Fault Diagnosis Method for Rolling Mill Multi Row Bearings Based on AMVMD-MC1DCNN under Unbalanced Dataset
Abstract
:1. Introduction
2. AMVMD Signal Processing and Unbalanced Data Generation
2.1. Iterative Acceleration of MVMD
- (1)
- Initialize ,,, set , .
- (2)
- Set , and execute a loop to update , and until iterative precision is reached.Update for all ω > 0
- (3)
- Stop the iteration when the iteration accuracy is satisfied and output the set of modes uK and the center frequency ωK.
2.2. Parameter Optimization Based on GA
2.3. Unbalanced Data Generation Based on DCGAN
3. Analysis of Simulated Signals
3.1. Construction of Simulation Signal
3.2. Algorithm Performance Comparison
3.3. Generation of Simulation Data
4. Fault Diagnosis Model Based on AMVMD-MC1DCNN
4.1. One-Dimension Convolutional Neural Network
4.2. Multi-Channel One-Dimension Convolutional Neural Network
4.3. Fault Diagnosis Model
5. Experiments and Results Analysis
5.1. Signal Processing by AMVMD
5.2. Generate Reconstructed Data by DCGAN
5.3. Fault Diagnosis by MC1DCNN
5.4. Comparison Experiments
6. Conclusions
Author Contributions
Funding
Data Availability Statement
Acknowledgments
Conflicts of Interest
References
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Length of Signal | Computation Time of MVMD(s) | Calculation Time of AMVMD (s) |
---|---|---|
2000 | 0.737 | 0.506 |
4000 | 3.345 | 2.001 |
6000 | 8.185 | 5.020 |
8000 | 11.887 | 7.241 |
10,000 | 15.817 | 9.642 |
12,000 | 22.567 | 14.037 |
14,000 | 30.682 | 19.367 |
16,000 | 41.052 | 26.477 |
Types of Faults | Number of IMF | Penalty Factor α |
---|---|---|
Rolling element scratch | 5 | 2658 |
Broken cage | 6 | 2941 |
Rolling element flaking | 5 | 2931 |
Mixed faults | 6 | 2137 |
Network Structure | Convolution Kernel | Input Channel | Output Channel | Step | Activation Function |
---|---|---|---|---|---|
Convolutional layer 1 | 32 × 1 | 2 | 32 | 2 | Tanh |
Convolutional layer 2 | 4 × 1 | 32 | 64 | 2 | ReLU |
Convolutional layer 3 | 4 × 1 | 64 | 128 | 2 | ReLU |
Convolutional layer 4 | 4 × 1 | 128 | 128 | 2 | ReLU |
Input Signal | Classification Model | Accuracy |
---|---|---|
Original signal (Vertical) | DBN | 81.4% |
Original signal (Axial) | DBN | 84.2% |
Original signal (Mixed) | DBN | 89.8% |
Original signal (Vertical) | 1DCNN | 84.3% |
Original signal (Axial) | 1DCNN | 87.4% |
Original signal (Mixed) | 1DCNN | 91.7% |
MEMD reconstructed signal (Vertical) | DBN | 87.3% |
MEMD reconstructed signal (Axial) | DBN | 89.5% |
MEMD reconstructed signal (Mixed) | DBN | 91.6% |
MEMD reconstructed signal (Vertical) | 1DCNN | 87.5% |
MEMD reconstructed signal (Axial) | 1DCNN | 90.1% |
MEMD reconstructed signal (Mixed) | 1DCNN | 94.3% |
AMVMD reconstructed signal (Vertical) | DBN | 89.8% |
AMVMD reconstructed signal (Axial) | DBN | 91.3% |
AMVMD reconstructed signal (Mixed) | DBN | 95.4% |
AMVMD reconstructed signal (Vertical) | 1DCNN | 93.2% |
AMVMD reconstructed signal (Axial) | 1DCNN | 94.7% |
AMVMD reconstructed signal (Mixed) | 1DCNN | 96.1% |
AMVMD reconstructed signal | MC1DCNN | 98.2% |
Vibration Signal | Classification Model | Model Input | Accuracy |
---|---|---|---|
Vertical signal | VMD-ELM | Multidomain features | 90.4% |
Axial signal | VMD-ELM | Multidomain features | 92.6% |
Mixed signal | VMD-ELM | Multidomain features | 94.5% |
Vertical signal | MVMD-SVM | MWPE | 90.2% |
Axial signal | MVMD-SVM | MWPE | 91.4% |
Mixed signal | MVMD-SVM | MWPE | 94.7% |
Vertical signal | VMD-CNN | The reconstructed signal | 92.3% |
Axial signal | VMD-CNN | The reconstructed signal | 93.4% |
Mixed signal | VMD-CNN | The reconstructed signal | 95.1% |
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Zhao, C.; Sun, J.; Lin, S.; Peng, Y. Fault Diagnosis Method for Rolling Mill Multi Row Bearings Based on AMVMD-MC1DCNN under Unbalanced Dataset. Sensors 2021, 21, 5494. https://doi.org/10.3390/s21165494
Zhao C, Sun J, Lin S, Peng Y. Fault Diagnosis Method for Rolling Mill Multi Row Bearings Based on AMVMD-MC1DCNN under Unbalanced Dataset. Sensors. 2021; 21(16):5494. https://doi.org/10.3390/s21165494
Chicago/Turabian StyleZhao, Chen, Jianliang Sun, Shuilin Lin, and Yan Peng. 2021. "Fault Diagnosis Method for Rolling Mill Multi Row Bearings Based on AMVMD-MC1DCNN under Unbalanced Dataset" Sensors 21, no. 16: 5494. https://doi.org/10.3390/s21165494
APA StyleZhao, C., Sun, J., Lin, S., & Peng, Y. (2021). Fault Diagnosis Method for Rolling Mill Multi Row Bearings Based on AMVMD-MC1DCNN under Unbalanced Dataset. Sensors, 21(16), 5494. https://doi.org/10.3390/s21165494