New Attention Ensemble-Based Fault Diagnosis for Industrial Processes Under Imbalanced Finite Data
Abstract
During industrial processes operation, fault diagnosis needs to rely on finite and imbalanced samples for learning because the equipment is usually in a normal operation state and the probability of faults is low. For this issue, we propose a new attention ensemble algorithm, DMSAM-OAdB. First, the multiscale sparse attention module (MSAM) extracts and fuses feature information from different scales to establish the correlation among features and adaptively adjusts the feature weights by soft thresholding operation to emphasize the critical features while filtering the redundant information. Subsequently, a deep network model (DMSAM) constructed by stacking multiple convolutional layers and MSAMs is…
Citation impact
- FWCI
- 49.24
- Percentile
- 99%
- References
- 27
Authors
2- YZYaoqian ZhuCorresponding
Hangzhou Dianzi University
- RZRidong Zhang
Hangzhou Dianzi University
Topics & keywords
- Thresholding
- Pattern recognition (psychology)
- AdaBoost
- Feature extraction
- Classifier (UML)
- Feature (linguistics)
- Reliability (semiconductor)
- Convolutional neural network
- Reduced inequalities