participants. Struck-by probabilities of different states of causal factors were also estimated. The prior probability of struck-by incident was 3.09% (approximately 31 per 1000 operational workers per year). Belief updating predicted that preventing workers from being in improper position (in line of fire) would decrease the struck-by incidents by 37%. In contrary, failure of hazard warning (true state) and violation of procedures increased the struck-by probability by 4.08% (an increase of 32%) and 3.96% (an increase of 28%), respectively. The proposed BN model predicted that preventing workers from being in improper position (in line of fire) would decrease the struck-by occupational incidents by 37%. This approach was a step toward quantification of risks associated with occupational incidents. It had advantages including graphical representation of causal factors relationships, easily customizing model, and simply introducing of new evidence (belief updating).
topic Bayesian network
Incident prediction
Oil industry
Struck-by incident
url https://ijoh.tums.ac.ir/index.php/ijoh/article/view/400
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