Energies, Vol. 18, Pages 4491: Online Anomaly Detection for Nuclear Power Plants via Hybrid Concept Drift

Energies, Vol. 18, Pages 4491: Online Anomaly Detection for Nuclear Power Plants via Hybrid Concept Drift

Energies doi: 10.3390/en18174491

Authors:
Jitao Li
Jize Guo
Chao Guo
Tianhao Zhang
Xiaojin Huang

Timely detection of anomalies in nuclear power plants (NPPs) is essential for operational safety, especially under conditions where process signals deviate gradually or abruptly from nominal patterns. Traditional detection methods often struggle to adapt under transient conditions or in the absence of well-labeled fault data. To address this challenge, we propose KD-ADWIN, an adaptive concept drift-detection framework designed for unsupervised anomaly detection in dynamic industrial environments. The method integrates three core components: a Kalman-based prediction module to extract smoothed signal trends, a multi-channel detection strategy combining statistical and derivative-based drift indicators, and an adaptive thresholding mechanism that tunes detection sensitivity based on local signal variability. Evaluations on a synthetic dataset show that KD-ADWIN accurately detects both abrupt and gradual drifts, outperforming classical baselines. Further validation using full-scope simulation data from a modular high-temperature gas-cooled reactor (MHTGR) demonstrates its effectiveness in identifying concept drifts under realistic actuator and sensor fault conditions.

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