Litcius/Paper detail

Ensemble Learning-based Fault Detection in Nuclear Power Plant Screen Cleaners

Antoine Deleplace, Vepa Atamuradov, Achraf El Allali, J. Pellé, R. Plana, Guillaume Alleaume

2020IFAC-PapersOnLine24 citationsDOIOpen Access PDF

Abstract

This paper presents a fault detection approach based on feature selection and ensemble machine learning technique for nuclear power plant (NPP) screen cleaner condition monitoring. Firstly, comprehensive set of statistical features are extracted from in-field raw accelerometer data. Then, a seperability based feature selection metric is utilized to select relevant features in order to enhance accuracy of fault detection algorithm. Afterwards, Extreme Gradient Boosting (XGBoost), which is a decision-tree-based ensemble Machine Learning algorithm, is trained using the selected features for fault detection. The comparative analysis on fault detection is also conducted in this study using different classifiers next to XGBoost. The approach is validated on different fault types of screen cleaners. The results show that the ensemble learning outperforms other classifiers in terms of accuracy and can be effectively used for NPP screen cleaners condition monitoring.

Topics & Concepts

Ensemble learningFeature selectionFault detection and isolationArtificial intelligenceDecision treeComputer scienceBoosting (machine learning)Gradient boostingMachine learningNuclear power plantMetric (unit)Feature (linguistics)Pattern recognition (psychology)Random forestEngineeringPhysicsLinguisticsPhilosophyOperations managementActuatorNuclear physicsFault Detection and Control SystemsAnomaly Detection Techniques and ApplicationsRisk and Safety Analysis