UFR 4-18 Test Case

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Flow and heat transfer in a pin-fin array

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Test Case Studies

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Confined Flows

Underlying Flow Regime 4-18

Test Case Study

Brief Description of the Study Test Case

The experiments from Ames et al. (2004, 2005, 2006, 2007) described later in this section deal with the flow of air around 8 staggered rows of 7.5 heated pins (see figure 1), spaced at P=2.5D in both stream-wise and span-wise directions (based on center to center distances). The diameter of the pins is set to 0.0254 m (1 inch) and the channel height is twice the diameter (H=2D).

The Reynolds number is based on the pin diameter and the average gap bulk velocity. Three Reynolds numbers have been tested : , and .

The bottom wall is heated with a constant heat-flux whereas the other walls are adiabatic. All the flow properties can be taken constant, the Prantl number is equal to 0.71. The flow is incompressible. The experimental data which have been used in the present work can be downloaded in section "Experimental results used for the CFD evaluation" below.

Figure general configuration new.jpg
Figure 1: 2D Sketch of Ames et al. experiment

Test Case Experiments

General Description of the experiment

The description given in the present section has been given by F. Ames during the Ercoftac SIG15 Workshop. More information could also be found in Ames et al. (2004, 2005, 2006, 2007). The objective of the experiments was to create a database that includes heat transfer distributions on the pin fins and endwall, pressure distributions on the pin fins and endwall, documentation of turbulence intensities and scales, and measurements of turbulence and velocity distributions across the channels. The research was conducted in a small bench top wind tunnel (see Figure 2) which included a small blower capable of producing a flow of 0.3 m³/s at a static pressure rise of 2000 Pa. The pin fin array was designed in an 8 row, 7 1/2 pin per row staggered arrangement. Both the cross passage (S/D) and stream-wise (X/D) pin spacing were equal to 2.5 while the pin height to diameter (H/D) was 2. The pin diameter was chosen to be equal to 2.54 cm. The flow conditioning system first spreads out the flow from the blower to the width of the array using a two-stage multi-vane diffuser. A heat exchanger was installed in the system downstream from the diffuser to control the tunnel temperature in order to impose a constant value. The heat exchanger discharges the flow into a screen box consisting of three nylon window screens to reduce the cross stream velocity variations in the flow. Directly downstream of the screens, the flow enters a smooth 2.5 to 1 area ratio nozzle prior to entering the test section. The pin fin array test section begins 7.75D upstream of the centerline of the first row of pins and ended 7.75D downstream of the centerline of the last row of pins. The inlet total temperature and pressure and static pressures were measured 5D upstream from the row 1 centerline and the exit static pressures were measured 5D downstream from row 8. Downstream from the test section the flow was directed through a 90° rectangular elbow then a rectangular channel followed by a second 90° elbow before entering a 20.8 cm diameter orifice tube used to measure the array flow rate. Tests were conducted at three Reynolds numbers: 3 000, 10 000, and 30 000. The Reynolds number is based on the maximum velocity (also called the gap velocity ). The gap bulk velocity is determined between two adjacent pins of the same row. Taking and as the inlet and gap velocities, respectively, and considering mass conservation, one obtains . Fluid properties were determined from the inlet conditions.

A 2D sketch of the original experimental configuration is given in Figure 1. In the experiment, the distance between the inlet (beginning of the test section; end of a converging nozzle) and the center of the first cylinders is equal to 7.75D. The distance between the center of the last cylinders and the test section is also equal to 7.75D.

The remaining description will focus on the test-case which is studied herein and on the data which are used in the present work. Heat transfer on the pins when they are heated, the pressure distributions on the endwalls, available spectra ... are not included.

Experimental Setup.jpg
Figure 2: Sketch of Ames et al. experimental rig (image taken from Ames et al. (2007))

Pressure loss coefficients

The inlet static pressure is monitored by five static taps positioned across one pin spacing 5 diameters upstream from the centerline of row 1. The exit static pressure taps are similarly located but 5 diameters downstream of row 8. Both the inlet and exit have probe access ports that allow determination of inlet and exit total pressure. The test section exhausts into a duct, which eventually is directed into an orifice tube. The sharp-edged orifice tube is used to determine the array mass flow rate. This allows measuring the pressure drop coefficient.


