Remaining Useful Life Prediction of Rolling Bearings Using GRU-DeepAR with Adaptive Failure Threshold
Abstract
:1. Introduction
2. DeepAR Model
2.1. LSTM Model
2.2. GRU Model
2.3. GRU-DeepAR Model
3. RUL Prediction of Rolling Bearings Based on GRU-DeepAR Model
- Feature extraction of vibration signal
- 2.
- Adaptive determination of failure thresholds
- 3.
- Model training
- 4.
- RUL prediction and error evaluation
- Collect the vibration data of rolling bearing to the current moment and extract the features of the vibration data;
- Divide the operation stages and determine the starting point of degradation and adaptively determine the failure threshold;
- Input all the data after the starting point of degradation into the proposed model for model training;
- Predict the amplitude after the current moment using the trained model and the predicted failure point is obtained when the amplitude is larger than the failure threshold.
4. Experimental Verification
4.1. XJTU-SY Dataset Experimental Verification
4.1.1. Test Data
4.1.2. GRU-DeepAR Model Training
4.1.3. Test Results
4.2. Self-Made Rolling Bearing Accelerated Degradation Testbed Experimental Verification
4.2.1. Test Data
4.2.2. Test Results
4.3. Comparative Experiment
5. Analysis and Discussion
6. Conclusions
- Effective degradation information can be rapidly extracted as model input by dividing the bearing operation stage into smooth operation and degradation stage;
- The results of RUL prediction of the rolling bearings under various operating conditions and degradation modes are accurate using the adaptive failure thresholds;
- The GRU-DeepAR prediction model has good generalization and stability in the RUL prediction of rolling bearings, which improves the prediction accuracy;
- In actual engineering, since the determination of the failure threshold only depends on the data in the smooth operation stage, real-time RUL prediction of rolling bearings can be realized even before the entire life data of the bearing is obtained.
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Conflicts of Interest
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Type | Feature |
---|---|
time-domain feature | maximum |
minimum | |
average | |
peak-to-peak | |
square root magnitude | |
rectified average | |
variance | |
kurtosis | |
skewness | |
root mean square | |
dimensionless feature | waveform factor |
peak factor | |
impulse factor | |
clearance factor | |
frequency-domain feature | mean square spectrum |
root mean square spectrum | |
frequency domain average amplitude | |
frequency domain variance | |
frequency domain peak | |
center of gravity frequency |
Operating Condition | Rotational Speed/(r/min) | Radial Force/(kN) |
---|---|---|
condition 1 | 2100 | 12 |
condition 2 | 2500 | 11 |
condition 3 | 2400 | 10 |
Epochs | Batch_size | Window_size | Layers | Units |
---|---|---|---|---|
20 | 16 | 20 | 3 | 128 |
Dataset | Dataset | MSE | MAE |
---|---|---|---|
XJTU-SY bearing1_3 | CNN | 0.1691 | 0.2169 |
LSTM | 0.1898 | 0.2700 | |
GRU-DeepAR | 0.0941 | 0.1916 | |
XJTU-SY bearing2_1 | CNN | 0.1437 | 0.1929 |
LSTM | 0.1698 | 0.1559 | |
GRU-DeepAR | 0.0963 | 0.1421 | |
Self-made testbed dataset | CNN | 0.2637 | 0.1812 |
LSTM | 0.3736 | 0.2489 | |
GRU-DeepAR | 0.0415 | 0.1647 |
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Li, J.; Wang, Z.; Liu, X.; Feng, Z. Remaining Useful Life Prediction of Rolling Bearings Using GRU-DeepAR with Adaptive Failure Threshold. Sensors 2023, 23, 1144. https://doi.org/10.3390/s23031144
Li J, Wang Z, Liu X, Feng Z. Remaining Useful Life Prediction of Rolling Bearings Using GRU-DeepAR with Adaptive Failure Threshold. Sensors. 2023; 23(3):1144. https://doi.org/10.3390/s23031144
Chicago/Turabian StyleLi, Jiahui, Zhihai Wang, Xiaoqin Liu, and Zhengjiang Feng. 2023. "Remaining Useful Life Prediction of Rolling Bearings Using GRU-DeepAR with Adaptive Failure Threshold" Sensors 23, no. 3: 1144. https://doi.org/10.3390/s23031144