Bearing Remaining Useful Life Prediction Using 2D Attention Residual Network.

Wenrong Xiao, Yong Chen, Suqin Guo,Kun Chen

IEICE Trans. Inf. Syst.(2023)

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摘要
An attention residual network with triple feature as input is proposed to predict the remaining useful life (RUL) of bearings. First, the channel attention and spatial attention are connected in series into the residual connection of the residual neural network to obtain a new attention residual module, so that the newly constructed deep learning network can better pay attention to the weak changes of the bearing state. Secondly, the "triple feature" is used as the input of the attention residual network, so that the deep learning network can better grasp the change trend of bearing running state, and better realize the prediction of the RUL of bearing. Finally, The method is verified by a set of experimental data. The results show the method is simple and effective, has high prediction accuracy, and reduces manual intervention in RUL prediction.
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关键词
useful life prediction,2d attention residual network,bearing
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