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Detection of pitting in gears using a deep sparse autoencoder

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posted on 2021-07-07, 16:23 authored by Y Qu, M He, J Deutsch, David HeDavid He
In this paper a new method for gear pitting fault detection is presented. The presented method is developed based on a deep sparse autoencoder. The method integrates dictionary learning in sparse coding into a stacked autoencoder network. Sparse coding with dictionary learning is viewed as an adaptive feature extraction method for machinery fault diagnosis. An autoencoder is an unsupervised machine learning technique. A stacked autoencoder network with multiple hidden layers is considered to be a deep learn ing network. The presented method uses a stacked autoencoder network to perform the dictionary learning in sparse coding and extract features from raw vibration data automatically. These features are then used to perform gear pitting fault detection. The presented method is validated with vibration data collected from gear tests with pitting faults in a gearbox test rig and compared with an existing deep learning-based approach.

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Citation

Qu, Y., He, M., Deutsch, J.He, D. (2017). Detection of pitting in gears using a deep sparse autoencoder. Applied Sciences (Switzerland), 7(5), 515-. https://doi.org/10.3390/app7050515

Publisher

MDPI AG

Language

  • en

issn

1454-5101

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