Bearing Crack Diagnosis Using a Smooth Sliding Digital Twin to Overcome Fluctuations Arising in Unknown Conditions
Abstract
:1. Introduction
- Propose an indirect (RMS feature) AE bearing signal modeling technique using a robust autoregressive fuzzy Gauss–Laguerre algorithm.
- Design a robust smooth sliding digital twin using the combination of indirect AE bearing signal modeling and an online tuning sliding fuzzy (smooth sliding) algorithm.
- Apply a machine learning technique to the robust smooth sliding digital twin for feature classification and crack size identification.
2. Experimental Dataset
3. Proposed Scheme
3.1. Resampling and Featuring
3.2. Proposed Robust Smooth Sliding Digital Twin
3.2.1. Proposed Autoregressive Fuzzy Gauss–Laguerre Feature Modeling
Algorithm 1: Proposed RMS feature modeling using the autoregressive fuzzy Gauss–Laguerre approach. | |
1: | RMS feature signal modeling using the autoregressive procedure; Equation (2) |
Detail | |
1.1 | Calculate , Equation (3) |
1.2 | Calculate, Equation (2) |
1.3 | Calculate , Equation (2) |
2: | Gaussian method is applied to the autoregressive approach to enhance the power of nonlinearity modeling; Equation (4) |
Detail | |
2.1 | Calculate , Equation (7) |
2.2 | Calculate Equation (4) |
2.3 | Calculate , Equation (5) |
2.4 | Calculate , Equation (5) |
2.5 | Calculate , Equation (4) |
3: | Increase the robustness of RMS feature signal modeling and reduce the error of RMS feature signal modeling using the combination of the Laguerre filter technique and autoregressive Gaussian algorithm; Equation (8) |
Detail | |
3.1 | Calculate , Equation (9) |
3.2 | Calculate, Equation (8) |
3.3 | Calculate , Equation (8) |
4: | To modify the power of nonlinearity signal modeling, the application of a fuzzy algorithm in the autoregressive Gauss–Laguerre is announced; Equation (10) |
Detail | |
4.1 | Calculate Equation (11) |
4.2 | Calculate Equation (10) |
4.3 | Calculate , Equation (10) |
3.2.2. Proposed Higher-Order Sliding Fuzzy Observer
Algorithm 2: Proposed smooth sliding digital twin approach. | |
1: | RMS signal estimation using the combination of the proposed autoregressive fuzzy Gauss–Laguerre RMS signal modeling approach and second-order sliding observer; Equation (12) |
Detail | |
1.1 | Calculate , Equation (13) |
1.2 | Calculate, Equation (12) |
1.3 | Calculate , Equation (12) |
2: | Improve the robustness of RMS signal estimation using the combination of the proposed autoregressive fuzzy Gauss–Laguerre RMS signal modeling approach and high-order sliding observer; Equation (16) |
Detail | |
2.1 | Calculate , Equation (14) |
2.2 | Calculate Equation (15) |
2.3 | Calculate , Equation (15) |
2.4 | Calculate , Equation (17) |
2.5 | Calculate , Equation (16) |
2.6 | Calculate , Equation (16) |
3: | Reduce the effect of the chattering phenomenon using the combination of the autoregressive fuzzy Gauss–Laguerre algorithm, high-order sliding observer, and fuzzy algorithm to design the proposed smooth sliding digital twin; Equation (18) |
Detail | |
3.1 | Calculate , Equation (19) |
3.2 | Calculate, Equation (18) |
3.3 | Calculate , Equation (18) |
3.3. Bearing Anomaly Identification and Crack Size Detection
4. Experimental Results
5. Conclusions
Author Contributions
Funding
Data Availability Statement
Conflicts of Interest
References
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AE Sensor (PAC WSα) Information | PCI Board with Two-Channel AE Sensor Information |
---|---|
Peak sensitivity [V/µbar]: −62 dB Operational frequency range: 100–900 kHz Directionality: ±1.5 dB Resonant frequency: 650 kHz | A/D conversion: 18-bit 40 MHz AE sensor: 2 channels (one has a 10 M samples/s rate, and the other has a 5 M samples/s rate; the two channels are used simultaneously) |
Conditions | Speed of Motor [RPM] | Size of Crack [mm] |
---|---|---|
NS | 300, 400, 450, 500 | - |
OS, IS, BS, IOS, IBS, OBS, IOBS | 300, 400, 450, 500 | 3; 6 |
Conditions | Number of Training (Samples) | Number of Testing (Samples) |
---|---|---|
Anomaly Diagnosis | ||
NS | 300 | 100 |
OS, IS, BS, IOS, IBS, OBS, IOBS | 600 | 200 |
Crack size identification in the (OS), (IS), (BS), (IOS), (IBS), (OBS), and (IOBS) | ||
Crack sizes: 3 mm and 6 mm | 300 | 100 |
States | Proposed Smooth Sliding Digital Twin and SVM (%) | High-Order Sliding Digital Twin and SVM (%) | Sliding Digital Twin and SVM (%) |
---|---|---|---|
NS | 100 | 100 | 100 |
BS | 99 | 91 | 89 |
IS | 97 | 92 | 88 |
OS | 98 | 92 | 87 |
IBS | 96 | 90 | 86 |
IOS | 96 | 88 | 89 |
OBS | 98 | 91 | 90 |
IOBS | 98 | 90 | 87 |
Average accuracy | 97.75 | 91.75 | 89.5 |
State | Crack Sizes (mm) | Proposed Smooth Sliding Digital Twin and SVM (%) | High-Order Sliding Digital Twin and SVM (%) | Sliding Digital Twin and SVM (%) |
---|---|---|---|---|
BS | 3 | 98 | 90 | 85 |
6 | 98 | 92 | 86 | |
IS | 3 | 97 | 88 | 86 |
6 | 98 | 92 | 88 | |
OS | 3 | 98 | 90 | 88 |
6 | 96 | 91 | 89 | |
IBS | 3 | 98 | 89 | 85 |
6 | 98 | 92 | 86 | |
OBS | 3 | 97 | 90 | 83 |
6 | 99 | 93 | 85 | |
IOS | 3 | 97 | 90 | 86 |
6 | 99 | 91 | 88 | |
IOBS | 3 | 98 | 92 | 85 |
6 | 98 | 92 | 86 | |
Average accuracy of size identification | 97.78 | 90.86 | 86.14 |
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Piltan, F.; Kim, C.-H.; Kim, J.-M. Bearing Crack Diagnosis Using a Smooth Sliding Digital Twin to Overcome Fluctuations Arising in Unknown Conditions. Appl. Sci. 2022, 12, 6770. https://doi.org/10.3390/app12136770
Piltan F, Kim C-H, Kim J-M. Bearing Crack Diagnosis Using a Smooth Sliding Digital Twin to Overcome Fluctuations Arising in Unknown Conditions. Applied Sciences. 2022; 12(13):6770. https://doi.org/10.3390/app12136770
Chicago/Turabian StylePiltan, Farzin, Cheol-Hong Kim, and Jong-Myon Kim. 2022. "Bearing Crack Diagnosis Using a Smooth Sliding Digital Twin to Overcome Fluctuations Arising in Unknown Conditions" Applied Sciences 12, no. 13: 6770. https://doi.org/10.3390/app12136770
APA StylePiltan, F., Kim, C. -H., & Kim, J. -M. (2022). Bearing Crack Diagnosis Using a Smooth Sliding Digital Twin to Overcome Fluctuations Arising in Unknown Conditions. Applied Sciences, 12(13), 6770. https://doi.org/10.3390/app12136770