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Intelligent and Small Samples Gear Fault Detection Based on Wavelet Analysis and Improved CNN

Pan Hu, Cunsheng Zhao, Jicheng Huang, Tingxin Song

2023Processes28 citationsDOIOpen Access PDF

Abstract

Traditional methods for identifying gear faults typically require a substantial number of faulty samples, which in reality are challenging to obtain. To tackle this challenge, this paper introduces a sophisticated approach for intelligent gear fault identification, utilizing discrete wavelet decomposition and an enhanced convolutional neural network (CNN) optimized for scenarios with limited sample data. Initially, the features of the sample signal are extracted and enhanced using discrete wavelet decomposition. Subsequently, the refined signal is transformed into a two-dimensional image through a Markov transition field, preparing it for improved two-dimensional CNN training. Finally, the refined network model is applied to assess the gear fault dataset, achieving a training accuracy of 97% and a classification accuracy of 88.33%. This demonstrates the method’s feasibility and effectiveness in identifying gear faults with limited sample data.

Topics & Concepts

WaveletConvolutional neural networkComputer sciencePattern recognition (psychology)Artificial intelligenceSample (material)Fault (geology)SIGNAL (programming language)Fault detection and isolationDecompositionArtificial neural networkMarkov chainIdentification (biology)Machine learningActuatorSeismologyChemistryGeologyBotanyProgramming languageChromatographyEcologyBiologyMachine Fault Diagnosis TechniquesGear and Bearing Dynamics AnalysisFault Detection and Control Systems
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