Machine Learning for Film Thickness Prediction in Elastohydrodynamic Lubricated Elliptical Contacts
Abstract
:1. Introduction
2. Finite Element Model
2.1. Governing Equations
2.2. Overall Numerical Procedure
2.3. Experimental Validation
3. Machine Learning
3.1. Data Generation
3.2. Feature Selection
3.3. Gaussian Process Regression (GPR)
4. Results and Discussion
5. Conclusions
Author Contributions
Funding
Data Availability Statement
Conflicts of Interest
Nomenclature
Reciprocal asymptotic isoviscous pressure coefficient (Pa−1) | |
Murnaghan EoS isothermal bulk modulus temperature coefficient (K−1) | |
Lubricant low-shear/Newtonian viscosity (Pa·s) | |
Dimensionless lubricant low-shear/Newtonian viscosity | |
Lubricant viscosity at glass transition temperature (Pa·s) | |
Lubricant low-shear/Newtonian viscosity at ambient pressure (Pa·s) | |
, | Mean and standard deviation of features within the training dataset |
Equivalent solid Poisson coefficient | |
, | Poisson coefficient of solids 1 and 2 |
Equivalent solid computational domain | |
Contact computational domain | |
Boundaries of | |
Fixed boundary of | |
Symmetry boundary of | |
Complete elliptic integral of the first kind | |
Lubricant density (kg/m3) | |
Lubricant dimensionless density | |
Lubricant density at ambient pressure (kg/m3) | |
Normal component of 3D stress tensor (Pa) | |
, , , | GPR model hyperparameters |
Vector of tangential components of 3D stress tensor (Pa) | |
Contact ellipticity ratio | |
Shear stress in the j-direction within a plane having i as normal (Pa) | |
, | Hertzian elliptical contact semi-axes in the x, y-directions (m) |
, | Modified Yasutomi-WLF viscosity model parameters (°C) |
, | Modified Yasutomi-WLF viscosity model parameters (Pa−1) |
, | Modified Yasutomi-WLF viscosity model parameters |
Ratio of contact equivalent radii of curvature and | |
Equivalent solid Young’s modulus of elasticity (Pa) | |
, | Young’s moduli of elasticity of solids 1 and 2 (Pa) |
Contact external applied load (N) | |
, , | Hamrock and Dowson material, speed, and load dimensionless groups |
Lubricant film thickness (m) | |
Central film thickness (m) | |
Minimum film thickness (m) | |
, | Dimensionless central film thickness |
, | Dimensionless minimum film thickness |
Dimensionless rigid-body separation | |
, | Dimensionless lubricant film thickness |
Isothermal bulk modulus at zero absolute temperature (Pa) | |
Pressure rate of change of isothermal bulk modulus at zero pressure | |
, | Moes dimensionless material properties and load parameters |
, | Mean and kernel functions |
, | Sizes of sample datasets , |
Number of input features | |
, | Number of samples in the training and testing datasets |
Pressure (Pa) | |
Hertzian contact pressure (Pa) | |
Dimensionless pressure | |
, | Principal radii of curvature of solids 1 and 2 in the xz-plane (m) |
, | Principal radii of curvature of solids 1 and 2 in the yz-plane (m) |
Radius of curvature of equivalent elastic solid in the xz-plane (m) | |
Radius of curvature of equivalent elastic solid in the yz-plane (m) | |
Equivalent radius of curvature of reduced contact geometry (m) | |
Glass transition temperature (K) | |
Glass transition temperature at zero pressure (K) | |
Ambient temperature (K) | |
, , | Equivalent solid deformation components in the x, y, z-directions (m) |
, | Surface velocities of solids 1 and 2 in the x-direction (m/s) |
Contact mean entrainment speed in the x-direction (m/s) | |
, , | Solid dimensionless deformation components in x, y, z-directions |
, , | Space coordinates (m) |
, , | Gaussian distribution for standard, training and testing subsets |
Prediction function of GPR model for testing samples | |
, | Sample input features |
, | Input i of , |
Input feature number i | |
Normalized value of input feature number i | |
, , | Output variable i, its predicted and mean values in the testing dataset |
, , | Dimensionless space coordinates |
, | Training and testing sample datasets |
, | Sample datasets |
Appendix A. Kernel Function Definitions
Appendix B. Data Standardization and Performance Metrics
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Parameter | Lower Bound | Upper Bound | Unit | |
Ranges of interest | 0.01 | 50 | m/s | |
0.4 | 4 | GPa | ||
1/12 | 12 | - | ||
Constraints | 10 | 3000 | - | |
1 | 20 | - |
Kernel Function | Adj. R2 (-) | MAPE (%) | MAXAPE (%) | Adj. R2 (-) | MAPE (%) | MAXAPE (%) | |
ARD-RBF | 0.9871 | 2.28% | 22.02% | 0.9841 | 6.89% | 68.20% | |
RQ | 0.9988 | 0.71% | 5.15% | 0.9979 | 1.88% | 11.74% | |
0.9995 | 0.39% | 5.33% | 0.9987 | 1.39% | 7.66% | ||
ARD-Matern | 0.9990 | 0.53% | 9.12% | 0.9975 | 1.58% | 12.86% | |
0.9999 | 0.31% | 3.05% | 0.9992 | 1.00% | 6.97% |
Kernel Function | Adj. R2 (-) | MAPE (%) | MAXAPE (%) | Adj. R2 (-) | MAPE (%) | MAXAPE (%) | |
ARD-RBF | 0.9420 | 4.65% | 49.15% | 0.8857 | 36.28% | 566.52% | |
RQ | 0.9969 | 1.06% | 8.36% | 0.9927 | 5.38% | 30.63% | |
0.9993 | 0.47% | 5.98% | 0.9974 | 2.11% | 11.89% | ||
ARD-Matern | 0.9968 | 0.87% | 20.90% | 0.9882 | 6.84% | 239.95% | |
0.9998 | 0.52% | 7.48% | 0.9992 | 1.50% | 7.32% |
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Issa, J.; El Hajj, A.; Vergne, P.; Habchi, W. Machine Learning for Film Thickness Prediction in Elastohydrodynamic Lubricated Elliptical Contacts. Lubricants 2023, 11, 497. https://doi.org/10.3390/lubricants11120497
Issa J, El Hajj A, Vergne P, Habchi W. Machine Learning for Film Thickness Prediction in Elastohydrodynamic Lubricated Elliptical Contacts. Lubricants. 2023; 11(12):497. https://doi.org/10.3390/lubricants11120497
Chicago/Turabian StyleIssa, Joe, Alain El Hajj, Philippe Vergne, and Wassim Habchi. 2023. "Machine Learning for Film Thickness Prediction in Elastohydrodynamic Lubricated Elliptical Contacts" Lubricants 11, no. 12: 497. https://doi.org/10.3390/lubricants11120497
APA StyleIssa, J., El Hajj, A., Vergne, P., & Habchi, W. (2023). Machine Learning for Film Thickness Prediction in Elastohydrodynamic Lubricated Elliptical Contacts. Lubricants, 11(12), 497. https://doi.org/10.3390/lubricants11120497