Best Practice Advice AC1-05: Difference between revisions
m (Dave.Ellacott moved page Gold:Best Practice Advice AC1-05 to Best Practice Advice AC1-05 over redirect) |
No edit summary |
||
Line 64: | Line 64: | ||
• '''Low-drag configuration:''' | • '''Low-drag configuration (35°):''' | ||
o Realistic pressure level and distribution on the slant part and vertical base are predicted, even with standard k-epsilon with wall functions | o Realistic pressure level and distribution on the slant part and vertical base are predicted, even with standard k-epsilon with wall functions | ||
Line 76: | Line 76: | ||
• '''High-drag configuration:''' | • '''High-drag configuration (25°):''' | ||
o The wake structure transition is missed by almost all models, whatever the numerical accuracy and the conditions of the computation: pressure drop on the base is highly underestimated. Only LES and low-Re RSM are able to reproduce the complex, 3D wake structure but: | o The wake structure transition is missed by almost all models, whatever the numerical accuracy and the conditions of the computation: pressure drop on the base is highly underestimated. Only LES and low-Re RSM are able to reproduce the complex, 3D wake structure but: | ||
Line 180: | Line 180: | ||
• The potential of low-Re RSM models must be further investigated | • The potential of low-Re RSM models must be further investigated | ||
• Wall-treatment for LES must be improved | • Wall-treatment for LES must be improved (see update below) | ||
• Since accounting for the near-wall region (low-Re RSM) and the large-scale unsteadiness (LES) have beneficial effects, the potential of accounting for both must be investigated: RANS/LES zonal coupling, RANS/LES hybrid models, Unsteady RANS, … | • Since accounting for the near-wall region (low-Re RSM) and the large-scale unsteadiness (LES) have beneficial effects, the potential of accounting for both must be investigated: RANS/LES zonal coupling, RANS/LES hybrid models, Unsteady RANS, … (see update below) | ||
==='''Update by F. R. Menter added in 2024'''=== | |||
In the years between the ERCOFTAC workshop and today (2024) it was found that steady-state RANS models are not well suited for high accuracy CFD simulations of external automotive geometries. This is well reflected by the contributions to the [https://autocfd.eng.ox.ac.uk/ AutoCFD workshop], where a number of generic and semi-realistic automotive cases have been computed by numerous groups over the years. Most of the contributions to the workshop involve either hybrid RANS-LES or Wall-Function LES applications. This trend increased by the availability of low-cost GPU-based computing power and the corresponding CFD codes, utilizing this advanced hardware. By-and-large an order of magnitude increase in computer-power is achieved at the same cost relative to CPU based clusters. This allows for the wide-spread application of Scale-Resolving Simulations (SRS) to automotive design. | |||
Even with this increase in computing power, the routine application of wall-resolved LES is not a practical option for engineering simulations. The most popular SRS methods are therefore global hybrid models like [https://link.springer.com/article/10.1007/s10494-011-9378-4 DDES] or [https://link.springer.com/chapter/10.1007/978-3-319-70031-1_3 SBES]. In these models, the attached boundary layer is covered by the RANS model whereas separated regions are automatically detected by the shielding functions and the models switch to LES. The SBES model is an improved version of the DDES model with better boundary layer shielding and more pronounced RANS-LES switching capabilities. The success of such methods depends both on the capability of the underlying RANS model to accurately predict separation lines as well as on the switching characteristics of the hybrid model. The alternative is to apply LES over the entire car, typically using a wall-model, either as a classical wall-function or a thin RANS layer near the wall to reduce resolution requirements. It is important to notice that the usage of LES on under-resolved meshes can also compromise the accuracy of separation onset predictions. While requiring a higher resolution of the boundary layer, the advantage of LES versus hybrid models is the ‘seamless’ transition between attached and separated flow regions (no model switch). | |||
