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VKI Lecture Series, February 3-7, 2003. Overview. IntroductionPhysical model fidelityGrid resolution and discretization issuesDesigning an efficient unstructured mesh solver for computational aerodynamicsDrag prediction using unstructured mesh solversConclusions and future work. VKI Lecture Series, February 3-7, 2003.
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1. VKI Lecture Series, February 3-7, 2003 Aerodynamic Drag Prediction Using Unstructured Mesh Solvers Dimitri J. Mavriplis
National Institute of Aerospace
Hampton, Virginia, USA
2. VKI Lecture Series, February 3-7, 2003 Overview Introduction
Physical model fidelity
Grid resolution and discretization issues
Designing an efficient unstructured mesh solver for computational aerodynamics
Drag prediction using unstructured mesh solvers
Conclusions and future work
3. VKI Lecture Series, February 3-7, 2003 Overview Introduction
Importance of Drag Prediction
Suitability of Unstructured Mesh Approach
Physical model fidelity
Inviscid Flow Analysis
Coupled Inviscid-Viscous Methods
Large-Eddy Simulations (LES and DES)
4. VKI Lecture Series, February 3-7, 2003 Overview Grid resolution and discretization issues
Choice of discretization and effect of dissipation
Cell centered vs. vertex based
Effect of discretization variations on drag prediction
Grid resolution requirements
Choice of element type
Grid resolution issues
Grid convergence
5. VKI Lecture Series, February 3-7, 2003 Overview Designing an efficient unstructured mesh solver for computational aerodynamics
Discretization
Solution Methodologies
Efficient Hardware Usage
6. VKI Lecture Series, February 3-7, 2003 Overview
Drag prediction using unstructured mesh solvers
Wing-body cruise drag
Incremental effects: engine installation drag
High-lift flows
Conclusions and Future Work
7. VKI Lecture Series, February 3-7, 2003 Introduction Importance of Drag Prediction
Cruise: fuel burn, range, etc…
High-lift: Mechanical simplicity, noise
High accuracy requirements
Absolute or incremental: 1 drag count
Specialized computational methods
Wide range of scales
Thin boundary layers
Transition
8. VKI Lecture Series, February 3-7, 2003 Introduction Issues centric to unstructured mesh approach
Advantages and drawbacks over other approaches
Accuracy, efficiency
State-of-the art in aerodynamic predictions
De-emphasize non-method specific issues
Validation/ verification
Drag integration
9. CFD Perspective on Meshing Technology Sophisticated Multiblock Structured Grid Techniques for Complex Geometries
10. CFD Perspective on Meshing Technology Sophisticated Overlapping Structured Grid Techniques for Complex Geometries
11. VKI Lecture Series, February 3-7, 2003 Unstructured Grid Alternative Connectivity stored explicitly
Single Homogeneous Data Structure
12. VKI Lecture Series, February 3-7, 2003 Characteristics of Both Approaches Structured Grids
Logically rectangular
Support dimensional splitting algorithms
Banded matrices
Blocked or overlapped for complex geometries
Unstructured grids
Lists of cell connectivity, graphs (edge,vertices)
Alternate discretizations/solution strategies
Sparse Matrices
Complex Geometries, Adaptive Meshing
More Efficient Parallelization
13. VKI Lecture Series, February 3-7, 2003 Unstructured Meshes for Aerodynamics Computational aerodynamics rooted in structured methods
High accuracy and efficiency requirements
Unstructured mesh methods 2 to 4 times more costly
Mitigated by extra structured grid overhead
Block structured
Overset mesh
Parallelization
Accuracy considerations
Validation studies, experience
Unstructured mesh solvers potentially more efficient than structured mesh alternatives with equivalent accuracy
14. VKI Lecture Series, February 3-7, 2003 Physical Model Fidelity State-of-the-art in drag prediction: RANS
Entire suite of tools available to designer
Useful to examine capabilities of other tools
Lower fidelity – lower costs
Numerous rapid tradeoff studies
Higher fidelity – higher costs
