Research on bearing diagnosis technology based on wavelet transform and one-dimensional convolutional neural network
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Published:2021
Issue:
Volume:336
Page:01010
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ISSN:2261-236X
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Container-title:MATEC Web of Conferences
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language:
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Short-container-title:MATEC Web Conf.
Author:
Guo Dazhi,Wang Qiang,Wu Fengyan,Li Jun,Li Mo,Jia Yan
Abstract
Aiming at the fault diagnosis of rolling element bearings, propose a method for fine diagnosis of bearings based on wavelet transform and one-dimensional convolutional neural network. First use wavelet transform to decompose the experimental data; Use the resulting low-frequency signal as a one-dimensional convolutional neural network input, bearing fault identification. The experiment uses the deep groove ball bearing of Case Western Reserve University as the research object, Use this method to identify the normal and outer ring faults of the bearing. the result shows: This method can be effectively applied to the precise identification of bearings.
Reference8 articles.
1. Zhou Yuanlong, Li Weilin. Bearing condition monitoring and fault diagnosis based on probabilistic neural network[J]. Metrology and Testing Technology,2009,36 (2) : 30-33.
Cited by
1 articles.
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