Enterprise AI Analysis
Explainable Machine Learning for Incipient Anomaly Detection in Compact Molten Salt Heat Exchanger with Overlapping Feature Distributions
This research introduces a novel approach for early anomaly detection in high-temperature molten salt-cooled reactors (MSCRs) using explainable machine learning. Focusing on heat exchanger (HX) channel plugging, the study leverages synthetic fiber optic distributed temperature sensing (DTS) data and benchmarks eight ML models. XGBoost demonstrates superior performance in classifying early-stage faults with overlapping feature distributions. A key innovation is the explainability framework combining Shapley values and Partially Ordered Sets (POSETs) to enhance model transparency, quantify feature importance, and identify ambiguous relationships. This approach aims to improve predictive maintenance and operational resilience in advanced nuclear systems by providing a deeper, context-aware understanding of model behavior.
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Enterprise Process Flow
| Model | Strengths | Weaknesses |
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| XGBoost |
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| Random Forest |
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| SVM |
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| Decision Trees |
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| FNN |
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| LR, KNN, GNB |
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Molten Salt HX Anomaly: 80% Flow Rate Plugging
Incipient channel plugging at 80% flow rate (Class 1) is the most challenging fault to detect due to minimal temperature changes and overlapping feature distributions. The explainability framework revealed that multiple features must be jointly considered, as no single variable dominates. This highlights the need for a comprehensive sensing strategy rather than relying on isolated readings to detect subtle anomalies effectively. Without this explainable approach, operators would lack the nuanced understanding required to differentiate these early-stage faults from normal operation.
Outcome: The POSET analysis for Class 1 showed substantial ambiguity, grouping multiple features like divider plate number, primary inlet temperature, gauge location, and gauge proximity into an incomparably ranked cluster. This indicates that early-stage plugging events rely on subtle signals captured collectively rather than individually, making precise localized detection difficult with traditional methods. The framework provided crucial insights into which features contribute to the detection and the inherent uncertainties, guiding more effective sensor placement and monitoring strategies.
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