This work was also published as a Rice University thesis/dissertation: http://hdl.handle.net/1911/62002This thesis provides a rigorous framework for the solution of stochastic elliptic partial differential equation (SPDE) constrained optimization problems. In modeling physical processes with differential equations, much of the input data is uncertain (e.g. measurement errors in the diffusivity coefficients). When uncertainty is present, the governing equations become a family of equations indexed by a stochastic variable. Since solutions of these SPDEs enter the objective function, the objective function usually involves statistical moments. These optimization problems governed by SPDEs are posed as a particular class of optimization probl...
In this thesis we want to give a theoretical and practical introduction to stochastic gradient desce...
Stochastic Optimization Algorithms have become essential tools in solving a wide range of difficult ...
Stochastic collocation methods facilitate the numerical solution of partial differential equations (...
This thesis provides a rigorous framework for the solution of stochastic elliptic partial differenti...
The optimal control of problems that are constrained by partial differential equations with uncertai...
This work was also published as a Rice University thesis/dissertation: http://hdl.handle.net/1911/64...
We discuss the use of stochastic collocation for the solution of optimal control problems which are ...
pre-printWe discuss the use of stochastic collocation for the solution of optimal control problems w...
Many science and engineering applications are impacted by a significant amount of uncertainty in the...
We consider PDE-constrained optimization problems, where the partial differential equation has uncer...
We consider PDE constrained optimization problems where the partial differential equation has uncert...
The numerical solution of optimization problems governed by partial differential equations (PDEs) wi...
We consider PDE constrained optimization problems where the partial differential equation has uncert...
This work proposes and analyzes a stochastic collocation method for solving elliptic partial differe...
In this work we focus on the numerical approximation of the solution u of a linear elliptic PDE with...
In this thesis we want to give a theoretical and practical introduction to stochastic gradient desce...
Stochastic Optimization Algorithms have become essential tools in solving a wide range of difficult ...
Stochastic collocation methods facilitate the numerical solution of partial differential equations (...
This thesis provides a rigorous framework for the solution of stochastic elliptic partial differenti...
The optimal control of problems that are constrained by partial differential equations with uncertai...
This work was also published as a Rice University thesis/dissertation: http://hdl.handle.net/1911/64...
We discuss the use of stochastic collocation for the solution of optimal control problems which are ...
pre-printWe discuss the use of stochastic collocation for the solution of optimal control problems w...
Many science and engineering applications are impacted by a significant amount of uncertainty in the...
We consider PDE-constrained optimization problems, where the partial differential equation has uncer...
We consider PDE constrained optimization problems where the partial differential equation has uncert...
The numerical solution of optimization problems governed by partial differential equations (PDEs) wi...
We consider PDE constrained optimization problems where the partial differential equation has uncert...
This work proposes and analyzes a stochastic collocation method for solving elliptic partial differe...
In this work we focus on the numerical approximation of the solution u of a linear elliptic PDE with...
In this thesis we want to give a theoretical and practical introduction to stochastic gradient desce...
Stochastic Optimization Algorithms have become essential tools in solving a wide range of difficult ...
Stochastic collocation methods facilitate the numerical solution of partial differential equations (...