Deep Spatiotemporal Convolutional-Neural-Network-Based Remaining Useful Life Estimation of Bearings

被引:6
|
作者
Xu Wang [1 ,2 ]
Tianyang Wang [1 ]
Anbo Ming [2 ]
Qinkai Han [1 ]
Fulei Chu [1 ]
Wei Zhang [2 ]
Aihua Li [2 ]
机构
[1] State Key Laboratory of Tribology, Tsinghua University
[2] High-Tech Research Institute of Xi'an
基金
中国国家自然科学基金;
关键词
Bearing; Remaining useful life; Continuous wavelet transform; Convolution neural network; Gaussian process regression;
D O I
暂无
中图分类号
TP183 [人工神经网络与计算]; TH133.3 [轴承];
学科分类号
080203 ; 081104 ; 0812 ; 0835 ; 1405 ;
摘要
The remaining useful life(RUL) estimation of bearings is critical for ensuring the reliability of mechanical systems. Owing to the rapid development of deep learning methods, a multitude of data-driven RUL estimation approaches have been proposed recently. However, the following problems remain in existing methods: 1) Most network models use raw data or statistical features as input, which renders it di cult to extract complex fault-related information hidden in signals; 2) for current observations, the dependence between current states is emphasized, but their complex dependence on previous states is often disregarded; 3) the output of neural networks is directly used as the estimated RUL in most studies, resulting in extremely volatile prediction results that lack robustness. Hence, a novel prognostics approach is proposed based on a time–frequency representation(TFR) subsequence, three-dimensional convolutional neural network(3 DCNN), and Gaussian process regression(GPR). The approach primarily comprises two aspects: construction of a health indicator(HI) using the TFR-subsequence–3 DCNN model, and RUL estimation based on the GPR model. The raw signals of the bearings are converted into TFR-subsequences by continuous wavelet transform and a dislocated overlapping strategy. Subsequently, the 3 DCNN is applied to extract the hidden spatiotemporal features from the TFR-subsequences and construct HIs. Finally, the RUL of the bearings is estimated using the GPR model, which can also define the probability distribution of the potential function and prediction confidence. Experiments on the PRONOSTIA platform demonstrate the superiority of the proposed TFR-subsequence–3 DCNN–GPR approach. The use of degradation-related spatiotemporal features in signals is proposed herein to achieve a highly accurate bearing RUL prediction with uncertainty quantification.
引用
收藏
页码:128 / 142
页数:15
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