Pin fin surface static pressure

The pins were fabricated from clear acrylic. The midspan surface static pressure distributions were acquired using a 2.54 cm diameter pin which contained 20 equally spaced 0.76 mm static pressure taps around the midspan perimeter. Measurements were made in 6° increments by indexing the pin. An example of pressure distribution is given in figure 3.

Pressure Re10000 Ames etal2005.jpg
Figure 3 : Midline pressure coefficient distribution, rows 1-5, (image taken from Ames et al. (2005))

Pin fin array turbulence and velocity measurements

Array turbulence and velocity measurements were acquired using single and X wire hotwire probes powered by a TSI IFA 300 constant temperature anemometry unit. A special low velocity jet was developed to calibrate the wires from 0.4 m/s through 40 m/s to enable measurements of turbulence and velocity distributions over a 10 to 1 range in Reynolds number. An example of mean and r.m.s. stream-wise velocity component profiles obtained along line B for row 5 is given in figure 4 for the three Reynolds numbers.

U urms Re3000to30000 Row5 Ames etal2006.jpg
Figure 4 : Mean and r.m.s. stream-wise velocity component along line B for different Reynolds numbers - row 5 (image taken from Ames et al. (2006))

Endwall heat transfer measurements

Full surface endwall heat transfer measurements were acquired using a constant heat flux test surface and a FLIR SC500 IR camera. A constant surface heat flux boundary condition was generated using three, 15.28 cm wide by 68.58 cm long, 0.023 mm thick Inconel foils with 0.127 mm thick Kapton backing and 0.05 mm thick acrylic adhesive. The three foils were adhered to a 0.89 mm thick sheet of fiberglass epoxy board which in turn was epoxied to a 3.81 cm thick section of isocyanurate foam. The three foils were connected in series. The current through the foil and the voltage across the center foil was used to determine the surface heat flux. The surface heat flux was corrected for both local radiation and conduction loss. The radiation loss assumed the emissivity of the surface was 0.96 and the conduction loss was based on a simple 1-D model. The camera was equipped with a special lens which allowed a much wider angle (45°) and a much closer focal plane (6.35 cm) than the tandard lens. This allowed the camera to acquire a 130 by 260 pixel image (3.175 cm by 6.35 cm) through a 5.08 cm diameter zinc selenide window. At each measurement location, the camera location was indexed on the pins to ensure a consistent camera location for all the measurements. The accuracy of the surface temperature measurement was enhanced by the calibration of the camera on a calibration surface through the same zinc selenide window, the manual resetting of the camera every three or four pictures, and the averaging of 9 images for each heat transfer realization. The driving force temperature difference was calculated as heated endwall surface temperature corrected for the inlet temperature during the test and for the local calibration less the unheated endwall surface temperature corrected for the inlet temperature and the local calibration. The temperature difference also accounted for the bulk temperature rise of the air due to endwall heating.

The normalized Nusselt number obtained in the experiments on the bottom heated wall is shown in figure figure 5.


Nus Re3000to30000 Ames etal2007.jpg
Figure 5 : The normalized Nusselt number for different Reynolds numbers (image taken from Ames et al. (2007), form top to bottom: , , .

