ANNUAL REPORT UIUC, August 16, Mold Heat Transfer Using CON1D and Slag Consumption Model. ASM Jonayat (MS Student)

Similar documents
Investigation of Oscillation Marks and Hook Formation in ULC Steels using Metallurgical Analysis and Models

CCC Annual Report. UIUC, August 19, Effect of Non-Newtonian Slag Behavior on Gap Flow and Friction in CC. Shengji Yang

ANNUAL REPORT UIUC, June 12, Modeling 3D Meniscus Shape, Flow, Corner Effects, Heat Transfer, & Slag Consumption during Mold Oscillation

Preliminary Model of Ideal Soft Reduction

Maximum Casting Speed for Continuous Casting Steel Billets

Thermomechanical Behavior of a Wide Slab Casting Mold. Introduction

CCC Annual Report. UIUC, August 19, Thermo mechanical Analysis of Solidifying Shell Including Bending and Unbending.

Heat Transfer &. Solidification Model CON1D

Mechanism Of Hook And Oscillation Mark Formation In Ultra-Low Carbon Steel

TAPER PREDICTION IN SLAB AND THIN SLAB CASTING MOLDS

Validation of Fluid Flow and Solidification Simulation of a Continuous Thin-Slab Caster

Investigating Mould Heat Transfer in Thin Slab Casting with CON1D

ANNUAL REPORT UIUC, August 20, Grade Effects On The Initial Stress, Strain, And Solidification Behavior In Continuously Cast Steels

CCC Annual Report Quantitative Measurement of Molten Steel Surface Velocity with Nail Boards and SVC Sensor in CC Molds

Background & Objective

STUDY OF CC NARROW-FACE TAPER DESIGN INFLUENCE OF THE CASTING SPEED AND STEEL COMPOSITION

Project Background (long term goals)

CCC Meeting. August 16, Modeling crystallization process of mold slag. Lejun Zhou Advisors: Prof. Brian G. Thomas and Wanlin Wang

EFFECT OF A SUDDEN LEVEL FLUCTUATION ON HOOK FORMATION DURING CONTINUOUS CASTING OF ULTRA-LOW CARBON STEEL SLABS

Research Background: Transient Surface Flow Problems

Objective and Methodology

ANNUAL REPORT UIUC, June 12, Temperature evolution in the spray zones: plant measurements and CON1D prediction

COMPUTATIONAL MODELING OF FLOW, HEAT TRANSFER, AND DEFORMATION IN THE CONTINUOUS CASTING OF STEEL

COMPUTATIONAL MODELING OF FLOW, HEAT TRANSFER, AND DEFORMATION IN THE CONTINUOUS CASTING OF STEEL

Temperature evolution in the spray zones: Plant measurements and CON1D predictions

Multiphase Model of Precipitate Formation and Grain Growth in Continuous Casting

CCC ANNUAL REPORT UIUC, August 12, Heat Transfer During Spray Cooling Using Steady Experiments. * Xiaoxu Zhou * Brian G.

Stress Distribution and Crack Formation on Sliding Gate

Embedded Mold Temperature Sensor

Liquid-Solid Phase Change Modeling Using Fluent. Anirudh and Joseph Lam 2002 Fluent Users Group Meeting

CCC Annual Report Transient Turbulent Multiphase Flow and Level Fluctuation Defects in Slab Casting

Segregation and Microstructure in Continuous Casting Shell

MEASUREMENT OF MOLTEN STEEL SURFACE VELOCITY WITH SVC AND NAIL DIPPING DURING CONTINUOUS CASTING PROCESS

Analysis of Hook Formation Mechanism in Ultra Low Carbon Steel using CON1D Heat Flow Solidification Model

Validation of Fluid Flow and Solidification Simulation of a Continuous Thin-Slab Caster

RECENT ADVANCES IN COMPUTATIONAL MODELING OF CONTINUOUS CASTING OF STEEL

ANNUAL REPORT UIUC, August 6, Temperature evolution in the spray zones: plant measurements and CON1D prediction

SIMULATION OF SHRINKAGE AND STRESS IN SOLIDIFYING STEEL SHELLS OF DIFFERENT GRADES

EFFECT OF TRANSVERSE DEPRESSIONS AND OSCILLATION MARKS ON HEAT TRANSFER IN THE CONTINUOUS CASTING MOLD. B. G. Thomas, D. Lui, and B.

