Numerical Model Driving Multi-Domain Information Transfer Method for Bearing Fault Diagnosis
Abstract
:1. Introduction
2. Framework of cDNAP Model
2.1. Explicit Dynamic Method
2.2. Generative Adversarial Net
2.3. Cross-Domain Simulation Projection Matrix
2.4. Flow Chart of Fault Diagnosis Method
3. Validation of Bearing Dynamic Model and cDNAP
3.1. Establishment and Verification of Bearing Dynamic Model
- (1)
- Establishment of the dynamic model
- (2)
- Verification of the bearing dynamic model
3.2. Verification of WGAN-cDNAP
4. Application Verification
4.1. Bearing Fault Diagnosis of Single Working Condition
4.2. Bearing Fault Diagnosis of Compound Working Condition
4.3. Comparative Experimental Analysis
5. Conclusions
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Conflicts of Interest
References
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Health States | Working Condition Types | ||
---|---|---|---|
N; OF; IF; BF | 800 N/700 rpm | 800 N/1000 rpm | 800 N/1300 rpm |
1100 N/700 rpm | 1100 N/1000 rpm | 1100 N/1300 rpm | |
1500 N/700 rpm | 1500 N/1000 rpm | 1500 N/1300 rpm |
Conditions | Source Domain | Target Domain | Accuracy/% | |||||
---|---|---|---|---|---|---|---|---|
Speed/(Rad/s) | Load/N | Speed/(Rad/s) | Load/N | SVM | ELM | ELM+NAP | ELM+cDNAP | |
Variable load | 700 | 800/1100 | 700 | 1500 | 25 | 33.2 | 85.2 | 100 |
700 | 800/1500 | 700 | 1100 | 25 | 37.8 | 88.9 | 100 | |
700 | 1100/1500 | 700 | 800 | 24.5 | 36.2 | 89.7 | 99.9 | |
1000 | 800/1100 | 1000 | 1500 | 25 | 34.2 | 92.9 | 99.9 | |
1000 | 800/1500 | 1000 | 1100 | 25 | 39.4 | 89.2 | 100 | |
1000 | 1100/1500 | 1000 | 800 | 28 | 36.5 | 98.9 | 99.3 | |
1300 | 800/1100 | 1300 | 1500 | 25 | 35.1 | 94.5 | 99.9 | |
1300 | 800/1500 | 1300 | 1100 | 25 | 41.2 | 96.7 | 99.8 | |
1300 | 1100/1500 | 1300 | 800 | 25 | 38.8 | 94.5 | 99.6 | |
Variable speed | 700/1000 | 800 | 1300 | 800 | 25 | 33.4 | 97.7 | 99.3 |
700/1300 | 800 | 1000 | 800 | 25 | 35.2 | 99.2 | 99.3 | |
1000/1300 | 800 | 700 | 800 | 25 | 36.2 | 91.8 | 99.9 | |
700/1000 | 1100 | 1300 | 1100 | 27 | 34.7 | 95.7 | 99.9 | |
700/1300 | 1100 | 1000 | 1100 | 20.5 | 35.4 | 84.9 | 100 | |
1000/1300 | 1100 | 700 | 1100 | 25 | 32.5 | 88.3 | 100 | |
700/1000 | 1500 | 1300 | 1500 | 24.5 | 36.2 | 93.5 | 99.9 | |
700/1300 | 1500 | 1000 | 1500 | 25 | 31.8 | 93.4 | 99.9 | |
1000/1300 | 1500 | 700 | 1500 | 25 | 32.8 | 83.6 | 99.9 |
Conditions | Source Domain | Target Domain | Accuracy/% | |||||
---|---|---|---|---|---|---|---|---|
