Miao JIANG, Yang XIANG, Jianhong WEI. Prediction of the remaining service life of a rolling bearing based on transfer learning[J]. Journal of Harbin Engineering University, 2024, 45(4): 665-673.
DOI:
Miao JIANG, Yang XIANG, Jianhong WEI. Prediction of the remaining service life of a rolling bearing based on transfer learning[J]. Journal of Harbin Engineering University, 2024, 45(4): 665-673. DOI: 10.11990/jheu.202205075.
Prediction of the remaining service life of a rolling bearing based on transfer learning
To address the issue of low generalization ability in predicting the remaining useful life (RUL) of bearings using the prediction model
and difficulties in accurately predicting the RUL of untrained bearings
this paper proposes a method to transfer knowledge of bearing conditions for RUL prediction. By utilizing computed time and frequency-domain features
and fuzzy entropy as predictive features
the bearing's entire life cycle is divided into normal and degraded stages employing the '3σ' criterion to achieve prediction of the RUL during the degradation stage. A bearing's RUL prediction model based on Gated Recurrent Units is constructed
trained on the full life cycle data of a particular bearing to enable the model to learn the state information of new bearings. Research indicates that
compared to methods not employing transfer learning
the root mean square error in predicting the RUL of all bearings decreased by 52.53 %
while the average percentage error reduced by 68.87 %. The proposed method effectively and accurately predicts the RUL of bearings.
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references
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