Litcius/Paper detail

State of the art on vibration signal processing towards data‐driven gear fault diagnosis

Shouhua Zhang, Jiehan Zhou, Erhua Wang, Hong Zhang, Mu Gu, Susanna Pirttikangas

2022IET Collaborative Intelligent Manufacturing37 citationsDOIOpen Access PDF

Abstract

Abstract Gear fault diagnosis (GFD) based on vibration signals is a popular research topic in industry and academia. This paper provides a comprehensive summary and systematic review of vibration signal‐based GFD methods in recent years, thereby providing insights for relevant researchers. The authors first introduce the common gear faults and their vibration signal characteristics. The authors overview and compare the common feature extraction methods, such as adaptive mode decomposition, deconvolution, mathematical morphological filtering, and entropy. For each method, this paper introduces its idea, analyses its advantages and disadvantages, and reviews its application in GFD. Then the authors present machine learning‐based methods for gear fault recognition and emphasise deep learning‐based methods. Moreover, the authors compare different fault recognition methods. Finally, the authors discuss the challenges and opportunities towards data‐driven GFD.

Topics & Concepts

Computer scienceVibrationFault (geology)Feature extractionArtificial intelligenceSIGNAL (programming language)Signal processingDeconvolutionControl engineeringMachine learningPattern recognition (psychology)EngineeringAlgorithmDigital signal processingGeologyQuantum mechanicsProgramming languageSeismologyPhysicsComputer hardwareMachine Fault Diagnosis TechniquesGear and Bearing Dynamics AnalysisEngineering Diagnostics and Reliability