A sparse spectral method for fractional differential equations in one-spatial dimension
Abstract
We develop a sparse spectral method for a class of fractional differential equations, posed on , in one dimension. These equations can include sqrt-Laplacian, Hilbert, derivative and identity terms. The numerical method utilizes a basis consisting of weighted Chebyshev polynomials of the second kind in conjunction with their Hilbert transforms. The former functions are supported on whereas the latter have global support. The global approximation space can contain different affine transformations of the basis, mapping to other intervals. Remarkably, not only are the induced linear systems sparse, but the operator decouples across the different affine transformations. Hence, the solve reduces to solving independent sparse linear systems of size , with nonzero entries, where is the number of different intervals and is the highest polynomial degree contained in the sum space. This results in an complexity solve. Applications to fractional heat and wave equations are considered.
Cite
@article{arxiv.2210.08247,
title = {A sparse spectral method for fractional differential equations in one-spatial dimension},
author = {Ioannis P. A. Papadopoulos and Sheehan Olver},
journal= {arXiv preprint arXiv:2210.08247},
year = {2024}
}