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Computational grid size l T Le ~0.5 m Process ~5 mm REV ro Modeling— ethods for incorporating small scale effects into large scale solidification Voller, University of Minnesota 1 of 19 e build a direct-simulation of a Casting Process that resolves to all scales Scales in a “simple” solidification process model ~ 50 m solid representative ½ arm space sub-grid model g Enthalpy based Dendrite growth model

Computational grid size ~0.5 m Process ~5 mm REV Maco-Micro Modeling— Simple methods for incorporating small scale effects into large scale solidification

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Page 1: Computational grid size ~0.5 m Process ~5 mm REV Maco-Micro Modeling— Simple methods for incorporating small scale effects into large scale solidification

Computational grid size

l

TLe

~0.5 m

Process

~5 mm

REV

Maco-Micro Modeling—Simple methods for incorporating small scale effects into large scale solidification models– Vaughan Voller, University of Minnesota

1 of 19

Can we build a direct-simulation of a Casting Process that resolves to all scales?

Scales in a “simple” solidification process model

~ 50 m

solid

representative ½ arm space

sub-grid model

g

Enthalpy basedDendrite growth model

Page 2: Computational grid size ~0.5 m Process ~5 mm REV Maco-Micro Modeling— Simple methods for incorporating small scale effects into large scale solidification

chill

A Casting

The REV

NucleationSites

columnar equi-axed

The GrainEnvelope

The SecondaryArm Space

The TipRadius

The DiffusiveInterface

~ 0.1 m

~10 mm

~ mm

~100 m

~10 m

~1 nm

103

101

10-1

10-3

10-5

10-7

10-9

10-9 10 10-3 10-1

Length Scale (m)

interfacekinetics

nucleation

solute diffusion

growth

grainformation

casting

heat and mass tran.

Time Scale (s)

Scales in Solidification Processes

2 of 19

(after Dantzig)

Can we build a direct-simulation of a Casting Process that resolves to all scales?

Page 3: Computational grid size ~0.5 m Process ~5 mm REV Maco-Micro Modeling— Simple methods for incorporating small scale effects into large scale solidification

1.0E+02

1.0E+04

1.0E+06

1.0E+08

1.0E+10

1.0E+12

1.0E+14

1.0E+16

1.0E+18

1.0E+20

1.0E+22

1.0E+24

1.0E+26

0 20 40 60 80 100 120

Year-1980

No

de

s

Well As it happened not currently Possible

1000 20.6667 Year

“Moore’s Law”

Voller and Porte-Agel, JCP 179, 698-703 (2002) Plotted The three largest MacWasp Grids (number of nodes) in each volume

2055 for tip6 decades

1 meter

1 micron

3 of 19

Page 4: Computational grid size ~0.5 m Process ~5 mm REV Maco-Micro Modeling— Simple methods for incorporating small scale effects into large scale solidification

chill

A Casting

The REV

NucleationSites

columnar equi-axed

The GrainEnvelope

The SecondaryArm Space

The TipRadius

The DiffusiveInterface

~ 0.1 m

~10 mm

~ mm

~100 m

~10 m

~1 nm

103

101

10-1

10-3

10-5

10-7

10-9

10-9 10 10-3 10-1

Length Scale (m)

interfacekinetics

nucleation

solute diffusion

growth

grainformation

casting

heat and mass tran.

Time Scale (s)

Scales in Solidification Processes

To handle with current computational Technology require a “Micro-Macro” Model

See Rappaz and co-workers

Example a heat and Mass Transfer modelCoupled with a Microsegregation Model

4 of 19

(after Dantzig)

Page 5: Computational grid size ~0.5 m Process ~5 mm REV Maco-Micro Modeling— Simple methods for incorporating small scale effects into large scale solidification

l

TLe

~0.5 m

~ 50 m

solid

~5 mm

Computational grid size

Process REVrepresentative ½ arm space

sub-grid model

]C[ll

0

ss C)g1(dCg

g

]H[ HTc)g1(Tcg llss

from computationOf these values need to extract

lCg g

0

s

s

s dCg

1C T

Solidification Modeling

-- -- --

5 of 19

Micro segregation—segregation and solute diffusion in arm space

Page 6: Computational grid size ~0.5 m Process ~5 mm REV Maco-Micro Modeling— Simple methods for incorporating small scale effects into large scale solidification

C

A

C

)C,....,C,C(GTrk

l

r2l

r1l

r

Primary Solidification Solver

H

Tc]H[)g1(

l

1rpr

Transient mass balance

equilibrium

g

ClTIterative loop

g

model of micro-segregation

(will need under-relaxation)

