We provide a unifying projection-based framework for structure-preserving interpolatory model reduction of parameterized linear dynamical systems, i.e., systems having a structured dependence on parameters that we wish to retain in the reduced-order model. The parameter dependence may be linear or nonlinear and is retained in the reduced-order model. Moreover, we are able to give conditions under which the gradient and Hessian of the system response with respect to the system parameters is matched in the reduced-order model. We provide a systematic approach built on established interpolatory $\mathcal{H}_2$ optimal model reduction methods that will produce parameterized reduced-order models having high fidelity throughout a parameter rang...
AbstractA model order reduction technique for systems depending on two parameters is developed. Give...
Abstract. In this paper, we investigate interpolatory projection framework for model reduction of de...
We provide first the functional analysis background required for reduced order modeling and present ...
We provide a unifying projection-based framework for structure-preserving interpolatory model reduct...
We provide a unifying projection-based framework for structure-preserving interpolatory model reduct...
Abstract. The last two decades have seen major developments in inter-polatory methods for model redu...
A rigorous method for interpolating a set of parameterized linear structural dynamics reduced-order ...
AbstractA model order reduction technique for systems depending on two parameters is developed. Give...
The modelling of physical processes gives rise to mathematical systems of increasing complexity. Goo...
Dynamical systems are mathematical models characterized by a set of differential or differ-ence equa...
This dissertation is devoted to the development and study of new techniques for model reduction of l...
This paper is concerned with the construction of reduced-order models for high-order linear systems ...
Abstract-First-order necessary conditions for quadratically optimal reduced-order modeling of linear...
Abstract — We present a parameterized model order reduction method based on singular values and matr...
In this paper, we describe some recent developments in the use of projection methods to produce redu...
AbstractA model order reduction technique for systems depending on two parameters is developed. Give...
Abstract. In this paper, we investigate interpolatory projection framework for model reduction of de...
We provide first the functional analysis background required for reduced order modeling and present ...
We provide a unifying projection-based framework for structure-preserving interpolatory model reduct...
We provide a unifying projection-based framework for structure-preserving interpolatory model reduct...
Abstract. The last two decades have seen major developments in inter-polatory methods for model redu...
A rigorous method for interpolating a set of parameterized linear structural dynamics reduced-order ...
AbstractA model order reduction technique for systems depending on two parameters is developed. Give...
The modelling of physical processes gives rise to mathematical systems of increasing complexity. Goo...
Dynamical systems are mathematical models characterized by a set of differential or differ-ence equa...
This dissertation is devoted to the development and study of new techniques for model reduction of l...
This paper is concerned with the construction of reduced-order models for high-order linear systems ...
Abstract-First-order necessary conditions for quadratically optimal reduced-order modeling of linear...
Abstract — We present a parameterized model order reduction method based on singular values and matr...
In this paper, we describe some recent developments in the use of projection methods to produce redu...
AbstractA model order reduction technique for systems depending on two parameters is developed. Give...
Abstract. In this paper, we investigate interpolatory projection framework for model reduction of de...
We provide first the functional analysis background required for reduced order modeling and present ...