A stabilized P1 domain decomposition finite element method for time harmonic Maxwell’s equations
Journal article, 2023

One way of improving the behavior of finite element schemes for classical, time-dependent Maxwell’s equations is to render their hyperbolic character to elliptic form. This paper is devoted to the study of a stabilized linear, domain decomposition, finite element method for the time harmonic Maxwell’s equations, in a dual form, obtained through the Laplace transformation in time. The model problem is for the particular case of the dielectric permittivity function which is assumed to be constant in a boundary neighborhood. The discrete problem is coercive in a symmetrized norm, equivalent to the discrete norm of the model problem. This yields discrete stability, which together with continuity guarantees the well-posedness of the discrete problem, cf Arnold et al. (2002) [3], Di Pietro and Ern (2012) [45]. The convergence is addressed both in a priori and a posteriori settings. In the a priori error estimates we confirm the theoretical convergence of the scheme in a L2-based, gradient dependent, triple norm. The order of convergence is O(h) in weighted Sobolev space H2w(Ω), and hence optimal. Here, the weight w := w(ε, s) where ε is the dielectric permittivity function and s is the Laplace transformation variable. We also derive, similar, optimal a posteriori error estimates controlled by a certain, weighted, norm of the residuals of the computed solution over the domain and at the boundary (involving the relevant jump terns) and hence independent of the unknown exact solution. The a posteriori approach is used, e.g. in constructing adaptive algorithms for the computational purposes, which is the subject of a forthcoming paper. Finally, through implementing several numerical examples, we validate the robustness of the proposed scheme.

A posteriori estimate

Time harmonic Maxwell’s equations

A priori estimate

Stability

Convergence

P1 finite elements

Author

Mohammad Asadzadeh

Chalmers, Mathematical Sciences

Larisa Beilina

Chalmers, Mathematical Sciences, Applied Mathematics and Statistics

Mathematics and Computers in Simulation

0378-4754 (ISSN)

Vol. 204 556-574

Subject Categories

Economics

Business Administration

Computer Science

DOI

10.1016/j.matcom.2022.08.013

More information

Latest update

10/5/2022