6 of 19

Give Liquid Concentrations

Page 7: Computational grid size ~0.5 m Process ~5 mm REV Maco-Micro Modeling— Simple methods for incorporating small scale effects into large scale solidification

oldl

oldl

oldoldl C)g1(CC)g1(C

liquid concentration due to macro-segregation alone

Micro-segregation Model

oldg

g

In a small time step new solid forms with lever rule on concentration C

C

Q -– back-diffusion

Need an easy to use approximationFor back-diffusion

transient mass balance gives liquid concentration

QC)g1(C)gg(C)g1( slr

lloldr

sold

l

Solute mass densitybefore solidification

Solute mass densityof new solid (lever)

Solute mass densityafter solidification

7 of 19

g

sCQ

x,

t

t

f

2fDt

Solute Fourier No.

½ Arm space of length takestf seconds to solidify

Page 8: Computational grid size ~0.5 m Process ~5 mm REV Maco-Micro Modeling— Simple methods for incorporating small scale effects into large scale solidification

)CC(gdt

dCgtQ old

lll

The parameter Model --- Clyne and Kurz,

)Scheil(0

ddg

g)lever(1

Ohnaka 8 of 19

2

1

d

dgg

21

g

For special case Of Parabolic Solid Growth

And ad-hoc fit sets the factor

2

2and

14

4

In Most other casesThe Ohnaka approximation

21

2

Works very well

QC)g1(C)gg(C)g1( slr

lloldr

sold

l

Page 9: Computational grid size ~0.5 m Process ~5 mm REV Maco-Micro Modeling— Simple methods for incorporating small scale effects into large scale solidification

)CC)(1m(g

Qs

sl

The Profile Model Wang and Beckermann

baC ms

Need to lagcalculation onetime step andensure Q >0

9 of 19

g

0

m

s

s

s b1m

gadC

g

1C

QC)g1(C)gg(C)g1( slr

lloldr

sold

l

1

s

s

l

C

C2~m

m is sometimes take as a constant ~ 2 BUTIn the time step model a variable value can be use

Due to steeper profile at low liquid fraction ----- Propose

bagC ml

Page 10: Computational grid size ~0.5 m Process ~5 mm REV Maco-Micro Modeling— Simple methods for incorporating small scale effects into large scale solidification

Coarsening Arm-space will increase in dimension with time

3/1n

This will dilute the concentration in the liquid fraction—can model be enhancing the back diffusion

g

sCQ

A model by Voller and Beckermann suggests 1m

n2

2

1mg 3

13

4

If we assume that solid growth is close to parabolic

1

s

s

l

C

C2~m

In profile model

m =2.33 inParameter model

1.0g 3

4

10 of 19

Page 11: Computational grid size ~0.5 m Process ~5 mm REV Maco-Micro Modeling— Simple methods for incorporating small scale effects into large scale solidification

Remaining Liquid when C =5 is Eutectic Fraction

11 of 19

No Coarsening

0.10.110.120.130.140.150.160.17

0.001 0.01 0.1 1 10

Fourier No.

Eut

etic Numerical

Profile

Parameter

Coarsening

0.10.110.120.130.140.150.160.17

0.001 0.01 0.1 1 10

Fourier No.

Eut

ecti

c

QC)g1(C)gg(C)g1( slllold

soldl

oldl

Constant Cooling of Binary-Eutectic Alloy With Initial Concentration C0 = 1

and Eutectic Concentration Ceut = 5, No Macro segregation , = 0.1

Use 200 time steps and equally increment 1 < Cl < 5

Calculating the transient value of g from

Parameter or Profile

oldlCC

21

2

Page 12: Computational grid size ~0.5 m Process ~5 mm REV Maco-Micro Modeling— Simple methods for incorporating small scale effects into large scale solidification

Coarsening

0.10.110.120.130.140.150.160.17

0.001 0.01 0.1 1 10

Fourier No.

Eut

ecti

c

No Coarsening

0.10.110.120.130.140.150.160.17

0.001 0.01 0.1 1 10

Fourier No.

Eut

etic Numerical

Profile

Parameter

Results are good across a range of conditions

0

0.020.04

0.060.08

0.10.12

0.14

0.001 0.01 0.1 1 10Fourier No.

Eut

etic

0

0.02

0.04

0.06

0.08

0.1

0.12

0.14

0.001 0.01 0.1 1 10Fourier No.

