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Optimization in CFD
Presentation on different methods used for optimization
and case studies
V4
Prof GR Shevare
2
©ZeusNumerixPvtLtd:ConfidentialDocument
Contents
 Motivation
 Optimization, Multi-disciplinary Analysis and Multi-disciplinary optimization
 Optimization of an airfoil
 Multi-disciplinary optimization of a winglet
 Closure
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 Design optimization using current High-Performance Computing offers
 Faster solutions to more complex problems
 The results are more accurate and hence engineering systems offer improved performance
 The systems have enhanced safety & environmental acceptability
 The concept-to-market time is reduced for new products
 It is possible to reduce the development cost the overall development cost
 In fact, optimization using simulations is a reality
Motivation
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 No of wings requiring wind tunnel tests in Boeing airplanes company*
 Wind tunnels experiments cost much money; they require time
 CFD is a design tool capable of saving many wind tunnel tests
Motivation contd…
* Ref. : Thirty years of development and application of CFD at Boeing Commercial airplanes, Seattle,
by F. T. Johnson, E. N. Tinoco and N. Jong Yu, AIAA 2003-3439
1980 1990 2000 2011
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Tools other than CFD code
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Build Computational
Domain
Create
suitable Mesh
Boundary Conditions &
Initial conditions
Solution of discrete
equationsPlot flow FieldInterpret solution
Desktop simulations can take years for a real-life problem. HPC and automation may reduce time to months
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Definitions
 Optimization
 To arrive at the best candidate through automated repeated simulations
 Multi-disciplinary analysis
 A framework capable of executing two or more types of simulations (belonging to more than
one discipline) for finding out performance of an engineering design
 Multi-disciplinary Optimization
 A framework to identify the best design based on automated and repeated multi-disciplinary
analysis
 Searching the next design is important
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Optimisers
 Gradient based optimisers
 Adjoint equation
 Newton’s method
 Steepest gradient method
 Conjugate gradient method
 Sequential quadratic programming
 Gradient free optimisers
 Hooke-Jeeves pattern search
 Nelder-Mead method
 Population based optimisers
 Genetic algorithm
 Memetic algorithm
 Particle swarm based
 Harmony search
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Optimisation of an airfoil shape
Airfoil shape optimization using genetic algorithm approach
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Optimisation of a 2D airfoil
 Objectile: Design an airfoil with maximize lift/drag using genetic algorithm
 Design variables : Meanline and thickness
 Each is Bezier curve with fixed start and end points and positive thickness
 Control points can be anything more than 3 to less than 10
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Automation of Tools
 Geometry and meshing – About 2500 cells and Clustered around the body
 Flow Solver – Execution time 3 minutes / case
 Visualization – Automated Off-screen rendering
 Hardware – GA tool as client on Windows & 26 Linux desktops as compute server
 Optimiser – Genetic algorithm
Some candidate airfoil and meshes around them
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Random Initial Profiles
 Color plots show pressure variation
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Evolution over Generations
 Each dot is one candidate airfoil. 40 generations of population birth of 100 takes 10
hours (total ~4000 cases)
Target Fitting Function Band
Generations
Lift/drag
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Convergence to Robust Designs
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IncreasingFittingFunction(L/D)
Pressure variation Velocity variation
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Multi-disciplinary Optimisation of
Winglet
Case study of winglet optimization
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MDO Studies
 Engineering design is always multi-disciplinary. The designers are usually skeptical of
automation
 The cost function changes with time
 Some simulation tools may not be available on the platform being used. Workflow
must take care of such problems.
