4.5 Article

AN HDG METHOD FOR LINEAR ELASTICITY WITH STRONG SYMMETRIC STRESSES

Journal

MATHEMATICS OF COMPUTATION
Volume 87, Issue 309, Pages 69-93

Publisher

AMER MATHEMATICAL SOC
DOI: 10.1090/mcom/3249

Keywords

Hybridizable; discontinuous Galerkin; superconvergence; linear elasticity

Funding

  1. Research Grants Council of the Hong Kong Special Administrative Region, China [CityU 11302014]

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This paper presents a new hybridizable discontinuous Galerkin (HDG) method for linear elasticity on general polyhedral meshes, based on a strong symmetric stress formulation. The key feature of this new HDG method is the use of a special form of the numerical trace of the stresses, which makes the error analysis different from the projection-based error analyzes used for most other HDG methods. For arbitrary polyhedral elements, we approximate the stress by using polynomials of degree k >= 1 and the displacement by using polynomials of degree k+1. In contrast, to approximate the numerical trace of the displacement on the faces, we use polynomials of degree k only. This allows for a very efficient implementation of the method, since the numerical trace of the displacement is the only globally-coupled unknown, but does not degrade the convergence properties of the method. Indeed, we prove optimal orders of convergence for both the stresses and displacements on the elements. In the almost incompressible case, we show the error of the stress is also optimal in the standard L-2-norm. These optimal results are possible thanks to a special superconvergence property of the numerical traces of the displacement, and thanks to the use of the crucial elementwise Korn's inequality. Several numerical results are presented to support our theoretical findings in the end.

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