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A Novel Fault Diagnosis Method for Analog Circuits Based on Multi-Input Deep Residual Networks with an Improved Empirical Wavelet Transform

Zhen Liu, Xuemei Liu, Songlin Xie, Wang Junhai, Xiuyun Zhou

2022Applied Sciences21 citationsDOIOpen Access PDF

Abstract

Analog circuits play an essential role in electronic systems. To strengthen the reliability of sophisticated electronic circuits, this paper proposes a novel analog circuit fault diagnosis method. Compared with traditional fault diagnosis, the fault diagnosis process in this paper uses a square wave as the stimulus of the circuit under test (CUT), which is beneficial for obtaining the response of the CUT with rich time and frequency domain information. The improved empirical wavelet transform (EWT), which can more accurately extract the amplitude modulated–frequency modulated (AM-FM) components, is used to preprocess the original response. Finally, based on the preprocessed data, a multi-input deep residual network (ResNet) is constructed for fault feature extraction and fault classification. The multi-input ResNet is a powerful approach for learning the fault characteristics of the CUT under different faults by learning the characteristics of the AM-FM components. The effectiveness of the method proposed in this paper is verified by comparing different fault diagnosis methods.

Topics & Concepts

Computer scienceResidualHilbert–Huang transformFault (geology)Wavelet transformFault detection and isolationAnalogue electronicsElectronic engineeringPattern recognition (psychology)Electronic circuitFrequency domainArtificial intelligenceWaveletEngineeringAlgorithmElectrical engineeringComputer visionSeismologyGeologyActuatorFilter (signal processing)Integrated Circuits and Semiconductor Failure AnalysisVLSI and Analog Circuit TestingIndustrial Vision Systems and Defect Detection
A Novel Fault Diagnosis Method for Analog Circuits Based on Multi-Input Deep Residual Networks with an Improved Empirical Wavelet Transform | Litcius