 The designer must specify the cost function (i.e. what to maximize or minimize)
 The fidelity of an analysis depends upon the sensitivity of cost function
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MDO of a winglet
 Winglets can reduce drag up to 15 %
 Savings depend on fuel cost. Therefore winglets can be an add-on
 Statement : Design a winglet (for a given wing) which produces maximum lift,
minimum drag and minimum weight
 This is multi-disciplinary optimisation
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 Design space: three out of six parameters that define a winglet
Winglet design parameterization
Winglet Wing
Front View
(showing Cant Angle)
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Cant
Angle
Sweep
Angle
Top View
winglet unfolded
(showing Sweep angle)
-ve twist +ve twist
Top View
winglet vertical
(showing Twist)
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Winglet Design Parameterization contd.
 Note that
 Winglet can be changed completely
 Outer shape of the wing exposed to air can not be changed
 Thickness of the skin, spars, ribs can be changed based on incremental loads that
winglet produces
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Winglet taper ratio Blend Span Wingspan
Wing-tip Chord
WTC
Wing-root Chord
WRC
Wing top view (winglet unfolded)
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Fitness Evaluation function
Cruise Induced
Drag
Cdicruise
Climb Induced
Drag
CdiClimb
Maneuver Bending
Moment
MxManeuver
Structural weight estimation model
Penaltystructural = Δwing-weight / ktrade-off
Averaged ΔCdi (in drag counts)
ΔCdiavg = 0.5 ( ΔCdicruise + ΔCdiclimb)
Aero-Structural trade-off
coefficient
Ktrade-off
(kg per drag count)
Final Fitness Value
J=ΔCdiavg+Penaltystructural
GA optimizer
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Genetic Algorithm Optimizer
 The following flow diagram represents the basic algorithm for GA
Create a population of winglet by varying
the 3 design parameters
(generation = 0)
Job Scheduler
Select designs with best
characteristics
Perform reproduction using crossover
and mutate creating new population
Output Latest population
of Design
If required number of generations
completed
NextGeneration
Fitness
Evaluation
(Design 1)
Fitness
Evaluation
(Design 2)
Fitness
Evaluation
(Design 3)
Fitness
Evaluation
(Design n)
Parallel Fitness Calculation
for all individual of a
generation
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WOS Flow Diagram
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Input Structure
Bezier Control Point Array for:
 Wingtip to winglet-tip chord taper variation
 Sweep variation along winglet span
Real number values for
 Ratio of winglet span to wing span (ESR)
 Ratio of Blend span to Winglet span (BSR)
 Cant angle for Winglet
 Toe angle for Winglet
Simulation
1
Total Cruise Drag
Total Cruise Lift
Bending Moment
Horizontal Span
Penalty based
Fitness
Calculation
FitnessValue
Other
Constraints
• Wing geometry
• Airfoil Shapes
• Cruise conditions.
Other Inputs
Garuda
Grid
Simulation
2
Simulation
3
Optimization
Client
Simulation
4
Simulation
5
n Simulations
CFD Execution Server
(HTTP Server)
GridWay Jobs
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Need for Grid Consistency Study
 Initial CFD runs for determination drag were performed over a grid size of 1.2 million
 Time required for simulations ~ 26 hours on 8 CPU
 Need lesser grid size for use in optimization cycle for faster CFD execution time
 Perform grid-consistency study (grids which do not alter the merit of wing geometry,
actual drag values may differ) to find out lower grid sizes that can be used in
optimization calculation
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1.2 Million vs. 0.2 Million Grids
0.2 million Mesh 1.2 million Mesh
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1.2 Million vs. 0.2 Million Grids
 Geometric fidelity of winglet is not lost by reducing the grid size by a factor of 10!
 But the computations will be 10 times faster!!
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0.2 million Mesh 1.2 million Mesh
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Comment 1 Comment 2
 It can be observed that the relative
merit, as measured in the induced
drag values, remains unchanged for
all the six geometric configurations
in cruise as well as climb conditions
 In optimisation cycles only coarse
grids will be used for induced drag
 The coarse grid values will be scaled
up by an averaged scaling factor to
convert them into realistic values
Comparison of Grid Consistency Results
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Bending Moment Variation around Wing-tip
 Bending moment around wing-tip calculated for the first winglet
 Bending moment calculated for each of the random winglet design ( case 0 – 5)
 Compare with benchmark case to find effect of variation on moment
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FEM Modelling Of Wing-box
 Wing is modeled as a wing box consisting of ribs, spars and skin as shown below.
