TY - JOUR
T1 - Fault-Attention Generative Probabilistic Adversarial Autoencoder for Machine Anomaly Detection
AU - Wu, Jingyao
AU - Zhao, Zhibin
AU - Sun, Chuang
AU - Yan, Ruqiang
AU - Chen, Xuefeng
N1 - Publisher Copyright:
© 2005-2012 IEEE.
PY - 2020/12
Y1 - 2020/12
N2 - Anomaly detection is one of the most fundamental and indispensable components in predictive maintenance. In this article, anomaly detection is modeled as a one-class classification problem. Based on the scenario that the training data only include healthy state data, a fault-attention generative probabilistic adversarial autoencoder (FGPAA) is proposed to automatically find low-dimensional manifold embedded in high-dimensional space of the signal. Benefited from the characteristics of autoencoder, the signal information loss in feature extraction is reduced. Then, the fault-attention abnormal state indictor can be constructed with the distribution probability of low-dimensional feature and reconstruction error. Effectiveness of the model is verified with fault classification datasets and run-to-failure experimental datasets. The results show that FGPAA outperforms both GPAA and other traditional methods and can be processed in real time. It not only can obtain high accuracy for both classification data and run-to-failure data, but also achieve a certain trend index for run-to-failure data.
AB - Anomaly detection is one of the most fundamental and indispensable components in predictive maintenance. In this article, anomaly detection is modeled as a one-class classification problem. Based on the scenario that the training data only include healthy state data, a fault-attention generative probabilistic adversarial autoencoder (FGPAA) is proposed to automatically find low-dimensional manifold embedded in high-dimensional space of the signal. Benefited from the characteristics of autoencoder, the signal information loss in feature extraction is reduced. Then, the fault-attention abnormal state indictor can be constructed with the distribution probability of low-dimensional feature and reconstruction error. Effectiveness of the model is verified with fault classification datasets and run-to-failure experimental datasets. The results show that FGPAA outperforms both GPAA and other traditional methods and can be processed in real time. It not only can obtain high accuracy for both classification data and run-to-failure data, but also achieve a certain trend index for run-to-failure data.
KW - Anomaly detection
KW - artificial neural networks
KW - condition monitoring
KW - one-class classification, predictive maintenance
UR - https://www.scopus.com/pages/publications/85092078698
U2 - 10.1109/TII.2020.2976752
DO - 10.1109/TII.2020.2976752
M3 - 文章
AN - SCOPUS:85092078698
SN - 1551-3203
VL - 16
SP - 7479
EP - 7488
JO - IEEE Transactions on Industrial Informatics
JF - IEEE Transactions on Industrial Informatics
IS - 12
M1 - 9016153
ER -