4.5 Article Proceedings Paper

POD reduced-order modeling for evolution equations utilizing arbitrary finite element discretizations

期刊

ADVANCES IN COMPUTATIONAL MATHEMATICS
卷 44, 期 6, 页码 1941-1978

出版社

SPRINGER
DOI: 10.1007/s10444-018-9620-x

关键词

Model order reduction; Proper orthogonal decomposition; Adaptive finite element discretization; Partial differential equation; Evolution equations

资金

  1. Deutsche Forschungsgemeinschaft [SPP1962]

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The main focus of the present work is the inclusion of spatial adaptivity for the snapshot computation in the offline phase of model order reduction utilizing proper orthogonal decomposition (POD-MOR) for nonlinear parabolic evolution problems. We consider snapshots which live in different finite element spaces, which means in a fully discrete setting that the snapshots are vectors of different length. From a numerical point of view, this leads to the problem that the usual POD procedure which utilizes a singular value decomposition of the snapshot matrix, cannot be carried out. In order to overcome this problem, we here construct the POD model/basis using the eigensystem of the correlation matrix (snapshot Gramian), which is motivated from a continuous perspective and is set up explicitly, e.g., without the necessity of interpolating snapshots into a common finite element space. It is an advantage of this approach that the assembly of the matrix only requires the evaluation of inner products of snapshots in a common Hilbert space. This allows a great flexibility concerning the spatial discretization of the snapshots. The analysis for the error between the resulting POD solution and the true solution reveals that the accuracy of the reduced-order solution can be estimated by the spatial and temporal discretization error as well as the POD error. Finally, to illustrate the feasibility of our approach, we present a test case of the Cahn-Hilliard system utilizing h-adapted hierarchical meshes and two settings of a linear heat equation using nested and non-nested grids.

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