A Semi-Lagrangian Spectral Method for the Vlasov–Poisson System Based on Fourier, Legendre and Hermite Polynomials

Lorella Fatone, Daniele Funaro, Gianmarco Manzini

Communications on Applied Mathematics and Computation ›› 2019, Vol. 1 ›› Issue (3) : 333-360.

Communications on Applied Mathematics and Computation ›› 2019, Vol. 1 ›› Issue (3) : 333-360. DOI: 10.1007/s42967-019-00027-8
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A Semi-Lagrangian Spectral Method for the Vlasov–Poisson System Based on Fourier, Legendre and Hermite Polynomials

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Abstract

In this work, we apply a semi-Lagrangian spectral method for the Vlasov–Poisson system, previously designed for periodic Fourier discretizations, by implementing Legendre polynomials and Hermite functions in the approximation of the distribution function with respect to the velocity variable. We discuss second-order accurate-in-time schemes, obtained by coupling spectral techniques in the space–velocity domain with a BDF time-stepping scheme. The resulting method possesses good conservation properties, which have been assessed by a series of numerical tests conducted on some standard benchmark problems including the two-stream instability and the Landau damping test cases. In the Hermite case, we also investigate the numerical behavior in dependence of a scaling parameter in the Gaussian weight. Confirming previous results from the literature, our experiments for different representative values of this parameter, indicate that a proper choice may significantly impact on accuracy, thus suggesting that suitable strategies should be developed to automatically update the parameter during the time-advancing procedure.

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Lorella Fatone, Daniele Funaro, Gianmarco Manzini. A Semi-Lagrangian Spectral Method for the Vlasov–Poisson System Based on Fourier, Legendre and Hermite Polynomials. Communications on Applied Mathematics and Computation, 2019, 1(3): 333‒360 https://doi.org/10.1007/s42967-019-00027-8

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