Title: multiscale modeling of
1multiscale modeling of ductile polycrystalsÂ
SD Group Leader Michael Ortiz,
Caltech Presenter Alberto Cuitino,
Rutgers Abhishek Bhattacharyya , Guruswami
Ravichandran, Zisu Zhao, Caltech Ronald Cohen,
Xianwei Sha, CIW Emily Carter, Princeton Thomas
Gray, Jennifer Smith, Raul Radovitzky, MIT Kinjal
Dhruva, Stephen Kuchnicki, Rutgers LLNL - Road
Show May 16, 2005
2 Dynamic Deformation Length Scale Hierarchy
Polycrystals (Averages)
ms
Multicrystals (DNS)
Oligocrystals (DNS)
Grains (DNS)
time
µs
Subgrain structures
SHPB, SCS
Atomistic
EBSD, SEM, DIC
TEM, OM
ns
nm
µm
mm
length
3Validation
- Simulation-driven design of experiments in close
collaboration with Experimental Group with
detailed diagnostics - Shear Compression Specimen and
- Tensile Test
- Full-field characterization of polycrystal
response comparison of local features through
Digital Image Correlation - Microtexture and microstructure evolution through
EBSD/OIM - Effective response Flow stress as a function of
strain, strain rate and temperature
4 Dynamic Deformation Length Scale Hierarchy
Polycrystals (Averages)
ms
Multicrystals (DNS)
Oligocrystals (DNS)
Grains (DNS)
time
µs
Subgrain structures
SHPB, SCS
Atomistic
EBSD, SEM, DIC
Next Talk 1040 AM Ronald Cohen
Thermoelasticity of Fe from first principles
TEM, OM
ns
nm
µm
mm
length
5 Dynamic Deformation Length Scale Hierarchy
Polycrystals (Averages)
ms
Multicrystals (DNS)
Oligocrystals (DNS)
Grains (DNS)
time
µs
Subgrain structures
SHPB, SCS
Atomistic
EBSD, SEM, DIC
TEM, OM
ns
nm
µm
mm
length
6Multires Material Validation
SCS
Simulation
Material
VALIDATION
Previous Talk (920 AM) G. Ravichandran
Dynamic shear-dominant deformation experiments
in metals
Experiment
Tests Specimens
Simulation
VALIDATION
Experiment
Dogbone
7Macro-scale validation SCS
Previous Talk (920 AM) G. Ravichandran
Dynamic shear-dominant deformation experiments
in metals
8Macro-scale validation SCS
Dynamic
Evolution History
Deformation
Quasi-static
9What can we get from large-scale polycrystal
simulation?
Taylor averaging
One element per grain
DNS
10Micro-scale validation Dog Bone
Simulations
Simulation Running
Macroscopic Mechanical Response
Surface Roughening Profiles
Local Orientation Changes
Full-Field Deformation
Orientation Mapping from EBSD
Experiment
11Orientation Mapping from EBSD
Al Sample 3
OIM Map of Side A
The grains are matched with those on the other
side and the sample is found to be columnar as
before.
Microstructure of Side A
This picture shows the sample microstructure
under optical microscope . The picture is created
by joining the maps of different areas of the
sample.
12OIM Map of Side A
Grain 1
Grain 8
X0
Grain 2
Grain 9
Grain 10
Grain 3
Grain 5 (note the grain is colored yellow)
Grain 7
Grain 6
Grain 11
Grain 4
Grain 12
Grain 13
13Simulations
14Micro-scale validation Dog Bone
DIC(preliminary testing)
- Samples deformed in uniaxial tension
- Quasi-static rate (10-2/s or lower)
- One image taken every 500 ms
- Quality of correlation varies with deformation
- step between images
Image 1
Image 100
15Micro-scale validation Dog Bone DIC
16Global DIC
Profiles of gray levels
Over-imposed mesh
17Global DIC Dog Bone
Grid is superimposed over sample Grid size (and
deformation) measured in pixels Greater image
resolution allows finer deformations to be
detected
18Global DIC Coarse correlation
19Micro-scale validation example DIC
Digital Camera
Sprayed gray scale pattern onsurface of
undeformed sample
Schematical drawing indicating the initial array
and distorted array containing a matching gray
scale distribution
20Micro-scale validation example Surface
Roughening
Preliminary results
Zygo equipment
21Current Status and In-Progress Activities of
Validation Dynamic response of Polycrystals
- Validation against SCS experiments
- Comparisons of micro-features texture evolution
under dynamic conditions reproduced in two
different cases - DNS ASC Platforms are the enablers
- Validation against Dog Bone Tensile test
experiments - Comparisons of micro-features texture evolution
under static conditions - Grain profile from EBSD
- Strain localization from DIC
- Surface roughening profiles
- Local orientation changes
- DNS ASC Platforms are the enablers
22Coupling (multiscale) Plasticity and Diffusion
during void growth and coalescence in solids
Alberto Cuitino1, Kinjal Dhruva1, Michael
Ortiz2 1 Department of Mechanical Aerospace
Engineering,Rutgers University,NJ 2 Graduate
Aeronautical Laboratories,California Institute of
Technology
ASC Road Show,LLNL May 16,2005
23Coupling (multiscale) Plasticity and Diffusion
during void growth and coalescence in solids
- Dynamic fracture is characterized by high strain
rates that are associated with impulsive loading.