Fewer detailed analyses
Situate RANS tools within this suite
15. VKI Lecture Series, February 3-7, 2003 Physical Model Requirements(Unstructured Mesh Methods)
16. VKI Lecture Series, February 3-7, 2003 Unstructured Mesh Euler Solvers Inviscid flow unstructured mesh solvers well established – robust
No viscous effects
No turbulence/transition modeling
Isotropic meshes
Good commercial isoptropic mesh generators
Good convergence properties
17. VKI Lecture Series, February 3-7, 2003 Example: Euler Solution of DLR-F4 Wing-body Configuration 235,000 vertex mesh
(ICEMCFD tetra)
Fully tetrahedral mesh
Convergence in 50 cycles
(multigrid)
3 minutes on 8 Pentiums
50 times faster than RANS
18. VKI Lecture Series, February 3-7, 2003 Example: Euler Solution of DLR-F4 Wing-body Configuration 235,000 vertex mesh
(ICEMCFD tetra)
Fully tetrahedral mesh
Convergence in 50 cycles
(multigrid)
3 minutes on 8 Pentiums
50 times faster than RANS
19. VKI Lecture Series, February 3-7, 2003 Example: Euler Solution of DLR-F4 Wing-body Configuration 235,000 vertex mesh
(ICEMCFD tetra)
Fully tetrahedral mesh
Convergence in 50 cycles
(multigrid)
3 minutes on 8 Pentiums
50 times faster than RANS
1.65 million vertices
20. VKI Lecture Series, February 3-7, 2003 Euler vs. RANS Solution 235,000 vertex mesh
(ICEMCFD tetra)
Fully tetrahedral mesh
Convergence in 50 cycles
(multigrid)
3 minutes on 8 Pentiums
50 times faster than RANS
21. VKI Lecture Series, February 3-7, 2003 Euler vs. RANS Solution Exclusion of viscous effects
Boundary layer displacement
Incorrect shock location
Incorrect shock strength
Supercritical wing sensitive to viscous effects
Euler solution not useful for transonic cruise drag prediction
22. VKI Lecture Series, February 3-7, 2003 Coupled Euler-Boundary Layer Approach Incorporate viscous effects to first order
Boundary layer displacement thickness
More accurate shock strength/location
Retain efficiency of Euler solution approach
Isotropic tetrahedral meshes
Fast, robust convergence
23. VKI Lecture Series, February 3-7, 2003 Coupled Euler-Boundary Layer Approach Stripwise 2-dimensional boundary layer
18 stations on wing alone
Interpolate from unstructured surface mesh
Transpiration condition for simulated BL displacement thickness
24. VKI Lecture Series, February 3-7, 2003 Euler vs. RANS Solution 235,000 vertex mesh
(ICEMCFD tetra)
Fully tetrahedral mesh
Convergence in 50 cycles
(multigrid)
3 minutes on 8 Pentiums
50 times faster than RANS
25. VKI Lecture Series, February 3-7, 2003 Euler-IBL vs. RANS Solution 235,000 vertex mesh
(ICEMCFD tetra)
Fully tetrahedral mesh
Convergence in 50 cycles
(multigrid)
3 minutes on 8 Pentiums
50 times faster than RANS
26. VKI Lecture Series, February 3-7, 2003 Coupled Euler-Boundary Layer Approach
27. VKI Lecture Series, February 3-7, 2003 Coupled Euler-Boundary-Layer Approach Vastly improved over Euler alone
Correct shock strength, location
Accurate lift
Reasonable drag
More sophisticated coupling possible
25 times faster than RANS
Neglibible IBL compute time
Convergence dominated by coupling
Parameter studies
Design optimization
28. VKI Lecture Series, February 3-7, 2003 LES and DES Methods RANS failures for separated flows
Good cruise design involves minimal separation
Off design, high-lift
LES or DES as alternative to turbulence modeling inadequacies
LES: compute all scales down to inertial range
Based on universality of inertial range
DES: hybrid LES/RANS (near wall)
Reduced cost
29. VKI Lecture Series, February 3-7, 2003 LES and DES: Notable Successes European LESFOIL program
Marie and Sagaut: LES about airfoil near stall
DES for massively separated aerodynamic flows
Strelets 2001, Forsythe 2000, 2001, 2003
Two to ? Orders of magnitude more expensive than RANS
Predictive ability for accurate drag not established
RANS methods state-of-art for foreseeable future
30. VKI Lecture Series, February 3-7, 2003 Grid Resolution and Discretization Issues
Choice of discretization and effect of dissipation (intricately linked)
