TY - JOUR
T1 - AFARN
T2 - Domain Adaptation for Intelligent Cross-Domain Bearing Fault Diagnosis in Nuclear Circulating Water Pump
AU - Cheng, Wei
AU - Liu, Xue
AU - Xing, Ji
AU - Chen, Xuefeng
AU - Ding, Baoqing
AU - Zhang, Rongyong
AU - Zhou, Kangning
AU - Huang, Qian
N1 - Publisher Copyright:
© 2005-2012 IEEE.
PY - 2023/3/1
Y1 - 2023/3/1
N2 - Domain adaptation can transfer cross-domain diagnosis knowledge by minimizing the divergence of labeled source and unlabeled target data. However, the model neglects to maximize physics prior knowledge during feature extraction and distribution alignment, resulting in a noninterpretable model even negative transfer. Hence, a physics-informed domain adaptation network, termed adaptive fault attention residual network (AFARN), is proposed. First, an adaptive fault attention mechanism is designed to refine features guided by bearing fault characteristics, suited to generating diagnosis-relevant features. Then, several metrics are applied to minimize the marginal and conditional distribution discrepancy of features, thus, generalizing the model from source to target domain. The AFARN utilizes the fault characteristics and label information simultaneously to train the model, which can enhance the distribution alignment of diagnosis-relevant features, thus, providing an interpretable knowledge transfer. Finally, experiments on public and circulating water pump datasets show that AFARN can enhance fault feature learning and diagnosis accuracy.
AB - Domain adaptation can transfer cross-domain diagnosis knowledge by minimizing the divergence of labeled source and unlabeled target data. However, the model neglects to maximize physics prior knowledge during feature extraction and distribution alignment, resulting in a noninterpretable model even negative transfer. Hence, a physics-informed domain adaptation network, termed adaptive fault attention residual network (AFARN), is proposed. First, an adaptive fault attention mechanism is designed to refine features guided by bearing fault characteristics, suited to generating diagnosis-relevant features. Then, several metrics are applied to minimize the marginal and conditional distribution discrepancy of features, thus, generalizing the model from source to target domain. The AFARN utilizes the fault characteristics and label information simultaneously to train the model, which can enhance the distribution alignment of diagnosis-relevant features, thus, providing an interpretable knowledge transfer. Finally, experiments on public and circulating water pump datasets show that AFARN can enhance fault feature learning and diagnosis accuracy.
KW - Adaptive fault attention residual network (AFARN)
KW - attention mechanism
KW - domain adaptation
KW - intelligent bearing fault diagnosis
KW - nuclear circulating water pump
UR - https://www.scopus.com/pages/publications/85130839266
U2 - 10.1109/TII.2022.3177459
DO - 10.1109/TII.2022.3177459
M3 - 文章
AN - SCOPUS:85130839266
SN - 1551-3203
VL - 19
SP - 3229
EP - 3239
JO - IEEE Transactions on Industrial Informatics
JF - IEEE Transactions on Industrial Informatics
IS - 3
ER -