Fundamental data structures for matrix-free finite elements on hybrid tetrahedral grids

Nils Kohl, Daniel Bauer, Fabian Boehm, Ulrich Ruede

INTERNATIONAL JOURNAL OF PARALLEL EMERGENT AND DISTRIBUTED SYSTEMS(2023)

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摘要
This paper presents efficient data structures for the implementation of matrix-free finite element methods on block-structured, hybrid tetrahedral grids. It provides a complete categorization of all geometric sub-objects that emerge from the regular refinement of the unstructured, tetrahedral coarse grid and describes efficient iteration patterns and analytical linearization functions for the mapping of coefficients to memory addresses. This foundation enables the implementation of fast, extreme-scalable, matrix-free, iterative solvers, and in particular geometric multigrid methods by design. Their application to the variable-coefficient Stokes system subject to an enriched Galerkin discretization and to the curl-curl problem discretized with Nedelec edge elements showcases the flexibility of the implementation. Finally, the solution of a curl-curl problem with 1.6 center dot 10(11) (more than one hundred billion) unknowns on more than 32,000 processes with a matrix-free full multigrid solver demonstrates its extreme-scalability.
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关键词
Matrix-free finite elements,hybrid tetrahedral grids,block-structured grids,parallel data structures
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