2022
DOI: 10.21203/rs.3.rs-2232577/v1
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Research on an intelligent diagnosis method of mechanical faults for small sample data sets

Abstract: The difficulty of feature extraction and the small sample size are two challenges in the field of mechanical fault diagnosis for a long time. Here we propose an intelligent mechanical fault diagnosis method for scenario with small sample datasets. This method can not only diagnose bearing faults but also gear faults, and has strong generalization performance. We use convolutional neural network to realize automatic feature extraction. Through sliding window scanning, one sample set is expanded to three sub-sam… Show more

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References 27 publications
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