An Optimal Ansatz Space for Moving Least Squares Approximation on Spheres
Abstract
We revisit the moving least squares (MLS) approximation scheme on the sphere Sd-1 ⊂ Rd, where d>1. It is well known that using the spherical harmonics up to degree L ∈ N as ansatz space yields for functions in CL+1( Sd-1) the approximation order O ( hL+1 ), where h denotes the fill distance of the sampling nodes. In this paper we show that the dimension of the ansatz space can be almost halved, by including only spherical harmonics of even or odd degree up to L, while preserving the same order of approximation. Numerical experiments indicate that using the reduced ansatz space is essential to ensure the numerical stability of the MLS approximation scheme as h 0. Finally, we compare our approach with an MLS approximation scheme that uses polynomials on the tangent space as ansatz space.
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