Data uncertainties

Uncertainties in the reported values were estimated based on the root sum square method described by Moffat (1988). The uncertainty in the reported Reynolds number was determined to be +/- 3% due to the possible error in the flow rate measurement. The largest uncertainty for the midspan pressure coefficient was estimated to be +/- 0.075 due to the very low dynamic pressure at the low Reynolds number condition (Re = 3 000). However, the uncertainty in the pressure coefficient was no more than +/- 0.025 at the higher two Reynolds numbers. Uncertainty in the measurement of velocity using a hot wire was estimated to be +/- 3% except in the near wall region where positional and conduction effects could substantially increase the possible error. Additionally, at high turbulence levels, single wire velocities can be significantly overestimated if traverse fluctuation velocities, normal to the wire become high. For example, at 30% intensity levels, velocities can be overestimated by 4%. The reported value of turbulence intensity had an uncertainty of approximately +/- 3%. The reported uncertainties in Nusselt number are estimated to be equal to +/- 12%, +/-11.4%, and +/-10.5% for the 3 000, 10 000, and 30 000 Reynolds numbers, respectively, in the endwall regions adjacent to the pins and +/- 9% away from the pin. Note that the combination of several methods reduced the uncertainty band of the surface temperature measurement from about +/-2 °C to about +/- 0.7 °C. Uncertainty estimates were determined using a 95% confidence interval.

Experimental results used for the CFD evaluation

All 1-D profiles are drawn along lines A1, B & C (see Figure 6). The main lines for the velocity components and the Reynolds stresses are A1 and B and the main one for the pressure coefficient is C (mid-span location). Note that

  • the experimental results (mean and r.m.s. velocities) on line A1 have been only measured near the bottom wall so that the profiles do not extend to the region near the upper wall,
  • the experimental results (mean and r.m.s. velocities) on line B have been only measured near one pin wall so that the profiles do not extend to the region near the opposing pin wall,
  • the pressure coefficient along line C is given for an angle between 0° and 180°.

The exact positions of the lines are the following (see Figure 6):

  • A1- Line at mid-span location (Y/D=5/4 from center of the pin or Y/D=3/4 from surface of the pin) between two adjacent pins of the same row along the channel height (Z-axis).
  • B - Surface to surface line between two adjacent pins of the same row at mid height (Z/D=1.0) along the span (Y-axis).
  • C - Circumferential line around the pin surface from 0°-180°, at mid height of the pin (Z/D=1.0). Angle measurements are taken to be zero (0°) on the leading edge of the pins with a counter-clockwise orientation.

Data will be shown for several rows, mainly X/D=0 (row 1), X/D=2.5 (row 2), X/D=5.0 (row 3), and X/D=10.5 (row 5). Note that profiles along line A1 will be shown only for .

The velocity components and the Reynolds stresses will be normalized by the average gap bulk velocity . If stands for the bulk velocity at the inlet, one has, thanks to the mass conservation, .

As the wall heat flux is imposed, the Nusselt number is given by where and are respectively the time average temperature at the wall and a reference temperature and is the thermal conductivity. takes into account the increase in the bulk temperature of the fluid from the heated surface as it flows down the array (see the Nusselt number calculated in Nordquist (2006)).

Then, at a given , one has: .

Where is the heated surface from the inlet to . Nordquist (2006) uses an estimation of this surface using where in the X coordinate of the inlet plane, the total heated surface (here the surface from to ) and the total length of the domain (). , and are the fluid density, the specific heat and the surface inlet, respectively.

The following data will be analyzed for the different computations:

  • The pressure loss coefficient where is the pressure drop between the planes X/D=-5 and X/D=22.5 and the number of rows ( in the present case). The experimental values can be found in File:Headloss.xls.
  • The pressure coefficient along line C for rows 1, 2, 3 and 5. where is the maximum pressure (the pressure at the stagnation point). The experimental data can be found in File:Cp midline.zip.
  • The normalized mean stream-wise velocity () and its r.m.s value () along lines A1 and B.

The experimental data can be found in File:Dynamics.zip.

  • , the average of the Nusselt number on the bottom wall between X/D=-2.5 and X/D=20. The experimental values can be found in File:Nusselt average.xls.
  • The normalized Nusselt number () on the bottom wall. The experimental data can be found in File:Thermal Fields bottom wall.zip.
  • The normalized Nusselt number profile along two specified lines and (see figure 7) if one considers the computational domain global frame, see figure 8). Note that one can extract other lines for comparisons from the file File:Thermal Fields bottom wall.zip.

