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Problems from Industry: Case Studies. Huaxiong Huang Department of Mathematics and Statistics York University Toronto, Ontario, Canada M3J 1P3 http://www.math.yorku.ca/~hhuang. Supported by: NSERC, MITACS, Firebird, BCASI. Outline. Stress Reduction for Semiconductor Crystal Growth.
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Problems from Industry: Case Studies Huaxiong Huang Department of Mathematics and Statistics York University Toronto, Ontario, Canada M3J 1P3 http://www.math.yorku.ca/~hhuang Supported by: NSERC, MITACS, Firebird, BCASI
Outline • Stress Reduction for Semiconductor Crystal Growth. • Collaborators: S. Bohun, I. Frigaard, S. Liang. • Temperature Control in Hot Rolling Steel Plant. • Collaborators: J. Ockendon, Y. Tan. • Optimal Consumption in Personal Finance. • Collaborators: M. Cao, M. Milevsky, J. Wei, J. Wang.
Stress Reduction during Crystal Growth • Growth Process: • Simulation:
Problem and Objective • Problem: • Objective: model and reduce thermal stress Thermal Stress Dislocations
Full Problem • Temperature + flow equations + phase change:
Basic Thermal Elasticity • Thermal elasticity • Equilibrium equation • von Mises stress • Resolved stress (in the slip directions)
A Simplified Model for Thermal Stress • Temperature • Growth (of moving interface) • Meniscus and corner • Other boundary conditions
Non-dimensionalisation • Temperature • Boundary conditions • Interface
Approximate Solution • Asymptotic expansion • Equations up-to 1st order • Lateral boundary condition • Interface • Top boundary
0th Order Solution • Reduced to 1D! • Pseudo-steady state • Cylindrical crystals • Conic crystals
1st Order Solution • Also reduced to 1D! • Cylindrical crystals • Conic crystals • General shape • Stress is determined by the first order solution (next slide).
Thermal Stress • Plain stress assumption • Stress components • von Mises stress • Maximum von Mises stress
Shape Effect II Convex Modification Concave Modification
Stress Control and Reduction • Examples from the Nature [taken from Design in Nature, 1998 ]
Stress Control and Reduction in Crystals • Previous work • Capillary control: controls crystal radius by pulling rate; • Bulk control: controls pulling rate, interface stability, temperature, thermal stress, etc. by heater power, melt flow; • Feedback control: controls radial motion stability; • Optimal control: using reduced model (Bornaide et al, 1991; Irizarry-Rivera and Seider, 1997; Metzger and Backofen, 2000; Metzger 2002); • Optimal control: using full numerical simulation (Gunzburg et al, 2002; Muller, 2002, etc.) ; • All assume cylindrical shape (reasonable for silicon); no shape optimization was attempted. • Our approach • Optimal control: using semi-analytical solution (Huang and Liang, 2005); • Both shape and thermal flux are used as control functions.
Stress Reduction by Thermal Flux Control • Problem setup • Alternative (optimal control) formulation • Constraint
Method of Lagrange Multiplier • Modified objective functional • Euler-Lagrange equations
Stress Reduction by Shape Control • Optimal control setup • Euler-Lagrange equations
Results I: Conic Crystals History of Max Stress Three Flux Variations Stress at Final Length
Results II: Linear Thermal Flux Max Stress Growth Angle Crystal Shape
Results III: Optimal Thermal Flux Growth Angle Max Stress Crystal Shape
Parametric Studies: Effect of Penalty Parameters Growth Angle Crystal Shape Max Stress
Conclusion and Future Work • Stress can be reduced significantly by control thermal flux or crystal shape or both; • Efficient solution procedure for optimal control is developed using asymptotic solution; • Sensitivity and parametric study show that the solution is robust; • Improvements can be made by • incorporating the effect of melt flow (numerical simulation is currently under way); • incorporating effect of gas flow (fluent simulation shows temporary effect may be important); • Incorporating anisotropic effect (nearly done).
Temperature Control in Hot-Rolling Mills • Cooling by laminar flow • Q1: Bao Steel’s rule of thumb • Q2: Is full numerical solution necessary for the control problem?
Model • Temperature equation and boundary conditions
Non-dimensionalization • Scaling • Equations and BCs • Simplified equation
Discussion • Exact solution • Leading order approximation • Temperature via optimal control
Optimal Consumption with Restricted Assets • Examples of illiquid assets: • Lockup restrictions imposed as part of IPOs; • Selling restrictions as part of stock or stock-option compensation packages for executives and other employees; • SEC Rule 144. • Reasons for selling restriction: • Retaining key employees; • Encouraging long term performance. • Financial implications for holding restricted stocks: • Cost of restricted stocks can be high (30-80%) [KLL, 2003]; • Purpose of present study: • Generalizing KLL (2003) to the stock-option case.; • Validate (or invalidate) current practice of favoring stocks.
Model • Continuous-time optimal consumption model due to Merton (1969, 1971): • Stochastic processes for market and stock • Maximize expected utility
Model (cont.) • Dynamics of the option • Dynamics of the total wealth • Proportions of wealth
Hamilton-Jacobi-Bellman Equation • A 2nd order, 3D, highly nonlinear PDE.
Solution of HJB • First order conditions • HJB • Terminal condition (zero bequest) • Two-period Approach
Post-Vesting (Merton) • Similarity solution • Key features of the Merton solution • Holing on market only; • Constant portfolio distribution; • Proportional consumption rate (w.r..t. total wealth).
Vesting Period (stock only) • Incomplete similarity reduction • Simplified HJB (1D) • Numerical issues • Explicit or implicit? • Boundary conditions; loss of positivity, etc.
Vesting Period (stock-option) • Incomplete similarity reduction • Reduced HJB (2D) • Numerical method: ADI.