none3siPDE-constrained optimization aims at finding optimal setups for partial differential equations so that relevant quantities are minimized. Including nonsmooth L1sparsity promoting terms in the formulation of such problems results in more practically relevant computed controls but adds more challenges to the numerical solution of these problems. The needed L1-terms as well as additional inclusion of box control constraints require the use of semismooth Newton methods. We propose robust preconditioners for different formulations of the Newton equation. With the inclusion of a line-search strategy and an inexact approach for the solution of the linear systems, the resulting semismooth Newton's method is reliable for practical problems. O...
Optimization constrained by partial differential equations (PDEs) is a research area in which the sc...
Augmented Lagrangian methods for large-scale optimization usually require efficient algorithms for m...
In this article, we motivate, derive and test effective preconditioners to be used with the Minres a...
Optimal control problems with partial differential equations play an important role in many applicat...
none3siPartial differential equation (PDE)–constrained optimization problems with control or state c...
Optimal control problems with partial differential equations play an important role in many applicat...
Optimal control problems with partial differential equations play an important role in many applicat...
The optimization of functions subject to partial differential equations (PDE) plays an important rol...
The optimization of functions subject to partial differential equations (PDE) plays an important rol...
In this paper, we consider preconditioning for PDE-constrained optimization problems. The underlying...
We investigate the use of a preconditioning technique for solving linear systems of saddle point typ...
The KKT systems arising in nonlinearly constrained optimization problems may not have correct inerti...
We address the problem of preconditioning a sequence of saddle point linear systems arising in the s...
Augmented Lagrangian methods for large-scale optimization usually require efficient algorithms for m...
Optimization constrained by partial differential equations (PDEs) is a research area in which the sc...
Augmented Lagrangian methods for large-scale optimization usually require efficient algorithms for m...
In this article, we motivate, derive and test effective preconditioners to be used with the Minres a...
Optimal control problems with partial differential equations play an important role in many applicat...
none3siPartial differential equation (PDE)–constrained optimization problems with control or state c...
Optimal control problems with partial differential equations play an important role in many applicat...
Optimal control problems with partial differential equations play an important role in many applicat...
The optimization of functions subject to partial differential equations (PDE) plays an important rol...
The optimization of functions subject to partial differential equations (PDE) plays an important rol...
In this paper, we consider preconditioning for PDE-constrained optimization problems. The underlying...
We investigate the use of a preconditioning technique for solving linear systems of saddle point typ...
The KKT systems arising in nonlinearly constrained optimization problems may not have correct inerti...
We address the problem of preconditioning a sequence of saddle point linear systems arising in the s...
Augmented Lagrangian methods for large-scale optimization usually require efficient algorithms for m...
Optimization constrained by partial differential equations (PDEs) is a research area in which the sc...
Augmented Lagrangian methods for large-scale optimization usually require efficient algorithms for m...
In this article, we motivate, derive and test effective preconditioners to be used with the Minres a...