An adaptive superconvergent mixed finite element method based on local residual minimization

Muga, Ignacio; Rojas, Sergio; Vega, Patrick

Keywords: adaptive mesh refinement, a posteriori error analysis, superconvergence, residual minimization, postprocessing

Abstract

We introduce an adaptive superconvergent finite element method for a class of mixed formulations to solve partial differential equations involving a diffusion term. It combines a superconvergent postprocessing technique for the primal variable with an adaptive finite element method via residual minimization. Such a residual minimization procedure is performed on a local postprocessing scheme, commonly used in the context of mixed finite element methods. Given the local nature of that approach, the underlying saddle point problems associated with residual minimizations can be solved with minimal computational effort. We propose and study a posteriori error estimators, including the built-in residual representative associated with residual minimization schemes; and an improved estimator which adds, on the one hand, a residual term quantifying the mismatch between discrete fluxes and, on the other hand, the interelement jumps of the postprocessed solution. We present numerical experiments in two dimensions using Brezzi–Douglas–Marini elements as input for our methodology. The experiments perfectly fit our key theoretical findings and suggest that our estimates are sharp.

Más información

Título de la Revista: SIAM JOURNAL ON NUMERICAL ANALYSIS
Volumen: 61
Número: 5
Editorial: SIAM PUBLICATIONS
Fecha de publicación: 2023
Página de inicio: 2084
Página final: 2105
URL: https://epubs.siam.org/doi/abs/10.1137/22M1526307