Precursor-based hierarchical Bayesian approach for rare event frequency estimation: A case of oil spill accidents
journal contribution
posted on 2023-05-18, 03:13 authored by Yang, M, Faisal KhanFaisal Khan, Lye, LDue to a scarcity of data, the estimate of the frequency of a rare event is a consistently challenging problem in probabilistic risk assessment (PRA). However, the use of precursor data has been shown to help in obtaining more accurate estimates. Moreover, the use of hyper-priors to represent prior parameters in the hierarchical Bayesian approach (HBA) generates more consistent results in comparison to the conventional Bayesian method. This study proposes a framework that uses a precursor-based HBA for rare event frequency estimation. The proposed method is demonstrated using the recent BP Deepwater Horizon accident in the Gulf of Mexico. The conventional Bayesian method is also applied to the same case study. The results show that the proposed approach is more effective with regards to the following perspectives: (a) using the HBA in the proposed framework provides an opportunity to take full advantage of the sparse data available and add information from indirect but relevant data; (b) the HBA is more sensitive to changes in precursor data than the conventional Bayesian method; and (c) using hyper-priors to represent prior parameters, the HBA is able to model the variability that can exist among different sources of data. © 2012 The Institution of Chemical Engineers.
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Publication title
Process Safety and Environmental ProtectionVolume
91Issue
5Pagination
333-342ISSN
0957-5820Department/School
Australian Maritime CollegePublisher
Inst Chemical EngineersPlace of publication
165-189 Railway Terrace, Davis Bldg, Rugby, England, Cv21 3BrRepository Status
- Restricted
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