We analyze structure-preserving model order reduction methods for Ornstein-Uhlenbeck processes and linear S(P)DEs with multiplicative noise based on balanced truncation. For the first time, we include in this study the analysis of non-zero initial conditions. We moreover allow for feedback-controlled dynamics for solving stochastic optimal control problems with reduced-order models and prove novel error bounds for a class of linear quadratic regulator problems. We provide numerical evidence for the bounds and discuss the application of our approach to enhanced sampling methods from non-equilibrium statistical mechanics
International audienceThis paper investigates the robust reduced order observer design for nonlinear...
We propose a posteriori error bounds for reduced-order models of non-parametrized linear time invari...
In this paper, we investigate a large-scale stochastic system with bilinear drift and linear diffusi...
When solving linear stochastic differential equations numerically, usually a high order spatial disc...
Balanced model reduction with a priori relative/multiplicative error bounds in L∞ norm is studied. I...
Abstract: Along the ideas of Curtain and Glover (in: Bart, Gohberg, Kaashoek (eds) Operator theory a...
When solving linear stochastic differential equations numerically, usually a high order spatial disc...
In this paper, we consider nonlinear stochastic systems and intersect ideas from nonlinear control t...
Verification theorems are key results to successfully employ the dynamic programming approach to opt...
We deal with nonlinear dynamical systems, consisting of a linear nominal part plus model uncertainti...
Linear dynamical systems are considered in the form of ordinary differential equations or differenti...
AbstractWe consider a nonlinear controlled stochastic evolution equation in a Hilbert space, with a ...
The analysis and the optimal control of dynamical systems having stochastic inputs are considered in...
We study a class of balanced truncation algorithms applicable to relative/multiplicative model reduc...
We propose a posteriori error bounds for reduced-order models of non-parametrized linear time invari...
International audienceThis paper investigates the robust reduced order observer design for nonlinear...
We propose a posteriori error bounds for reduced-order models of non-parametrized linear time invari...
In this paper, we investigate a large-scale stochastic system with bilinear drift and linear diffusi...
When solving linear stochastic differential equations numerically, usually a high order spatial disc...
Balanced model reduction with a priori relative/multiplicative error bounds in L∞ norm is studied. I...
Abstract: Along the ideas of Curtain and Glover (in: Bart, Gohberg, Kaashoek (eds) Operator theory a...
When solving linear stochastic differential equations numerically, usually a high order spatial disc...
In this paper, we consider nonlinear stochastic systems and intersect ideas from nonlinear control t...
Verification theorems are key results to successfully employ the dynamic programming approach to opt...
We deal with nonlinear dynamical systems, consisting of a linear nominal part plus model uncertainti...
Linear dynamical systems are considered in the form of ordinary differential equations or differenti...
AbstractWe consider a nonlinear controlled stochastic evolution equation in a Hilbert space, with a ...
The analysis and the optimal control of dynamical systems having stochastic inputs are considered in...
We study a class of balanced truncation algorithms applicable to relative/multiplicative model reduc...
We propose a posteriori error bounds for reduced-order models of non-parametrized linear time invari...
International audienceThis paper investigates the robust reduced order observer design for nonlinear...
We propose a posteriori error bounds for reduced-order models of non-parametrized linear time invari...
In this paper, we investigate a large-scale stochastic system with bilinear drift and linear diffusi...