Bearing Fault Diagnosis of Split Attention Network Based on Deep Subdomain Adaptation
Abstract
:1. Introduction
- The vibration signal was transformed into a time-frequency graph by continuous wavelet transform as the learning object of the network. Compared with the one-dimensional vibration signal, the time-frequency graph can not only provide the time-domain and frequency-domain characteristics of the fault, but also avoid the network to learn the single dimensional characteristics and affect the diagnosis accuracy.
- The split attention module was introduced into the feature extraction network, and the multi-channel structure and attention mechanism were adopted to enrich the feature map diversity and improve the ability of the network to learn fault features.
- LMMD was used to measure the difference of relevant subdomains in the source domain and target domain data, and the distribution of relevant subdomains under the same category was adjusted to capture the fine-grained information of each category, so as to achieve the subdomain alignment.
- The method performance was compared to several widely used intelligent bearing fault diagnosis methods, and its effectiveness was verified.
2. Related Works
2.1. Problem Description
2.2. ResNeSt-Split Attention Network
2.3. Subdomain Adaptation
3. Method
3.1. The SPDSAN Diagnostic Process
3.2. Target Optimization
- Minimizing the difference of between the real and the predicted label of the source domain sample. This will increase the classifier accuracy when diagnosing the source domain sample.
- Minimize the LMMD of between the source and the target domain.
4. Experiment and Analysis
4.1. Introduction to the Fault Datasets
4.2. Build Experimental Datasets
Healthy State | Fault Size | 0 HP | 1 HP | 2 HP | 3 HP | All |
---|---|---|---|---|---|---|
NA | 0 | 486 | 966 | 968 | 968 | 3388 |
0.1778 | 241 | 242 | 243 | 244 | 970 | |
IF | 0.3556 | 242 | 242 | 242 | 242 | 968 |
0.5334 | 243 | 242 | 242 | 242 | 969 | |
0.1778 | 242 | 243 | 241 | 244 | 970 | |
OF | 0.3556 | 242 | 242 | 242 | 242 | 968 |
0.5334 | 243 | 242 | 243 | 242 | 970 | |
0.1778 | 244 | 241 | 242 | 242 | 969 | |
BF | 0.3556 | 242 | 243 | 242 | 243 | 970 |
0.5334 | 242 | 242 | 243 | 243 | 970 | |
All | ---- | 2667 | 3145 | 3148 | 3152 | 12,112 |
4.3. The Experimental Contrast
4.4. Feature Visualization
5. Conclusions
- Compared with ResNet, ResNeSt, which integrates multi-channel and split-attention mechanisms, can more fully learn the transferable fault features in samples. This facilitates subsequent transfer learning tasks.
- In the domain adaptation layer, the subdomain alignment method is used to reduce the distribution difference between the and the , and to reduce the misdiagnosis caused by the small subdomain distance caused by the global alignment. Therefore, it is only necessary to train the network with samples under one working condition to complete the fault diagnosis under all working conditions
- The comparison and analysis of different experimental results show that the proposed method has good generalization and robustness.
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Acknowledgments
Conflicts of Interest
References
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Serial Number | Healthy State | Fault Size/mm |
---|---|---|
NA | Normal | 0 |
IF-0.1 | Inner ring fault | 0.1778 |
OF-0.1 | Outer ring fault | 0.1778 |
BF-0.1 | Ball bearing fault | 0.1778 |
IF-0.3 | Inner ring fault | 0.3556 |
OF-0.3 | Outer ring fault | 0.3556 |
BF-0.3 | Ball bearing fault | 0.3556 |
IF-0.5 | Inner ring fault | 0.5334 |
OF-0.5 | Outer ring fault | 0.5334 |
BF-0.5 | Ball bearing fault | 0.5334 |
Methods/Task | 0-1 | 0-2 | 0-3 | 1-0 | 1-2 | 1-3 | 2-0 | 2-1 | 2-3 | 3-0 | 3-1 | 3-2 | Average |
---|---|---|---|---|---|---|---|---|---|---|---|---|---|
DAN | 95.2 | 99.0 | 95.6 | 90.2 | 96.6 | 96.3 | 88.0 | 93.4 | 98.8 | 84.0 | 90.3 | 91.5 | 93.2 |
DAAN | 98.0 | 97.0 | 92.0 | 89.0 | 99.0 | 96.0 | 82.0 | 93.0 | 89.0 | 85.0 | 82.0 | 97.0 | 91.6 |
MRAN | 99.0 | 100 | 99.0 | 94.0 | 100 | 99.0 | 100 | 99.0 | 100 | 97.0 | 99.0 | 100 | 98.8 |
RDSAN | 99.5 | 99.9 | 99.8 | 99.7 | 100 | 99.9 | 99.7 | 99.3 | 100 | 90.5 | 99.2 | 100 | 98.9 |
SPDSAN | 100 | 100 | 99.9 | 99.9 | 100 | 99.9 | 99.9 | 99.4 | 99.9 | 99.5 | 99.8 | 100 | 99.9 |
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Wang, H.; Pu, L. Bearing Fault Diagnosis of Split Attention Network Based on Deep Subdomain Adaptation. Appl. Sci. 2022, 12, 12762. https://doi.org/10.3390/app122412762
Wang H, Pu L. Bearing Fault Diagnosis of Split Attention Network Based on Deep Subdomain Adaptation. Applied Sciences. 2022; 12(24):12762. https://doi.org/10.3390/app122412762
Chicago/Turabian StyleWang, Haitao, and Lindong Pu. 2022. "Bearing Fault Diagnosis of Split Attention Network Based on Deep Subdomain Adaptation" Applied Sciences 12, no. 24: 12762. https://doi.org/10.3390/app122412762
APA StyleWang, H., & Pu, L. (2022). Bearing Fault Diagnosis of Split Attention Network Based on Deep Subdomain Adaptation. Applied Sciences, 12(24), 12762. https://doi.org/10.3390/app122412762