Department of Mathematics,
University of California San Diego
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Math 295 - Mathematics Colloquium
Max Gunzburger
Mathematics and School of Computational Science \\ Florida State University
Reduced-order modeling for complex systems
Abstract:
The computational approximation of solutions of complex systems such as the Navier-Stokes equations is often a formidable task. For example, in feedback control settings where one often needs solutions of the complex systems in real time, it would be impossible to use large-scale finite element or finite-volume or spectral codes. For this reason, there has been much interest in the development of low- dimensional models that can accurately be used to simulate and control complex systems. We review some of the existing reduced-order modeling approaches, including reduced-basis methods and especially methods based on proper orthogonal decompositions techniques. We also discuss a new approach based on centroidal Voronoi tessellations. We discuss the relative merits and deficiencies of the different approaches and also the inherent limitations of reduced-order modeling in general.
Host: Michael Holst
May 17, 2007
4:00 PM
AP&M 6402
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