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A radial basis function method for the shallow water equations on a sphere
Author(s) -
Natasha Flyer,
Grady B. Wright
Publication year - 2009
Publication title -
proceedings of the royal society a mathematical physical and engineering sciences
Language(s) - English
Resource type - Journals
eISSN - 1471-2946
pISSN - 1364-5021
DOI - 10.1098/rspa.2009.0033
Subject(s) - discretization , mathematics , radial basis function , fourier series , basis function , mathematical analysis , nonlinear system , shallow water equations , spectral method , context (archaeology) , flow (mathematics) , basis (linear algebra) , spherical harmonics , function (biology) , harmonics , geometry , computer science , physics , geology , paleontology , quantum mechanics , voltage , machine learning , evolutionary biology , artificial neural network , biology
The paper derives the first known numerical shallow water model on the sphere using radial basis function (RBF) spatial discretization, a novel numerical methodology that does not require any grid or mesh. In order to perform a study with regard to its spatial and temporal errors, two nonlinear test cases with known analytical solutions are considered. The first is a global steady-state flow with a compactly supported velocity field, while the second is an unsteady flow where features in the flow must be kept intact without dispersion. This behaviour is achieved by introducing forcing terms in the shallow water equations. Error and time stability studies are performed, both as the number of nodes are uniformly increased and the shape parameter of the RBF is varied, especially in the flat basis function limit. Results show that the RBF method is spectral, giving exceptionally high accuracy for low number of basis functions while being able to take unusually large time steps. In order to put it in the context of other commonly used global spectral methods on a sphere, comparisons are given with respect to spherical harmonics, double Fourier series and spectral element methods.

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