Abstract

Graph-based causal inference has recently been successfully applied to explore system reliability and to predict failures in order to improve systems. One popular causal analysis following Pearl and Spirtes et al. to study causal relationships embedded in a system is to use a Bayesian network (BN). However, certain causal constructions that are particularly pertinent to the study of reliability are difficult to express fully through a BN. Our recent work demonstrated the flexibility of using a Chain Event Graph (CEG) instead to capture causal reasoning embedded within engineers’ reports. We demonstrated that an event tree rather than a BN could provide an alternative framework that could capture most of the causal concepts needed within this domain. In particular, a causal calculus for a specific type of intervention, called a remedial intervention, was devised on this tree-like graph. In this paper, we extend the use of this framework to show that not only remedial maintenance interventions but also interventions associated with routine maintenance can be well-defined using this alternative class of graphical model. We also show that the complexity in making inference about the potential relationships between causes and failures in a missing data situation in the domain of system reliability can be elegantly addressed using this new methodology. Causal modelling using a CEG is illustrated through examples drawn from the study of reliability of an energy distribution network.

Highlights

  • The use of Bayesian Networks (BN) for the study of reliability has been widely advocated in the literature [1]

  • We demonstrated that an event tree rather than a BN could provide an alternative framework that could capture most of the causal concepts needed within this domain

  • We extend the use of this framework to show that remedial maintenance interventions and interventions associated with routine maintenance can be well-defined using this alternative class of graphical model

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Summary

Introduction

The use of Bayesian Networks (BN) for the study of reliability has been widely advocated in the literature [1]. It has been shown that any discrete BN can be embellished into a treebased graph called a Chain Event Graph (CEG) [2,3]. The CEG is a graphical model that is a function of an underlying event tree and certain context specific conditional independence statements. The CEG can model and depict the types of structural asymmetries that the BN framework struggles to embody [4]. This can provide a framework for studying the causal mechanisms behind the failures of a given system. Cowell and Smith [2] developed a dynamic programming algorithm for maximum a posterior (MAP) structural learning for causal discovery within a restricted class of CEGs called stratified CEGs

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