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A Regularized LSTM Method for Predicting Remaining Useful Life of Rolling Bearings 被引量:4
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作者 Zhao-Hua Liu Xu-Dong Meng +4 位作者 Hua-Liang Wei Liang Chen bi-liang lu Zhen-Heng Wang Lei Chen 《International Journal of Automation and computing》 EI CSCD 2021年第4期581-593,共13页
Rotating machinery is important to industrial production. Any failure of rotating machinery, especially the failure of rolling bearings, can lead to equipment shutdown and even more serious incidents. Therefore, accur... Rotating machinery is important to industrial production. Any failure of rotating machinery, especially the failure of rolling bearings, can lead to equipment shutdown and even more serious incidents. Therefore, accurate residual life prediction plays a crucial role in guaranteeing machine operation safety and reliability and reducing maintenance cost. In order to increase the forecasting precision of the remaining useful life(RUL) of the rolling bearing, an advanced approach combining elastic net with long short-time memory network(LSTM) is proposed, and the new approach is referred to as E-LSTM. The E-LSTM algorithm consists of an elastic mesh and LSTM, taking temporal-spatial correlation into consideration to forecast the RUL through the LSTM. To solve the over-fitting problem of the LSTM neural network during the training process, the elastic net based regularization term is introduced to the LSTM structure.In this way, the change of the output can be well characterized to express the bearing degradation mode. Experimental results from the real-world data demonstrate that the proposed E-LSTM method can obtain higher stability and relevant values that are useful for the RUL forecasting of bearing. Furthermore, these results also indicate that E-LSTM can achieve better performance. 展开更多
关键词 Deep learning fault diagnosis fault prognosis long and short time memory network(LSTM) rolling bearing rotating machinery REGULARIZATION remaining useful life prediction(RUL) recurrent neural network(RNN)
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