Feature Extraction of Impulse Faults for Vibration Signals Based on Sparse Non-Negative Tensor Factorization
Abstract
:Featured Application
Abstract
1. Introduction
2. Basic Theory of Non-Negative Tensor Factorization
2.1. Alternating Least Squares Algorithm for NTF
2.2. Hierarchical Alternating Least Squares Algorithm for NTF
2.3. HALS Algorithms for Sparse Non-Negative Tensor Factorization
3. Feature Extraction Method of an Impulse Fault
3.1. Principle of Phase Space Reconstruction
3.2. Time-Frequency Distribution Construction
3.3. Non-Negative Time-Frequency Tensor Analysis
3.4. Feature Extraction Method for Vibration Signals Based on Sparse Non-Negative Tensor Factorization
Algorithm 1: Feature Extraction Method for Vibration Signals Based on SNTF |
Step 1. The original one-dimensional signal is converted into a two-dimensional phase space by the PSR technique. |
Step 2. Perform STFT on the phase point vectors to acquire multiple time-frequency distributions. |
Step 3. Permutate the multiple TFDs to generate a third-order tensor . |
Step 4. Select a reduced-dimensionality index , and employ the SNTF-HALS algorithm to decompose the above tensor . This step returns the frequency matrix , the time matrix , and the phase matrix . |
Step 5. The reconstructed TFDs are obtained by , and the principal components (waveforms) are restored by ISTFT. |
Step 6. Feature extraction. For a selected waveform, envelope demodulation is used to capture the characteristic frequency of certain damages. |
4. Experiments on Feature Extraction of Machinery Faults
4.1. Feature Extraction of Impulse Fault on Bearing Dataset—Case 1
4.1.1. Experimental Settings
4.1.2. Feature Extraction Based on SNTF
4.1.3. Comparisons with Other Methods
4.2. Feature Extraction of Impulse Fault on Bearing Dataset—Case 2
4.2.1. Experimental Settings
4.2.2. Feature Extraction Based on SNTF
4.2.3. Comparison and Analysis
4.3. Experiment on the Swashplate Axial Piston Pump
4.3.1. Experimental Settings
4.3.2. Feature Extraction Based on SNTF
5. Conclusions
Author Contributions
Funding
Conflicts of Interest
References
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Bearing Model | Running Speed | Sampling Rate | Fault Position | Characteristic Frequency |
---|---|---|---|---|
Rexnord ZA-2115 | 2000 RPM | 20,000 Hz | Outer Ring | 236.9 Hz |
Bearing Model | Running Speed | Sampling Rate | Fault Position | Characteristic Frequency |
---|---|---|---|---|
SKF 6203-2RS | 1730 RPM | 12,000 Hz | Inner Ring | 143.2 Hz |
Bearing Model | Running Speed | Sampling Rate | Fault Characteristic Frequency |
---|---|---|---|
D8111Q | 3415 RPM | 25,600 Hz | 689.9 Hz |
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Liang, L.; Wen, H.; Liu, F.; Li, G.; Li, M. Feature Extraction of Impulse Faults for Vibration Signals Based on Sparse Non-Negative Tensor Factorization. Appl. Sci. 2019, 9, 3642. https://doi.org/10.3390/app9183642
Liang L, Wen H, Liu F, Li G, Li M. Feature Extraction of Impulse Faults for Vibration Signals Based on Sparse Non-Negative Tensor Factorization. Applied Sciences. 2019; 9(18):3642. https://doi.org/10.3390/app9183642
Chicago/Turabian StyleLiang, Lin, Haobin Wen, Fei Liu, Guang Li, and Maolin Li. 2019. "Feature Extraction of Impulse Faults for Vibration Signals Based on Sparse Non-Negative Tensor Factorization" Applied Sciences 9, no. 18: 3642. https://doi.org/10.3390/app9183642
APA StyleLiang, L., Wen, H., Liu, F., Li, G., & Li, M. (2019). Feature Extraction of Impulse Faults for Vibration Signals Based on Sparse Non-Negative Tensor Factorization. Applied Sciences, 9(18), 3642. https://doi.org/10.3390/app9183642