The global frames used in the previous figures (extracted from the articles describing the experiment) and in the computations are not the same, except the stream-wise direction X which is identical. Y and Z axes are switched between experiments and computations. However, this should not introduce any ambiguity for the profiles as the lines along which they are plotted are always recalled. For the Nusselt numbers, as X axis is the same, one should just replace Z in the experiment by Y.

Lines postprocessing.jpg
Figure 6 : Rows numbering and lines (A1, B and C) locations. i=1,..,8. Line C : Centerline of the cylinder (Z=D), 0° at the impingement (rotation sense : counter clockwise with Z axis from bottom to top wall), line A1: X=2.5D (i-1), Y=0 if i is even and Y=1.25D if i is odd, 0 ≤ Z ≤ 2D, line B: X=2.5D (i-1), -0.75D ≤ Y ≤ 0.75D if i is even and 0.5D ≤ Y ≤ 2D if i is odd, Z=D.

Nus profiles.jpg
Figure 7 : The lines along which the normalized Nusselt number are plotted

CFD Methods

The computational domain

The following computational domain, which has been chosen for the 15th Ercoftac workshop, is a asubdomain of the experimental flow domain assuming lateral periodicity. It consists of 8 by 2 pins (see figure 8). This assumption reduces possible periodicity effects while keeping reasonable grid sizes. All solid surfaces (pins, bottom and top walls) are set to no-slip solid walls. The inlet of the channel is set at a distance upstream from the center of the first row of pins, whereas the outlet is downstream from the center of the last row of pins (this gives and ), respectively. Note that these two distances are both equal to 7.75D in the experimental setup but are not enough to perform reliable CFD calculations (see Afgan et al. (2007) and Parnaudeau et al. (2008)), in particular for the upstream channel, unless one represents the nozzle of the experiment (see figure) what will lead to a much more expensive computations.

The main computational results submitted for the workshop were from EDF R&D computations, and these will be presented here.

Computational domain.jpg
Figure 8: The computational domain (the global frame is indicated in red in the figure)

General Description of the computations

All the computations presented herein have been carried out with Code_Saturne (see Archambeau et al. (2004)), EDF in-house open source CFD tool for incompressible flows (go to http://code-saturne.org for more details and download). It is based on an unstructured collocated finite-volume approach for cells of any shape (one uses here only hexa conforming meshes). It uses a predictor/corrector method with Rhie and Chow interpolation and a SIMPLE-like algorithm for pressure correction. An implicit reconstruction method is used for the gradients while dealing with the non-orthogonalities.

Four Models, LES using the dynamic model (Germano et al. (1991), Lilly (1992)) kω-SST (Menter (1994)), φ-model (Laurence et al. (2005)), and EB-RSM (Manceau and Hanjalic (2002)) are used to simulate the present test-case (the main computations and results have been presented in Benhamadouche et al. (2012)). All the models are wall-resolved and use no-slip boundary conditions for the velocity vector and appropriate boundary conditions for the turbulent quantities (see the corresponding articles). Three Reynolds numbers have been computed: , and . This latter is computed only with URANS approaches and the first one only with LES.

Inlet conditions for the velocity and turbulent quantities will be specified separately for LES and URANS computations. No sensistivity tests to the boundary conditions are reported.

The temperature is treated as a passive scalar with an imposed temperature at the inlet, an imposed heat flux at the bottom wall and adiabatic conditions elsewhere. The effect of the thermal boundary condition on the bottom wall is studied in LES by taking a fixed temperature instead of a fixed heat flux.

From a practical point, one takes the density, the inlet velocity, the specific heat coefficient and the diameter of the pins equal to unity and the viscosity equal to . The Prandtl number is equal to 0.71 and thus the fluid conductivity . As the temperature is passive, one takes the inlet temperature equal to 0 and the imposed heat flux equal to unity.

Free Outlet boundary conditions are used for all the variables at the outlet and an implicit periodic condition is used in the lateral direction for all the variables.

Although only the non dimensional parameters are of importance (here the Reynolds and Prandtl numbers) and in order to mimic the experiment with physical values, table 1 gives typical ones which might be used for the simulations (the pressure is equal to the atmospheric pressure and the computation is incompressible).