 FEM Mesh included skin, spars, stringers with Element Type : 8–noded Shell element
 No. of DoF : 5 –DoF (3 Translation +2 –Rotation)
 Boundary Condition – All DoF at root of wing is constrained
 Loading Conditions:
 Pressure Distribution
 Forces and moment due to winglet
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Z
Y
X
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Loads on Structure – I
 Distributed Pressure force is applied on the upper and lower surface of the wing-skin
as obtained from CFD simulations
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Lower Surface
Upper Surface
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Loads on Structure – II
 Forces Fz and Fy generated by winglet is transferred to the wing tip as forces and
moment as shown in figure below.
 Moment is modeled as a couple. Equal and opposite forces acting on the lower and
upper nodes at the wing tip
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Wing Winglet
Fixed wing root
Wing
Fixed wing root
Mxwinglet
Mxwinglet = a . Fzwinglet - b . Fywinglet
Z
Y
X
Fzwinglet
Fywinglet
a
b
Fzwinglet
Fywinglet
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©ZeusNumerixPvtLtd:ConfidentialDocument
Thickness Estimation Procedure
 Thickness of all ribs except the one at tip is kept constant (1.6mm)
 Rib thickness at the tip is kept as (5 mm) to avoid local deformation
due to moment.
 Thickness of spars is kept as (7 mm)
 Table shows span-wise skin thickness variation
 Wing root is thicker than the tip because of higher stress and to
avoid any buckling
 The thickness of the structural elements were varied by equal
percentage to achieve the target stress value that satisfy failure
criteria for corresponding change in bending moment
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Panel No Thickness
(mm)
1 (root) 6.4
2 6.3
3 5.9
4 5.6
5 5.4
6 5
7 4.7
8 4.3
9 4.2
10 4
11 3.7
12 3.4
13 3.1
14 2.8
15 2.5
16 2.2
17 2
18 1.7
19 1.6
20 1.6
21 (tip) 1.6
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Post Process for Benchmark Configuration
 Normal Stresses in Y - direction
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Wing Deflection (Dmax = 1.5 m)
Stress on spar
Note:
1) Compression and tension on upper and lower surface can be seen
2) Stress on centerline of spar is mostly 0 and increasing as going towards width
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Von-Mises Stresses
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Von Mises stress is maximum
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Comparison of Stress Distribution
 The percentage increase in Bending moment due to winglet results in higher
stresses. The thickness of the all part has been increased in equal proportion that
satisfy failure criteria
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%Bending Moment v/s %Weight Change
 Model of percentage variation in wing-tip bending moment v/s weight change is
formulated and is shown in the following plot
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Equation for change in weight estimation
ΔW = (( 0.182 x %ΔMx ) + 0.1451 ) / 100 x 481.793
ΔW = change in weight
%ΔMx = percent change in Moment
Comparable curve from
ONERA-MDO work
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Details of Optimizer Execution
 No. Individual in a generation : 40 individuals
 No. of CFD runs for a design : 7 runs
 Computational Nodes used : 20 nodes
 Generations Completed : 12 generations
 Total CFD simulations : 2160
 CFD mesh size : 0.45 million
 Optimization target : MINIMIZING fitness value
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Scatter of Individual over 9 Generations
 The band of fitness of individuals in successive generation demonstrates the
reduction of the spread due to Genetic Algorithm Optimization
 The difference in fitness between the best individuals of 1st generation and 12th
generation is ~ 7 units. This signifies that the optimizer is able to give better designs
This is also seen by the drop in the Green line that denotes the average fitness
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Each of these short-thick horizontal dashes represent a design
individual
Blue Line denotes the least fit individual
Green Line denotes the average fitness per generation
Orange Line denotes the best fit individuals
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©ZeusNumerixPvtLtd:ConfidentialDocument
Best Design: 9th Generation
 The following figure gives a comparison between the nominal winglet and the
winglet with best fitness after 8th generation, in 9th generation
 Notice the comparison of winglet span between the two pictures
 The span of lower winglet is nearly double that of above design
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Nominal Design
Design 70
Fitness:-54.16
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©ZeusNumerixPvtLtd:ConfidentialDocument
Best Design: 12th Generation
 The following figure gives a comparison between the nominal winglet and the
winglet with best fitness after 11th generation, in 12th generation
 This figure shows that the winglet design obtained after 12th generation is similar to
that obtained in 9th generation
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Nominal Design
Design 105
Fitness:-54.57
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©ZeusNumerixPvtLtd:ConfidentialDocument
Closure
 In aerodynamic optimisation studies automation of all the processes is a must.
