Evaluation of a Near-Wall-Modeled Large Eddy Lattice Boltzmann Method for the Analysis of Complex Flows Relevant to IC Engines
Abstract
:1. Introduction
2. Applied Modeling Approaches
2.1. Filtered Navier–Stokes Equations
2.1.1. Finite Volume Method
2.1.2. Lattice Boltzmann Method
2.2. Sub-Grid Scale Modeling
2.2.1. SGS Model for Finite Volume Method
2.2.2. SGS Model for Lattice Boltzmann Method
2.3. Wall Function Approach
2.3.1. Wall Function for Finite Volume Method
2.3.2. Wall Function for Lattice Boltzmann Method
Curved Boundary Step
Velocity Correction Step
3. Setup of the IC Engine Test Case
3.1. Experimental Setup
3.2. Numerical Setup
3.3. Boundary Conditions and Initial Conditions
3.3.1. Finite Volume Method
3.3.2. Lattice Boltzmann Method
3.4. Statistics
3.4.1. Finite Volume Method
3.4.2. Lattice Boltzmann Method
3.5. Grid Configurations
4. Results of the IC Engine Test Case
4.1. Characterization of the In-Cylinder Flow
4.2. Validation of In-Cylinder Fluid Flow
4.3. Prediction Accuracy
4.4. Computational Cost
4.4.1. Meshing Performance
4.4.2. Simulation Performance
5. Conclusions and Outlook
Author Contributions
Funding
Acknowledgments
Conflicts of Interest
Abbreviations
BGK | Bhatnagar–Gross–Krook |
CFL | Courant–Friedrichs–Lewy number |
CUPcs | cell updates per core and second |
CV | control volumes |
FDM | finite difference method |
FVM | finite volume method |
GPU | graphics processing unit |
HR | high resolution |
IC | internal combustion |
LBM | lattice Boltzmann method |
LES | large eddy simulation |
MCPc | mean cells per core |
MR | medium resolution |
MRV | magnetic resonance velocimetry |
nMAE | normalized mean absolute error |
nAE | normalized absolute error |
NWM | near-wall-modeled |
PIV | particle image velocimetry |
RANS | Reynolds-averaged Navier–Stokes |
RMS | root mean square |
SGS | sub-grid scale |
LR | low resolution |
VP | valve plane |
Roman | |
van Driest parameter | |
set of discrete lattice velocity vectors | |
discrete lattice normal velocity vector | |
van Driest model constant | |
sub-grid scale model coefficient | |
speed of sound of the lattice | |
D | intake pipe diameter |
model related operator | |
stream-wise unit vector | |
filtered particle distribution vector | |
filtered particle distribution vector at equilibrium state | |
non-equilibrium of the particle distribution function vector | |
I | turbulence intensity |
L | integral length scale |
lattice Mach number | |
massflow into the flow bench | |
massflow out of the flow bench | |
N | resolution |
number of cores | |
number of independent ensembles | |
number of grid cells | |
number of PIV data points | |
total number of time steps within | |
filtered pressure | |
filtered lattice pressure | |
pressure at the numerical outflow | |
absolute pressure at pressure sensor inlet 1 | |
absolute pressure at pressure sensor inlet 2 | |
absolute pressure at pressure sensor outlet 1 | |
absolute pressure at pressure sensor outlet 2 | |
dimensionless distance | |
Q | Q-criterion |
Reynolds number | |
filtered strain rate tensor | |
filtered lattice strain rate tensor | |
t | time |
averaging time | |
lattice time | |
runtime on the core for meshing | |
runtime on the node for meshing | |
runtime on the core for the solver per second simulation time | |
runtime on the node for the solver | |
passed simulation time | |
time to a statistically stationary flowfield | |
effective stress tensor | |
sub-grid scale stress tensor | |
wall shear stress | |
averaged wall shear stress assuming RANS hypothesis | |
filtered velocity vector | |
