A new relative error model reduction technique for linear time invariant (LTI) systems is proposed in this paper. Both continuous and discrete time systems can be reduced within this framework. The proposed model reduction method is mainly based upon time-weighted balanced truncation and a recently developed inner-outer factorization technique. Compared to the other analogous counterparts, theproposed method shows to provide more accurate results in terms of time weighted norms, when applied to different practical examples. The results are further illustrated by a numerical example
We propose an efficient numerical algorithm for relative error model reduction based on balanced sto...
Balanced truncation is one of the most common model reduction schemes. In this note, we present a su...
Abstract—Error-bounds are developed for balanced truncation of linear time-varying systems, leading ...
A new mixed method for relative error model reduction of linear time invariant (LTI) systems is prop...
In this article, a new method for model reduction of linear dynamical systems is presented. The prop...
AbstractThe balanced stochastic realization is introduced as a balanced solution to the continuous t...
Balanced model reduction with a priori relative/multiplicative error bounds in L∞ norm is studied. I...
Two model-reduction methods for discrete systems related to balanced realizations are described. The...
We propose a general method based on the balanced stochastic truncation (BST) approach for the model...
Two model-reduction methods for discrete systems related to balanced realizations are described. The...
Two model-reduction methods for discrete systems related to balanced realizations are described. The...
Model reduction is a process of approximating higher order original models by comparatively lower or...
Abstract — A new mixed method for relative error model order reduction is proposed. In the proposed ...
We study a class of balanced truncation algorithms applicable to relative/multiplicative model reduc...
In this paper, the balanced truncation procedure is applied to time-varying linear systems, both in ...
We propose an efficient numerical algorithm for relative error model reduction based on balanced sto...
Balanced truncation is one of the most common model reduction schemes. In this note, we present a su...
Abstract—Error-bounds are developed for balanced truncation of linear time-varying systems, leading ...
A new mixed method for relative error model reduction of linear time invariant (LTI) systems is prop...
In this article, a new method for model reduction of linear dynamical systems is presented. The prop...
AbstractThe balanced stochastic realization is introduced as a balanced solution to the continuous t...
Balanced model reduction with a priori relative/multiplicative error bounds in L∞ norm is studied. I...
Two model-reduction methods for discrete systems related to balanced realizations are described. The...
We propose a general method based on the balanced stochastic truncation (BST) approach for the model...
Two model-reduction methods for discrete systems related to balanced realizations are described. The...
Two model-reduction methods for discrete systems related to balanced realizations are described. The...
Model reduction is a process of approximating higher order original models by comparatively lower or...
Abstract — A new mixed method for relative error model order reduction is proposed. In the proposed ...
We study a class of balanced truncation algorithms applicable to relative/multiplicative model reduc...
In this paper, the balanced truncation procedure is applied to time-varying linear systems, both in ...
We propose an efficient numerical algorithm for relative error model reduction based on balanced sto...
Balanced truncation is one of the most common model reduction schemes. In this note, we present a su...
Abstract—Error-bounds are developed for balanced truncation of linear time-varying systems, leading ...