Some applications of compressed sensing in computational mechanics: model order reduction, manifold learning, data-driven applications and nonlinear dimensionality reduction
CUETO, Elías G.
Universidad de Zaragoza = University of Zaragoza [Saragossa University] = Université de Saragosse
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Universidad de Zaragoza = University of Zaragoza [Saragossa University] = Université de Saragosse
CUETO, Elías G.
Universidad de Zaragoza = University of Zaragoza [Saragossa University] = Université de Saragosse
< Réduire
Universidad de Zaragoza = University of Zaragoza [Saragossa University] = Université de Saragosse
Langue
en
Article de revue
Ce document a été publié dans
Computational Mechanics. 2019, vol. 64, n° 5, p. 1259-1271
Springer Verlag
Résumé en anglais
Compressed sensing is a signal compression technique with very remarkable properties. Among them, maybe the most salient one is its ability of overcoming the Shannon–Nyquist sampling theorem. In other words, it is able to ...Lire la suite >
Compressed sensing is a signal compression technique with very remarkable properties. Among them, maybe the most salient one is its ability of overcoming the Shannon–Nyquist sampling theorem. In other words, it is able to reconstruct a signal at less than 2Q samplings per second, where Q stands for the highest frequency content of the signal. This property has, however, important applications in the field of computational mechanics, as we analyze in this paper. We consider a wide variety of applications, such as model order reduction, manifold learning, data-driven applications and nonlinear dimensionality reduction. Examples are provided for all of them that show the potentialities of compressed sensing in terms of CPU savings in the field of computational mechanics.< Réduire
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