At the current point, it is not obvious which of these SRS approaches will gain the upper hand. Most likely, both approaches will be applied to provide the design engineer with a set of tools, with a variation in cost/performance ratio to be used during different phases of the design process. It is also likely that tunable RANS models (e.g. like the GEKO model by [https://www.researchgate.net/publication/336105262_Development_of_a_Generalized_K-o_Two-Equation_Turbulence_Model Menter et al. 2020]) or models based on machine learning) can get back into the mix for quick initial design studies. | |||
As a final comment, it should be noted that the Ahmed car body with slant angle of 25° is a highly sensitive test case due to its geometric proximity to a topological change of the flow. Even small modifications in model formulation, numerical settings or grid resolution can ‘flip’ the flow from one topology to another. Some of the sensitivities observed for that test case will therefore not necessarily be present in more realistic automotive configurations. | |||
=='''References'''== | |||
Menter, F. R., Matyushenko A., Lechner R.: Development of a generalized k-omega two-equation turbulence model. In Dillmann A. et al(eds) , New Results in Numerical and Experimental Fluid Mechanics XII, pp. 101-109. Springer (2020) | |||
Line 190: | Line 203: | ||
---- | ---- | ||
Contributors: Remi Manceau; Jean-Paul Bonnet - Université de Poitiers | ''Contributors: Remi Manceau; Jean-Paul Bonnet - Université de Poitiers. Update (2024) F.R.Menter, ANSYS Germany'', | ||
{{AC|front=AC 1-05|description=Description_AC1-05|testdata=Test Data_AC1-05|cfdsimulations=CFD Simulations_AC1-05|evaluation=Evaluation_AC1-05|qualityreview=Quality Review_AC1-05|bestpractice=Best Practice Advice_AC1-05|relatedUFRs=Related UFRs_AC1-05}} | {{AC|front=AC 1-05|description=Description_AC1-05|testdata=Test Data_AC1-05|cfdsimulations=CFD Simulations_AC1-05|evaluation=Evaluation_AC1-05|qualityreview=Quality Review_AC1-05|bestpractice=Best Practice Advice_AC1-05|relatedUFRs=Related UFRs_AC1-05}} |
Revision as of 11:12, 9 February 2024
Ahmed body
Application Challenge 1-05 © copyright ERCOFTAC 2004
Best Practice Advice for the AC
Key Fluid Physics
A-Key design or assessment parameters DOAP :
• The Drag coefficient Cd, and in particular its variations with the slant angle (see figure), is the main global parameter to be predicted.
The topology of the flow is crucial for the correct reproduction of the drag coefficient: in particular, the drag crisis around 25-30° corresponds to a transition of the wake structure from a massively separated, quasi-2D structure to a complex, 3D structure.
B- Key physics :
• The contributions of the different components of the drag have different trends when the slant angle changes (see figure).
• The component responsible for the drag crisis is the pressure drag due to the slant part , which jumps from 35% of total drag at 35° to 55% at 25°.
• The drag crisis corresponds to a dramatic change is the structure of the wake:
o In the low-drag configuration, the wake is massively-separated, quasi-toroïdal
In the high-drag configuration, the wake has a complex, 3D structure: in the central region of the slant part (close to the symmetry plane) experiments show a small separation bubble, with a reattachement on the slant part. This bubble strongly interacts with the highly energetic corner vortices. Other complex phenomena are present (interaction with the underside flow, with side boundary layers, large-scale flapping in the spanwise direction, etc.), but they are not well understood yet.
C- Comparison of CFD and experiments
• Low-drag configuration (35°):
o Realistic pressure level and distribution on the slant part and vertical base are predicted, even with standard k-epsilon with wall functions
o The correct trend of the drag with the slant angle is obtained
o However, quantitative predictions are not correct: pressure drop and drag are generally underestimated
• High-drag configuration (25°):
o The wake structure transition is missed by almost all models, whatever the numerical accuracy and the conditions of the computation: pressure drop on the base is highly underestimated. Only LES and low-Re RSM are able to reproduce the complex, 3D wake structure but:
o LES (CFD9) does not reproduce correctly the boundary layer, because of the use of wall functions
o Low-Re RSM (CFD13) overpredicts the reattachment length and the independance to numerics is not validated enough to draw definitive conclusions
Application Uncertainties
• The influence of the stilts on the drag is at least 10% (CFD11), but their influence on the structure of the flow under the body is not known precisely, and this may have a significant influence on the wake of the body, which cannot be evaluated.