Cells versus points
Discretization formulations
Grid resolution requirements
Choice of element type
Grid resolution issues
Grid convergence
31. VKI Lecture Series, February 3-7, 2003 Cell Centered vs Vertex-Based Tetrahedral Mesh contains 5 to 6 times more cells than vertices
Hexahedral meshes contain same number of cells and vertices (excluding boundary effects)
Prismatic meshes: cells = 2X vertices
Tetrahedral cells : 4 neighbors
Vertices: 20 to 30 neighbors on average
32. VKI Lecture Series, February 3-7, 2003 Cell Centered vs Vertex-Based On given mesh:
Cell centered discretization: Higher accuracy
Vertex discretization: Lower cost
Equivalent Accuracy-Cost Comparisons Difficult
Often based on equivalent numbers of surface unknowns (2:1 for tet meshes)
Levy (1999)
Yields advantage for vertex-discretization
33. VKI Lecture Series, February 3-7, 2003 Cell Centered vs Vertex-Based Both approaches have advantages/drawbacks
Methods require substantially different grid resolutions for similar accuracy
Factor 2 to 4 possible in grid requirements
Important for CFD practitioner to understand these implications
34. VKI Lecture Series, February 3-7, 2003 Example: DLR-F4 Wing-body (AIAA Drag Prediction Workshop)
35. VKI Lecture Series, February 3-7, 2003 Illustrative Example: DLR-F4 NSU3D: vertex-based discretization
Grid : 48K boundary pts, 1.65M pts (9.6M cells)
USM3D: cell-centered discretization
Grid : 50K boundary cells, 2.4M cells (414K pts)
Uses wall functions
NSU3D: on cell centered type grid
Grid: 46K boundary cells, 2.7M cells (470K pts)
36. VKI Lecture Series, February 3-7, 2003 Cell versus Vertex Discretizations Similar Lift for both codes on cell-centered grid
Baseline NSU3D (finer vertex grid) has lower lift
37. VKI Lecture Series, February 3-7, 2003 Cell versus Vertex Discretizations Pressure drag
Wall treatment discrepancies
NSU3D : cell centered grid
High drag, (10 to 20 counts)
Grid too coarse for NSU3D
Inexpensive computation
USM3D on cell-centered grid closer to NSU3D on vertex grid
38. VKI Lecture Series, February 3-7, 2003 Grid Resolution and Discretization Issues
Choice of discretization and effect of dissipation (intricately linked)
Cells versus points
Discretization formulations
Grid resolution requirements
Choice of element type
Grid resolution issues
Grid convergence
39. VKI Lecture Series, February 3-7, 2003 Discretization Governing Equations: Reynolds Averaged Navier-Stokes Equations
Conservation of Mass, Momentum and Energy
Single Equation turbulence model (Spalart-Allmaras)
Convection-Diffusion – Production
Vertex-Based Discretization
2nd order upwind finite-volume scheme
6 variables per grid point
Flow equations fully coupled (5x5)
Turbulence equation uncoupled
40. VKI Lecture Series, February 3-7, 2003 Spatial Discretization Mixed Element Meshes
Tetrahedra, Prisms, Pyramids, Hexahedra
Control Volume Based on Median Duals
Fluxes based on edges
Single edge-based data-structure represents all element types
41. Upwind Discretization
42. VKI Lecture Series, February 3-7, 2003 Matrix Artificial Dissipation
43. VKI Lecture Series, February 3-7, 2003 Entropy Fix L matrix: diagonal with eigenvalues:
u, u, u, u+c, u-c
Robustness issues related to vanishing eigenvalues
Limit smallest eigenvalues as fraction of largest eigenvalue: |u| + c
u = sign(u) * max(|u|, d(|u|+c))
u+c = sign(u+c) * max(|u+c|, d(|u|+c))
u – c = sign(u -c) * max(|u-c|, d(|u|+c))
44. VKI Lecture Series, February 3-7, 2003 Entropy Fix u = sign(u) * max(|u|, d(|u|+c))
u+c = sign(u+c) * max(|u+c|, d(|u|+c))
u – c = sign(u -c) * max(|u-c|, d(|u|+c))
d = 0.1 : typical value for enhanced robustness
d = 1.0 : Scalar dissipation
- L becomes scaled identity matrix
T |L| T-1 becomes scalar quantity
Simplified (lower cost) dissipation operator
Applicable to upwind and art. dissipation schemes
45. VKI Lecture Series, February 3-7, 2003 Discretization Formulations Examine effect of discretization type and parameter variations on drag prediction
Effect on drag polars for DLR-F4:
