Recent Advances in Modeling of Solidification Behavior - PowerPoint PPT Presentation

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Recent Advances in Modeling of Solidification Behavior

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Weld solidification is related to casting but it has many unique features ... Single crystals represent a technologically important class of materials ... – PowerPoint PPT presentation

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Title: Recent Advances in Modeling of Solidification Behavior


1
Recent Advances in Modeling of Solidification
Behavior
  • J. M. Vitek1, S. S. Babu2 and S. A. David1
  • 1 Oak Ridge National Laboratory
  • 2 formerly ORNL, now at Edison Welding Institute
  • Presented at Trends 2005
  • Pine Mountain, Georgia
  • May 16 to 20, 2005

2
Acknowledgements
  • This research was sponsored by the programs
    within the U. S. Department of Energy, under
    contract DE-AC05-00OR22725 with UT-Battelle, LLC
  • Division of Materials Sciences and Engineering
  • Advanced Turbine Systems Program, Office of
    Fossil Energy
  • NNSA Initiatives for Proliferation Prevention
    Program
  • The authors would also like to thank General
    Electric Corporation for providing the Rene N5
    alloy.

3
Understanding Weld Solidification is Critical
  • Solidification behavior determines weldability
    and solidification structure controls properties
    and performance
  • Weld solidification is related to casting but it
    has many unique features
  • High growth rates, cooling rates and thermal
    gradients
  • Vigorous fluid flow
  • Epitaxial growth
  • Conditions that vary with position

4
Modeling Provides the Path Toward Understanding
Weld Solidification Behavior
5
Outline
  • What I will cover
  • Thermodynamic, kinetic and phase transformation
    modeling applied to solidification
  • Interface response functions
  • Welded single crystal grain structures
  • Phase field modeling
  • What I wont cover
  • Heat and fluid flow modeling
  • Recurring theme integration of models

6
I. Computational Thermodynamics The Backbone of
Advanced Models
  • Need to know the phase diagram (phase stability
    for multicomponent systems and as a function of
    temperature)
  • Need to identify solute redistribution
  • Computational thermodynamics (CT) addresses all
    of these

7
Solidification Involves
  • Competition among primary phases
  • Stabilization of non-equilibrium phases as a
    result of segregation
  • Non-equilibrium solidification temperature
    ranges, often well beyond equilibrium ?T
  • Solute redistribution, strongly affected by
    solidification morphology, and vice versa
  • Solidification structure and solute distribution
    that influence solid-state transformations,
    in-service behavior, stability, etc

CT provides the basis for quantifying all of these
8
CT Has Advanced Significantly in the Last 10 Years
  • Many more systems are covered, including
    specialty databases
  • Thermodynamic databases are more accurate
  • CT can be used extensively in IRF models, phase
    field models, etc

9
What Can Be Done with CT?
10
Ex 1Sample Scheil Simulations
  • For IN718 alloy
  • To 99 solid
  • Routines also available for partial inclusion of
    solid state diffusion

11
Ex 2 Diffusion Kinetics Models Interface with CT
  • Include
  • Solid state diffusion
  • Scaling effects
  • Undercooling
  • Classic application is to interdendritic
    segregation

12
But Diffusion Kinetics Models Can Be Used for
Much More
  • Consider Al-4 wt Cu system
  • 10 µm cell size
  • Consider only primary FCC solidification
  • Follow profiles versus time

L
time
13
Interdendritic Effects Can Be Examined
  • Standard dendrite theory considers only isolated
    dendrite
  • Can model dendrite shape
  • Between dendrites have undercooling and
    segregation which may lead to
  • New dendrites
  • New grains
  • New phases

14
Dendrite Shape and Interdendritic Undercooling in
Al-4Cu
liquid
solid
µm
µm
Arbitrary thermal gradient (1.3 x 106 K/m) was
used and this determines vertical length
15
Example 3 Kinetics Calculations Explain FN
Distribution in Castings
  • FN distribution in 316SS cant be explained by
  • Solidification mode change
  • Intuitive solid-state transformation behavior
  • Combined with thermal profiles, kinetics
    calculations solve problem

High FN
Low FN
16
FN Distribution Is a Combination of
Solidification and Solid State Cooling Rates
Center
Edge
17
II Interface Response Functions
  • IRF calculates growth front undercooling as a
    function of solidification phase and its
    morphology
  • Non-equilibrium effects are taken into account
  • IRF identifies solidification phase (when
    competition is possible) and solidification
    morphology (planar front, dendritic)

Based on work of Kurz and co-workers.
18
In-Situ Experiments Showed a Solidification Mode
Change in Fe-Mn-C-Al to Austenite Solidification
at High Solid-Liquid Interface Velocities
Background
19
TRXRD Measurements Conclusively Confirmed
Equilibrium d-Ferrite Solidification Mode at
Lower Cooling Rates
  • This is confirmation that switching occurs as a
    function of interface velocity.