As a result of such impulsive loading there is a
build up of tensile stresses in materials leading
to a fracture mechanism commonly referred as
spall damage.
Void Growth in Crystals
24Velocity Driven Interfaces
- Complex geometries and complex topological
changes can be represented by using implicit
functions to represent interfaces that are
growing under an arbitrary velocity field. - Subsequent interface motion under the velocity
field v is governed by the equation
- Velocity field for subsequent motion of may
depend on any of the following factors - Position
- Time
- Geometry of interface (e.g. its normal or its
mean curvature)
25Velocity Driven Interfaces
Velocity Field
fplasticity
fvacancies
- Dynamic Elasto-Plasticity
- Mechanics Equations
- Hardening Laws
- Flow Rule
Vacancy Diffusion -Surface Bulk
diffusion -Diffusivity of material -Curvature and
gradients
26Velocity Driven Interfaces
Elasto-plastic Equations
Diffusion Equation
Elasto-Plastic Equations in Conservative Form
Subject to Boundary Conditions
Radial Return Method
Mie-Gruneisen e.o.s
Yield Criteria
Radial Return
Equations governing plastic deformation
27Approach
(Diffusion Eqn.)
(Dynamic Elasto-plastic eqns.)
Why Periodic Boundary Condition ?
Implicit Boundary Conditions ensure that the
solution domain can be used as a Representative
Cell
28Key Features of Scheme
- GHOST METHOD
- Ghost nodes are created corresponding to each
grid node that have a neighboring point lying on
interface. - Values of flow variables at ghost nodes are
computed using a local reconstruction scheme. - Standard numerical schemes are used over the
entire domain once the ghost nodes are defined -
LEVEL SET REPRENTATION The advance of
level-set is governed by solution of
equation
This method represents a complex geometry using
an implicit level- set function f(X,t)
defined at every grid point having the following
properties f(X,t)lt0 Inside the
interface f(X,t)gt0 Outside the interface
f(X,t)0 Interface
- IMAGE ANALYSIS
- Complex topological changes associated with void
growth are very hard to quantify. - The image analysis capabilities of MATLAB allows
us to analyze the properties associated with void
growth like - -Area
- -Effective Radius
- -Growth Rate
(Sethian, Aslam)
29Evolution of Single Void Under Different Mechanism
Void Growth by Diffusion
Void Growth by Plasticity
Combined Void Growth
30Void Growth and Coalescence in Multiple Voids
Effective Plastic Deformation
Stress Along x-axis (Sx)
U-velocity
Void Interface
31Animation for 2D Void Growth of Multiple Voids
U-velocity
Stress(Sx)
Effective Plastic Deformation (Ep)
32Stages in Evolution of Multiple Void
33Simulations for 2D 3D Multiple Void Growth
34Animation with Contour Profile at Void Interface
35Conclusion and Planned Work
- Conclusions
- A framework for an efficient numerical scheme
incorporating the physical phenomena behind void
growth and coalescence was developed. - Numerical scheme was found to be stable during
the complex topological changes that were
encountered during void growth and subsequent
coalescence. - The rate of void growth can be estimated using
the techniques of image analysis. - In Progress
- Introduce multiscale model.
- Large number of voids utilizing ASC Platform.
- Exploring shock-capturing schemes such as
upwinding methods