Matrix artificial dissipation
Dissipation levels
Entropy fix
Low order blending
Upwind schemes
Gradient reconstruction
Entropy fix
Limiters
46. Effect of Artificial Dissipation Level Increased accuracy through lower dissipation coef.
Potential loss of robustness
47. Effect of Entropy Fix for Artificial Dissipation Scheme Insensitive to small values of d=0.1, 0.2
High drag values for large d and scalar scheme
48. VKI Lecture Series, February 3-7, 2003 Effect of Artificial Dissipation
49. Effect of Low-Order Dissipation Blending for Shock Capturing Lift and drag relatively insensitive
Generally not recommended for transonics
50. Comparison of Discretization Formulation (Art. Dissip vs. Grad. Rec.) Least squares approach slightly more diffusive
Extremely sensitive to entropy fix value
51. Effect of Limiters on Upwind Discretization Limiters reduces accuracy, increase robustness
Less sensitive to non-monotone limiters
52. VKI Lecture Series, February 3-7, 2003 Effect of Discretization Type
53. Effect of Element Type Right angle tetrahedra produced in boundary layer regions
Highly stretched elements for efficiency
Non obtuse angle requirement for accuracy
Semi-structured tetrahedra combinable into prisms
Prism elements of lower complexity (fewer edges)
No significant accuracy benefit (Aftosmis et. Al. 1994 in 2D)
54. Effect of Element Type in BL Region Little overall effect on accuracy
Potential differences between two codes
55. VKI Lecture Series, February 3-7, 2003 Grid Resolution Issues Possibly greatest impediment to reliable RANS drag prediction
Promise of adaptive meshing held back by development of adequate error estimators
Unstructured mesh requirement similar to structured mesh requirements
200 to 500 vertices chordwise (cruise)
Lower optimal spanwise resolution
56. VKI Lecture Series, February 3-7, 2003 Illustration of Spanwise Stretching (VGRIDns, c/o S. Pirzadeh, NASA Langley) Factor of 3 savings in grid size
57. Effect of Normal Spacing in BL Inadequate resolution under-predicts skin friction
Direct influence on drag prediction
58. Effect of Normal Resolution for High-Lift (c/o Anderson et. AIAA J. Aircraft, 1995) Indirect influence on drag prediction
Easily mistaken for poor flow physics modeling
59. Grid Convergence (2D Euler) Lift converges as h2
Drag vanishes in continuous limit
60. VKI Lecture Series, February 3-7, 2003 Grid Convergence Seldom achieved for 3D RANS
Wide range of scales: 109 in AIAA DPW grid
High stretching near wall/wake regions
Good initial mesh required (even if adaptive)
Prohibitive Cost in 3D
Each refinement: 8:1 cost
4:1 accuracy improvement (2nd order scheme)
Emphasis:
User expertise, experience
Verification, validation, error estimation
61. VKI Lecture Series, February 3-7, 2003 Designing an Efficient Unstructured Mesh Solver for Aerodynamics Discretization
Efficient solution techniques
Multigrid
Efficient hardware utilization
Vector
Cache efficiency
Parallelization
62. VKI Lecture Series, February 3-7, 2003 Discretization Mostly covered previously
Vertex-based discretization
Matrix-based artificial dissipation
k2=1.0, d=0.1
No low order blending of dissipation (k1 = 0.0)
Hybrid Elements
Prismatic elements in boundary layer
Single edge based data-structure
63. VKI Lecture Series, February 3-7, 2003 Discretization Edge-based data structure
Building block for all element types
Reduces memory requirements
Minimizes indirect addressing / gather-scatter
Graph of grid = Discretization stencil
Implications for solvers, Partitioners
64. VKI Lecture Series, February 3-7, 2003 Spatially Discretized Equations Integrate to Steady-state
Explicit:
Simple, Slow: Local procedure
Implicit
Large Memory Requirements
Matrix Free Implicit:
Most effective with matrix preconditioner
Multigrid Methods
65. VKI Lecture Series, February 3-7, 2003 Multigrid Methods High-frequency (local) error rapidly reduced by explicit methods
