Generalized moving least squares vs. radial basis function finite difference methods for approximating surface derivatives
Andrew M. Jones, Peter A. Bosler, Paul A. Kuberry, Grady B. Wright a

TL;DR
This paper compares generalized moving least squares and radial basis function finite difference methods for surface derivative approximation, introduces a tangent plane approach, and proposes a new RBF-FD method for unknown tangent spaces.
Contribution
It provides a direct comparison of GMLS and RBF-FD methods for surface differential operators and introduces a new RBF-FD approach for estimating tangent spaces from point clouds.
Findings
Both methods achieve high accuracy with refinement.
The tangent plane method simplifies RBF-FD implementation.
The new RBF-FD method effectively estimates tangent spaces.
Abstract
Approximating differential operators defined on two-dimensional surfaces is an important problem that arises in many areas of science and engineering. Over the past ten years, localized meshfree methods based on generalized moving least squares (GMLS) and radial basis function finite differences (RBF-FD) have been shown to be effective for this task as they can give high orders of accuracy at low computational cost, and they can be applied to surfaces defined only by point clouds. However, there have yet to be any studies that perform a direct comparison of these methods for approximating surface differential operators (SDOs). The first purpose of this work is to fill that gap. For this comparison, we focus on an RBF-FD method based on polyharmonic spline kernels and polynomials (PHS+Poly) since they are most closely related to the GMLS method. Additionally, we use a relatively new…
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Taxonomy
TopicsNumerical methods in engineering · Advanced Numerical Analysis Techniques · Advanced Numerical Methods in Computational Mathematics