(°K) (m/s) (m²/s) (kg/m^3) (J/kg/K) (W/m/K) (W/m²)
3000 300 1.06 0.000015 1.2 1005 0.0255 100
10000 300 3.54 0.000015 1.2 1005 0.0255 300
30000 300 10.62 0.000015 1.2 1005 0.0255 1000

Table 1: typical values that can be used in a computation

Computational meshes

The meshes used for LES and URANS computations are of the same kind and have been created with Gambit. Figure 9 shows top and side view of the mesh used for LES at . The main parameters for meshing the pins are given in table 2 for the different computations. , and give the cell numbers in the computational domain, around a pin and between the top and bottom walls, respectively. , and are the wall cell size around the pins, the wall cell size at the top and bottom walls and the cell size at .

Note that for URANS, only the parameters used for the coarsest grid a mentioned. The two finer levels are obtained by halving the cell sizes in all the directions. This has been done for convergence study purpose but could have been optimized (the finest meshes in URANS contain 17 million and 29 million cells at and , respectively, and this could have been clearly reduced in order to obtain a converged Unsteady RANS solution).

Computation
LES 18.2 million 176 0.0028 90 0.0065 0.0536
LES 76.2 million 320 0.0015 120 0.0019 0.0584
URANS(*) 290000 32 0.003 28 0.004 0.261
URANS(*) 490000 32 0.001 40 0.001 0.25

(*) Only the refinements of the coarsest grid are given. The two next levels of refinement are obtained by halving the grid spacing in all the directions Table 1: Refinement parameters at the walls

Meshes.jpg
Figure 9: Cuts of the computational mesh (LES at ). Top: top view showing the duplicated pattern, Bottom: side view

Large Eddy Simulation Computations

General Features

Large Eddy Simulation (see Benhamadouche (2006) for its implementation in Code_Saturne) uses a dynamic Smagorinsky model (Germano et al. (1991), Lilly (1992)) in which the Smagorinsky constant cannot be negative and is bounded by its value validated in a channel flow (). This model has been successfully used recently by Afgan et al. (2011) for the flow around a single and side-by-side cylinders. A fully centered convection scheme is applied for the velocity components and the temperature. For this latter, a slope test which switches to a first order upwind scheme is utilized to limit the overshoots. The time advancing scheme is second order based on Crank-Nicolson/Adams Bashforth scheme (the diffusion including the velocity gradient is totally implicit, the convection is semi-implicit and the diffusion including the transpose of the velocity gradient is explicit). A turbulent Prandtl number equal to 0.5 is used while solving the temperature with LES.

At the inlet, a uniform velocity is imposed without any synthetic or precursor turbulence generation.

Very fine LES simulations have been carried out for the Reynolds numbers and .

Wall treatment in LES

A particular attention has been paid to the grid refinement at the wall. Two meshes containing 18 million and 76 million cells have been used to simulated the two Reynolds numbers and , respectively. Figures ??, ?? and ?? show instantenous snapshots of the non-dimensional wall normal distance. The two meshes are of the same quality for this quantity (the maximum value is higher for but this is rather a local effect). This quantity is not the only one of interest; one has to refine in the stream-wise and span-wise directions. Figure ?? gives the mean value of the non-dimensional distances in the three directions. It can be seen that the refinement is the one needed for a wall resolved LES everywhere except around the centerlines of the pins and downstream of the last row. However, the refinement in these regions is still very satisfactory.

Yp LES Re3000 18M.jpg
Figure ??: Instantaneous snapshots of the non-dimensional wall normal distance to the wall, LES at with 18 million computational cells

Yp LES Re10000 76M.jpg
Figure ??: Instantaneous snapshots of the non-dimensional wall normal distance to the wall, LES at with 76 million computational cells

Dpmean.jpg
Figure ??: Mean non-dimensional distances at the near-wall computational cell, LES at with 76 million computational cells - top left: non-dimensional distance in the stream-wise direction - top right: non-dimensional distance in the span-wise direction - bottom: non-dimensional distance in the wall normal direction

Sensitivity to the sub-grid scale model

Sensitivity studies have been carried out to quantify the effect of the subgrid scale model and showed that its effect is not that importance at the present level of refinement. Figures  ?? and ?? show profiles of the r.m.s. values of the stream-wise velocity component and of the normalized Nusselt numbers, respectively. The effect seems almost negligible.

