This paper considers the development of tailored quasi-Monte Carlo (QMC) cubatures for non-conforming discontinuous Galerkin (DG) approximations of elliptic partial differential equations (PDEs) with random coefficients. The authors investigate both the affine and uniform and the lognormal models for the input random field, and focus on approximating the expected value of the PDE response subject to input uncertainty.
The key highlights and insights are:
The authors prove that the resulting QMC convergence rate for DG approximations behaves in the same way as if continuous finite elements were chosen. This is an important result, as DG methods are non-conforming and the existing QMC theory cannot be directly applied.
The parametric regularity bounds for DG solutions, which are developed in this work, are also useful for other methods such as sparse grids.
Numerical results are provided that confirm the theoretical findings.
The authors first introduce the necessary notations and preliminaries, including the two models for the random diffusion coefficient - the affine and uniform model, and the lognormal model. They then provide an overview of quasi-Monte Carlo cubature and the analysis for conforming finite element methods.
The core of the paper focuses on the DG framework. The authors derive the DG variational formulation and discuss the necessary stability estimates. They then prove the key parametric regularity result for the DG solution, showing that the same type of bounds as for conforming finite elements can be obtained. This allows them to develop the tailored QMC cubature theory for DG approximations.
Finally, numerical experiments are presented that validate the theoretical findings and demonstrate the effectiveness of the proposed QMC approach for DG methods.
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arxiv.org
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