Planetary gear fault diagnosis via feature image extraction based on multi central frequencies and vibration signal frequency spectrum

Journal Article (2018)
Author(s)

Yong Li (China University of Mining and Technology)

G. Cheng (China University of Mining and Technology)

Y Pang (TU Delft - Transport Engineering and Logistics)

Moshen Kuai (China University of Mining and Technology)

Research Group
Transport Engineering and Logistics
Copyright
© 2018 Y. Li, G. Cheng, Y. Pang, Moshen Kuai
DOI related publication
https://doi.org/10.3390/s18061735
More Info
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Publication Year
2018
Language
English
Copyright
© 2018 Y. Li, G. Cheng, Y. Pang, Moshen Kuai
Research Group
Transport Engineering and Logistics
Issue number
6
Volume number
18
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Abstract

Poor working environment leads to frequent failures of planetary gear trains. However, complex structure and variable transmission make the vibration signal strongly non-linear and non-stationary, which brings big problems to fault diagnosis. A method of planetary gear fault diagnosis via feature image extraction based on multi central frequencies and vibration signal frequency spectrum is proposed. The original vibration signal is decomposed by variational mode decomposition (VMD), and four components with narrow bands and independent central frequencies are decomposed. In order to retain the feature spectrum of the original vibration signal as far as possible, the corresponding feature bands are intercepted from the frequency spectrum of original vibration signal based on the central frequency of each component. Then, the feature images of fault signals are constructed as the inputs of the convolution neural network (CNN), and the parameters of the neural network are optimized by sample training. Finally, the optimized CNN is used to identify fault signals. The overall fault recognition rate is up to 98.75%. Compared with the feature bands extracted directly from the component spectrums, the extraction method of the feature bands proposed in this paper needs fewer iterations under the same network structure. The method of planetary gear fault diagnosis proposed in this paper is effective.