Three-dimensional Microstructure of Frozen Meniscus and Hook in Continuous-cast Ultra-low-carbon Steel Slabs

Utilization of CON1D at ArcelorMittal Dofasco s No. 2 Continuous Caster for Crater End Determination

Transient Flow and Superheat Transport in a CC Mold Pool

Effect of mould geometry, coating, and plate thickness on the thermal profile of continuous casting moulds

Stress Analysis of Dendritic Microstructure During Solidification. Introduction

The formation of oscillation marks in continuous casting of steel

Review of. and Preliminary Crack Simulations. Objectives

Effects of Stopper Rod Movement on Mold Fluid Flow at ArcelorMittal Dofasco s No. 1 Continuous Caster

Bulging between Rolls in Continuously-cast Slabs

Cononline Implementation Issues. Overview

Heat Transfer Modelling of Continuous Casting: Numerical Considerations, Laboratory Measurements and Plant Validation

COMBINING MODELS AND MEASUREMENTS TO BETTER UNDERSTAND STEEL CONTINUOUS CASTING

ROUND CONTINUOUS CASTING WITH EMS-CFD COUPLED

ANNUAL REPORT Meeting date: June 15, Modeling Of CC Secondary Cooling Sprays: An Experimental Study

Agenda. August 20, Continuous Casting Consortium Annual Meeting Brian G. Thomas, Director. Department of Mechanical Science & Engineering

JIM / TMS Solidification Science and Processing Conference, Honolulu, HI, Dec , pp

Interfacial Friction-Related Phenomena in Continuous Casting with Mold Slags

Simulation of Microstructure and Behavior of Interfacial Mold Slag Layers in Continuous Casting of Steel

Ideal Taper Prediction for Slab Casting

Simulation of transient fluid flow in mold region during steel continuous casting

Schematic of Initial Solidification

A study of breakout of a continuously cast steel slab due to surface cracks

Development of CaO-Al 2 O 3 Based Mold Flux System for High Aluminum TRIP Casting

MODELING TRANSIENT SLAG LAYER PHENOMENA IN THE SHELL/MOLD GAP IN CONTINUOUS CASTING OF STEEL. Ya Meng and Brian G. Thomas

NUMERICAL SIMULATION OF SOLIDIFICATION IN CONTINUOUS CASTING OF ROUNDS

Billet Casting Analysis by CON1D. Ya Meng and Brian G. Thomas. Continuous Casting Consortium. Report. Submitted to

Model of Thermal-Fluid Flow in the Meniscus Region During An Oscillation Cycle

Continuous Casting Consortium Annual Report. University of Illinois, August 16, USB -Drive - Table of Contents

FEM Analysis of Bulging between Rolls in Continuous Casting

CCC Annual Report UIUC, June 12, 2007

ISIJ International, Submitted Aug. 30, 2005, Revised Feb. 7, 2006 SIMULATION OF MICROSTRUCTURE AND BEHAVIOR OF INTERFACIAL MOLD SLAG LAYERS IN

Numerical Simulation on Effects of Electromagnetic Force on the Centrifugal Casting Process of High Speed Steel Roll

Measurement and Prediction of Lubrication, Powder Consumption, and Oscillation Mark Profiles in Ultra-low Carbon Steel Slabs

Finite Element Analysis of Thermal and Mechanical Behavior in a Slab Continuous Casting Mold

APPLICATION OF THE COMBINED REACTORS METHOD FOR ANALYSIS OF STEELMAKING PROCESS

Study of Transient Flow Structures in the Continuous Casting of Steel. Abstract

Continuous Casting. B.G. Thomas Mechanical & Industrial Engineering University of Illinois at Urbana-Champaign

MODELLING & SIMULATION OF LASER MATERIAL PROCESSING: PREDICTING MELT POOL GEOMETRY AND TEMPERATURE DISTRIBUTION

Thermal Behavior of Hot Copper Plates for Slab Continuous Casting Mold with High Casting Speed

Numerical Simulation of Core Gas Defects in Steel Castings

LONGITUDINAL FACE CRACK PREDICTION WITH THERMO-MECHANICAL MODELS OF THIN SLABS IN FUNNEL MOULDS

Analysis of Crack Susceptibility of Regular Carbon Steel Slabs Using Volume-Based Shrinkage Index

