NANAMar 27, 2018

Numerical Approximation of Fractional Powers of Elliptic Operators

arXiv:1803.10055170 citationsh-index: 43
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Provides efficient numerical methods for solving fractional PDEs, which are important in modeling anomalous diffusion and other nonlocal phenomena.

This paper develops two time-stepping algorithms for solving fractional power elliptic operator equations using diagonal Padé approximation, achieving error estimates in terms of time steps with numerical validation in 1D and 2D.

In this paper, we develop and study algorithms for approximately solving the linear algebraic systems: $\mathcal{A}_h^αu_h = f_h$, $ 0< α<1$, for $u_h, f_h \in V_h$ with $V_h$ a finite element approximation space. Such problems arise in finite element or finite difference approximations of the problem $ \mathcal{A}^αu=f$ with $\mathcal{A}$, for example, coming from a second order elliptic operator with homogeneous boundary conditions. The algorithms are motivated by the recent method of Vabishchevich, 2015, that relates the algebraic problem to a solution of a time-dependent initial value problem on the interval $[0,1]$. Here we develop and study two time stepping schemes based on diagonal Padé approximation to $(1+x)^{-α}$. The first one uses geometrically graded meshes in order to compensate for the singular behavior of the solution for $t$ close to $0$. The second algorithm uses uniform time stepping but requires smoothness of the data $f_h$ in discrete norms. For both methods, we estimate the error in terms of the number of time steps, with the regularity of $f_h$ playing a major role for the second method. Finally, we present numerical experiments for $\mathcal{A}_h$ coming from the finite element approximations of second order elliptic boundary value problems in one and two spatial dimensions.

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