A review of the application of deep learning in intelligent fault diagnosis of rotating machinery
Z Zhu, Y Lei, G Qi, Y Chai, N Mazur, Y An, X Huang - Measurement, 2023 - Elsevier
With the rapid development of industry, fault diagnosis plays a more and more important role
in maintaining the health of equipment and ensuring the safe operation of equipment. Due to …
in maintaining the health of equipment and ensuring the safe operation of equipment. Due to …
A perspective survey on deep transfer learning for fault diagnosis in industrial scenarios: Theories, applications and challenges
Abstract Deep Transfer Learning (DTL) is a new paradigm of machine learning, which can
not only leverage the advantages of Deep Learning (DL) in feature representation, but also …
not only leverage the advantages of Deep Learning (DL) in feature representation, but also …
Towards trustworthy rotating machinery fault diagnosis via attention uncertainty in transformer
To enable researchers to fully trust the decisions made by deep diagnostic models,
interpretable rotating machinery fault diagnosis (RMFD) research has emerged. Existing …
interpretable rotating machinery fault diagnosis (RMFD) research has emerged. Existing …
FGDAE: A new machinery anomaly detection method towards complex operating conditions
Recent studies on machinery anomaly detection only based on normal data training models
have yielded good results in improving operation reliability. However, most of the studies …
have yielded good results in improving operation reliability. However, most of the studies …
Bayesian variational transformer: A generalizable model for rotating machinery fault diagnosis
Transformer has been widely applied in the research of rotating machinery fault diagnosis
due to its ability to explore the internal correlation of vibration signals. However, challenges …
due to its ability to explore the internal correlation of vibration signals. However, challenges …
The emerging graph neural networks for intelligent fault diagnostics and prognostics: A guideline and a benchmark study
Deep learning (DL)-based methods have advanced the field of Prognostics and Health
Management (PHM) in recent years, because of their powerful feature representation ability …
Management (PHM) in recent years, because of their powerful feature representation ability …
CFCNN: A novel convolutional fusion framework for collaborative fault identification of rotating machinery
Sensor techniques and emerging CNN models have greatly facilitated the development of
collaborative fault diagnosis. Existing CNN models apply different fusion schemes to …
collaborative fault diagnosis. Existing CNN models apply different fusion schemes to …
Physics-informed interpretable wavelet weight initialization and balanced dynamic adaptive threshold for intelligent fault diagnosis of rolling bearings
C He, H Shi, J Si, J Li - Journal of Manufacturing Systems, 2023 - Elsevier
Intelligent fault diagnosis of rolling bearings using deep learning-based methods has made
unprecedented progress. However, there is still little research on weight initialization and the …
unprecedented progress. However, there is still little research on weight initialization and the …
Physics-Informed LSTM hyperparameters selection for gearbox fault detection
A situation often encountered in the condition monitoring (CM) and health management of
gearboxes is that a large volume of CM data (eg, vibration signal) collected from a healthy …
gearboxes is that a large volume of CM data (eg, vibration signal) collected from a healthy …
Multireceptive field graph convolutional networks for machine fault diagnosis
Deep learning (DL) based methods have swept the field of mechanical fault diagnosis,
because of the powerful ability of feature representation. However, many of existing DL …
because of the powerful ability of feature representation. However, many of existing DL …