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Fault diagnosis method for scintillation detector based on BP neural network

Yuxi Xie, Yizhou Yan, Xiang Li, Tenghuan DING, Chen Ma

2021Journal of Instrumentation16 citationsDOI

Abstract

Abstract This article gives a scintillation detector fault diagnosis method based on BP neural network. From the aspect of output signals of scintillation detectors, the wavelet packet transform is used to extract the energy characteristic vectors which are treated as the input of BP neural network, and a training database is established as well as BP neural network parameters are optimized. Then the method is employed to establish a fault recognition model and fault types can be concluded. Finally, the simulation data are compared with those of two other methods (the statistical diagnosis method and an method based on multi-classification support vector machine). The experimental results illustrate that the application of proposed method can improve the fault diagnosis accuracy of scintillation detectors effectively.

Topics & Concepts

ScintillationDetectorArtificial neural networkComputer scienceFault (geology)Energy (signal processing)Network packetArtificial intelligenceWaveletPattern recognition (psychology)Support vector machineFault detection and isolationAlgorithmTelecommunicationsMathematicsSeismologyStatisticsComputer networkActuatorGeologyFault Detection and Control SystemsAnomaly Detection Techniques and ApplicationsRisk and Safety Analysis
Fault diagnosis method for scintillation detector based on BP neural network | Litcius