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Article Dans Une Revue SIAM Journal on Numerical Analysis Année : 2023

A space-time multiscale mortar mixed finite element method for parabolic equations

Résumé

We develop a space-time mortar mixed finite element method for parabolic problems. The domain is decomposed into a union of subdomains discretized with non-matching spatial grids and asynchronous time steps. The method is based on a space-time variational formulation that couples mixed finite elements in space with discontinuous Galerkin in time. Continuity of flux (mass conservation) across space-time interfaces is imposed via a coarse-scale space-time mortar variable that approximates the primary variable. Uniqueness, existence, and stability, as well as a priori error estimates for the spatial and temporal errors are established. A space-time non-overlapping domain decomposition method is developed that reduces the global problem to a space-time coarse-scale mortar interface problem. Each interface iteration involves solving in parallel space-time subdomain problems. The spectral properties of the interface operator and the convergence of the interface iteration are analyzed. Numerical experiments are provided that illustrate the theoretical results and the flexibility of the method for modeling problems with features that are localized in space and time.
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hal-03355088 , version 1 (27-09-2021)

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Manu Jayadharan, Michel Kern, Martin Vohralík, Ivan Yotov. A space-time multiscale mortar mixed finite element method for parabolic equations. SIAM Journal on Numerical Analysis, 2023, 61 (2), pp.675 - 706. ⟨10.1137/21M1447945⟩. ⟨hal-03355088⟩
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