Continuous Casting of Steel

Numerical Analysis of Fluid Flow and Heat Transfer in the Funnel Type Mold of a Thin Slab Caster

Analysis of the Potential Productivity of Continuous Cast Molds

Haiqi YU and Miaoyong ZHU

IDEAL TAPER PREDICTION FOR BILLET CASTING

Inclusion Entrapment Literature Review and Modeling

Dynamic Distributions of Mold Flux and Air Gap in Slab Continuous Casting Mold

2004 by Ya Meng. All rights reserved

Continuous Casting Consortium Annual Report. University of Illinois, August 18, USB Drive Table of Contents

CCC Annual Report. UIUC, August 20, Modeling SEN Preheating. Yonghui Li. Department of Mechanical Science & Engineering

ANNUAL REPORT Meeting date: June 1, Measuring Mold Top Surface Velocities Using Nailboards. Bret Rietow & Brian G.

Heat Transfer Characterization in the Mould of a High Speed Continuous Steel Slab Caster

Mathematical Modeling & Simulation of Effective Heat Energy Loss in Steel Industry

Influence of slag properties and operating conditions on slag flow in a coal gasifier

Study of Transient Flow Structures in the Continuous Casting of Steel

A FULL 3D SIMULATION OF THE BEGINNING OF THE SLAB CASTING PROCESS USING A NEW COUPLED FLUID/STRUCTURE MODEL

Effect of Nozzle Clogging on Surface Flow and Vortex Formation in the Continuous Casting Mold

Liquid-Liquid Interface Instability in the Electro-Slag Remelting Process

Modeling of Fluid Flow, Mixing and Inclusion Motion in Bottom Gas- Stirred Molten Steel Vessel

Transcription:

ANNUAL REPORT 2012 UIUC, August 16, 2012 Mold Heat Transfer Using CON1D and Slag Consumption Model ASM Jonayat (MS Student) Department of Mechanical Science and Engineering University of Illinois at Urbana-Champaign University of Illinois at Urbana-Champaign Metals Processing Simulation Lab Lance C. Hibbeler 1 Objectives Develop an accurate predictive model of mold slag consumption for slab casting, including the effects of mold oscillation parameters, slag properties. Improve CON1D to better simulate heat transfer in the interfacial gap (in addition to mold and shell) Apply model(s) to simulate the mold region heat transfer in real commercial casters, and validate with plant data. University of Illinois at Urbana-Champaign Metals Processing Simulation Lab ASM Jonayat 2

Tools CON1D (macroscopic heat transfer in mold, interface and shell) Current: Wide face shell (input slag consumption and ferrostatic pressure controls gap thickness profile) Future enhancement: Corner region (steel shrinkage and mold distortion control gap thickness profile) FLUENT meniscus model (meniscus heat transfer, fluid flow, meniscus shape, slag consumption) Plant measurements (oscillation mark shape, hook, mold heat transfer, cooling water temp. rise) University of Illinois at Urbana-Champaign Metals Processing Simulation Lab ASM Jonayat 3 CON1D Model Model Prediction Heat flux variation Mold Temperature Cooling water temperature increase Shell thickness Slag layer thickness Shell temperature Validation thermocouples embedded in mold wall water temperature measurement breakout shell or tracer element slag film samples taken from mold wall optical pyrometers, thermocouples in the strand Ideal taper Mold friction and lubrication state slag state slag shear/fracture friction signal crystalline vs. glassy transient temperature variation University of Illinois at Urbana-Champaign Metals Processing Simulation Lab ASM Jonayat 4

CON1D: Shell Region CON1D Manual V10.10.01 University of Illinois at Urbana-Champaign Metals Processing Simulation Lab ASM Jonayat 5 CON1D: Interface Region Resistances to Heat Transfer in interface: Simplified Form of Navier-Stokes Equation: Mass Balance: CON1D Manual V10.10.01 University of Illinois at Urbana-Champaign Metals Processing Simulation Lab ASM Jonayat 6