The following table gives the pressure loss coefficient and the averaged Nusselt number for the simulations with and without the sub-grid scale model. One can see that there is an effect on heat transfer which has not been seen locally.

Urms Re3000 lineB rows1 2 3 5 nomodel.jpg
Figure ??: R.m.s. of the stream-wise velocity component along line B - effect of the sub-grid scale model on LES at

Nus o NusAv different y Re3000 LES y0 y1.25 nomodel.jpg
Figure ??: Local Nusselt number on the bottom wall - effect of the sub-grid scale model on LES at


With a sub-grid scale model (dynamic) Without a sub-grid scale model
Pressure Loss coefficient (f) 0.1076 0.1089
Error on f 3 2
Averaged Nusselt Number () 21.6 20.8
Error on 2 6

One can see than the effect on the pressure loss coefficient is almost negligible which is not the case on the heat transfer.

URANS computations

General Features

By default, a centered scheme with a slope test is used for the velocity components and the temperature and a 1st order upwind scheme for the turbulent quantities. The time advancing scheme is in this case a first order Euler one.

The φ-model uses the elliptic relaxation introduced by Durbin (1991). In both utilized first moment closures, a Simple Gradient Diffusion Hypothesis (SGDH) is naturally utilized for the temperature equation with a turbulent Prantl number equal to 0.9. The EB-RSM is presented in \cite{Manceau2002} and uses the concept of elliptic blending for the scrambling and the dissipation terms of the Reynolds stresses. The temperature is solved with a Generalized Gradient Diffusion Hypothesis (GGDH) approach using a constant equals to 0.23.

The use of more advanced models such us the AFM (Algebraic Flux Model), the EB-GGDH (extension of the elliptic blending concept but for the scrambling and dissipation terms of the turbulent heat fluxes (see Dehoux et al. (2012) for more details)) or the EB-AFM didn't change the results that much, at least for global quantities such as the mean Nusselt number.

While using URANS, a uniform velocity and 5% turbulence intensity are imposed. This latter condition allows to provide the production terms with the Reynolds stresses mandatory to their development. The inlet conditions for URANS computations are thus given by:

The turbulent kinetic energy is given by:


where is the average gap bulk velocity and the turbulent intensity.

In the case of the Reynolds stress model, the Reynolds stresses are given by:

The turbulent dissipation is given by:

where , and stands for the hydraulic diameter of the inlet.

In the case on the kω-SST, one takes .

URANS simulations have been carried out for the two higher Reynolds numbers; and

As shown below for the EB-RSM, a systematic sensitivity study to the mesh refinement and to the numerical options has been carried out in order to have a high confidence on the computations.

Grid convergence study

The grid convergence study has been performed for the three URANS models and for the two Reynolds numbers. As first-moment and second moment closures exhibit totally different behaviors, the sensitivity study is carried out for all the models. One gives hereafter the study performed for and the EB-RSM model. Three levels of refinement are used for all the models. The coarse mesh is successively refined by a factor 2 in all the directions. The finest mesh has approximately 17M cells for (it contains approximately 29M cells for ).

Figures ??, ?? and ?? show the pressure coefficient along the pin midline and the mean and r.m.s. values of the stream-wise velocity component along line B. As the computations are unsteady, note that the r.m.s. values, or more generally the Reynols stresses are the sum of the resulved part and the modelled one: . The resolved and modeled part are shown separately in figure ??. One can observe that the results of the two finer meshes do not match, the coarse mesh results being very far from the actual ones. Thus, all the results given in "Evaluation" for a turbulence model will be those obtained with the finest mesh (called here "very fine mesh". The ideal would have been to add a fourth level of refinement but this would have expensive in terms of CPU time. Note also that the refinements could have been "more intelligent" than refining by a factor of 2 in all the directions. However, the sensitivity study to the numerical options (see next section) make us confident is the fact that the results obtained with the finest mesh are very close to the converged ones.

