The Investigation into the Tribological Impact of Alternative Fuels on Engines Based on Acoustic Emission
Abstract
:1. Introduction
2. AE Signal Acquisition
2.1. Engine Test Rig and Test Conditions
2.2. Test Procedure
3. AE Signal Process
3.1. AE Signals
3.2. Wavelet Packet Transform
3.3. Adaptive AE-WP Algorithm for Tribological Behaviors
3.3.1. Adaptive Threshold–AE Based on FAS
3.3.2. WPT Spectrum of AE Signals and Optimal Wavelet Basis
3.3.3. Optimal Threshold–WP Based on the Auto-Correlation Analysis of the Piston Velocity
- Apply the threshold given by Equation (2) to suppress the non-stationary AE bursts in the middle of the strokes; calculate the d value obtained Equation (4), and judge whether di − di−1 ≥ 0, otherwise reduce the iteration coefficient ci, and repeat step 1;
- Apply WPT to threshold–AE signals (K = 20 for the limited memory in the PC used) with analysis parameters: J = 8 and ‘db5’.
- Calculate the correlation coefficients between the envelope of WPT spectrums and modified piston speed , remove the frequency band with a low correlation which is less than 0.3;
- Calculate the residual WP coefficient RW as given in Equation (8) from 40–200 kHz to remove the noise of other sources.
- Perform inverses WPT to reconstruct the AE signals in the selected frequency bands; calculate the average envelope of 20 reconstructed signals of selected frequency bands, to enhance the similarity to the velocity profile sum the envelope signal matrix;
- Select the local sequence in the middle of each stroke, calculate the mean standard deviation for 20 working cycles as the FAS–AE indicator and AAC–AE indicator for four strokes.
4. Diagnosis of AL Fuel Tribological Impact
4.1. Diagnosis of Alternatives and the Baselines with FAS Effects
4.2. Diagnosis with AAC Effects
5. Conclusions
- The FAS–AE indicators are increased with speed and viscosity increasing. The AAC–AE is less significant using diesel than using biodiesel.
- The developed FAS–AE indicators from AE signals for biodiesel show tiny higher than the baseline diesel with the same lubricant 10W30 and similar to the baseline using oil 15W40. The developed FAS–AE of F–T diesel is close to the baseline diesel using 10W30.
- The FAS–AE exhibits the impacts on the lubricity of the oil film fueling the alternatives. Too high FAS–AE indicates high power consumption to overcome viscous friction using AL fuel, and too low FAS–AE shows the decreasing the lubricity of oil film using AL fuels.
- Biodiesel produces more AAC impacts with higher AAC–AE responses than F–T diesel, which occurs at high speeds due to high temperatures and more particles after combustion than diesel.
- The AL fuel diagnosis of AAC–AE indicator shows a slight abnormality accompanied by FAS. That demonstrates the potential of AE to conduct a comprehensive analysis of the tribological effects of alternative fuels.
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Acknowledgments
Conflicts of Interest
List of Abbreviations
AAC | Asperity–Asperity Collision |
AE | Acoustic Emission |
BDC | Bottom Dead Centre |
BL | Boundary Lubrication |
DWT | Discrete Wavelet Transform |
db | Daubechies |
EVO | Exhaust Valve Opening |
EVC | Exhaust Valve Closing |
FAS | Fluid–Asperity Shearing |
HL | Hydrodynamic Lubrication |
IC | Internal Combustion |
IVO | Inlet Valve Opening |
IVC | Inlet Valve Closing |
ML | Mixed Lubrication |
STFT | Short-Time Fourier Transform |
TDC | Top Dead Centre |
WPT | Wavelet Packet Transform |
WP | Wavelet Packets |
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Technical Parameters | Technical Data |
---|---|
Manufacturer | Anhui Quanchai Engine Co., Ltd., China |
Engine model | QCH1125 |
Number of cylinder | One |
Combustion system | Direct injection, vertical type |
Bore/stroke | 125/120 mm |
Displacement | 1.473 L |
Compression ratio | 18:1 |
Rated power | 20.6 kW @ 2200 rpm |
Maximum torque | 67 Nm @ 1920 rpm |
Fuel | Lube-Oil | Engine Speed (rpm) | Load (Nm) | Lower Heating Value (MJ/kg) | Cetane Number | Viscosity (mm2/s) at 20 °C | Density (g/cm3) at 20 °C |
---|---|---|---|---|---|---|---|
Bio–Diesel | CD10W30 | 1000 1200 1400 1600 1800 | 10 40 | 39 | 59 | 5.2 | 0.88 |
F–T diesel | CD10W30 | 44.2 | 74.8 | 2.14 | 0.76 | ||
Standard Diesel | CD10W30 | 42.6 | 45 | 4.65 | 0.83 | ||
Standard Diesel | CD15W40 | 42.6 | 45 | 4.65 | 0.83 |
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Wei, N.; Chen, Z.; Xu, Y.; Gu, F.; Ball, A. The Investigation into the Tribological Impact of Alternative Fuels on Engines Based on Acoustic Emission. Energies 2021, 14, 2315. https://doi.org/10.3390/en14082315
Wei N, Chen Z, Xu Y, Gu F, Ball A. The Investigation into the Tribological Impact of Alternative Fuels on Engines Based on Acoustic Emission. Energies. 2021; 14(8):2315. https://doi.org/10.3390/en14082315
Chicago/Turabian StyleWei, Nasha, Zhi Chen, Yuandong Xu, Fengshou Gu, and Andrew Ball. 2021. "The Investigation into the Tribological Impact of Alternative Fuels on Engines Based on Acoustic Emission" Energies 14, no. 8: 2315. https://doi.org/10.3390/en14082315
APA StyleWei, N., Chen, Z., Xu, Y., Gu, F., & Ball, A. (2021). The Investigation into the Tribological Impact of Alternative Fuels on Engines Based on Acoustic Emission. Energies, 14(8), 2315. https://doi.org/10.3390/en14082315