Author:
Tang Yifeng,Xu Fan,Xu Lu,Zhou Chao,Deng Yaling
Abstract
AbstractA method based on sparse auto-encoder (SAE) in deep learning (DL) for roller bearings remain useful life (RUL) prediction is presented in this paper. Firstly, the roller bearings vibration signals were calculated by different time and frequency domain factors, in which reflect the vibration signals information well. Therefore, the time and frequency domain features were regarded as the input of SAE, then the SAE model in deep learning was used to extract the features through several hidden layers and the sigmoid function was selected as the output function for calculate the prediction value. Finally, compared with other different prediction methods, such as support vector machine (SVM), back propagation (BP) neural network and random forest (RF), the performance of SAE is better than that those models by using mean absolute error (MAE) and root mean square error (RMSE) these two indicators.
Funder
National Natural Science Foundation of China
Fundamental Research Funds for the Central Universities
Publisher
Springer Science and Business Media LLC
Reference27 articles.
1. Affonso, C., R. Debiaso, and L. Andre. 2017. Deep learning for biological image classification. Expert System with Apllication 85: 114–122.
2. Bagordo, G., G. Cazzluani, and F. Resta. 2011. A modal disturbance estimator for vibration suppression in nonlinear flexible structures. Journal of Sound and Vibration 330 (25): 6061–6069.
3. Bremian, L. 2001. Random forests, Machine Learning.
4. Cong, F., J. Chen, G. Dong, et al. 2013. Vibration model of rolling element bearings in a rotor-bearing system for fault diagnosis. Journal of Sound and Vibration 332 (8): 2081–2097.
5. Feng, J., Y.G. Lei, and L. Jing. 2016. Deep neural networks: A promising tool for fault characteristic mining and intelligent diagnosis of rotating machinery with massive data. Mechanical Systems and Signal Processing 72: 303–315.
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