A Dynamic Bayesian and Machine Learning Framework for Quantitative Evaluation and Prediction of Operator Situation Awareness in Nuclear Power Plants
arXiv cs.LG / 3/23/2026
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Key Points
- The paper introduces a dynamic Bayesian machine learning framework for operator situation awareness (DBML SA) that fuses probabilistic reasoning with neural components to model cognitive dynamics and predict SA reliability under uncertainty.
- It utilizes 212 operational event reports (2007–2021) to reconstruct the causal temporal structure of 11 performance shaping factors across multiple cognitive layers.
- The Bayesian component enables time-evolving inferences of SA reliability, while the neural component provides a nonlinear mapping from PSFs to SART scores, achieving a mean absolute percentage error of 13.8% and alignment with subjective evaluations (p > 0.05).
- The framework addresses limitations of static assessments like SAGAT and SART by enabling real-time cognitive monitoring, sensitivity analysis, and early-warning prediction for next-generation digital main control rooms.
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