CON1D: Mold Region Analytical Solution of Laplace equation 2D region: 1D Region: Heat Transfer Coefficient between cold face and cooling water d ch L ch CON1D Manual w V10.10.01 ch University of Illinois at Urbana-Champaign Metals Processing Simulation Lab ASM Jonayat 7 Example CON1D Application Input based on geometry Water channel dimension Mold thickness dimensions Coating layers in mold hot face Inputs based on casting condition Casting speed Pouring temperature Meniscus location Liquid pool depth Nozzle location Slab Dimensions Composition of Steel and Slags Cooling water velocity Inputs based on extra measurements Mold Oscillation Stroke Frequency Oscillation Mark Dimensions Width Depth Slag consumption Tuning/Adjustment parameters (to match mold heat flux & TC temps) Solid Slag velocity ratio Friction coefficients (static/moving) Air gap between Hot face and Solid slag Water channel Scale? University of Illinois at Urbana-Champaign Metals Processing Simulation Lab ASM Jonayat 8

Oscillation Mark : Pitch 7.8 mm 8 mm Measured Pitch = 7.9 ± 0.14 mm Theoretical Pitch Equation for theoretical pitch = Sengupta, J., B. G. Thomas, H. J. Shin, G. G. Lee, and S. H. Kim, Metallurgical and Materials Transactions A, 37A:5, May 2006 Casting Speed (vs) 23.23 mm/sec Oscillation Frequency (f) 2.9 Hz Theoretical Pitch = 8 mm University of Illinois at Urbana-Champaign Metals Processing Simulation Lab ASM Jonayat 9 Oscillation Mark: Width and Depth 3.1 mm 2.4 mm 0.22 mm 0.28 mm 3.0 mm 0.25 mm Osc. Mark Depth Sengupta, J., B. G. Thomas, H. J. Shin, G. G. Lee, and S. H. Kim, Metallurgical and Materials Transactions A, 37A:5, May 2006 Osc. Mark Width University of Illinois at Urbana-Champaign Line is averaged through edge of OM such that the area is averaged Measured Oscillation Mark, Width = 2.83 ± 0.38 mm Depth = 0.25 ± 0.03 mm Metals Processing Simulation Lab ASM Jonayat 10

0.1Oscillation Mark Samples: Depth Prediction According to SHIN [1], Oscillation Mark Depth at POSCO is estimated by: 51n 1.208 0.09126 DOM predicted = μ1300 C Vc 0Superheat ( ) 0.451t.65139μ1300 C = Viscosity at 1300 C tn = Negative strip time V c = Casting speed Superheat = T tundish -T liquidus Here, T liquidus can be calculated using [2] = 78% 7.6 % 4.9 % 34.4 % 38 % 1.04% 4.69 % 5.32 % 2.6 % 10.24 % 12.95 % 10.24 % 0.24 % 60 % T pure = Melting point of pure iron (1536 C) %i = Initial liquid concentration of element i [1] Ho-Jung SHIN and Brian G. THOMAS, Continuous Casting Consortium Annual Meeting 2005. [2] Won, Y-M. and B. G. Thomas, Metallurgical and Materials Transactions A, 32A:7, 1755-1767, 2001 University of Illinois at Urbana-Champaign Metals Processing Simulation Lab ASM Jonayat 11 Steel Composition: Oscillation Mark: Depth Prediction C Si Mn P S 0.003% 0.08% 0.08% 0.013% 0.009% =. C μ 1300 C Viscosity of slag at 1300 C 2.62 Poise t n Negative time strip 0.12 sec V c Casting Speed 1.4 m/min Superheat T tundish T liquidus 1568 1533.9 = 34.1 C ( =. Measured OM depth = 0.25 ± 0.03 mm, almost matches University of Illinois at Urbana-Champaign Metals Processing Simulation Lab ASM Jonayat 12