Choosing the next design candidate is as important as the analysis
 An optimisation of 2D airfoil is explained
 A framework for data transfer and controlling simulations is essential for multi-
disciplinary optimisation of aerodynamic shapes
 The framework has been explained for optimising a winglet for a short-range aircraft.
The framework is capable of reducing the induced drag of an aircraft without
compromising structural integrity
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www.zeusnumerix.com
+91 72760 31511
Abhishek Jain
abhishek@zeusnumerix.com
Thank You !

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Optimization in CFD and Case Studies

  • 1. 1Build-to-Specifications | Product Approval | Engineering Services | Software Development Optimization in CFD Presentation on different methods used for optimization and case studies V4 Prof GR Shevare
  • 2. 2 ©ZeusNumerixPvtLtd:ConfidentialDocument Contents  Motivation  Optimization, Multi-disciplinary Analysis and Multi-disciplinary optimization  Optimization of an airfoil  Multi-disciplinary optimization of a winglet  Closure 16 Sept 2020 Optimization in CFD: Zeus Numerix 2
  • 3. 3 ©ZeusNumerixPvtLtd:ConfidentialDocument  Design optimization using current High-Performance Computing offers  Faster solutions to more complex problems  The results are more accurate and hence engineering systems offer improved performance  The systems have enhanced safety & environmental acceptability  The concept-to-market time is reduced for new products  It is possible to reduce the development cost the overall development cost  In fact, optimization using simulations is a reality Motivation 16 Sept 2020 Optimization in CFD: Zeus Numerix 3
  • 4. 4 ©ZeusNumerixPvtLtd:ConfidentialDocument  No of wings requiring wind tunnel tests in Boeing airplanes company*  Wind tunnels experiments cost much money; they require time  CFD is a design tool capable of saving many wind tunnel tests Motivation contd… * Ref. : Thirty years of development and application of CFD at Boeing Commercial airplanes, Seattle, by F. T. Johnson, E. N. Tinoco and N. Jong Yu, AIAA 2003-3439 1980 1990 2000 2011 16 Sept 2020 Optimization in CFD: Zeus Numerix 4
  • 5. 5 ©ZeusNumerixPvtLtd:ConfidentialDocument Tools other than CFD code 3 2 Build Computational Domain Create suitable Mesh Boundary Conditions & Initial conditions Solution of discrete equationsPlot flow FieldInterpret solution Desktop simulations can take years for a real-life problem. HPC and automation may reduce time to months 16 Sept 2020 Optimization in CFD: Zeus Numerix 5
  • 6. 6 ©ZeusNumerixPvtLtd:ConfidentialDocument Definitions  Optimization  To arrive at the best candidate through automated repeated simulations  Multi-disciplinary analysis  A framework capable of executing two or more types of simulations (belonging to more than one discipline) for finding out performance of an engineering design  Multi-disciplinary Optimization  A framework to identify the best design based on automated and repeated multi-disciplinary analysis  Searching the next design is important 16 Sept 2020 Optimization in CFD: Zeus Numerix 6
  • 7. 7 ©ZeusNumerixPvtLtd:ConfidentialDocument Optimisers  Gradient based optimisers  Adjoint equation  Newton’s method  Steepest gradient method  Conjugate gradient method  Sequential quadratic programming  Gradient free optimisers  Hooke-Jeeves pattern search  Nelder-Mead method  Population based optimisers  Genetic algorithm  Memetic algorithm  Particle swarm based  Harmony search 16 Sept 2020 Optimization in CFD: Zeus Numerix 7
