We propose a model order reduction approach for non-intrusive surrogate modeling of parametric dynamical systems. The reduced model over the whole parameter space is built by combining surrogates in frequency only, built at few selected values of the parameters. This, in particular, requires matching the respective poles by solving an optimization problem. If the frequency surrogates are constructed by a suitable rational interpolation strategy, frequency and parameters can both be sampled in an adaptive fashion. This, in general, yields frequency surrogates with different numbers of poles, a situation addressed by our proposed algorithm. Moreover, we explain how our method can be applied even in high-dimensional settings, by employing loca...
We present a nonlinear interpolation technique for parametric fields that exploits optimal transport...
Numerical simulation of large-scale dynamical systems plays a fundamental role in studying a wide ra...
We provide a unifying projection-based framework for structure-preserving interpolatory model reduct...
We propose a model order reduction approach for non-intrusive surrogate modeling of parametric dynam...
We propose a model order reduction approach for non-intrusive surrogate modeling of parametric dynam...
Code used to obtain numerical results for double-greedy parametric Model Reduction based on Minimal ...
In the field of model order reduction for frequency response problems, the minimal rational interpol...
In the field of model order reduction for frequency response problems, the minimal rational interpol...
We present a technique for Model Order Reduction (MOR) of frequency-domain problems relying on ratio...
We present a technique for Model Order Reduction (MOR) of frequency-domain problems relying on ratio...
We present a technique for the approximation of a class of Hilbert space--valued maps which arise wi...
Design optimization problems are often formulated as an optimization problem whose objective is a fu...
We introduce several spatially adaptive model order reduction approaches tailored to non-coercive el...
While reduced-order models (ROMs) are popular for approximately solving large systems of differentia...
Given optimal interpolation points σ 1,…,σ r , the H2-optimal reduced order model of order r can be ...
We present a nonlinear interpolation technique for parametric fields that exploits optimal transport...
Numerical simulation of large-scale dynamical systems plays a fundamental role in studying a wide ra...
We provide a unifying projection-based framework for structure-preserving interpolatory model reduct...
We propose a model order reduction approach for non-intrusive surrogate modeling of parametric dynam...
We propose a model order reduction approach for non-intrusive surrogate modeling of parametric dynam...
Code used to obtain numerical results for double-greedy parametric Model Reduction based on Minimal ...
In the field of model order reduction for frequency response problems, the minimal rational interpol...
In the field of model order reduction for frequency response problems, the minimal rational interpol...
We present a technique for Model Order Reduction (MOR) of frequency-domain problems relying on ratio...
We present a technique for Model Order Reduction (MOR) of frequency-domain problems relying on ratio...
We present a technique for the approximation of a class of Hilbert space--valued maps which arise wi...
Design optimization problems are often formulated as an optimization problem whose objective is a fu...
We introduce several spatially adaptive model order reduction approaches tailored to non-coercive el...
While reduced-order models (ROMs) are popular for approximately solving large systems of differentia...
Given optimal interpolation points σ 1,…,σ r , the H2-optimal reduced order model of order r can be ...
We present a nonlinear interpolation technique for parametric fields that exploits optimal transport...
Numerical simulation of large-scale dynamical systems plays a fundamental role in studying a wide ra...
We provide a unifying projection-based framework for structure-preserving interpolatory model reduct...