In this paper, we investigate a large-scale stochastic system with bilinear drift and linear diffusion term. Such high dimensional systems appear for example when discretizing a stochastic partial differential equations in space. We study a particular model order reduction technique called balanced truncation (BT) to reduce the order of spatially-discretized systems and hence reduce computational complexity. We introduce suitable Gramians to the system and prove energy estimates that can be used to identify states which contribute only very little to the system dynamics. When BT is applied the reduced system is obtained by removing these states from the original system. The main contribution of this paper is an L2-error bound for BT for sto...
Model reduction is a common theme within the simulation, control and optimization of complex dynamic...
We propose a general method based on the balanced stochastic truncation (BST) approach for the model...
Abstract: Along the ideas of Curtain and Glover (in: Bart, Gohberg, Kaashoek (eds) Operator theory a...
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...
When solving partial differential equations numerically, usually a high order spatial discretisation...
When solving linear stochastic differential equations numerically, usually a high order spatial disc...
We study balanced model reduction for stable bilinear systems in the limit of partly vanishing Hank...
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...
When solving partial differential equations numerically, usually a high order spatial discretization...
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...
Nonlinear balanced truncation is a model order reduction technique that reduces the dimension of non...
We study balanced model reduction of partially-observed linear stochastic dierential equations of L...
Model reduction is a common theme within the simulation, control and optimization of complex dynamic...
We propose a general method based on the balanced stochastic truncation (BST) approach for the model...
Abstract: Along the ideas of Curtain and Glover (in: Bart, Gohberg, Kaashoek (eds) Operator theory a...
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...
When solving partial differential equations numerically, usually a high order spatial discretisation...
When solving linear stochastic differential equations numerically, usually a high order spatial disc...
We study balanced model reduction for stable bilinear systems in the limit of partly vanishing Hank...
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...
When solving partial differential equations numerically, usually a high order spatial discretization...
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...
Nonlinear balanced truncation is a model order reduction technique that reduces the dimension of non...
We study balanced model reduction of partially-observed linear stochastic dierential equations of L...
Model reduction is a common theme within the simulation, control and optimization of complex dynamic...
We propose a general method based on the balanced stochastic truncation (BST) approach for the model...
Abstract: Along the ideas of Curtain and Glover (in: Bart, Gohberg, Kaashoek (eds) Operator theory a...