Eut

etic

Note

Wide variation

In Eutectic

12 of 19

Page 13: Computational grid size ~0.5 m Process ~5 mm REV Maco-Micro Modeling— Simple methods for incorporating small scale effects into large scale solidification

0

2

4

6

8

10

0.01 0.1 1 10

Fourier Number

wt%

Co

nc

en

tra

tio

n

Approximation

Experiment

Numerical

No-Coarsening

Predictions of Eutectic FractionWith constant cooling

Co = 4.9

Ceut = 33.2

k = 0.16

Comparison with Experiments Sarreal Abbaschian Met Trans 1986

13 of 19

Page 14: Computational grid size ~0.5 m Process ~5 mm REV Maco-Micro Modeling— Simple methods for incorporating small scale effects into large scale solidification

oldlCC

QC)g1(C)gg(C)g1( slllold

soldl

oldl

Parabolic solid growth – No Second Phase – No Coarsening Use 10,000 equal of g

C0 = 1, = 0.13, = 0.4

0

l

C

kC

Use

To calculate evolving segregation ratio

14 of 19

00.5

1

1.52

2.53

3.5

44.5

5

0.00010.0010.010.11

Liquid Fraction

Seg

rega

tion

Rat

io

Full NumericalSolution

Profile

Profile Fixed m=2

Parameter

Parameter

1

s

s

l

C

C2~m

2

2

14

4

21

2

Page 15: Computational grid size ~0.5 m Process ~5 mm REV Maco-Micro Modeling— Simple methods for incorporating small scale effects into large scale solidification

)CC)(1m(g

Qs

sl

1

s

s

l

C

C2~m

QC)g1(C)gg(C)g1( slllold

soldl

oldl

Performance of Models under parabolic growth no second phase

0

l

C

kCPrediction of segregation ratio in last liquid to solidify(fit exponential through last twotime points)

15 of 19

2

2

14

4

)CC(gdt

dCgtQ old

lll

0102030405060708090

100

0.01 0.1 1 10Fourier No.

Seg

rgat

ion

Rat

io a

t g

=1 analytical

profile

paramter

0

2

4

6

8

10

0.01 0.1 1 10

Fourier No.

Seg

rega

tion

Rat

io a

t g

=1

Page 16: Computational grid size ~0.5 m Process ~5 mm REV Maco-Micro Modeling— Simple methods for incorporating small scale effects into large scale solidification

)CC(g12

2tq old

ll

Parameter

Robust Easy to UsePoor Performance at very low liquid fraction— can be corrected

)CC)(1m(g

tqs

sl

1

s

s

l

C

C2~m

Profile

A little more difficult to use

With this Ad-hoc correctionExcellent performanceat all ranges

Two Models For Back Diffusion

A

C

]C[

]H[

C

Predict g

QC)g1(C)gg(C)g1( srl

rl

rl

oldrs

oldl

predict Cl

predict T

Calculate C

Transient solute balance in arm space

Solidification Solver 16 of 19

1mg 3

13

4

Account for coarsening

My Method of Choice

Page 17: Computational grid size ~0.5 m Process ~5 mm REV Maco-Micro Modeling— Simple methods for incorporating small scale effects into large scale solidification

1.0E+02

1.0E+04

1.0E+06

1.0E+08

1.0E+10

1.0E+12

1.0E+14

1.0E+16

1.0E+18

1.0E+20

1.0E+22

1.0E+24

1.0E+26

0 20 40 60 80 100 120

Year-1980

No

de

s

1000 20.6667 Year

“Moore’s Law”

current for REV of 5mm

Voller and Porte-Agel, JCP 179, 698-703 (2002)

l

TLe

.5m

I Have a BIG Computer Why DO I need an REV and a sub grid model

~ 50 m

solid

~5mm(about 106 nodes)

17 of 19

2055 for tip

Model Directly

(about 1018 nodes)

Tip-interface scale

Page 18: Computational grid size ~0.5 m Process ~5 mm REV Maco-Micro Modeling— Simple methods for incorporating small scale effects into large scale solidification

chill

solid

mushy

liquid

riser

y

Application – Inverse Segregation in a binary alloy

100 mm

Shrinkage sucks solute rich fluid toward chill – results in a region of +ve segregation at chill

Fixed temp chill results in a similarity solution

0.25

0.30

0.35

0.40

0.45

0.50

0.55

0.60

0.65

4.4 4.6 4.8 5 5.2 5.4

Concentration

Sim

ilari

ty V

aria

ble

back diff.

Scheil

lever

similarity(lever)

similarity(Scheil)

)CC(g12

2tq old

ll

Parameter

1mg 3

13

4

2fDt

Current estimate

empirical

18 of 19

Page 19: Computational grid size ~0.5 m Process ~5 mm REV Maco-Micro Modeling— Simple methods for incorporating small scale effects into large scale solidification

Ferreira et al Met Trans 2004

Comparison with Experiments

19 of 19