We propose an efficient numerical algorithm for relative error model reduction based on balanced stochastic truncation. The method uses full-rank factors of the Gramians to be balanced versus each other and exploits the fact that for large-scale systems these Gramians are often of low numerical rank. We use the easy-to-parallelize sign function method as the major computational tool in determining these full-rank factors and demonstrate the numerical performance of the suggested implementation of balanced stochastic truncation model reduction
Model reduction is a common theme within the simulation, control and optimization of complex dynamic...
Model reduction is a common theme within the simulation, control and optimization of complex dynamic...
In this paper we develop computational techniques with enhanced accuracy for two frequency-weighted ...
We study a class of balanced truncation algorithms applicable to relative/multiplicative model reduc...
Abstract — A new mixed method for relative error model order reduction is proposed. In the proposed ...
In this article, a new method for model reduction of linear dynamical systems is presented. The prop...
Balanced truncation is one of the most common model reduction schemes. In this note, we present a su...
A new mixed method for relative error model reduction of linear time invariant (LTI) systems is prop...
This paper presents two recently developed algorithms for efficient model order reduction. Both algo...
Balanced truncation (BT) model order reduction (MOR) is known for its superior accuracy and computab...
We propose a general method based on the balanced stochastic truncation (BST) approach for the model...
. Model reduction is of fundamental importance in many modeling and control applications. Here we ad...
A new relative error model reduction technique for linear time invariant (LTI) systems is proposed i...
Balanced model reduction with a priori relative/multiplicative error bounds in L∞ norm is studied. I...
Model reduction of a system is an approximation of a higher-order system to a lower-order system whi...
Model reduction is a common theme within the simulation, control and optimization of complex dynamic...
Model reduction is a common theme within the simulation, control and optimization of complex dynamic...
In this paper we develop computational techniques with enhanced accuracy for two frequency-weighted ...
We study a class of balanced truncation algorithms applicable to relative/multiplicative model reduc...
Abstract — A new mixed method for relative error model order reduction is proposed. In the proposed ...
In this article, a new method for model reduction of linear dynamical systems is presented. The prop...
Balanced truncation is one of the most common model reduction schemes. In this note, we present a su...
A new mixed method for relative error model reduction of linear time invariant (LTI) systems is prop...
This paper presents two recently developed algorithms for efficient model order reduction. Both algo...
Balanced truncation (BT) model order reduction (MOR) is known for its superior accuracy and computab...
We propose a general method based on the balanced stochastic truncation (BST) approach for the model...
. Model reduction is of fundamental importance in many modeling and control applications. Here we ad...
A new relative error model reduction technique for linear time invariant (LTI) systems is proposed i...
Balanced model reduction with a priori relative/multiplicative error bounds in L∞ norm is studied. I...
Model reduction of a system is an approximation of a higher-order system to a lower-order system whi...
Model reduction is a common theme within the simulation, control and optimization of complex dynamic...
Model reduction is a common theme within the simulation, control and optimization of complex dynamic...
In this paper we develop computational techniques with enhanced accuracy for two frequency-weighted ...