When solving linear stochastic differential equations numerically, usually a high order spatial discretisation is used. Balanced truncation (BT) and singular perturbation approximation (SPA) are well-known projection techniques in the deterministic framework which reduce the order of a control system and hence reduce computational complexity. This work considers both methods when the control is replaced by a noise term. We provide theoretical tools such as stochastic concepts for reachability and observability, which are necessary for balancing related model order reduction of linear stochastic differential equations with additive Lévy noise. Moreover, we derive error bounds for both BT and SPA and provide numerical results for a specific e...
AbstractThe balanced stochastic realization is introduced as a balanced solution to the continuous t...
In this thesis we have studied balanced model reduction techniques for linear con- trol systems, spe...
In this article we investigate model order reduction of large-scale systems using time-limited balan...
When solving linear stochastic differential equations numerically, usually a high order spatial disc...
When solving linear stochastic differential equations numerically, usually a high order spatial disc...
When solving linear stochastic partial differential equations numerically, usually a high order spat...
When solving linear stochastic partial differential equations numerically, usually a high order spat...
In this paper, we investigate a large-scale stochastic system with bilinear drift and linear diffusi...
In this paper, we investigate a large-scale stochastic system with bilinear drift and linear diffusi...
When solving linear stochastic partial differential equations numerically, usually a high order spat...
We analyze structure-preserving model order reduction methods for Ornstein-Uhlenbeck processes and l...
We study balanced model reduction of partially-observed linear stochastic dierential equations of L...
We study balanced truncation for stochastic differential equations. In doing so, we adopt ideas from...
We propose a general method based on the balanced stochastic truncation (BST) approach for the model...
The generalised singular perturbation approximation (GSPA) is considered as a model reduction scheme...
AbstractThe balanced stochastic realization is introduced as a balanced solution to the continuous t...
In this thesis we have studied balanced model reduction techniques for linear con- trol systems, spe...
In this article we investigate model order reduction of large-scale systems using time-limited balan...
When solving linear stochastic differential equations numerically, usually a high order spatial disc...
When solving linear stochastic differential equations numerically, usually a high order spatial disc...
When solving linear stochastic partial differential equations numerically, usually a high order spat...
When solving linear stochastic partial differential equations numerically, usually a high order spat...
In this paper, we investigate a large-scale stochastic system with bilinear drift and linear diffusi...
In this paper, we investigate a large-scale stochastic system with bilinear drift and linear diffusi...
When solving linear stochastic partial differential equations numerically, usually a high order spat...
We analyze structure-preserving model order reduction methods for Ornstein-Uhlenbeck processes and l...
We study balanced model reduction of partially-observed linear stochastic dierential equations of L...
We study balanced truncation for stochastic differential equations. In doing so, we adopt ideas from...
We propose a general method based on the balanced stochastic truncation (BST) approach for the model...
The generalised singular perturbation approximation (GSPA) is considered as a model reduction scheme...
AbstractThe balanced stochastic realization is introduced as a balanced solution to the continuous t...
In this thesis we have studied balanced model reduction techniques for linear con- trol systems, spe...
In this article we investigate model order reduction of large-scale systems using time-limited balan...