Guaranteed and robust L2-norm a posteriorierror estimates for 1D linear advection problems

Autor: Ern, Alexndre, Vohralík, Martin, Zakerzadeh, Mohammad, Ern, Alexndre, Vohralík, Martin, Zakerzadeh, Mohammad
Zdroj: ESAIM: Mathematical Modelling and Numerical Analysis; January 2021, Vol. 55 Issue: 1 pS447-S474, 28p
Abstrakt: We propose a reconstruction-based a posteriorierror estimate for linear advection problems in one space dimension. In our framework, a stable variational ultra-weak formulation is adopted, and the equivalence of the L2-norm of the error with the dual graph norm of the residual is established. This dual norm is showed to be localizable over vertex-based patch subdomains of the computational domain under the condition of the orthogonality of the residual to the piecewise affine hat functions. We show that this condition is valid for some well-known numerical methods including continuous/discontinuous Petrov–Galerkin and discontinuous Galerkin methods. Consequently, a well-posed local problem on each patch is identified, which leads to a global conforming reconstruction of the discrete solution. We prove that this reconstruction provides a guaranteed upper bound on the L2error. Moreover, up to a generic constant, it also gives local lower bounds on the L2error, where the constant only depends on the mesh shape-regularity. This, in particular, leads to robustness of our estimates with respect to the polynomial degree. All the above properties are verified in a series of numerical experiments, additionally leading to asymptotic exactness. Motivated by these results, we finally propose a heuristic extension of our methodology to any space dimension, achieved by solving local least-squares problems on vertex-based patches. Though not anymore guaranteed, the resulting error indicator is still numerically robust with respect to both advection velocity and polynomial degree in our collection of two-dimensional test cases including discontinuous solutions aligned and not aligned with the computational mesh.
Databáze: Supplemental Index