• The experiments were performed in a ¾ open test section. The influence of using a finite computational domain is not known.
Computational Domain and Boundary Conditions
Computational domain
• ½ body (symmetry) is sufficient for steady-state computations (RANS). Use the full body for unsteady computations (LES, URANS).
• CFD11 estimates that the stilts roughly contribute to 10% of the drag. Stilts must be included.
• Include the ground plate: CFD3 shows that the flow without a ground plate is completely different. The ground plate should start 2L (L=body length) in front of the body to mimic the EXP2 profiles (CFD11, CFD15) (however, the importance of this condition has not been demonstrated).
• Inlet must be placed before x=-3L. Outlet must be sufficiently far to have no influence on the wake: outlet at x=5L is generally used, but no systematic study have been performed.
• Side and top boundaries: blockage is estimated to 4% in the experiments. To avoid too much blockage in CFD, the minimal recommended cross-section is 2Lx1.35L (for the full body).
Boundary conditions
• Use low turbulence intensity at the inlet and small viscosity ratio (I=0.25% and nt / n=10 estimated by EXP2).
• CFD11 shows that boundary conditions allowing outflow through the side and top boundaries are preferable to slip walls.
Discretisation and Grid Resolution
Discretisation method
• Convection scheme sensitivity studies (CFD11) and comparaison between different teams using the same model and the same mesh show that for the type of grids described below (“marginal resolution”), the solution is sensitive to the convection scheme. Use 2nd order approximation.
• Sensitivity to other sources of numerical errors (non-orthogonal cells, interpolations, explicit terms) are suspected: care must be taken to avoid 1st order sources of error.
• Time marching: second order time marching is also advised for unsteady computations, though it is no supported by clear sensitivity studies.
Grid resolution
• Meshes used in the CFD studies are very complex and precise specifications cannot be given. A grid sensitivity study is strongly advised, since the predictions are very sensitive to the mesh resolution. However, from sensitivity studies and comparisons between computations from different teams with the same models, the following guidelines can be provided (this are minimal constraints to reach an acceptable level of numerical error for global quantities like Cd, not for more sensitive quantities like velocities in the boundary layer):
o Surface mesh: at least 15000 cells are necessary, which leads to:
o Volume mesh: at least 0.5x106 cells for high-Re models (y+>30) and at least 1.5x106 cells for low-Re models (y+=1)
These guidelines are for ½ the body (double the cell number for the full body).
Physical Modelling
In the Ahmed body test case, predicting correctly the overall quantities (Cd, wake structure) is already a challenge. Therefore, giving advice for predicting flow details would be irrelevant:
BPA for overall quantities
• Low-drag configurations
All the turbulence models used in the CFD studies give a correct wake structure and Cd trend when varying the angle for low-drag configurations. However, using low-Re models gives a better boundary layer prediction on the slant part. None of the models give the correct quantitative prediction of the pressure distribution on the slant part and vertical base, and, therefore, of the drag.
o For qualitative predictions in the low-drag configuration, simple eddy-viscosity models with wall functions are sufficient
o Quantitative predictions cannot be trusted, whatever the model
• High-drag configuration
High Reynolds number models (k-ε, RSM) with wall functions must be avoided, because they generally do not predict separation at all, and always fail predicting correct profiles above the slant part.
Low-Re eddy-viscosity models predict separation provided they are free from the usual stagnation point anomaly (overprediction of turbulence production, see CFD5 study): this is the case for the k-ω/SST model (CFD6, CFD11, CFD12, CFD13, CFD14), non-linear/algebraic k-ε and k-ω models (CFD12, CFD13) and the rescaled V2F model (CFD15). This is not the case for the linear low-Re k-ε model used in CFD10. However, it must be pointed out again that these models predict massive separation, far from experiments.