filtered lattice velocity vector | |
averaged velocity vector assuming RANS hypothesis | |
filtered lattice velocity vector at position | |
stream-wise component of | |
stream-wise component of | |
friction velocity | |
dimensionless friction velocity | |
stream-wise velocity | |
time-averaged velocity vector | |
time-averaged velocity vector at the numerical inflow | |
velocity fluctuation vector | |
time-averaged velocity fluctuation vector | |
Reynolds stress tensor | |
two dimensional time-averaged velocity vector | |
two dimensional root mean square velocity vector | |
position vector | |
lattice position vector | |
lattice position vector in direction | |
lattice position vector in direction | |
lattice position vector in direction | |
lattice wall position vector | |
y | wall distance |
lattice distance from the the node at position distance to the boundary | |
lattice distance from the the node at position to the boundary | |
dimensionless wall distance | |
wall distance of the cell centroid | |
Greek | |
Kronecker operator | |
grid filter | |
time step | |
grid spacing | |
maximal sampling error | |
dynamic viscosity | |
temperature at temperature sensor 1 | |
temperature at temperature sensor 2 | |
wall temperature | |
von Kármán constant | |
kinematic viscosity | |
effective kinematic viscosity | |
sub-grid scale kinematic viscosity | |
lattice kinematic viscosity | |
lattice effective kinematic viscosity | |
lattice sub-grid scale kinematic viscosity | |
filtered lattice momentum flux | |
filtered second moment of the non-equilibrium of the particle distribution function | |
density | |
filtered lattice density | |
lattice density at the outflow | |
lattice relaxation time | |
lattice sub-grid scale relaxation time | |
lattice effective relaxation time | |
PIV measurement data | |
simulated data | |
lattice weight vector | |
filtered collision operator vector |
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Valve Lift | 9.21(0.15) mm |
---|---|
22.7(0.5) °C | |
1.000(0.001) bar | |
0.998(0.001) bar | |
94.10(1.00) kg/hr | |
kg/(m s) | |
1.18 kg/m3 | |
(estimated) | 22(1) °C |
Solver | Identifier | |||||
---|---|---|---|---|---|---|
OpenFOAM | − | 1 | ||||
OpenFOAM | − | 1 | ||||
OpenFOAM | − | 1 | ||||
OpenLB | − | |||||
OpenLB | − | |||||
OpenLB | − |
Solver | Identifier | MCPc | CUPcs |
---|---|---|---|
OpenFOAM | |||
OpenFOAM | |||
OpenFOAM | |||
OpenLB | |||
OpenLB | |||
OpenLB |
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Haussmann, M.; Ries, F.; Jeppener-Haltenhoff, J.B.; Li, Y.; Schmidt, M.; Welch, C.; Illmann, L.; Böhm, B.; Nirschl, H.; Krause, M.J.; et al. Evaluation of a Near-Wall-Modeled Large Eddy Lattice Boltzmann Method for the Analysis of Complex Flows Relevant to IC Engines. Computation 2020, 8, 43. https://doi.org/10.3390/computation8020043
Haussmann M, Ries F, Jeppener-Haltenhoff JB, Li Y, Schmidt M, Welch C, Illmann L, Böhm B, Nirschl H, Krause MJ, et al. Evaluation of a Near-Wall-Modeled Large Eddy Lattice Boltzmann Method for the Analysis of Complex Flows Relevant to IC Engines. Computation. 2020; 8(2):43. https://doi.org/10.3390/computation8020043
Chicago/Turabian StyleHaussmann, Marc, Florian Ries, Jonathan B. Jeppener-Haltenhoff, Yongxiang Li, Marius Schmidt, Cooper Welch, Lars Illmann, Benjamin Böhm, Hermann Nirschl, Mathias J. Krause, and et al. 2020. "Evaluation of a Near-Wall-Modeled Large Eddy Lattice Boltzmann Method for the Analysis of Complex Flows Relevant to IC Engines" Computation 8, no. 2: 43. https://doi.org/10.3390/computation8020043