Low-frequency (global) error converges slowly
On coarser grid:
Low-frequency viewed as high frequency
66. VKI Lecture Series, February 3-7, 2003 Multigrid Correction Scheme(Linear Problems)
67. Multigrid for Unstructured Meshes Generate fine and coarse meshes
Interpolate between un-nested meshes
Finest grid: 804,000 points, 4.5M tetrahedra
Four level Multigrid sequence
68. VKI Lecture Series, February 3-7, 2003 Geometric Multigrid Order of magnitude increase in convergence
Convergence rate equivalent to structured grid schemes
Independent of grid size: O(N)
69. VKI Lecture Series, February 3-7, 2003 Agglomeration vs. Geometric Multigrid Multigrid methods:
Time step on coarse grids to accelerate solution on fine grid
Geometric multigrid
Coarse grid levels constructed manually
Cumbersome in production environment
Agglomeration Multigrid
Automate coarse level construction
Algebraic nature: summing fine grid equations
Graph based algorithm
70. VKI Lecture Series, February 3-7, 2003 Agglomeration Multigrid Agglomeration Multigrid solvers for unstructured meshes
Coarse level meshes constructed by agglomerating fine grid cells/equations
71. Agglomeration Multigrid
72. VKI Lecture Series, February 3-7, 2003 Agglomeration MG for Euler Equations Convergence rate similar to geometric MG
Completely automatic
73. VKI Lecture Series, February 3-7, 2003 Anisotropy Induced Stiffness Convergence rates for RANS (viscous) problems much slower than inviscid flows
Mainly due to grid stretching
Thin boundary and wake regions
Mixed element (prism-tet) grids
Use directional solver to relieve stiffness
Line solver in anisotropic regions
74. VKI Lecture Series, February 3-7, 2003 Directional Solver for Navier-Stokes Problems Line Solvers for Anisotropic Problems
Lines Constructed in Mesh using weighted graph algorithm
Strong Connections Assigned Large Graph Weight
(Block) Tridiagonal Line Solver similar to structured grids
75. VKI Lecture Series, February 3-7, 2003 Multigrid Line Solver Convergence DLR-F4 wing-body, Mach=0.75, 1o, Re=3M
Baseline Mesh: 1.65M pts
76. Multigrid Insensitivity to Mesh Size High-Lift Case: Mach=0.2, 10o, Re=1.6M
77. Implementation on Parallel Computers Intersected edges resolved by ghost vertices
Generates communication between original and ghost vertex
Handled using MPI and/or OpenMP
Portable, Distributed and Shared Memory Architectures
Local reordering within partition for cache-locality
78. VKI Lecture Series, February 3-7, 2003 Partitioning Graph partitioning must minimize number of cut edges to minimize communication
Standard graph based partitioners: Metis, Chaco, Jostle
Require only weighted graph description of grid
Edges, vertices and weights taken as unity
Ideal for edge data-structure
Line solver inherently sequential
Partition around line using weighted graphs
79. VKI Lecture Series, February 3-7, 2003 Partitioning Contract graph along implicit lines
Weight edges and vertices
Partition contracted graph
Decontract graph
Guaranteed lines never broken
Possible small increase in imbalance/cut edges
80. VKI Lecture Series, February 3-7, 2003 Partitioning Example 32-way partition of 30,562 point 2D grid
Unweighted partition: 2.6% edges cut, 2.7% lines cut
Weighted partition: 3.2% edges cut, 0% lines cut
81. Parallel Scalability (MPI) 24.7M pts, Cray T3E
82. Parallel Scalability 3M pts, Origin 2000
83. VKI Lecture Series, February 3-7, 2003 Drag Prediction Using Unstructured Mesh Solvers Absolute drag for transonic wing-body
AIAA drag prediction workshop (June 2001)
Incremental effects
DLR engine installation drag study
High lift flows
Large scale 3D simulation (NSU3D)
Experience base in 2D
84. AIAA Drag Prediction Workshop (2001) Transonic wing-body configuration
Typical cases required for design study
Matrix of mach and CL values
Grid resolution study
Follow on with engine effects (2003)
