Estimation of expected number of accidents and workforce unavailability through Bayesian population variability analysis and Markov-based model
Author
dc.contributor.author
Chagas Moura, Márcio das
Author
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Valença Azevedo, Rafael
Author
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López Droguett, Enrique
Author
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Rego Chaves, Leandro
Author
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Didier Lins, Isis
Author
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Fernando Vilela, Romulo
Author
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Sales Filho, Romero
Admission date
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2016-12-01T18:47:41Z
Available date
dc.date.available
2016-12-01T18:47:41Z
Publication date
dc.date.issued
2016
Cita de ítem
dc.identifier.citation
Reliability Engineering and System Safety 150 (2016) 136–146
es_ES
Identifier
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10.1016/j.ress.2016.01.017
Identifier
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1879-0836
Identifier
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https://repositorio.uchile.cl/handle/2250/141583
Abstract
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Occupational accidents pose several negative consequences to employees, employers, environment and people surrounding the locale where the accident takes place. Some types of accidents correspond to low frequency-high consequence (long sick leaves) events, and then classical statistical approaches are ineffective in these cases because the available dataset is generally sparse and contain censored recordings. In this context, we propose a Bayesian population variability method for the estimation of the distributions of the rates of accident and recovery. Given these distributions, a Markov-based model will be used to estimate the uncertainty over the expected number of accidents and the work time loss. Thus, the use of Bayesian analysis along with the Markov approach aims at investigating future trends regarding occupational accidents in a workplace as well as enabling a better management of the labor force and prevention efforts. One application example is presented in order to validate the proposed approach; this case uses available data gathered from a hydropower company in Brazil.