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A computer program for evaluating the alpha factor model parameters using the Bayesian operation

Authors
Kwon, B.Jae, M.Jerng, D.W.
Issue Date
2014
Publisher
Techno-Info Comprehensive Solutions (TICS)
Keywords
Bayesian; Common cause failure; Data analysis; Multiple Greek Letter model; Parameter uncertainty; α-factors model
Citation
PSAM 2014 - Probabilistic Safety Assessment and Management, v.6, pp 144 - 151
Pages
8
Journal Title
PSAM 2014 - Probabilistic Safety Assessment and Management
Volume
6
Start Page
144
End Page
151
URI
https://scholarworks.bwise.kr/cau/handle/2019.sw.cau/50269
ISSN
0000-0000
Abstract
The assessment of common cause failure (CCF) is necessary for reducing the uncertainty during the process of probabilistic safety assessment. A basic unavailability assessment method is an approach for the quantitative analysis of CCF modeling using Bayesian probability, in which the estimation of parameters is more accurate by combining the failure information from system, component and cause level. This study describes the CCF evaluation program which has been developed for assessing the α-factor common cause failure parameters. Examples are presented to demonstrate the calculation process and necessary databases are presented. As a result, the posterior distributions for α-factors model parameter are obtained using the conjugate family distributions as well as general distributions for conducting a numerical estimation. Due to the fact that CCF is one of the significant factors to affect both core damage frequency and large early release frequency, the appropriate evaluation for the relevant parameters is essential, though there are rare the CCF data. In the previous study, the Multiple Greek Letter model (MGL) had been used for modeling the common cause failures in the OPR 1000 reactors. In the future modeling for the reactors, the α-factors approach might be employed for simulating the common cause failures as well as it will be quantified using the computer program developed by the C# language. The main operation to quantify the α-factors parameters is Bayesian which combines the prior distribution and the likelihood function to produce the posterior distribution. It is expected that this program might contribute to enhancing the quality of probabilistic safety assessment and to reducing common cause failure uncertainty.
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공과대학 (에너지시스템 공학부)
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