Abstract
We provide first the functional analysis background required for reduced order modeling and present the underlying concepts of reduced basis model reduction. The projection-based model reduction framework under affinity assumptions, offline-online decomposition and error estimation is introduced. Several tools for geometry parametrizations, such as free form deformation, radial basis function interpolation and inverse distance weighting interpolation are explained. The empirical interpolation method is introduced as a general tool to deal with non-affine parameter dependency and non-linear problems. The discrete and matrix versions of the empirical interpolation are considered as well. Active subspaces properties are discussed to reduce high-dimensional parameter spaces as a pre-processing step. Several examples illustrate the methodologies.
| Lingua originale | Inglese |
|---|---|
| Titolo della pubblicazione ospite | Model Order Reduction Volume 2: Snapshot-Based Methods and Algorithms |
| Editore | de Gruyter |
| Pagine | 1-47 |
| Numero di pagine | 47 |
| ISBN (stampa) | 9783110671407 |
| DOI | |
| Stato di pubblicazione | Pubblicato - 2020 |
All Science Journal Classification (ASJC) codes
- Matematica generale
- Fisica e Astronomia Generali
- Ingegneria Generale
Keywords
- model order reduction
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