Quantitative and Localization Fault Diagnosis Method of Rolling Bearing Based on Quantitative Mapping Model
Abstract
:1. Introduction
2. Mathematical Morphological Filter (MMF)
2.1. Morphological Filtering Operators
2.2. Structure Element (SE)
3. Average Multiscale Permutation Entropy (A-MPE)
4. Quantitative Mapping Model (QMM)
4.1. Establishment of QMM
4.2. The Steps of Establishing QMM
- (1)
- Collecting the vibration signals of rolling bearings under different fault sizes of the outer and inner rings.
- (2)
- The vibration signals of different fault sizes are analyzed morphologically (Equation (11) and the preprocessed signals are obtained.
- (3)
- Solving the A-MPEs of the preprocessed signals.
- (4)
- Fitting the A-MPEs through a regression model (Equations (19) and (24)) to obtain linear and nonlinear QMMs.
- (5)
- According to the mathematical characteristics of the QMM, the fault localization diagnosis is realized.
- (6)
- In order to verify accuracy, linear and nonlinear QMMs are used to predict the fault size of rolling bearings and to select the appropriate QMM through the rate of errors in predicting the fault size.
5. Experimental Verification
5.1. Vibration Signal of Rolling Bearing
5.2. Establish QMM of Rolling Bearing
6. Conclusions
- (1)
- With an increase in the outer ring fault size, the average multiscale permutation entropy (A-MPE) of the vibration signal gradually increases. With an increase in the inner ring fault size, A-MPE of the vibration signal gradually decreases.
- (2)
- The experimental vibration signals are often accompanied by noise and interference signals, which affects the complexity of the vibration signals. In this paper, in order to extract the time-domain geometric feature of fault bearing vibration signal, the multiscale morphological filtering (MMF) method is used to analyze the vibration signal of fault rolling bearings and the A-MPEs of the analyzed vibration signals with different fault sizes have a clear degree of discrimination, which increases the accuracy of the QMM for fault prediction.
- (3)
- The linear and nonlinear QMMs are used to predict the fault dimension by mapping the relationships respectively. When predicting both inner or outer ring faults, the results show that the accuracy of the linear QMM is higher than the nonlinear QMM, before the linear QMM is used as the final QMM.
- (4)
- According to the slope of the linear QMM, the localization diagnosis of the rolling bearing is realized. If the slope of the linear QMM of the vibration signal is greater than 0, the group vibration signal is the outer ring fault bearing vibration signal. Otherwise, it is the inner ring fault.
Author Contributions
Funding
Acknowledgments
Conflicts of Interest
References
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Morphological Operators | Positive Impact | Negative Impact |
---|---|---|
Erosion operator | Inhibition | Smoothness |
Dilation operator | Smoothness | Inhibition |
Opening operator | Smoothness | Retention |
Closing operator | Retention | Smoothness |
Top-hat operator | Retention | Smoothness |
Top-hat’s dual operator | Retention | Smoothness |
Gradient operator | Smoothness | Smoothness |
Difference operator | Retention | Retention |
Scale | Length | Height |
---|---|---|
1 | 3 | {0, 0, 0} |
2 | 4 | {0, 0, 0, 0} |
n | n + 2 | {0, 0, ..., 0, 0} |
Type | QMM | Actual Size | Prediction | Error Rate |
---|---|---|---|---|
Linear | A-MPE = 0.0192x + 0.3339 | 5 mm | 4.599 mm | 8% |
Nonlinear | A-MPE = −0.0029x2 + 0.031x + 0.3271 | 5 mm | no | no |
Type | QMM | Actual Size | Prediction | Error Rate |
---|---|---|---|---|
Linear | A-MPE = −0.0136x + 0.6584 | 5 mm | 5.294 mm | 5.88% |
Nonlinear | A-MPE = −0.0032x2 – 0.0008x + 0.6504 | 5 mm | 4.366 mm | 12.68% |
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Wang, J.; Cui, L.; Xu, Y. Quantitative and Localization Fault Diagnosis Method of Rolling Bearing Based on Quantitative Mapping Model. Entropy 2018, 20, 510. https://doi.org/10.3390/e20070510
Wang J, Cui L, Xu Y. Quantitative and Localization Fault Diagnosis Method of Rolling Bearing Based on Quantitative Mapping Model. Entropy. 2018; 20(7):510. https://doi.org/10.3390/e20070510
Chicago/Turabian StyleWang, Jialong, Lingli Cui, and Yonggang Xu. 2018. "Quantitative and Localization Fault Diagnosis Method of Rolling Bearing Based on Quantitative Mapping Model" Entropy 20, no. 7: 510. https://doi.org/10.3390/e20070510
APA StyleWang, J., Cui, L., & Xu, Y. (2018). Quantitative and Localization Fault Diagnosis Method of Rolling Bearing Based on Quantitative Mapping Model. Entropy, 20(7), 510. https://doi.org/10.3390/e20070510