  • 8. 8 ©ZeusNumerixPvtLtd:ConfidentialDocument Optimisation of an airfoil shape Airfoil shape optimization using genetic algorithm approach 16 Sept 2020 Optimization in CFD: Zeus Numerix 8
  • 9. 9 ©ZeusNumerixPvtLtd:ConfidentialDocument Optimisation of a 2D airfoil  Objectile: Design an airfoil with maximize lift/drag using genetic algorithm  Design variables : Meanline and thickness  Each is Bezier curve with fixed start and end points and positive thickness  Control points can be anything more than 3 to less than 10 16 Sept 2020 Optimization in CFD: Zeus Numerix 9
  • 10. 10 ©ZeusNumerixPvtLtd:ConfidentialDocument Automation of Tools  Geometry and meshing – About 2500 cells and Clustered around the body  Flow Solver – Execution time 3 minutes / case  Visualization – Automated Off-screen rendering  Hardware – GA tool as client on Windows & 26 Linux desktops as compute server  Optimiser – Genetic algorithm Some candidate airfoil and meshes around them 16 Sept 2020 Optimization in CFD: Zeus Numerix 10
  • 11. 11 ©ZeusNumerixPvtLtd:ConfidentialDocument Random Initial Profiles  Color plots show pressure variation 16 Sept 2020 Optimization in CFD: Zeus Numerix 11
  • 12. 12 ©ZeusNumerixPvtLtd:ConfidentialDocument Evolution over Generations  Each dot is one candidate airfoil. 40 generations of population birth of 100 takes 10 hours (total ~4000 cases) Target Fitting Function Band Generations Lift/drag 16 Sept 2020 Optimization in CFD: Zeus Numerix 12
  • 13. 13 ©ZeusNumerixPvtLtd:ConfidentialDocument Convergence to Robust Designs 16 Sept 2020 Optimization in CFD: Zeus Numerix 13 IncreasingFittingFunction(L/D) Pressure variation Velocity variation
  • 14. 14 ©ZeusNumerixPvtLtd:ConfidentialDocument Multi-disciplinary Optimisation of Winglet Case study of winglet optimization 16 Sept 2020 Optimization in CFD: Zeus Numerix 14
  • 15. 15 ©ZeusNumerixPvtLtd:ConfidentialDocument MDO Studies  Engineering design is always multi-disciplinary. The designers are usually skeptical of automation  The cost function changes with time  Some simulation tools may not be available on the platform being used. Workflow must take care of such problems.  The designer must specify the cost function (i.e. what to maximize or minimize)  The fidelity of an analysis depends upon the sensitivity of cost function 16 Sept 2020 Optimization in CFD: Zeus Numerix 15
  • 16. 16 ©ZeusNumerixPvtLtd:ConfidentialDocument MDO of a winglet  Winglets can reduce drag up to 15 %  Savings depend on fuel cost. Therefore winglets can be an add-on  Statement : Design a winglet (for a given wing) which produces maximum lift, minimum drag and minimum weight  This is multi-disciplinary optimisation 16 16 Sept 2020 Optimization in CFD: Zeus Numerix 16
  • 17. 17 ©ZeusNumerixPvtLtd:ConfidentialDocument  Design space: three out of six parameters that define a winglet Winglet design parameterization Winglet Wing Front View (showing Cant Angle) 17 Cant Angle Sweep Angle Top View winglet unfolded (showing Sweep angle) -ve twist +ve twist Top View winglet vertical (showing Twist) 16 Sept 2020 Optimization in CFD: Zeus Numerix 17