20
IRF Calculations for Fe-C-Al-Mn Agree with
Experiment Only If Parameters Are Changed
  • Calculations depend on
  • kv, Partition coefficient fVelocity,
    Temperature
  • mV, Liquidus slope fVelocity,Temperature
  • R, Dendrite tip radius fkv,mv
  • Cl, Interface concentration fkv
  • Gibbs Thompson coefficient

21
III Solidification Grain Structure in Welded
Single Crystals
  • Single crystals represent a technologically
    important class of materials
  • Successful welding of single crystals, yielding
    crack-free single crystal welds, is needed
  • Modeling of solidification behavior in single
    crystals is needed to understand and advance this
    technology
  • Modeling has identified mechanism of stray grain
    formation

22
Avoiding Stray Grains Is the Key to Welding
Single Crystals
Fe-15Cr-15Ni perfect, no stray grains
Ni superalloy lots of stray grains and cracks
23
Proper Evaluation Must Combine Several Sub-Models
  • Heat and fluid flow to identify weld pool shape
    and solidification conditions along weld pool
    (thermal gradient, solidification front velocity)
  • Geometrical model identifies active base metal
    dendrite growth direction as a function of
    solidification front orientation
  • Nucleation and growth model identifies tendency
    to form new (stray) grains

24
Schematic of problem and contribution of each
model
  • Heat and fluid flow model
  • ID weld pool shape
  • ID thermal gradients
  • ID growth velocity as f(weld speed)
  • Geometric model
  • Relate dendrite orientation to solidification
    front
  • Relate dendrite growth velocity to
    solidification front velocity
  • Nucleation and growth model
  • Relate formation of new grains ahead of SF to
    undercooling ahead of dendrites

25
Theory for Extent of Constitutional Supercooling
Has Been Derived by Gäumann et al
26
Calculations Predict Stray Grain Formation
Tendencies
  • Find range of probabilities over entire pool
  • Find effect of weld conditions on tendencies

27
Tendency to Form Stray Grains as a Function of
Location Was Found
Symmetric, high speed
Symmetric, low speed
Asymmetric, low speed
Blue low likelihood of stray grains, Red high
likelihood of stray grains.
28
The Optimum Weld Processing Conditions Could Be
Identified
Low power and high speed yield the lowest
predicted values of F
29
IV Phase Field Modeling Offers Many New
Possibilities
  • Phase field modeling is a mathematical formulism
    that allows for the solution of many difficult
    but important problems
  • Phases, compositions, grain orientations are
    described with diffuse boundaries
  • Phase transformations, grain growth,
    recrystallization can all be modeled
  • Integration with CT provides solid basis for
    considering multi-component, multi-phase systems

30
Advantages and Disadvantages of Phase Field
Modeling
  • Advantages
  • Multidimensional
  • Can handle multi-component systems with slow and
    fast diffusers
  • Models spatial distribution
  • Disadvantages
  • Computationally intensive
  • Need to identify critical parameters
  • Anisotropy
  • Surface energy
  • Nucleation density, etc

31
Commercial Software (MICRESS) Is Available and
Was Used
  • Fe- 1 at C- 1 at Mn
  • System parameters
  • 0.75 x 1.5 mm size
  • Cooling rate of 10K/s
  • Thermal gradient of 25 K/mm
  • Primary BCC (5 grains) nucleation of FCC (15
    nuclei)
  • BCC anisotropic FCC isotropic

32
Solidification Movie
  • Shown
  • Development of dendritic structure
  • DAS spacing
  • Accommodation of secondary arms
  • Interdendritic nucleation of secondary FCC
  • Overtaking of dendrites by secondary (FCC) phase
  • Could extend to
  • Stray grain formation
  • Growth behavior as function of dendrite
    orientation
  • Phase competition

33
Phase Field Calculations Provide Important
Additional Information
34
Phase Field Fills in the Gaps
  • Adds dimensionality to kinetics (Dictra is 1D)
  • Adds multi-phase and directly includes
    thermodynamics
  • Describes morphology and distribution, not just
    amounts of phases (as CT and Dictra)
  • Could extend to look at stability in service
    how non-equilibrium phases and solute segregation
    will evolve during high T exposure

35
But Phase Field Has Problems
  • Parameters may not be known very well
  • Nucleation rate, nucleation conditions
  • Anisotropy and orientation dependence of
    parameters (surface energy, etc)
  • Computational time
  • Movie took 60 hours of CPU
  • But parallel operations are near
  • Problem will diminish with time

36
Summary
  • Key components of quite sophisticated models are
    available
  • Integration is the key
  • See model integration more and more advances
    will be in terms of added sophistication of
    component models
  • Problem of identifying parameters, their
    reasonable values, and determining sensitivity to
    accuracy of parameters
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