Oscillation Mark : Hook Depth Sengupta, J., B. G. Thomas, H. J. Shin, and S. H. Kim, AISTech 2006 Steelmaking Conference Proc Measured Hook Depth = 1.01 ± 0.39 mm G.-G. Lee et al, Ironmaking and Steelmaking 2009, VOL 36 University of Illinois at Urbana-Champaign Metals Processing Simulation Lab ASM Jonayat 13 Oscillation Mark: Hook Depth Prediction According to Lee [1] Predicted Hook Depth = 10-31.0874 V -0.61416 c F -0.46481 T -0.18782 s L 0.041863 10.692 f T sol V c Casting Speed (m/min) 1.4 m/min F Oscillation Frequency (cycle/min) 2.9 60 cycle/min T s Superheat Temperature = T tundish T liquidus ( C) L f Mean level fluctuation during sampling (mm) 2 mm 1568 1533.9 =34.1 C T sol Solidification temperature of Slag ( C ) 1101 C Predicted Hook Depth = 1.07 mm [1] Lee, G.G, H.-J. Shin, S.-H. Kim, S.-K. Kim, W.-Y. Choi, and B.G. Thomas, Ironmaking and Steelmaking, 36: 1, 39 49, 2009 University of Illinois at Urbana-Champaign Metals Processing Simulation Lab ASM Jonayat 14

Oscillation Mark Consumption: CON1D Model Oscillation marks filled with slag and moving at the casting speed consume slag at the following rate =. Density of Slag (kg/m 3 ) 2660 kg/m 3 Depth of OM (m) 0.25 mm Width of OM (m) 2.83 mm Pitch length (m) 8.0 mm = 0.12 kg/m 2 University of Illinois at Urbana-Champaign Metals Processing Simulation Lab ASM Jonayat 15 Total Slag Consumption The total slag consumption ( ) can be divided into three components Here, Q slag =Q sol Q liq Q OM = The solid part of the slag that sticks to the mold wall after resolidifing from liquid slag. = Layer of thin continuous liquid slag. = Slag carried away by the Oscillation Marks. = Q sol Q liq QOM University of Illinois at Urbana-Champaign Metals Processing Simulation Lab ASM Jonayat 16

= Total Slag Consumption: SHIN s Equations [1] 2 Δγ Δρ g 2 1.43 0.566 0.389 1.49 3.59 tp Q (2.5 10 ρ k ( ) t V + 0.507 e ) slag slag n c f V c q OM (gm -1 cycle -1 ) q lub (gm -1 cycle -1 ) =q solid +q liuid ρ slag Density of slag (kg/m 3 ) 2660 kg/m 3 k Empirical Constant depends on properties of slag (found 14 using Shin s paper) γ Surface Tension of Steel Surface Tension of Slag (N/m) 1.7 0.419 = 1.281 N/m ρ Density of Steel Density of Slag (kg/m 3 ) 7000-2660 =4340 kg/m 3 t n Negative time Strip (sec) 0.12 sec V c Casting Speed (mm/s) 23.23 mm/s f Frequency of Oscillation (Hz or cps) 2.9 Hz g Gravitational Acceleration (ms -2 ) 9.81 ms -2 = 0.75 gm -1 cycle -1 Q OM = 0.09 kg/m 2 =. / [1] Shin, Ho-Jung, S. H. Kim, B. G. Thomas, G. G. Lee, J. M. Park, and J. Sengupta, ISIJ International, 46:11, 1635-1644, 2006. University of Illinois at Urbana-Champaign Metals Processing Simulation Lab ASM Jonayat 17 Input Variables for CON1D Simulation Steel Solidus and Liquidus Temperature: Composition of steel: Using Clyne-Kurz Simple Analysis Segregation Model, Solidus Temperature: 1517.89 C Liquidus Temperature: 1533.9 C Mold Thermal Conductivity: 375 W/(mK) is a max value for Cu-P or Cu-Ag molds 350 W/(m.K) is a typical value for Cu-Cr-Zr molds Some molds were found to have as low as 315 W/(m.K) Better to have plant measurements Flux Conductivity: 1~1.5 W/(m.K) general values for solid / liquid conductivity Values are provided by suppliers University of Illinois at Urbana-Champaign Metals Processing Simulation Lab ASM Jonayat 18

Slag Rim Dimensions Level fluctuations and meniscus shape cause larger slag rim, which causes location of heat flux peak to lower below meniscus Heat flux peak is not same as temperature peak. Peak Temperature CON1D Manual V 10.10.01 ~30 mm Peak heat flux is typically around ~30 mm above the maximum mold temperature [1] [1] E. Takeuchi and J.K. Brimacombe, Matallurgical Transactions B, Vol 15B University of Illinois at Urbana-Champaign Metals Processing Simulation Lab ASM Jonayat 19 Solid Flux Velocity Ratio (parametric study) Ratio of average solid flux velocity to casting speed Can be a function of distance below meniscus or can be constant Can be adjusted to match heat flux, thermocouple predictions etc. University of Illinois at Urbana-Champaign Metals Processing Simulation Lab ASM Jonayat 20