  • 18. 18 ©ZeusNumerixPvtLtd:ConfidentialDocument Winglet Design Parameterization contd.  Note that  Winglet can be changed completely  Outer shape of the wing exposed to air can not be changed  Thickness of the skin, spars, ribs can be changed based on incremental loads that winglet produces 16 Sept 2020 Optimization in CFD: Zeus Numerix 18 Winglet taper ratio Blend Span Wingspan Wing-tip Chord WTC Wing-root Chord WRC Wing top view (winglet unfolded)
  • 19. 19 ©ZeusNumerixPvtLtd:ConfidentialDocument Fitness Evaluation function Cruise Induced Drag Cdicruise Climb Induced Drag CdiClimb Maneuver Bending Moment MxManeuver Structural weight estimation model Penaltystructural = Δwing-weight / ktrade-off Averaged ΔCdi (in drag counts) ΔCdiavg = 0.5 ( ΔCdicruise + ΔCdiclimb) Aero-Structural trade-off coefficient Ktrade-off (kg per drag count) Final Fitness Value J=ΔCdiavg+Penaltystructural GA optimizer 16 Sept 2020 Optimization in CFD: Zeus Numerix 19
  • 20. 20 ©ZeusNumerixPvtLtd:ConfidentialDocument Genetic Algorithm Optimizer  The following flow diagram represents the basic algorithm for GA Create a population of winglet by varying the 3 design parameters (generation = 0) Job Scheduler Select designs with best characteristics Perform reproduction using crossover and mutate creating new population Output Latest population of Design If required number of generations completed NextGeneration Fitness Evaluation (Design 1) Fitness Evaluation (Design 2) Fitness Evaluation (Design 3) Fitness Evaluation (Design n) Parallel Fitness Calculation for all individual of a generation 16 Sept 2020 Optimization in CFD: Zeus Numerix 20
  • 21. 21 ©ZeusNumerixPvtLtd:ConfidentialDocument WOS Flow Diagram 16 Sept 2020 Optimization in CFD: Zeus Numerix 21 Input Structure Bezier Control Point Array for:  Wingtip to winglet-tip chord taper variation  Sweep variation along winglet span Real number values for  Ratio of winglet span to wing span (ESR)  Ratio of Blend span to Winglet span (BSR)  Cant angle for Winglet  Toe angle for Winglet Simulation 1 Total Cruise Drag Total Cruise Lift Bending Moment Horizontal Span Penalty based Fitness Calculation FitnessValue Other Constraints • Wing geometry • Airfoil Shapes • Cruise conditions. Other Inputs Garuda Grid Simulation 2 Simulation 3 Optimization Client Simulation 4 Simulation 5 n Simulations CFD Execution Server (HTTP Server) GridWay Jobs
  • 22. 22 ©ZeusNumerixPvtLtd:ConfidentialDocument Need for Grid Consistency Study  Initial CFD runs for determination drag were performed over a grid size of 1.2 million  Time required for simulations ~ 26 hours on 8 CPU  Need lesser grid size for use in optimization cycle for faster CFD execution time  Perform grid-consistency study (grids which do not alter the merit of wing geometry, actual drag values may differ) to find out lower grid sizes that can be used in optimization calculation 16 Sept 2020 Optimization in CFD: Zeus Numerix 22
  • 23. 23 ©ZeusNumerixPvtLtd:ConfidentialDocument 1.2 Million vs. 0.2 Million Grids 0.2 million Mesh 1.2 million Mesh 16 Sept 2020 Optimization in CFD: Zeus Numerix 23
  • 24. 24 ©ZeusNumerixPvtLtd:ConfidentialDocument 1.2 Million vs. 0.2 Million Grids  Geometric fidelity of winglet is not lost by reducing the grid size by a factor of 10!  But the computations will be 10 times faster!! 16 Sept 2020 Optimization in CFD: Zeus Numerix 24 0.2 million Mesh 1.2 million Mesh