85. VKI Lecture Series, February 3-7, 2003 Cases Run Baseline grid: 1.6 million points
Full drag Polars for Mach=0.5,0.6,0.7,0.75,0.76,0.77,0.78,0.8
Total = 72 cases
Medium grid: 3 million points
Full drag polar for each Mach number
Total = 48 cases
Fine grid: 13 million points
Drag polar at mach=0.75
Total = 7 cases
86. VKI Lecture Series, February 3-7, 2003 Sample Solution (1.65M Pts) Mach=0.75, CL=0.6, Re=3M
2.5 hours on 16 Pentium IV 1.7GHz
87. VKI Lecture Series, February 3-7, 2003 Observed Flow Flow Details Mach = 0.75, CL=0.6 Separation in wing root area
Post shock and trailing edge separation
88. VKI Lecture Series, February 3-7, 2003 Typical Simulation Characteristics Y+ < 1 over most of wing surfaces
Multigrid convergence < 500 cycles
89. VKI Lecture Series, February 3-7, 2003 Lift vs Incidence at Mach = 0.75 Lift values overpredicted
Increased lift with additional grid resolution
90. VKI Lecture Series, February 3-7, 2003 Drag Polar at Mach = 0.75 Grid resolution study
Good comparison with experimental data
91. Comparison with Experiment Grid Drag Values
Incidence Offset for Same CL
92. Surface Cp at 40.9% Span Aft shock location results in lift overprediction
Matching CL condition produces low suction peak
Adverse effect on predicted moments
93. Drag Polars at other Mach Numbers Grid resolution study
Discrepancies at Higher Mach/CL Conditions
94. Drag Rise Curves Grid resolution study
Discrepancies at Higher Mach/CL Conditions
95. Structured vs Unstructured Drag Prediction (AIAA workshop results) Similar predictive ability for both approaches
More scatter for structured methods
More submissions/variations for structured methods
96. VKI Lecture Series, February 3-7, 2003 Absolute Drag Prediction (AIAA DPW 2001)
Unstructured mesh capabilities comparable to other methods
Lift overprediction tainted assessment of overall results
Absolute drag prediction not within 1 count
10 to 20 counts
Poorer agreement at high Mach, CL (separation)
Grid convergence not established
Better results possible with extensive validation
Potentially better success for incremental effects
97. VKI Lecture Series, February 3-7, 2003 Timings on Various Architectures
98. VKI Lecture Series, February 3-7, 2003 Cases Run on ICASE Cluster 120 Cases (excluding finest grid)
About 1 week to compute all cases
99. VKI Lecture Series, February 3-7, 2003 Incremental Effects Absolute drag prediction to 1 count not yet feasible in general
Incremental effects potentially easier to capture
Cancellation of drag bias in non-critical regions
Important in design study tradeoffs
Pre-requisite for automated design optimization
Engine installation drag prediction
DLR study (tau unstructured grid code)
(Broderson and Sturmer AIAA-2001-2414)
100. VKI Lecture Series, February 3-7, 2003 DLR-F6 Configuration Similar to DLR-F4
Wing aspect ratio: 9.5
Sweep: 27.1 degrees
Twin engine (flow through nacelles)
Test as wing-body alone
Test 3 different nacelle positions
Two nacelle types (not included herein)
Subject of 2nd AIAA Drag Prediction Workshop (June 2003)
101. DLR-F6 Nacelle Positions
102. VKI Lecture Series, February 3-7, 2003 DLR tau Unstructured Solver Similar to NSU3D solver
Vertex discretization
Artificial dissipation
Scaled scalar dissiption
Agglomeration multigrid
Spalart Allmaras turbulence model
Productionalized adaptive meshing capability
103. VKI Lecture Series, February 3-7, 2003 DLR tau Unstructured Solver Productionalized adaptive meshing capability
3 levels of adaptive meshing employed
Refinement based on flow-field gradients
Wing-body grids
Initial: 2.9 million points
Final: 5.5 million points
Wing-body nacelle-pylon grids
Initial: 4.5 million points
Final: 7.5 million points
104. VKI Lecture Series, February 3-7, 2003 Computed Absolute Values Overprediction of lift for all cases
Under-prediction of drag for all cases
