Model reduction for stochastic systems / Martin Redmann, Peter Benner

Anzeigen / Download523.28 KB

Discovery

870598503

URN

urn:nbn:de:gbv:3:2-64426

DOI

ISBN

ISSN

Beiträger

Erschienen

Magdeburg : Max Planck Institute for Dynamics of Complex Technical Systems, February 13, 2014

Umfang

1 Online-Ressource (34 Seiten = 0,51 MB)

Ausgabevermerk

Sprache

eng

Anmerkungen

Inhaltliche Zusammenfassung

Abstract: To solve a stochastic linear evolution equation numerically, finite dimensional approximations are commonly used. If one uses the well known Galerkin scheme one can end up with a sequence of ordinary stochastic linear equations of high order. To reduce the high dimension for practical computations we consider balanced truncation being a model order reduction technique known from deterministic control theory. So, we generalize balanced truncation for controlled linear systems with Levy noise, discuss properties of the reduced order model, provide an error bound and give some examples.

Schriftenreihe

Max Planck Institute Magdeburg Preprints ; 14-03 ppn:870173030

Gesamttitel

Band

Zeitschriftentitel

Bandtitel

Beschreibung

Schlagwörter

Zitierform

enthaltene Monographien

enthalten in mehrteiligem Werk

Vorgänger dieser Zeitschrift

Nachfolger dieser Zeitschrift