Abstract

Nuclear power plants (NPPs) are complex dynamic systems with multiple sensors and actuators. The presence of faults in the actuators and sensors can deteriorate the system’s performance and cause serious safety issues. This calls for the development of fault detection and diagnosis systems for detection and isolation of such faults. In this study, fault detection and diagnosis (FDD) based on neural networks (NN) and K-nearest neighbour (KNN) algorithm is applied to a pressurized water reactor (PWR). Fault detection is first determined based on the NN. Second, the KNN algorithm is used to classify the faults. The proposed approach is capable of classifying a variety of actuator faults, sensor faults, and multiple simultaneous actuator and sensor faults. A set of simulation results is provided to demonstrate the accuracy of the FDD method. The classifier performance is further compared with other machine learning techniques.

Highlights

  • N UCLEAR power plants (NPPs) play a key role in reducing greenhouse gas emissions

  • FAULT CLASSIFICATION RESULTS The simulation is performed to test the performance of the three classifiers: the K-nearest neighbour (KNN), neural networks (NN), and support vector machine (SVM) classifiers

  • The KNN classifier presents an overall accuracy of 85.3%, as compared to 68.5% and 57.5% for the SVM and NN classifiers, respectively, meaning that KNN is undoubtedly a better performer than the others

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Summary

INTRODUCTION

N UCLEAR power plants (NPPs) play a key role in reducing greenhouse gas emissions. the safety of their operation remains a significant concern. Model-based fault detection and diagnosis (FDD) is applied for NPPs [1] This approach uses a mathematical model to describe the normal behavior of the plant. NN and KNN are applied for the first time for the detection and classification of single and multiple simultaneous sensor and actuator faults in a pressurized water reactor (PWR). With this framework, faults are first detected using an NN approach, and the KNN method is used to classify them.

PRESSURIZED WATER REACTOR
DATA GENERATION FOR FAULT CLASSIFICATION
FAULT CLASSIFICATION METHODS
SVM CLASSIFIER
TRAINING PROCESS
FAULT CLASSIFICATION RESULTS
CONCLUSIONS
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