Cp midplane Re10000 rows1 2 3 5 grid convergenceEBRSM.jpg
Figure ??: Mean pressure coefficient along the pin midline, EB-RSM at - grid convergence study

U Re10000 lineB rows1 2 3 5 grid convergenceEBRSM.jpg
Figure ??: Mean stream-wise velocity component along line B, EB-RSM at - grid convergence study

Urms Re10000 lineB rows1 2 3 5 grid convergenceEBRSM.jpg
Figure ??: R.m.s. of the stream-wise velocity component along line B, EB-RSM at - grid convergence study

Urms mod only Re10000 lineB rows1 2 3 5 grid convergenceEBRSM.jpg
Figure ??: Modelled r.m.s. of the stream-wise velocity component along line B, EB-RSM at - grid convergence study

Urms res only Re10000 lineB rows1 2 3 5 grid convergenceEBRSM.jpg
Figure ??: Resolved r.m.s. of the stream-wise velocity component along line B, EB-RSM at - grid convergence study

Sensivity study to the convection scheme

By default, a centered scheme with a slope test is used for the velocity components and the temperature and a 1st order upwind scheme for the turbulent quantities. The scheme called centered in figures ?? and ?? consists in a fully centered scheme for the velocity components and a centered scheme for all the other scalar quantities (Reynolds stresses, dissipation rate, temperature). As it can be observed, the effect is everywhere negligible on the mean and r.m.s. quantities except around row 2 where it is noticeable but limited. This conclusion is important as a pure centered scheme on the velocity components doesn't seem to change the unsteadiness. Moreover, using a centered scheme for the turbulent quantities doesn't affect the results. Other tests have been carried out by introducing for example outer iteration for pressure/velocity coupling and none of them exhibited a noticeable effect.

U Re10000 lineB rows1 2 3 5 num scheme veryfine EBRSM.jpg
Figure ??: Mean stream-wise velocity component along line B, EB-RSM at - sensitivity study to the numerical scheme on the very fine mesh

Urms Re10000 lineB rows1 2 3 5 num scheme veryfine EBRSM.jpg
Figure ??: r.m.s. of the stream-wise velocity component along line B, EB-RSM at - sensitivity study to the numerical scheme on the very fine mesh

The main computations

The folowing table summerizes the main computations which will be exhibited in "Evaluation". Note that "niba = number of iterations before averaging" and "nifa = number of iterations for averaging".


Main computations
Test-case (m/s) (m/s) Turbulence Model Time step (s) niba nifa mean
LES3000 3000 2.02 1.21 Dynamic Smagorinsky 0.0015 325000 217000 0.8
LES10000 10000 6.18 3.71 Dynamic Smagorinsky 0.0002 130000 245000 0.8
EBRSM10000 10000 6.18 3.71 EB-RSM 0.001 160000 140000 1.8
PHI10000 10000 6.18 3.71 φ-model 0.001 50000 250000 (*) 1
kwSST10000 10000 6.18 3.71 kω-SST 0.001 80000 220000 (*) 1.3
EBRSM30000 30000 18.53 11.12 EB-RSM 0.0000625 64000 308000 0.6
PHI30000 30000 18.53 11.12 φ-model 0.00025 40000 125000 0.9
kwSST30000 30000 18.53 11.12 kω-SST 0.00025 50000 150000 1.8

(*) 100000 would have been enough to converge in time

Possible sources of uncertainty

The main possible sources of uncertainty are:

  • The inlet boundary conditions, in particular for URANS as one has to prescribe turbulence in URANS computations.
  • The periodicity assumption in the spanwise direction.
  • The uniformity of the heat flux which is probably not the case in the experiment.




Contributed by: Sofiane Benhamadouche — EDF

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