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Fault detection for power electronic converters based on continuous wavelet transform and convolution neural network
19
Citations
20
References
2022
Year
Fault DiagnosisConvolutional Neural NetworkEngineeringMachine LearningFault ForecastingPower Electronic SystemsPower ElectronicsImage AnalysisPattern RecognitionFault AnalysisArtificial Feature ExtractionPower Electronic DevicesElectrical EngineeringPower Electronic ConvertersComputer EngineeringAutomatic Fault DetectionConvolution Neural NetworkFault DetectionContinuous Wavelet Transform
With the rapid development of new energy vehicles, the reliability and safety of Brushless DC motor drive system, the core component of new energy vehicles, has been widely concerned. The traditional open circuit fault detection method of power electronic converters have the problem of poor feature extraction ability because of inadequate signal processing means, which lead to low recognition accuracy. Therefore, a fault recognition method based on continuous wavelet transform and convolutional neural network (CWT-CNN) is proposed. It can not only adaptively extract features, but also avoid the complexity and uncertainty of artificial feature extraction. The three-phase current signal is converted into time-frequency spectrum by continuous wavelet transform as the input data of AlexNet. At the same time, the changes of time domain and frequency domain under different fault modes are analyzed. Finally, the softmax classifier with Adam optimizer is used to classify the fault features extracted by CNN to realize the state recognition of different fault modes of power electronic converter. The experimental results show that the CWT-CNN model achieves satisfactory fault detection accuracy under different working conditions and different fault modes. The effectiveness and superiority of the proposed method are verified by comparing with other networks.
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