Abstract

Radial basis function (RBF) is gaining popularity in function interpolation as well as in solving partial differential equations thanks to its accuracy and simplicity. Besides, RBF methods have almost a spectral accuracy. Furthermore, the implementation of RBF-based methods is easy and does not depend on the location of the points and dimensionality of the problems. However, the stability and accuracy of RBF methods depend significantly on the shape parameter, which is primarily impacted by the basis function and the node distribution. At a small value of shape parameter, the RBF becomes more accurate, but unstable. Several approaches were followed in the open literature to overcome the instability issue. One of the approaches is optimizing the solver in order to improve the stability of ill-conditioned matrices. Another approach is based on searching for the optimal value of the shape parameter. Alternatively, modified bases are used to overcome instability. In the open literature, radial basis function using QR factorization (RBF-QR), stabilized expansion of Gaussian radial basis function (RBF-GA), rational radial basis function (RBF-RA), and Hermite-based RBFs are among the approaches used to change the basis. In this paper, the Taylor series is used to expand the RBF with respect to the shape parameter. Our analyses showed that the Taylor series alone is not sufficient to resolve the stability issue, especially away from the reference point of the expansion. Consequently, a new approach is proposed based on the partition of unity (PU) of RBF with respect to the shape parameter. The proposed approach is benchmarked. The method ensures that RBF has a weak dependency on the shape parameter, thereby providing a consistent accuracy for interpolation and derivative approximation. Several benchmarks are performed to assess the accuracy of the proposed approach. The novelty of the present approach is in providing a means to achieve a reasonable accuracy for RBF interpolation without the need to pinpoint a specific value for the shape parameter, which is the case for the original RBF interpolation.

Highlights

  • Over the past few decades, radial basis function (RBF) has attracted researchers’attention as a method for interpolation, differentiation, and solving partial differential equations (PDEs)

  • The novelty of the present approach is in providing a means to achieve a reasonable accuracy for RBF interpolation without the need to pinpoint a specific value for the shape parameter, which is the case for the original RBF interpolation

  • It can be concluded that the present basis (RBF-TPU), which is derived from the partition of unity with respect to shape parameter, yields accurate results that are independent of the shape parameter, Ne, and m

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Summary

Introduction

Over the past few decades, radial basis function (RBF) has attracted researchers’. attention as a method for interpolation, differentiation, and solving partial differential equations (PDEs). Proposed the RBF-QR method to eliminate ill-conditioning of the interpolation matrix for near-flat basis function. They applied the method for a particular case of points on a sphere surface. Based on the use of a rational approximation of a vector-valued function, the RBF-RA algorithm is adapted for a stable computation of the RBF interpolant when the shape parameter approaches zero [48,49]. Based on the novel approach, the Taylor series expansion is used to expand the RBF basis with respect to shape parameter around a predefined reference value to find a modified stable basis.

Regular RBF Method
Numerical Results
General Comparison
Effect of Varying m
Effect of the Range of ε k
Testing 2D Interpolation
Conclusions
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