Exploiting the capabilities of bayesian networks for engineering risk assessment: Causal Reasoning through interventions
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2021Metadata
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Ruiz-Tagle, Andrés
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Exploiting the capabilities of bayesian networks for engineering risk assessment: Causal Reasoning through interventions
Abstract
In the last decade, Bayesian networks (BNs) have been widely used in engineering risk assessment
due to the benefits that they provide over other methods. Among these, the most
significant is the ability to model systems, causal factors, and their dependencies in a probabilistic
manner. This capability has enabled the community to do causal reasoning through
associations, which answers questions such as: “How does new evidence x about the occurrence
of event X change my belief about the occurrence of event Y?” Associative reasoning
has helped risk analysts to identify relevant risk-contributing factors and perform scenario
analysis by evidence propagation. However, engineering risk assessment has yet to explore
other features of BNs, such as the ability to reason through interventions, which enables the
BN model to support answering questions of the form “How does doing X = x change my
belief about the occurrence of eventY?” In this article, we propose to expand the scope of use
of BN models in engineering risk assessment to support intervention reasoning. This will provide
more robust risk-informed decision support by enabling the modeling of policies and actions
before being implemented. To do this, we provide the formal mathematical background
and tools to model interventions in BNs and propose a framework that enables its use in
engineering risk assessment. This is demonstrated in an illustrative case study on third-party
damage of natural gas pipelines, showing how BNs can be used to inform decision-makers
about the effect that new actions/policies can have on a system.
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Risk Analysis, 2021
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