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Bearing Fault Diagnosis With Frequency Sparsity Learning

Zheng Cao, Jisheng Dai, Weichao Xu, Chunqi Chang

2022IEEE Transactions on Instrumentation and Measurement12 citationsDOI

Abstract

Extracting fault frequencies from noisy vibration signal is a challenging task for bearing fault diagnosis. The state-of-the-art sparse representation (SR) based methods usually consist of two steps: (i) fault impulse recovery in the time-domain and (ii) frequency transformation of the estimated signal envelope. However, any inaccurate time-domain signal recovery can cause an error accumulation problem for the following frequency transformation, and the frequency transformation itself encounters a low-resolution shortcoming especially for short-time sampling data. To handle these shortcomings, in this paper, we propose a novel sparse Bayesian learning (SBL) framework to evade the time-domain signal recovery and extract the fault frequencies directly from the frequency domain. We first present a new formulation for the sparse frequency recovery problem by utilizing the sparsity structure of the envelope spectrum, and then introduce a truncated off-grid model into the SBL framework to speed up the proposed method. Moreover, an improved grid refinement is developed to jointly combat the off-grid frequency mismatch and exploit the arithmetic sparsity structure of fault frequencies. Both simulation and experiment results indicate the effectiveness of our proposed method.

Topics & Concepts

Computer scienceFrequency domainTime–frequency analysisSparse approximationFault (geology)Transformation (genetics)AlgorithmSIGNAL (programming language)Time domainEnvelope (radar)Frequency gridImpulse (physics)GridArtificial intelligencePattern recognition (psychology)MathematicsComputer visionTelecommunicationsRadarChemistryPhysicsBiochemistrySeismologyGeometryQuantum mechanicsGeneProgramming languageGeologyMachine Fault Diagnosis TechniquesGear and Bearing Dynamics AnalysisStructural Health Monitoring Techniques