Speed/(rad/s) | Load/N | Speed/(rad/s) | Load/N | SVM | ELM | ELM+NAP | ELM+cDNAP | |
1 | 700/1000 | 800/1100 | 1300 | 1500 | 25 | 37.1 | 96.3 | 99.9 |
2 | 700/1000 | 800/1500 | 1300 | 1100 | 25 | 43.4 | 93.9 | 99.8 |
3 | 700/1000 | 1100/1500 | 1300 | 800 | 25 | 41.3 | 92.5 | 99.7 |
4 | 700/1300 | 800/1100 | 1000 | 1500 | 25 | 34.6 | 89.1 | 99.9 |
5 | 700/1300 | 800/1500 | 1000 | 1100 | 25 | 40.4 | 81.7 | 100 |
6 | 700/1300 | 1100/1500 | 1000 | 800 | 25 | 42.4 | 95.7 | 99.6 |
7 | 1000/1300 | 800/1100 | 700 | 1500 | 25 | 33.2 | 82.3 | 100 |
8 | 1000/1300 | 800/1500 | 700 | 1100 | 25 | 37.2 | 81.5 | 100 |
9 | 1000/1300 | 1100/1500 | 700 | 800 | 25 | 38.5 | 84.9 | 99.9 |
Conditions | Source Domain | Target Domain | Accuracy/% | ||||||
---|---|---|---|---|---|---|---|---|---|
Speed /(rad/s) | Load/N | Speed /(rad/s) | Load/N | ELM+NAP | ELM+cDNAP | DAAN | DANN | DSAN | |
1 | 700 | 800/1500 | 700 | 1100 | 88.9 | 100 | 42.2 | 77.3 | 67.8 |
2 | 1000 | 800/1500 | 1000 | 1100 | 89.2 | 100 | 37.0 | 69.7 | 70.5 |
3 | 1300 | 800/1500 | 1300 | 1100 | 96.7 | 99.8 | 31.5 | 98.8 | 92.3 |
4 | 700/1300 | 800 | 1000 | 800 | 99.2 | 99.3 | 29.2 | 75.0 | 67.8 |
5 | 700/1300 | 1100 | 1000 | 1100 | 84.9 | 100 | 39.0 | 75.0 | 77.8 |
6 | 700/1300 | 1500 | 1000 | 1500 | 93.4 | 99.9 | 25.0 | 90.7 | 90.2 |
7 | 700/1000 | 800/1500 | 1300 | 1100 | 93.9 | 99.8 | 28.7 | 99.0 | 94.2 |
8 | 700/1300 | 800/1100 | 1000 | 1500 | 89.1 | 99.9 | 50.0 | 90.0 | 83.7 |
9 | 1000/1300 | 1100/1500 | 700 | 800 | 84.9 | 99.9 | 25.0 | 64.8 | 61.3 |
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Zhang, L.; Zhang, H.; Xiao, Q.; Zhao, L.; Hu, Y.; Liu, H.; Qiao, Y. Numerical Model Driving Multi-Domain Information Transfer Method for Bearing Fault Diagnosis. Sensors 2022, 22, 9759. https://doi.org/10.3390/s22249759
Zhang L, Zhang H, Xiao Q, Zhao L, Hu Y, Liu H, Qiao Y. Numerical Model Driving Multi-Domain Information Transfer Method for Bearing Fault Diagnosis. Sensors. 2022; 22(24):9759. https://doi.org/10.3390/s22249759
Chicago/Turabian StyleZhang, Long, Hao Zhang, Qian Xiao, Lijuan Zhao, Yanqing Hu, Haoyang Liu, and Yu Qiao. 2022. "Numerical Model Driving Multi-Domain Information Transfer Method for Bearing Fault Diagnosis" Sensors 22, no. 24: 9759. https://doi.org/10.3390/s22249759
APA StyleZhang, L., Zhang, H., Xiao, Q., Zhao, L., Hu, Y., Liu, H., & Qiao, Y. (2022). Numerical Model Driving Multi-Domain Information Transfer Method for Bearing Fault Diagnosis. Sensors, 22(24), 9759. https://doi.org/10.3390/s22249759