Model order reduction (MOR) methods that are designed to preserve structural features of a given full order model (FOM) often suffer from a lower accuracy when compared to their non-structure-preserving counterparts. In this paper, we present a framework for structure-preserving MOR, which allows to compute structured reduced order models (ROMs) with a much higher accuracy. The framework is based on parameter optimization, i.e., the elements of the system matrices of the ROM are iteratively varied to minimize an objective functional that measures the difference between the FOM and the ROM. The structural constraints can be encoded in the parametrization of the ROM. The method only depends on frequency response data and can thus be applied t...
The latest advances in the field of design and optimization require new approaches to switch from co...
The goal of Model Order Reduction (MOR) is to catch an accurate model of order lower than that of t...
In this paper, we develop a structure-preserving formulation of the data-driven vector fitting algor...
Suppressing vibrations in mechanical systems, usually described by second-order dynamical models, is...
In many engineering problems, the behavior of dynamical systems depends on physical parameters. In d...
This Chapter offers an introduction to Model Order Reduction (MOR). It gives an overview on the meth...
We develop optimization-based structure-preserving model order reduction (MOR) methods for port-Hami...
This chapter offers an introduction to Model Order Reduction (MOR). It gives an overview on the meth...
In many engineering problems, the behavior of dynamical systems depends on physical parameters. In d...
This edited monograph collects research contributions and addresses the advancement of efficient num...
Full-scale complex dynamic models are not effective for parametric studies due to the inherent const...
This is the first chapter of a three-volume series dedicated to the theory and ap plication of Mode...
This paper studies the structure preserving (second-order to second-order) model order reduction of ...
We present a novel model-order reduction (MOR) method for linear time-invariant systems that preserv...
Considerable progress in computing technology in the past decades did not alleviate difficulty inher...
The latest advances in the field of design and optimization require new approaches to switch from co...
The goal of Model Order Reduction (MOR) is to catch an accurate model of order lower than that of t...
In this paper, we develop a structure-preserving formulation of the data-driven vector fitting algor...
Suppressing vibrations in mechanical systems, usually described by second-order dynamical models, is...
In many engineering problems, the behavior of dynamical systems depends on physical parameters. In d...
This Chapter offers an introduction to Model Order Reduction (MOR). It gives an overview on the meth...
We develop optimization-based structure-preserving model order reduction (MOR) methods for port-Hami...
This chapter offers an introduction to Model Order Reduction (MOR). It gives an overview on the meth...
In many engineering problems, the behavior of dynamical systems depends on physical parameters. In d...
This edited monograph collects research contributions and addresses the advancement of efficient num...
Full-scale complex dynamic models are not effective for parametric studies due to the inherent const...
This is the first chapter of a three-volume series dedicated to the theory and ap plication of Mode...
This paper studies the structure preserving (second-order to second-order) model order reduction of ...
We present a novel model-order reduction (MOR) method for linear time-invariant systems that preserv...
Considerable progress in computing technology in the past decades did not alleviate difficulty inher...
The latest advances in the field of design and optimization require new approaches to switch from co...
The goal of Model Order Reduction (MOR) is to catch an accurate model of order lower than that of t...
In this paper, we develop a structure-preserving formulation of the data-driven vector fitting algor...