TY - JOUR
T1 - Layer Regeneration Network with Parameter Transfer and Knowledge Distillation for Intelligent Fault Diagnosis of Bearing Using Class Unbalanced Sample
AU - Li, Fudong
AU - Chen, Jinglong
AU - He, Shuilong
AU - Zhou, Zitong
N1 - Publisher Copyright:
© 1963-2012 IEEE.
PY - 2021
Y1 - 2021
N2 - In recent years, more and more researchers are using deep learning to monitor and diagnose mechanical equipment faults. When new task data not considered in the training stage are generated during the operation of the equipment, it is difficult for the model to recognize this type of data. If only new task data are used in training, it will lead to poor performance in the old task. When using all the data in training, with the accumulation of task data, the cost of data storage will increase and the speed of model update will be greatly reduced. Therefore, an intelligent fault diagnosis method based on the layer regeneration network under class imbalanced samples is proposed, which uses only new task data to update the model. The method holds that the data contain some information of other categories, but they are covered by information of their own categories, and the knowledge between classes is extracted by knowledge distillation to enhance the learning of other categories. First, the cross-domain learning method based on parameter transfer is adopted to make the layer regeneration network model (LRNM) converge quickly on the new task. Then, the implicit knowledge related to the old task in the new task data is extracted by the distillation learning method to adjust global parameters, alleviate the catastrophic forgetting problem in model updating, and realize the model continuous learning. Through experiments, the use of dark knowledge can effectively enhance the learning of other types of knowledge.
AB - In recent years, more and more researchers are using deep learning to monitor and diagnose mechanical equipment faults. When new task data not considered in the training stage are generated during the operation of the equipment, it is difficult for the model to recognize this type of data. If only new task data are used in training, it will lead to poor performance in the old task. When using all the data in training, with the accumulation of task data, the cost of data storage will increase and the speed of model update will be greatly reduced. Therefore, an intelligent fault diagnosis method based on the layer regeneration network under class imbalanced samples is proposed, which uses only new task data to update the model. The method holds that the data contain some information of other categories, but they are covered by information of their own categories, and the knowledge between classes is extracted by knowledge distillation to enhance the learning of other categories. First, the cross-domain learning method based on parameter transfer is adopted to make the layer regeneration network model (LRNM) converge quickly on the new task. Then, the implicit knowledge related to the old task in the new task data is extracted by the distillation learning method to adjust global parameters, alleviate the catastrophic forgetting problem in model updating, and realize the model continuous learning. Through experiments, the use of dark knowledge can effectively enhance the learning of other types of knowledge.
KW - Dark knowledge
KW - intelligent fault diagnosis
KW - knowledge distillation
KW - layer regeneration
KW - parameter tuning
UR - https://www.scopus.com/pages/publications/85110829422
U2 - 10.1109/TIM.2021.3097408
DO - 10.1109/TIM.2021.3097408
M3 - 文章
AN - SCOPUS:85110829422
SN - 0018-9456
VL - 70
JO - IEEE Transactions on Instrumentation and Measurement
JF - IEEE Transactions on Instrumentation and Measurement
M1 - 9486893
ER -