The construction of reduced-order models for parametrized partial differential systems using proper orthogonal decomposition (POD) is based on the information of the so-called snapshots. These provide the spatial distribution of the nonlinear system at discrete parameter and/or time instances. In this work a strategy is used, where the POD reduced-order model is improved by choosing additional snapshot locations in an optimal way; see Kunisch and Volkwein (ESAIM: M2AN, 44:509-529, 2010). These optimal snapshot locations influences the POD basis functions and therefore the POD reduced-order model. This strategy is used to build up a POD basis on a parameter set in an adaptive way. The approach is illustrated by the construction of the POD re...
We present a variation on an existing model reduction algorithm for linear systems based on balanced...
In this work the Reduced-Order Subscales for Proper Orthogonal Decomposition models are presented. T...
An adaptive low dimensional model is considered to simulate time dependent dynamics in nonlinear dis...
The construction of reduced order models for dynamical systems using proper orthogonal decomposition...
We provide an introduction to proper orthogonal decomposition (POD) model order reduction with focus...
In this paper we study the approximation of an optimal control problem for linear parabolic PDEs wit...
We propose a nonlinear reduced basis method for the efficient approximation of parametrized partial ...
Many natural phenomena can be modeled as ordinary or partial differential equations. A way to find s...
In this paper we study the approximation of a distributed optimal control problem for linear parabol...
It is well-known that the performance of POD and POD-DEIM methods depends on the selection of the sn...
This paper discusses the use of partial state observations in the construction of reduced order mode...
In this paper we study the approximation of an optimal control problem for linear para- bolic PDEs w...
Large-scale dynamical systems are an intrinsic part of many areas of science and engineering. Frequ...
In classical adjoint based optimal control of unsteady dynamical systems, requirements of CPU ti...
An approach to develop Proper Orthogonal Decomposition (POD) based reduced order models for systems ...
We present a variation on an existing model reduction algorithm for linear systems based on balanced...
In this work the Reduced-Order Subscales for Proper Orthogonal Decomposition models are presented. T...
An adaptive low dimensional model is considered to simulate time dependent dynamics in nonlinear dis...
The construction of reduced order models for dynamical systems using proper orthogonal decomposition...
We provide an introduction to proper orthogonal decomposition (POD) model order reduction with focus...
In this paper we study the approximation of an optimal control problem for linear parabolic PDEs wit...
We propose a nonlinear reduced basis method for the efficient approximation of parametrized partial ...
Many natural phenomena can be modeled as ordinary or partial differential equations. A way to find s...
In this paper we study the approximation of a distributed optimal control problem for linear parabol...
It is well-known that the performance of POD and POD-DEIM methods depends on the selection of the sn...
This paper discusses the use of partial state observations in the construction of reduced order mode...
In this paper we study the approximation of an optimal control problem for linear para- bolic PDEs w...
Large-scale dynamical systems are an intrinsic part of many areas of science and engineering. Frequ...
In classical adjoint based optimal control of unsteady dynamical systems, requirements of CPU ti...
An approach to develop Proper Orthogonal Decomposition (POD) based reduced order models for systems ...
We present a variation on an existing model reduction algorithm for linear systems based on balanced...
In this work the Reduced-Order Subscales for Proper Orthogonal Decomposition models are presented. T...
An adaptive low dimensional model is considered to simulate time dependent dynamics in nonlinear dis...