  • 25. 25 ©ZeusNumerixPvtLtd:ConfidentialDocument Comment 1 Comment 2  It can be observed that the relative merit, as measured in the induced drag values, remains unchanged for all the six geometric configurations in cruise as well as climb conditions  In optimisation cycles only coarse grids will be used for induced drag  The coarse grid values will be scaled up by an averaged scaling factor to convert them into realistic values Comparison of Grid Consistency Results 16 Sept 2020 Optimization in CFD: Zeus Numerix 25
  • 26. 26 ©ZeusNumerixPvtLtd:ConfidentialDocument Bending Moment Variation around Wing-tip  Bending moment around wing-tip calculated for the first winglet  Bending moment calculated for each of the random winglet design ( case 0 – 5)  Compare with benchmark case to find effect of variation on moment 16 Sept 2020 Optimization in CFD: Zeus Numerix 26
  • 27. 27 ©ZeusNumerixPvtLtd:ConfidentialDocument FEM Modelling Of Wing-box  Wing is modeled as a wing box consisting of ribs, spars and skin as shown below.  FEM Mesh included skin, spars, stringers with Element Type : 8–noded Shell element  No. of DoF : 5 –DoF (3 Translation +2 –Rotation)  Boundary Condition – All DoF at root of wing is constrained  Loading Conditions:  Pressure Distribution  Forces and moment due to winglet 16 Sept 2020 Optimization in CFD: Zeus Numerix 27 Z Y X
  • 28. 28 ©ZeusNumerixPvtLtd:ConfidentialDocument Loads on Structure – I  Distributed Pressure force is applied on the upper and lower surface of the wing-skin as obtained from CFD simulations 16 Sept 2020 Optimization in CFD: Zeus Numerix 28 Lower Surface Upper Surface
  • 29. 29 ©ZeusNumerixPvtLtd:ConfidentialDocument Loads on Structure – II  Forces Fz and Fy generated by winglet is transferred to the wing tip as forces and moment as shown in figure below.  Moment is modeled as a couple. Equal and opposite forces acting on the lower and upper nodes at the wing tip 16 Sept 2020 Optimization in CFD: Zeus Numerix 29 Wing Winglet Fixed wing root Wing Fixed wing root Mxwinglet Mxwinglet = a . Fzwinglet - b . Fywinglet Z Y X Fzwinglet Fywinglet a b Fzwinglet Fywinglet
  • 30. 30 ©ZeusNumerixPvtLtd:ConfidentialDocument Thickness Estimation Procedure  Thickness of all ribs except the one at tip is kept constant (1.6mm)  Rib thickness at the tip is kept as (5 mm) to avoid local deformation due to moment.  Thickness of spars is kept as (7 mm)  Table shows span-wise skin thickness variation  Wing root is thicker than the tip because of higher stress and to avoid any buckling  The thickness of the structural elements were varied by equal percentage to achieve the target stress value that satisfy failure criteria for corresponding change in bending moment 16 Sept 2020 Optimization in CFD: Zeus Numerix 30 Panel No Thickness (mm) 1 (root) 6.4 2 6.3 3 5.9 4 5.6 5 5.4 6 5 7 4.7 8 4.3 9 4.2 10 4 11 3.7 12 3.4 13 3.1 14 2.8 15 2.5 16 2.2 17 2 18 1.7 19 1.6 20 1.6 21 (tip) 1.6
  • 31. 31 ©ZeusNumerixPvtLtd:ConfidentialDocument Post Process for Benchmark Configuration  Normal Stresses in Y - direction 16 Sept 2020 Optimization in CFD: Zeus Numerix 31 Wing Deflection (Dmax = 1.5 m) Stress on spar Note: 1) Compression and tension on upper and lower surface can be seen 2) Stress on centerline of spar is mostly 0 and increasing as going towards width
  • 32. 32 ©ZeusNumerixPvtLtd:ConfidentialDocument Von-Mises Stresses 16 Sept 2020 Optimization in CFD: Zeus Numerix 32 Von Mises stress is maximum
