A Deep-Learning-Based Bearing Fault Diagnosis Using Defect Signature Wavelet Image Visualization
Abstract
:1. Introduction
- (1)
- To alleviate the limitations of previous methods used for transformation of1-D signals into 2-D images, a novel 2-D representation method is created by combining the envelope analysis and continuous wavelet transform (CWT) with filtering by the frequency range covering the bearing defect frequencies to generate the defect signature wavelet image (DSWI). The constructed DSWI is considered as the new signature, which solves the modulation problem, reduces the nonstationary effect in the signal, demonstrates the distinct patterns for the different types of faults in bearings, and closely relates to the defect frequencies in the envelope spectrum.
- (2)
- This study also introduces a specific architecture of the deep convolutional neural network (DCNN) for classifying multiple fault types that occur in bearings by learning the specific features from the DSWI representations. To estimate the performance of the proposed approach, it has been evaluated using the laboratory dataset collected from the bearing testbed. Finally, the results of the proposed method are compared with other methods presented in the literature.
2. Seed to the Data Acquisition System and Experimental Process
3. Fault Diagnosis Methodology Using the Defect Signature Wavelet Image
3.1. Bearing Fault Signature and Wavelet Analysis
3.2. 2-D Data Representation with Defect Signature Wavelet Image Generation
3.3. Deep Convolution Neural Network Structure Specification
4. Methodology Evaluation Results
4.1. Performance Evaluation of DSWI Compared to Vibration Image and Conventional Wavelet Spectrogram
4.2. Performance Comparison with Difference Model for Classification
5. Conclusions
Author Contributions
Funding
Conflicts of Interest
References
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Devices | Detailed Specification |
---|---|
AE sensor R15I-AST |
|
Vibration sensor PCB-622B01 |
|
DAQ type NI 9234 |
|
Scenarios | Type | Vibration Image Method | Wavelet Spectrogram | DSWI |
---|---|---|---|---|
(1) KNN + PCA | Normal | 35.50% | 0% | 93.50% |
Outer | 41.90% | 100% | 88.70% | |
Inner | 30.60% | 45.20% | 61.30% | |
Roller | 98.40% | 50.00% | 0% | |
Average accuracy | 51.42% | 48.99% | 61.13% | |
(2) MCSVM + PCA | Normal | 100% | 75.20% | 85.20% |
Outer | 96.80% | 84.23% | 90.02% | |
Inner | 91.90% | 86.80% | 86.70% | |
Roller | 35.50% | 81.40% | 89.12% | |
Average accuracy | 80.97% | 81.91% | 87.76% | |
(3) LeNet-5 | Normal | 32.25% | 96.77% | 93.54% |
Outer | 65.00% | 100% | 96.77% | |
Inner | 35.00% | 59.67% | 93.54% | |
Roller | 60.00% | 100% | 100% | |
Average accuracy | 46.77% | 89.11% | 95.97% | |
(4) AlexNet | Normal | 64.52% | 64.51% | 98.38% |
Outer | 100% | 100% | 100% | |
Inner | 13.33% | 98.38% | 93.54% | |
Roller | 96.77% | 100% | 100% | |
Average accuracy | 68.54% | 90.72% | 97.98% | |
Proposed DCNN | Normal | 100% | 75.80% | 96.80% |
Outer | 88.70% | 100% | 100% | |
Inner | 59.70% | 96.80% | 98.40% | |
Roller | 83.90% | 100% | 100% | |
Average accuracy | 83.06% | 93.15% | 98.79% |
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Duong, B.P.; Kim, J.Y.; Jeong, I.; Im, K.; Kim, C.H.; Kim, J.M. A Deep-Learning-Based Bearing Fault Diagnosis Using Defect Signature Wavelet Image Visualization. Appl. Sci. 2020, 10, 8800. https://doi.org/10.3390/app10248800
Duong BP, Kim JY, Jeong I, Im K, Kim CH, Kim JM. A Deep-Learning-Based Bearing Fault Diagnosis Using Defect Signature Wavelet Image Visualization. Applied Sciences. 2020; 10(24):8800. https://doi.org/10.3390/app10248800
Chicago/Turabian StyleDuong, Bach Phi, Jae Young Kim, Inkyu Jeong, Kichang Im, Cheol Hong Kim, and Jong Myon Kim. 2020. "A Deep-Learning-Based Bearing Fault Diagnosis Using Defect Signature Wavelet Image Visualization" Applied Sciences 10, no. 24: 8800. https://doi.org/10.3390/app10248800
APA StyleDuong, B. P., Kim, J. Y., Jeong, I., Im, K., Kim, C. H., & Kim, J. M. (2020). A Deep-Learning-Based Bearing Fault Diagnosis Using Defect Signature Wavelet Image Visualization. Applied Sciences, 10(24), 8800. https://doi.org/10.3390/app10248800