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{{AC|front=AC 1-08|description=Description_AC1-08|testdata=Test Data_AC1-08|cfdsimulations=CFD Simulations_AC1-08|evaluation=Evaluation_AC1-08|qualityreview=Quality Review_AC1-08|bestpractice=Best Practice Advice_AC1-08|relatedUFRs=Related UFRs_AC1-08}}
='''L1T2 3 element airfoil'''=
='''L1T2 3 element airfoil'''=


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Site Design and Implementation: [[Atkins]] and [[UniS]]
Site Design and Implementation: [[Atkins]] and [[UniS]]
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{{AC|front=AC 1-08|description=Description_AC1-08|testdata=Test Data_AC1-08|cfdsimulations=CFD Simulations_AC1-08|evaluation=Evaluation_AC1-08|qualityreview=Quality Review_AC1-08|bestpractice=Best Practice Advice_AC1-08|relatedUFRs=Related UFRs_AC1-08}}

Revision as of 16:39, 18 March 2009

Front Page

Description

Test Data

CFD Simulations

Evaluation

Best Practice Advice

L1T2 3 element airfoil

Application Challenge 1-08 © copyright ERCOFTAC 2004


Overview of CFD Simulations

Numerical simulations for the L1T2 test case have been made by QinetiQ using the BAE SYSTEMS RANSMB code. This code solves the Reynolds-Averaged-Navier-Stokes equations (RANS) with a k-ω turbulence model [2]. The k-ω turbulence model is formally equivalent to Wilcox’s k-ω model [3], with g related to ω through the relation:



Thus, g reduces linearly to zero at a wall, avoiding the singularity in ω. The RANSMB CFD simulations were carried out using a multi block structured grid.

QINETIQ CFD Simulation

Solution strategy

The code used for the CFD simulations was the BAE SYSTEMS RANSMB flow solver, version 9.6, which solves the RANS equations. The calculations reported here were made with a k-ω turbulence model. RANSMB is a cell centred finite volume code with a central, Jameson type, flux approximation. Convergence to a steady-state solution is achieved by means of a four stage Runge-Kutta scheme with multigrid acceleration. Three levels of grid were available for the multigrid algorithm – fine, medium and coarse. The medium and coarse grids were obtained from the fine grid by deleting every other point in each of the co-ordinate directions. In addition, using a grid-sequencing algorithm increased the rate of solution convergence. That is, solutions were first obtained on the coarse and then medium grids to provide good initial solutions on the next finer mesh.


Computational Domain

The mesh used in the computations was generated by QinetiQ using the SAUNA multi-block mesh generation system and consisted of 76848 cells. The mesh was of pseudo-2D type. It consisted of two identical 2D meshes in the spanwise (Y) direction, separated by one mesh unit. In mesh units, the retracted chord length of the L1T2 section was equal to 1.0. The far-field boundaries in the X and Z directions were located at ±15 retracted chord lengths. The flow solution was assumed to be entirely two-dimensional. This is achieved by RANSMB by setting fluxes in the spanwise direction to zero and enforcing symmetry boundary conditions on the two planes of constant Y.


Boundary Conditions

A no-slip and adiabatic boundary condition was applied on the slat, main-element and flap solid surfaces. The simulation was performed in “free-air”. Default far-field boundary conditions based on 1D Riemann invariant theory were used. The effects of lift-dependent circulation at the far-field boundary were accounted for by perturbing the far-field solution by a compressible point vortex model centred in the near field of the aerofoil. Symmetry boundary conditions were applied on the two constant Y computational planes to enforce two-dimensionality. No sensitivity tests were carried out to determine the effects on the solution of the effects of far-field boundary location. However, experience within QinetiQ has shown that the chosen far-field boundary extent and compressible vortex boundary conditions represent best practice.


Application of Physical Models

A low Reynolds number formulation was employed for the k-ω turbulence model. A y+ at the first grid point from the wall was chosen to be of O(1) for the slat, main-element and flap surfaces. Transition was fixed on the main-element upper and lower surfaces at 12.5 % retracted chord. This set the turbulent viscosity to zero ahead of the transition points on the main element as well as turning off the source terms in the turbulent kinetic energy transport equation in this region.


Numerical Accuracy

No studies were undertaken to investigate the effects of grid refinement on solution accuracy. However, the grid design has been based on long experience at QinetiQ and conforms to best practice.


For the two CFD solutions presented here, the number of time-step iterations on the coarse, medium and fine grids were 200, 1000 and 20000 respectively. This achieved a reduction in the average density residual of approximately three orders of magnitude. By contrast, only two orders of magnitude reduction were obtained for the turbulent kinetic energy (k) residual and one order of magnitude reduction for the g variable. The calculation was terminated when further convergence had effectively stalled i.e. the residuals were exhibiting a limit cycle behaviour.


CFD Results

The CFD data consists of:


• Surface pressure coefficients Cp on the slat, main-element and flap.


Image011.jpg


Figure 2 Location of wing shroud trailing edge traverse

Total pressure coefficients Cptot through the boundary layer and wakes at four locations. These were extracted in a direction normal to the local surface, with the exception of the profile at the wing shroud trailing edge. The profile here was extracted just downstream of the main-element trailing edge as shown in Figure 2. There was some uncertainty in the location of the zero traverse position from the experiment. To allow a reasonable comparison of the CFD and experimental results, the CFD data was shifted along this line so that the location of the main element maximum wake deficit coincided with that from the experiment.



Table CFD-A Summary Description of All Test Cases
NAME GNDPs PDPs SPs
Re Mach Incidence (deg.) Position of traverse Detailed data
L1T2 3.52x106 0.197 4.01° 35% wing element chord;

shroud t/e; 50%flap chord;

Cp on surface Cptot normal to surface
20.18° flap t/e




CFD-B Summary Description of all Available Data Files, and Simulated Parameters
MP1

Cp

MP2

Cptot

L1T2 4.01° CFD_Cp_a040_slat.dat CFD_Cptot_a040_BL01.dat
CFD_Cp_a040_wing.dat CFD_Cptot_a040_BL02.dat
CFD_Cp_a040_flap.dat CFD_Cptot_a040_BL03.dat
CFD_Cptot_a040_BL04.dat
20.18° CFD_Cp_a202_slat.dat CFD_Cptot_a202_BL01.dat
CFD_Cp_a202_wing.dat CFD_Cptot_a202_BL02.dat
CFD_Cp_a202_flap.dat CFD_Cptot_a202_BL03.dat
CFD_Cptot_a202_BL04.dat

References

[2] G. Kalitzin, A.R.B. Gould, J.J. Benton. Application of Two-Equation Turbulence Models in Aircraft Design, AIAA 96-0327.


[3] Wilcox, D.C., Turbulence Modelling for CFD, DCW Industries Inc., La Canada, Ca., 1998.


© copyright ERCOFTAC 2004



Contributors: Antony Hutton; Jan Vos - QinetiQ; CFS Engineering SA

Site Design and Implementation: Atkins and UniS


Front Page

Description

Test Data

CFD Simulations

Evaluation

Best Practice Advice