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Article Dans Une Revue ESAIM: Mathematical Modelling and Numerical Analysis Année : 2023

Homological- and analytical-preserving serendipity framework for polytopal complexes, with application to the DDR method

Jérôme Droniou

Résumé

In this work we investigate from a broad perspective the reduction of degrees of freedom through serendipity techniques for polytopal methods compatible with Hilbert complexes. We first establish an abstract framework that, given two complexes connected by graded maps, identifies a set of properties enabling the transfer of the homological and analytical properties from one complex to the other. This abstract framework is designed having in mind discrete complexes, with one of them being a reduced version of the other, such as occurring when applying serendipity techniques numerical methods. We then use this framework as an overarching blueprint to design a serendipity DDR complex. Thanks to the combined use of higher-order reconstructions and serendipity, this complex compares favorably in terms of DOF count to all the other polytopal methods previously introduced and also to finite elements on certain element geometries. The gain resulting from such a reduction in the number of DOFs is numerically evaluated on a model problem inspired by magnetostatics.
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Dates et versions

hal-03598859 , version 1 (06-03-2022)

Identifiants

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Daniele Antonio Di Pietro, Jérôme Droniou. Homological- and analytical-preserving serendipity framework for polytopal complexes, with application to the DDR method. ESAIM: Mathematical Modelling and Numerical Analysis, 2023, 57 (1), pp.191-225. ⟨10.1051/m2an/2022067⟩. ⟨hal-03598859⟩
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