A general framework of Bayesian network for system reliability analysis using junction tree

Byun, J.-E. and Song, J. (2021) A general framework of Bayesian network for system reliability analysis using junction tree. Reliability Engineering and System Safety, 216, 107952. (doi: 10.1016/j.ress.2021.107952)

Full text not currently available from Enlighten.

Abstract

To perform the reliability analysis of complex and large-scale systems, Bayesian network (BN) can be useful as it facilitates modelling the causal relationship between multiple types of variables, e.g. hazards, material properties, and inspection results. However, its conventional approach shows limitations in handling large-scale systems and advanced inference tasks such as continuous distributions and approximate inference. On the other hand, these issues have been successfully addressed by system reliability analysis (SRA) theory, while the complexity of system reliability methods (SRMs) makes it challenging to handle multiple types of variables collectively. Accordingly, to facilitate the reliability analysis of real-world problems, this paper develops a general framework to implement BN for SRA by employing junction tree (JT). The connection between BN and SRA is further consolidated by summarizing common computational challenges and proposing heuristics to resolve them. While it provides a systematic way to implement SRMs within the BN framework, such generalization can also be used to enhance the functionality of the general-purpose software programs developed for BN as demonstrated by the companion Matlab®-based toolkit BNS-JT. The applicability and efficiency of the proposed framework are demonstrated by numerical examples.

Item Type:Articles
Status:Published
Refereed:Yes
Glasgow Author(s) Enlighten ID:Byun, Dr Ji-Eun
Authors: Byun, J.-E., and Song, J.
College/School:College of Science and Engineering > School of Engineering > Infrastructure and Environment
Journal Name:Reliability Engineering and System Safety
Publisher:Elsevier
ISSN:0951-8320
ISSN (Online):1879-0836
Published Online:18 August 2021

University Staff: Request a correction | Enlighten Editors: Update this record