  • 33. 33 ©ZeusNumerixPvtLtd:ConfidentialDocument Comparison of Stress Distribution  The percentage increase in Bending moment due to winglet results in higher stresses. The thickness of the all part has been increased in equal proportion that satisfy failure criteria 16 Sept 2020 Optimization in CFD: Zeus Numerix 33
  • 34. 34 ©ZeusNumerixPvtLtd:ConfidentialDocument %Bending Moment v/s %Weight Change  Model of percentage variation in wing-tip bending moment v/s weight change is formulated and is shown in the following plot 16 Sept 2020 Optimization in CFD: Zeus Numerix 34 Equation for change in weight estimation ΔW = (( 0.182 x %ΔMx ) + 0.1451 ) / 100 x 481.793 ΔW = change in weight %ΔMx = percent change in Moment Comparable curve from ONERA-MDO work
  • 35. 35 ©ZeusNumerixPvtLtd:ConfidentialDocument Details of Optimizer Execution  No. Individual in a generation : 40 individuals  No. of CFD runs for a design : 7 runs  Computational Nodes used : 20 nodes  Generations Completed : 12 generations  Total CFD simulations : 2160  CFD mesh size : 0.45 million  Optimization target : MINIMIZING fitness value 16 Sept 2020 Optimization in CFD: Zeus Numerix 35
  • 36. 36 ©ZeusNumerixPvtLtd:ConfidentialDocument Scatter of Individual over 9 Generations  The band of fitness of individuals in successive generation demonstrates the reduction of the spread due to Genetic Algorithm Optimization  The difference in fitness between the best individuals of 1st generation and 12th generation is ~ 7 units. This signifies that the optimizer is able to give better designs This is also seen by the drop in the Green line that denotes the average fitness 16 Sept 2020 Optimization in CFD: Zeus Numerix 36 Each of these short-thick horizontal dashes represent a design individual Blue Line denotes the least fit individual Green Line denotes the average fitness per generation Orange Line denotes the best fit individuals
  • 37. 37 ©ZeusNumerixPvtLtd:ConfidentialDocument Best Design: 9th Generation  The following figure gives a comparison between the nominal winglet and the winglet with best fitness after 8th generation, in 9th generation  Notice the comparison of winglet span between the two pictures  The span of lower winglet is nearly double that of above design 16 Sept 2020 Optimization in CFD: Zeus Numerix 37 Nominal Design Design 70 Fitness:-54.16
  • 38. 38 ©ZeusNumerixPvtLtd:ConfidentialDocument Best Design: 12th Generation  The following figure gives a comparison between the nominal winglet and the winglet with best fitness after 11th generation, in 12th generation  This figure shows that the winglet design obtained after 12th generation is similar to that obtained in 9th generation 16 Sept 2020 Optimization in CFD: Zeus Numerix 38 Nominal Design Design 105 Fitness:-54.57
  • 39. 39 ©ZeusNumerixPvtLtd:ConfidentialDocument Closure  In aerodynamic optimisation studies automation of all the processes is a must. Choosing the next design candidate is as important as the analysis  An optimisation of 2D airfoil is explained  A framework for data transfer and controlling simulations is essential for multi- disciplinary optimisation of aerodynamic shapes  The framework has been explained for optimising a winglet for a short-range aircraft. The framework is capable of reducing the induced drag of an aircraft without compromising structural integrity 16 Sept 2020 Optimization in CFD: Zeus Numerix 39
  • 40. 40 www.zeusnumerix.com +91 72760 31511 Abhishek Jain abhishek@zeusnumerix.com Thank You !