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A Mixed Discontinuous Galerkin Method for Linear Elasticity with Strongly Imposed Symmetry (1902.08717v1)

Published 23 Feb 2019 in math.NA

Abstract: In this paper, we study a mixed discontinuous Galerkin (MDG) method to solve linear elasticity problem with arbitrary order discontinuous finite element spaces in $d$-dimension ($d=2,3$). This method uses polynomials of degree $k+1$ for the stress and of degree $k$ for the displacement ($k\geq 0$). The mixed DG scheme is proved to be well-posed under proper norms. Specifically, we prove that, for any $k \geq 0$, the $H({\rm div})$-like error estimate for the stress and $L2$ error estimate for the displacement are optimal. We further establish the optimal $L2$ error estimate for the stress provided that the $\mathcal{P}{k+2}-\mathcal{P}{k+1}{-1}$ Stokes pair is stable and $k \geq d$. We also provide numerical results of MDG showing that the orders of convergence are actually sharp.

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