Litcius/Paper detail

Novel Time–Frequency Mode Decomposition and Information Fusion for Bearing Fault Diagnosis Under Varying-Speed Condition

Zhen Shan, Zhongqiu Wang, Jianhua Yang, Qiang Ma, Tao Gong

2023IEEE Transactions on Instrumentation and Measurement22 citationsDOI

Abstract

Rolling bearing fault diagnosis is significant in rotating machinery daily maintenance. However, it is still difficult to diagnose the weak fault of rolling bearing under variable speed in some cases. In this paper, a bearing fault diagnosis method under varying speed is given, which can extract the weak feature and diagnose weak fault effectively. At first, a novel time-frequency mode decomposition (TFMD) method is proposed to decompose the signal into various modal components. Then, the feature fusion realizes the feature enhancement of each modal component. In addition, the cross-correlation coefficient and signal-to-noise ratio are used as indexes in the comparison between TFMD and some other existing methods. Simulation analysis shows that the TFMD can avoid the modal aliasing and is more robust to speed error. Experimental verification shows that the proposed method has high accuracy in bearing fault diagnosis.

Topics & Concepts

Bearing (navigation)AliasingFault (geology)ModalHilbert–Huang transformFeature (linguistics)SIGNAL (programming language)Time–frequency analysisFeature extractionComputer scienceNoise (video)Pattern recognition (psychology)EngineeringAlgorithmControl theory (sociology)Artificial intelligenceComputer visionFilter (signal processing)LinguisticsUndersamplingSeismologyPolymer chemistryImage (mathematics)Programming languagePhilosophyControl (management)ChemistryGeologyMachine Fault Diagnosis TechniquesGear and Bearing Dynamics AnalysisEngineering Diagnostics and Reliability