105. Computed Incremental Values Absolute drag underpredicted by 10-20 counts
Installation drag accurate to 1 to 4 counts
Similar to variations between wind-tunnel campaigns
106. Effect of (Adaptive) Grid Resolution Absolute drag correlation decreases as grid refined
Incremental drag correlation improves as grid refined
107. VKI Lecture Series, February 3-7, 2003 Prediction of Installation Drag Accuracy of absolute drag not sufficient
Accurate installation drag (incremental)
Changes in drag due to nacelle position detectable to within 1 to 2 counts
Enables CFD design-based decisions
Design optimization
Results from careful validation study
More complete study at AIAA DPW 2003
108. High-Lift Flows Complicated flow physics
High mesh resolution requirements
On body, off body
Complex geometries
Original driver for unstructured meshes in aerodynamics
109. VKI Lecture Series, February 3-7, 2003 High-Lift Flows Prediction of surface pressures
Separation possible at design conditions(landing)
Lift, drag and moments
CLmax, stall
Large 3D high-lift case
2D experience base
110. VKI Lecture Series, February 3-7, 2003 NASA Langley Energy Efficient Transport Complex geometry
Wing-body, slat, double slotted flaps, cutouts
Experimental data from Langley 14x22ft wind tunnel
Mach = 0.2, Reynolds=1.6 million
Range of incidences: -4 to 24 degrees
111. VGRID Tetrahedral Mesh 3.1 million vertices, 18.2 million tets, 115,489 surface pts
Normal spacing: 1.35E-06 chords, growth factor=1.3
112. Computed Pressure Contours on Coarse Grid Mach=0.2, Incidence=10 degrees, Re=1.6M
113. VKI Lecture Series, February 3-7, 2003 Spanwise Stations for Cp Data Experimental data at 10 degrees incidence
114. VKI Lecture Series, February 3-7, 2003 Comparison of Surface Cp at Middle Station
115. Computed Versus Experimental Results Good drag prediction
Discrepancies near stall
116. VKI Lecture Series, February 3-7, 2003 Multigrid Convergence History Mesh independent property of Multigrid
117. VKI Lecture Series, February 3-7, 2003 Parallel Scalability Good overall Multigrid scalability
Increased communication due to coarse grid levels
Single grid solution impractical (>100 times slower)
1 hour solution time on 1450 PEs
118. VKI Lecture Series, February 3-7, 2003 Two-Dimensional High-Lift Large body of experience in 2D
High resolution grids possible
50,000 pts required for Cp on 3 elements
Up to 250,000 pts required for CLmax
Effect of wake resolution
Rapid assessment of turbulence/transition models
Ability to predict incremental effects
Reynolds number effects
Small geometry changes (gap/overlap)
119. Typical Agreement for NSU2D Solver Good CP agreement in linear region of CL curve
(Lynch, Potter and Spaid, ICAS 1996)
120. Typical Agreement for NSU2D Solver CLmax overpredicted
CLmax Incidence overpredicted by 1 degree
(Lynch, Potter and Spaid, ICAS 1996)
121. Effect of Grid Resolution and Dissipation Wake capturing requires fine off-body grid
Enhanced by low dissipation scheme
More difficult further downstream
Slat wake deficit consistently overpredicted
122. Prediction of Incremental Effects Adequate Reynolds number effect prediction
Provided no substantial transitional effects
Transition is important player
Transition models
123. Prediction of Gap/Overlap Effects Change due to 0.25% chord increase in flap gap
CL increase at low/high incidences captured
CL decrease at intermediate incidence missed
Flap separation not captured by turb model
124. VKI Lecture Series, February 3-7, 2003 Status of High Lift Simulation Two-dimensional cases
Good predictive ability provided flow physics are captured adequately
Turbulence, transition
Grid resolution
Three dimensional simulations coming of age
Grid resolution from 2D studies
Extensive validation required
125. VKI Lecture Series, February 3-7, 2003 Conclusions and Future Work Cruise drag prediction requires improvement
Incremental effects (cruise) to wind tunnel accuracy are feasible