Low-Re Reynolds stress models seems to be able to reproduce (too late) reattachment on the slant part and the qualitatively correct wake structure (CFD13). However, this needs to be confirmed by further studies.
LES (CFD9) is clearly able to reproduce the correct structure of the wake. However, using resolution down to the viscous sublayer is clearly unaffordable for the time being and the use of wall functions does not allow the correct reproduction of the boundary layer above the slant part.
Recommendations for Future Work
Experiments:
• Quantification of the large-scale unsteadiness and investigation of its role in the drag crisis
CFD
• The potential of low-Re RSM models must be further investigated
• Wall-treatment for LES must be improved (see update below)
• Since accounting for the near-wall region (low-Re RSM) and the large-scale unsteadiness (LES) have beneficial effects, the potential of accounting for both must be investigated: RANS/LES zonal coupling, RANS/LES hybrid models, Unsteady RANS, … (see update below)
Update by F. R. Menter added in 2024
In the years between the ERCOFTAC workshop and today (2024) it was found that steady-state RANS models are not well suited for high accuracy CFD simulations of external automotive geometries. This is well reflected by the contributions to the AutoCFD workshop, where a number of generic and semi-realistic automotive cases have been computed by numerous groups over the years. Most of the contributions to the workshop involve either hybrid RANS-LES or Wall-Function LES applications. This trend increased by the availability of low-cost GPU-based computing power and the corresponding CFD codes, utilizing this advanced hardware. By-and-large an order of magnitude increase in computer-power is achieved at the same cost relative to CPU based clusters. This allows for the wide-spread application of Scale-Resolving Simulations (SRS) to automotive design.
Even with this increase in computing power, the routine application of wall-resolved LES is not a practical option for engineering simulations. The most popular SRS methods are therefore global hybrid models like DDES or SBES. In these models, the attached boundary layer is covered by the RANS model whereas separated regions are automatically detected by the shielding functions and the models switch to LES. The SBES model is an improved version of the DDES model with better boundary layer shielding and more pronounced RANS-LES switching capabilities. The success of such methods depends both on the capability of the underlying RANS model to accurately predict separation lines as well as on the switching characteristics of the hybrid model. The alternative is to apply LES over the entire car, typically using a wall-model, either as a classical wall-function or a thin RANS layer near the wall to reduce resolution requirements. It is important to notice that the usage of LES on under-resolved meshes can also compromise the accuracy of separation onset predictions. While requiring a higher resolution of the boundary layer, the advantage of LES versus hybrid models is the ‘seamless’ transition between attached and separated flow regions (no model switch).
At the current point, it is not obvious which of these SRS approaches will gain the upper hand. Most likely, both approaches will be applied to provide the design engineer with a set of tools, with a variation in cost/performance ratio to be used during different phases of the design process. It is also likely that tunable RANS models (e.g. like the GEKO model by Menter et al. 2020) or models based on machine learning) can get back into the mix for quick initial design studies.
As a final comment, it should be noted that the Ahmed car body with slant angle of 25° is a highly sensitive test case due to its geometric proximity to a topological change of the flow. Even small modifications in model formulation, numerical settings or grid resolution can ‘flip’ the flow from one topology to another. Some of the sensitivities observed for that test case will therefore not necessarily be present in more realistic automotive configurations.
References
Menter, F. R., Matyushenko A., Lechner R.: Development of a generalized k-omega two-equation turbulence model. In Dillmann A. et al(eds) , New Results in Numerical and Experimental Fluid Mechanics XII, pp. 101-109. Springer (2020)
© copyright ERCOFTAC 2004
Contributors: Remi Manceau; Jean-Paul Bonnet - Université de Poitiers. Update (2024) F.R.Menter, ANSYS Germany,