We consider linear systems A(alpha)x(alpha) - b(alpha) depending on possibly many parameters alpha = (alpha(1), ... , alpha(p)). Solving these systems simultaneously for a standard discretization of the parameter range would require a computational effort growing drastically with the number of parameters. We show that a much lower computational effort can be achieved for sufficiently smooth parameter dependencies. For this purpose, computational methods are developed that benefit from the fact that x(alpha) can be well approximated by a tensor of low rank. In particular, low-rank tensor variants of short-recurrence Krylov subspace methods are presented. Numerical experiments for deterministic PDEs with parametrized coefficients and stochast...
We consider a class of parametric operator equations where the involved parameters could either be o...
PDE-constrained optimization problems arise in a broad number of applications such as hyperthermia c...
International audienceTensor methods are among the most prominent tools for the numerical solution o...
. In this paper, we describe tensor methods for large systems of nonlinear equations based on Krylov...
In this paper, we describe tensor methods for large sparse systems of nonlinear equations based on K...
In this paper we propose a method for the numerical solution of linear systems of equations in low r...
The paper is concerned with methods for computing the best low multilinear rank approximation of lar...
High dimensional models with parametric dependencies can be challenging to simulate. The computation...
In the present work, numerical methods for the solution of multi-linear system are presented. Most l...
Several Krylov-type procedures are introduced that generalize matrix Krylov methods for tensor compu...
Several Krylov-type procedures are introduced that generalize matrix Krylov methods for tensor compu...
Abstract. In this paper, we describe tensor methods for large systems of nonlinear equa-tions based ...
We propose a novel combination of the reduced basis method with low-rank tensor techniques for the e...
Linear matrix equations, such as the Sylvester and Lyapunov equations, play an important role in var...
We revisit the implementation of the Krylov subspace method based on the Hessenberg process for gene...
We consider a class of parametric operator equations where the involved parameters could either be o...
PDE-constrained optimization problems arise in a broad number of applications such as hyperthermia c...
International audienceTensor methods are among the most prominent tools for the numerical solution o...
. In this paper, we describe tensor methods for large systems of nonlinear equations based on Krylov...
In this paper, we describe tensor methods for large sparse systems of nonlinear equations based on K...
In this paper we propose a method for the numerical solution of linear systems of equations in low r...
The paper is concerned with methods for computing the best low multilinear rank approximation of lar...
High dimensional models with parametric dependencies can be challenging to simulate. The computation...
In the present work, numerical methods for the solution of multi-linear system are presented. Most l...
Several Krylov-type procedures are introduced that generalize matrix Krylov methods for tensor compu...
Several Krylov-type procedures are introduced that generalize matrix Krylov methods for tensor compu...
Abstract. In this paper, we describe tensor methods for large systems of nonlinear equa-tions based ...
We propose a novel combination of the reduced basis method with low-rank tensor techniques for the e...
Linear matrix equations, such as the Sylvester and Lyapunov equations, play an important role in var...
We revisit the implementation of the Krylov subspace method based on the Hessenberg process for gene...
We consider a class of parametric operator equations where the involved parameters could either be o...
PDE-constrained optimization problems arise in a broad number of applications such as hyperthermia c...
International audienceTensor methods are among the most prominent tools for the numerical solution o...