4.6 Article

SEMI-LAGRANGIAN METHODS FOR PARABOLIC PROBLEMS IN DIVERGENCE FORM

Journal

SIAM JOURNAL ON SCIENTIFIC COMPUTING
Volume 36, Issue 5, Pages A2458-A2477

Publisher

SIAM PUBLICATIONS
DOI: 10.1137/140969713

Keywords

semi-Lagrangian methods; diffusion equations; divergence form

Funding

  1. INDAM-GNCS project Metodologie teoriche ed applicazioni avanzate nei metodi Semi-Lagrangiani
  2. INDAM-GNCS project Metodi ad alta risoluzione per problemi evolutivi fortemente nonlineari
  3. Politecnico di Milano

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Semi-Lagrangian methods have traditionally been developed in the framework of hyperbolic equations, but several extensions of the semi-Lagrangian approach to diffusion and advection-diffusion problems have been proposed recently. These extensions are mostly based on probabilistic arguments and share the common feature of treating second-order operators in trace form, which makes them unsuitable for mass conservative models like the classical formulations of turbulent diffusion employed in computational fluid dynamics. We propose here some basic ideas for treating second-order operators in divergence form. A general framework for constructing consistent schemes in one space dimension is presented, and a specific case of nonconservative discretization is discussed in detail and analyzed. Finally, an extension to (possibly nonlinear) problems in an arbitrary number of dimensions is proposed. Although the resulting discretization approach is only of first order in time, numerical results in a number of test cases highlight the advantages of these methods for applications to computational fluid dynamics and their superiority over to more standard low-order time discretization approaches for both the advection dominated and stiff diffusion regimes.

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