Friction and Wear Monitoring Methods for Journal Bearings of Geared Turbofans Based on Acoustic Emission Signals and Machine Learning
Abstract
:1. Introduction
2. Experimental Methods
2.1. Materials
2.2. Journal Bearing Test Rigs
2.2.1. Small Journal Bearing Test Rig (STR)
2.2.2. Temperature-Controlled Journal Bearing Test Rig (TCTR)
2.2.3. Acoustic Emission (AE) Measurement Equipment
2.3. Experimental Procedures
2.3.1. Generation of Different Friction States
2.3.2. Generation of Run-in Wear
2.3.3. Generation of Long-Term Wear
3. Results and Discussion
- Classification of the three main friction states by using machine learning algorithms applied on AE signals (Section 3.1).
- Mixed friction localization over the circumference of the journal bearing by using the AE modulation effect generated during friction (Section 3.2).
- Investigations of run-in wear (Section 3.3) by using AE features and tactile measurements as validation.
- Investigations of long term wear (Section 3.4) by using AE features and tactile measurements as validation.
3.1. Classification of Journal Bearing Friction States
3.1.1. AE Signal Pre-Processing
3.1.2. Feature Extraction
3.1.3. Data Labelling
3.1.4. SVM Classifier
3.1.5. Influence of Temperature Variations
3.2. Localization of Journal Bearing Mixed Friction Events
3.2.1. Envelope Curve and Smoothing in Time Domain
3.2.2. Resampling to Angle Domain
3.3. Monitoring of Journal Bearing Run-in Wear
3.4. Monitoring of Journal Bearing Long-Term Wear
4. Conclusions
- Friction state classification: This was done under varying rotational speeds and radial loads by pre-processing the AE signals, extracting and selecting suitable AE features from time, frequency and time-frequency domain using CWT and applying SVM as classifier. A feature vector consisting of the features Shannon entropy, kurtosis and median frequency was the input for the classifier. An overall detection rate of 96.7% was achieved for this three class problem. Furthermore, it was shown that it is possible to distinguish the three friction classes with AE even under different oil viscosities.
- Mixed friction localization: This was done over the circumference of the bearing by making use of the AE modulation effect. The envelope of the AE signal was smoothed and fused with the zero-phase signal of an incremental encoder to resample it from time to angle domain. The local maxima show the friction position and by adding a threshold the friction distance can also be determined.
- Monitoring of run-in wear: Short-term wear test were done to monitor the run-in wear with the use of separation effective AE features. With increasing run-in wear there was a clear shift visible in the AE features. These results were validated with tactile measurements of the journal bearing surface.
- Monitoring of long-term wear: Long-term wear investigations were done. There is a correlation visible between the wear volume and the integrated AE RMS but further research is needed in this area.
5. Further Work
6. Patents
Author Contributions
Funding
Acknowledgments
Conflicts of Interest
Abbreviations
A/D | Analog-to-digital |
AE | Acoustic emission |
BPR | Bypass ratio |
CV | Contact voltage |
CWT | Continuous wavelet transform |
EASA | European Union Aviation Safety Agency |
DF | Dry friction |
FF | Fluid friction |
FFMEA | Function Failure Mode & Effect Analysis |
FZG | Forschungsstelle für Zahnräder und Getriebebau |
Int | Integrated |
MF | Mixed friction |
PAC | Physical Acoustic Cooperation |
PGB | Power Gearbox |
RFID | Radio Frequency Identification Device |
RMS | Root Mean Square |
RPM | Revolutions per minute |
RUL | Remaining useful lifetime |
STR | Small journal bearing test rig |
SVM | Support Vector Machine |
TCTR | Temperature-controlled journal bearing test rig |
WD | Wideband |
WDTU | Wireless Data Transfer Unit |
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Test Rig | Results in Section |
---|---|
STR | Section 3.1.1, Section 3.1.2, Section 3.1.3 and Section 3.1.4/Section 3.2/Section 3.3 |
TCTR | Section 3.1.5/Section 3.4 |
Number of Measurement | Rotational Speed in rpm | Load in kN | Temperature in °C | Testing Time in h |
---|---|---|---|---|
1 | 400 | 8 | 60 | 18 |
2 | 300 | 8 | 60 | 18 |
3 | 200 | 8 | 60 | 18 |
4 | 150 | 8 | 60 | 18 |
5 | 100 | 8 | 60 | 18 |
6 | 80 | 8 | 60 | 18 |
7 | 70 | 8 | 60 | 18 |
8 | 65 | 8 | 60 | 18 |
9 | 55 | 8 | 60 | 18 |
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Mokhtari, N.; Pelham, J.G.; Nowoisky, S.; Bote-Garcia, J.-L.; Gühmann, C. Friction and Wear Monitoring Methods for Journal Bearings of Geared Turbofans Based on Acoustic Emission Signals and Machine Learning. Lubricants 2020, 8, 29. https://doi.org/10.3390/lubricants8030029
Mokhtari N, Pelham JG, Nowoisky S, Bote-Garcia J-L, Gühmann C. Friction and Wear Monitoring Methods for Journal Bearings of Geared Turbofans Based on Acoustic Emission Signals and Machine Learning. Lubricants. 2020; 8(3):29. https://doi.org/10.3390/lubricants8030029
Chicago/Turabian StyleMokhtari, Noushin, Jonathan Gerald Pelham, Sebastian Nowoisky, José-Luis Bote-Garcia, and Clemens Gühmann. 2020. "Friction and Wear Monitoring Methods for Journal Bearings of Geared Turbofans Based on Acoustic Emission Signals and Machine Learning" Lubricants 8, no. 3: 29. https://doi.org/10.3390/lubricants8030029
APA StyleMokhtari, N., Pelham, J. G., Nowoisky, S., Bote-Garcia, J. -L., & Gühmann, C. (2020). Friction and Wear Monitoring Methods for Journal Bearings of Geared Turbofans Based on Acoustic Emission Signals and Machine Learning. Lubricants, 8(3), 29. https://doi.org/10.3390/lubricants8030029