A new fault diagnosis method based on deep belief network and support vector machine with Teager–Kaiser energy operator for bearings

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Abstract

How to improve the accuracy and algorithm efficiency of bearing fault diagnosis has been the focus and hot topic in fault diagnosis field. Deep belief network is a typical deep learning method, which can be used to form a much higher-level abstract representation and find the distributed characteristics of data. In this article, a new method of bearing fault diagnosis is proposed based on Teager–Kaiser energy operator and the particle swarm optimization-support vector machine with deep belief network. In this method, the demodulation signal is obtained using Teager–Kaiser energy operator first. And then the time and frequency statistic characteristic of the demodulation signal is analyzed. Furthermore, the deep belief network is used to extract time and frequency feature extraction. Finally, the extracted parameters are classified by particle swarm optimization-support vector machine. The experimental results show that it not only has higher accuracy but also shortens the training time greatly, and it improves the accuracy and efficiency of fault diagnosis obviously.

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APA

Han, D., Zhao, N., & Shi, P. (2017). A new fault diagnosis method based on deep belief network and support vector machine with Teager–Kaiser energy operator for bearings. Advances in Mechanical Engineering, 9(12). https://doi.org/10.1177/1687814017743113

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