Results for Sample Case: Hot and Cold Face Temperature At 40mm from meniscus Hot side and cold side reaches maximum value of ~138 C and ~74 C respectively University of Illinois at Urbana-Champaign Metals Processing Simulation Lab ASM Jonayat 21 Heat Flux From Dwell time [a] Brimacombe, J.K.Canadian Metallurgical Quarterly, 15 (2) [b] Li, C. and Thomas, B. G, The Brimacombe Memorial Symposium, Vancouver, Canada, Oct. 1-4, 2000 [c] Wolf M.M., Iron & Steelmaker, V. 23, Feb., 1996, p47 Based on 34s sec dwell time, Brimacombe s Eqn ~1.4 MW/m 2 Li s Eqn ~1.3 MW/m 2 University of Illinois at Urbana-Champaign Metals Processing Simulation Lab ASM Jonayat 22

Heat Flux Mean heat flux from CON1D is 1. 3 MW/m 2 which is close to the value obtained by using Li C [b] and Brimacombe s equations [a] for slab casting for 34 sec dwell time (1.3 MW/m 2 and 1.4 MW/m 2 respectively). Heat flux at mold exit is 0.9 MW/m 2 given by CON1D while Li C and Brimacombe s Equation gives 0.8 and 0.7 MW/m 2 University of Illinois at Urbana-Champaign Metals Processing Simulation Lab ASM Jonayat 23 Shell Thickness Shell thickness curve with fraction solid for shell thickness location 0.3 Shell thickness predicted by CON1D at exit ~18 mm University of Illinois at Urbana-Champaign Metals Processing Simulation Lab ASM Jonayat 24

Thermocouple Temperature Prediction Thermocouples were located at 5 mm from the hot face. CON1D predicts lower values at the thermocouples. This can be explained by two phenomena- Contact Resistance at Thermocouple contact point 1D heat transfer model in CON1D gives smaller value. University of Illinois at Urbana-Champaign Metals Processing Simulation Lab ASM Jonayat 25 Corrected Thermocouple Temperature Prediction Thermo couple temperature correction offset was take 1.5 mm for this case calculated using the new script that gives 3D accuracy for geometry in CON1D Thermocouple temperature prediction by CON1D with offset closely matches the data from NSC plant. University of Illinois at Urbana-Champaign Metals Processing Simulation Lab ASM Jonayat 26

Flux Consumption Total consumption matches with the plant data Liquid flux consumption decreases while solid flux consumption increases down the mold Oscillation mark consumption stays constant because average model is used for osc. Consumption University of Illinois at Urbana-Champaign Metals Processing Simulation Lab ASM Jonayat 27 Flux Thickness Solid flux thickness at exit = 1.3 mm Liquid flux thickness at exit = 0.06 mm Total flux thickness at exit = 1.36 mm University of Illinois at Urbana-Champaign Metals Processing Simulation Lab ASM Jonayat 28

Corner Model Current model works best near the center. Ferrostatic pressure assumed to directly exert force on the liquid slag layer In the corner, gap size defines the slag layer thickness (not pressure from steel) Liu and Alonso [1] came up with model that can predict the pressure and consumption based on given slag layer thickness. Equations to Solve: d dv z dp μ = ρg dx dx dz Velocity : V = V z casting x H n+ 1 n+ 1 liq T x 2 = 0 2 ( n + 2)( n 3) C Vcasting + + + n+ 3 n n+ 2 μ0h ( T0 T ) H liq fsol liq x n+ 2 x n + 2 H n+ 1 liq Consumption: p ( z) n ( T T ) I1 0 H liq Q= ρw Vzdx n ( n + 2)( n + 3)( T0 T fsol ) n ( T T ) z 1 z Vcasting μ0 z = C dz + dz + gdz + C z= 0 3 z 0 2 z 0 H = H ρ = liq shell Where C and C1 depends on the Boundary Conditions. In this case two boundary conditions are [1] Liu, Rui, Alonso Mathew, ME applied. 550 Project University of Illinois at Urbana-Champaign Metals Processing Simulation Lab ASM Jonayat 29 fsol liq shell I2 fsol I3 1 Corner Model Preliminary results Velocity Consumption Gravity becomes important for very large gaps, (>1mm for this case) leading to liquid slag downward velocity exceeding casting speed. University of Illinois at Urbana-Champaign Metals Processing Simulation Lab ASM Jonayat 30

