Predictive Capability Maturity Quantification using Bayesian Network
Linyu Lin, Nam Dinh

TL;DR
This paper introduces a Bayesian network-based framework called PCMQBN for quantifying and improving the assessment of simulation adequacy in nuclear safety analysis, addressing uncertainties and biases in expert judgment.
Contribution
The paper develops a formal, transparent Bayesian network framework for quantifying simulation adequacy, enhancing decision-making in nuclear safety validation processes.
Findings
PCMQBN improves confidence in simulation adequacy assessments.
The framework reduces uncertainty and bias in expert judgments.
Case study demonstrates enhanced decision support in flooding scenario.
Abstract
In nuclear engineering, modeling and simulations (M&Ss) are widely applied to support risk-informed safety analysis. Since nuclear safety analysis has important implications, a convincing validation process is needed to assess simulation adequacy, i.e., the degree to which M&S tools can adequately represent the system quantities of interest. However, due to data gaps, validation becomes a decision-making process under uncertainties. Expert knowledge and judgments are required to collect, choose, characterize, and integrate evidence toward the final adequacy decision. However, in validation frameworks CSAU: Code Scaling, Applicability, and Uncertainty (NUREG/CR-5249) and EMDAP: Evaluation Model Development and Assessment Process (RG 1.203), such a decision-making process is largely implicit and obscure. When scenarios are complex, knowledge biases and unreliable judgments can be…
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Taxonomy
TopicsRisk and Safety Analysis · Software Reliability and Analysis Research · Oil and Gas Production Techniques
