Citation: | GUO Yurong, MAO Jian, ZHAO Man. Prediction method of bearing remaining useful life based on CNN and attention BiLSTM[J]. Journal of Shanghai University of Engineering Science, 2023, 37(1): 96-104. doi: 10.12299/jsues.21-0244 |
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