To solve optimization problems with parabolic PDE constraints, often methods working on the reduced objective functional are used. They are computationally expensive due to the necessity of solving both the state equation and a backward-in-time adjoint equation to evaluate the reduced gradient in each iteration of the optimization method. In this study, we investigate the use of the parallel-in-time method PFASST in the setting of PDE-constrained optimization. In order to develop an efficient fully time-parallel algorithm, we discuss different options for applying PFASST to adjoint gradient computation, including the possibility of doing PFASST iterations on both the state and the adjoint equations simultaneously. We also explore the additi...
In this paper, we present a method that enables solving in parallel the Euler-Lagrange system associ...
Abstract. This paper gives a preliminary description of DASOPT, a software system for the optimal co...
International audienceWe present original time-parallel algorithms for the solution of the implicit ...
International audienceThe time parallel solution of optimality systems arising in PDE constrained op...
Optimal control problems governed by time-dependent partial differential equations (PDEs) lead to la...
This thesis proposes and analyzes a new parallel-in-time gradient-type method for time-dependent opt...
The numerical solution of a parabolic partial differential equation is usually calculated by a times...
In this paper we present a novel method for solving optimization problems governed by partial differ...
PDE-constrained optimization refers to the optimization of systems governed by partial differential ...
The standard numerical algorithms for solving parabolic partial differential equations are inherentl...
In this paper, we present a method that enables to solve in parallel the Euler-Lagrange system assoc...
In this thesis we analyze implicit and linearly implicit peer methods in the context of optimization...
Parallel algorithms for the solution of linear parabolic problems are proposed. The first of these m...
To extend prevailing scaling limits when solving time-dependent partial differential equations, the ...
The parallel full approximation scheme in space and time (PFASST) introduced by Emmett and Minion in...
In this paper, we present a method that enables solving in parallel the Euler-Lagrange system associ...
Abstract. This paper gives a preliminary description of DASOPT, a software system for the optimal co...
International audienceWe present original time-parallel algorithms for the solution of the implicit ...
International audienceThe time parallel solution of optimality systems arising in PDE constrained op...
Optimal control problems governed by time-dependent partial differential equations (PDEs) lead to la...
This thesis proposes and analyzes a new parallel-in-time gradient-type method for time-dependent opt...
The numerical solution of a parabolic partial differential equation is usually calculated by a times...
In this paper we present a novel method for solving optimization problems governed by partial differ...
PDE-constrained optimization refers to the optimization of systems governed by partial differential ...
The standard numerical algorithms for solving parabolic partial differential equations are inherentl...
In this paper, we present a method that enables to solve in parallel the Euler-Lagrange system assoc...
In this thesis we analyze implicit and linearly implicit peer methods in the context of optimization...
Parallel algorithms for the solution of linear parabolic problems are proposed. The first of these m...
To extend prevailing scaling limits when solving time-dependent partial differential equations, the ...
The parallel full approximation scheme in space and time (PFASST) introduced by Emmett and Minion in...
In this paper, we present a method that enables solving in parallel the Euler-Lagrange system associ...
Abstract. This paper gives a preliminary description of DASOPT, a software system for the optimal co...
International audienceWe present original time-parallel algorithms for the solution of the implicit ...