High-lift simulations in initial development
Higher accuracy, efficiency, reliability
Adaptive meshing
Error estimation
Higher-order methods
126. VKI Lecture Series, February 3-7, 2003 Adaptive Meshing and Error Control Potential for large savings trough optimized mesh resolution
Error estimation and control
Guarantee or assess level of grid convergence
Immense benefit for drag prediction
Driver for adaptive process
Mechanics of mesh adaptation
Refinement criteria and error estimation
127. VKI Lecture Series, February 3-7, 2003 Mechanics of Adaptive Meshing Various well know isotropic mesh methods
Mesh movement
Spring analogy
Linear elasticity
Local Remeshing
Delaunay point insertion/Retriangulation
Edge-face swapping
Element subdivision
Mixed elements (non-simplicial)
Require anisotropic refinement in transition regions
128. VKI Lecture Series, February 3-7, 2003 Subdivision Types for Tetrahedra
129. VKI Lecture Series, February 3-7, 2003 Subdivision Types for Prisms
130. VKI Lecture Series, February 3-7, 2003 Subdivision Types for Pyramids
131. VKI Lecture Series, February 3-7, 2003 Subdivision Types for Hexahedra
132. VKI Lecture Series, February 3-7, 2003 Adaptive Tetrahedral Mesh by Subdivision
133. VKI Lecture Series, February 3-7, 2003 Adaptive Hexahedral Mesh by Subdivision
134. VKI Lecture Series, February 3-7, 2003 Adaptive Hybrid Mesh by Subdivision
135. VKI Lecture Series, February 3-7, 2003 Refinement Criteria Weakest link of adaptive meshing methods
Obvious for strong features
Difficult for non-local (ie. Convective) features
eg. Wakes
Analysis assumes in asymptotic error convergence region
Gradient based criteria
Empirical criteria
Effect of variable discretization error in design studies, parameter sweeps
136. VKI Lecture Series, February 3-7, 2003 Adjoint-based Error Prediction Compute sensitivity of global cost function to local spatial grid resolution
Key on important output, ignore other features
Error in engineering output, not discretization error
e.g. Lift, drag, or sonic boom …
Captures non-local behavior of error
Global effect of local resolution
Requires solution of adjoint equations
Adjoint techniques used for design optimization
137. VKI Lecture Series, February 3-7, 2003 Adjoint-based Mesh Adaptation Criteria
138. VKI Lecture Series, February 3-7, 2003 Adjoint-based Mesh Adaptation Criteria
139. High-Order Accurate Discretizations Uniform X2 refinement of 3D mesh:
Work increase = factor of 8
2nd order accurate method: accuracy increase = 4
4th order accurate method: accuracy increase = 16
For smooth solutions
Potential for large efficiency gains
Spectral element methods
Discontinuous Galerkin (DG)
Streamwise Upwind Petrov Galerkin (SUPG)
140. Higher-Order Methods Most effective when high accuracy required
Potential role in drag prediction
High accuracy requirements
Large grid sizes required
141. VKI Lecture Series, February 3-7, 2003 Higher-Order Accurate Discretizations Transfers burden from grid generation to Discretization
142. Spectral Element Solution of Maxwell’s Equations J. Hestahaven and T. Warburton (Brown University)
143. VKI Lecture Series, February 3-7, 2003 Combined H-P Refinement Adaptive meshing (h-ref) yields constant factor improvement
After error equidistribution, no further benefit
Order refinement (p-ref) yields asymptotic improvement
Only for smooth functions
Ineffective for inadequate h-resolution of feature
Cannot treat shocks
H-P refinement optimal (exponential convergence)
144. VKI Lecture Series, February 3-7, 2003 Conclusions Drag prediction is demanding, specialized task
Unstructured mesh approach offers comparable accuracy, efficiency with future potential for adaptive meshing advantages
Major impediments:
Grid convergence
Flow physics modeling
Continued investment in extensive validation verification required for useful capability