Reduced basis approximation of parametric eigenvalue problems in presence of clusters and intersections

02/02/2023
by   Daniele Boffi, et al.
0

In this paper we discuss reduced order models for the approximation of parametric eigenvalue problems. In particular, we are interested in the presence of intersections or clusters of eigenvalues. The singularities originating by these phenomena make it hard a straightforward generalization of well known strategies normally used for standards PDEs. We investigate how the known results extend (or not) to higher order frequencies.

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