Meniscus Region CFD Model Oscillating wall Pressure inlet = 1 atm, Backflow temp = 300 K Constant Heat Flux = 130 W/m 2 Symmetry wall Domain and Boundary Conditions Cells :42050 Nodes :42606 Slag Constant temp = 1073 K Steel Stationary wall Constant temp = 1805.9 K Gravity Moving Wall, Vy = Casting Vel Vx=0 Constant temp = 1793.9 K 0.5 mm gap Stationary wall Heat flux = 0 (insulated wall) Pressure Outlet = 1 atm, Backflow temp = 1433 K University of Illinois at Urbana-Champaign Metals Processing Simulation Lab ASM Jonayat 31 Model Description (Fluent) Equations to solve 1. Fluid Flow Realisable k-ε Model - Standard Wall functions 2. Heat Transfer Transient 2-D conduction 3. Interface between Slag and molten Steel VOF Model Explicit Scheme (2 non-interpenetrating phases) Surface Tension Wall Adhesion Model Pressure-Velocity Coupling PISO is recommended for Transient VOF Geo-Reconstract for surface tracking performs better. For Pressure Interpolation Scheme PRESTO! is recommended University of Illinois at Urbana-Champaign Metals Processing Simulation Lab ASM Jonayat 32

Material Properties Steel Properties Constant properties for Steel Density = 7000 kg/m 3 Specific Heat, Cp = 700 j/kg-k Thermal Conductivity = 30 w/m-k Viscosity = 0.0063 kg/m-s Slag Properties: Density = 2500 kg/m 3 Slag: Thermal Conductivity [1] Slag: Specific Heat [1] Slag: Viscosity [1] [1]Ojeda et al, AISTech 2007, Steelmaking Conference Proc., (May 7-10, Indianapolis, IN), AIST, Warrendale, PA, Vol. 1, 2007 University of Illinois at Urbana-Champaign Metals Processing Simulation Lab ASM Jonayat 33 Surface Tension between Steel(l) and Slag(l) Surface tension of Steel(l) based on Sulphur Content [1] - S (0.01~0.012%)* 1600 mn/m Surface tension of slag [2] = 431 mn/m Using Girifalco and Good s approach [3] 0.5 γsteel () l slag = γsteel () l gas + γslag gas 2 Φ ( γsteel () l slag γslag gas ) Here, Φ = 0 when there is no interactions between the phases and increases as the attraction between the phases increases. For CaO-Al 2 O 3 -SiO 2 ternary system Φ is given by the relation [3] - Slag Φ= 0.003731(% Al O ) + 0.005973(% Si0 ) + 0.005806(% CaO) Φ = 0.4638 2 3 2 ɣ steel(l)-slag θ Steel(l) ɣ metal(l) -slag = 1260.7 mn/m [1] Ho-Jung SHIN et al, ISIJ International, Vol. 46 (2006), No. 11, pp. 1635 1644 [2] Joonho LEE and Kazuki MORITA, ISIJ International, Vol. 42 (2002), No. 6, pp. 588 594. [3] Cramb, A W and Jimbo, Iron Steelmaker. Vol. 16, no. 6, pp. 43-55. June 1989 [4] Ojeda, CCC Annual Meeting, June 1, 2005 ɣ steel(s)-slag ɣ steel(s)-steel(l) Steel(s) From Ojeda s [4] work, θ~160 University of Illinois at Urbana-Champaign Metals Processing Simulation Lab ASM Jonayat 34

Validation with Bikerman Equation Equilibrium meniscus shape is determined by the balance of surface tension and gravity forces given by Biker-man s [1] equation Distance from Meniscus (mm) Bikerman Equation Fluent Run 2 2 a a 2 + 2a - z x - xo = - 2a - z + ln 2 z a xo = a - ln( 2 + 1) 2 2Δ γ a = Δρ g 2 2 Distance from Mold wall (mm) [1] J. J. Bikerman: Physical Surfaces, Academic Press, Inc., New York, (1970) University of Illinois at Urbana-Champaign Metals Processing Simulation Lab ASM Jonayat 35 Comparison With Previous Results By Ojeda A previous simulation by Ojeda [1] is used to compare model - Casting Conditions: Casting Velocity = 1.42 m/min Stroke = 6.37 mm Frequency = 155 cpm Sinusoidal Oscillation [1] Claudio Ojeda, CCC Annual Report 2006 University of Illinois at Urbana-Champaign Metals Processing Simulation Lab ASM Jonayat 36

Comparison With Previous Results By Ojeda Mean Consumption from Ojeda s work = 0.0068 kg/(s.m) Mean Consumption in Present work = 0.0079 kg/(s.m) University of Illinois at Urbana-Champaign Metals Processing Simulation Lab ASM Jonayat 37 Simulation Animation Step 1 (t=0 sec) 18 secs fluid + VOF No movement of wall Step 2 (t=18 sec) 10 secs Casting velocity + Mold movement applied Step 3 (t=28s) Coupled flow with Heat transfer University of Illinois at Urbana-Champaign Metals Processing Simulation Lab ASM Jonayat 38

Slag Rim -Temperature University of Illinois at Urbana-Champaign Metals Processing Simulation Lab ASM Jonayat 39 ASM Jonayat 40 Velocity University of Illinois at Urbana-Champaign Metals Processing Simulation Lab

Effect of Slag Layer Thickness Over the Meniscus Mean Slag Consumption, 65 mm = 0.0079 kg/(s.m) 35 mm = 0.0076 kg/(s.m) Less pressure head of slag lowers driving force for consumption (very slight effect) University of Illinois at Urbana-Champaign Metals Processing Simulation Lab ASM Jonayat 41 Non-Sinusoidal Oscillation Casting Conditions: Casting Velocity = 1.42 m/min Stroke = 6.37 mm Frequency = 155 cpm Non-Sinusoidal Oscillation Modification Ratio = 24% Slag Property: Conductivity - Model 1 Viscosity - Model 1 Eqn for Non-sinusoidal Oscillation* y = asin(2π ft Asin 2 π ft) v= a 2 π f (1 Acos(2 π ft))cos(2π ft Asin2 π ft) Where, a = stroke/2 and 4πα A= 2 2 8 πα *Xin Jin, Tingzhi Ren, A New Non-Sinusoidal Oscillation Waveform for Continuous Casting Mold, Advanced Materials Research Vols. 154-155 (2011) pp 334-337. University of Illinois at Urbana-Champaign Metals Processing Simulation Lab ASM Jonayat 42

Slag Consumption in Non- Sinusoidal Oscillation Mean Slag Consumption with 24% Modification Ratio = 0.0085 kg/(s.m) Slag Consumption increased with non-sinusoidal oscillation which matches the behavior described in literature*. *M. SUZUKI, H. MIZUKAMI, T. KITAGAWA et al, ISIJ Int., 1991, 31, 245-261 University of Illinois at Urbana-Champaign Metals Processing Simulation Lab ASM Jonayat 43 Conclusions CON1D predicted correct parameters for the casting condition supplied. Slag layer thickness measured from plant samples was greater than predicted because they were relatively near to the corner. An additional slag consumption model for CON1D is being developed to correctly predict the corner region. CFD meniscus model using Fluent is correctly predicting the slag consumption change with change of oscillation parameters and top slag pool thickness. More work is needed to improve the meniscus model: Temperature dependent properties for steel to make the slag consumption prediction better Extend gap over the length of the mold Improve accuracy of heat flux boundary to mold wall. University of Illinois at Urbana-Champaign Metals Processing Simulation Lab ASM Jonayat 44

Acknowledgements Nippon Steel Corporation for plant data and helpful discussions. Continuous Casting Consortium Members (ABB, ArcelorMittal, Baosteel, Tata Steel, Goodrich, Magnesita Refractories, Nippon Steel Corporation, Nucor Steel, Postech/ Posco, SSAB, ANSYS-Fluent) University of Illinois at Urbana-Champaign Metals Processing Simulation Lab ASM Jonayat 45