论文标题

通过受约束的模拟奇比什夫最小二乘操作员的多项式近似

Polynomial approximation of derivatives by the constrained mock-Chebyshev least squares operator

论文作者

Dell'Accio, Francesco, Nudo, Federico

论文摘要

受约束的模拟chebyshev最小二乘操作员是基于点的稳态网格的线性近似运算符。与其他多项式或有理近似方法一样,最近引入了它,以击败当在大量均等点上使用多项式插值时发生的runge现象。这个想法是要改善模拟chebyshev子集插值,其中所考虑的函数$ f $仅在均匀网格的适当子集上插值,这是由模仿Chebyshev-lobatto节点的行为形成的节点形成的。在模拟chebyshev子集插值中,所有剩余的节点均被丢弃,而在受约束的模拟chebyshev中,最小二乘插值将它们用于同时回归,目的是进一步提高Mock-Chebyshev子集interpolation提供的近似值的准确性。本文的目的是两个方面。我们讨论了受约束的模拟奇比什夫最小二乘操作员的一些理论方面,并提出了新的结果。特别是,我们介绍了错误及其导数的明确表示。此外,对于$ [-1,1] $的足够光滑的函数$ f $,我们提出了一种基于约束的模拟 - 奇比斯谢夫最小二乘操作员的$ x \ in [-1,1] $ in [-1,1] $的连续衍生物的方法,并提供了这些近似值的估计值。数值测试证明了该方法的有效性。

The constrained mock-Chebyshev least squares operator is a linear approximation operator based on an equispaced grid of points. Like other polynomial or rational approximation methods, it was recently introduced in order to defeat the Runge phenomenon that occurs when using polynomial interpolation on large sets of equally spaced points. The idea is to improve the mock-Chebyshev subset interpolation, where the considered function $f$ is interpolated only on a proper subset of the uniform grid, formed by nodes that mimic the behavior of Chebyshev--Lobatto nodes. In the mock-Chebyshev subset interpolation all remaining nodes are discarded, while in the constrained mock-Chebyshev least squares interpolation they are used in a simultaneous regression, with the aim to further improving the accuracy of the approximation provided by the mock-Chebyshev subset interpolation. The goal of this paper is two-fold. We discuss some theoretical aspects of the constrained mock-Chebyshev least squares operator and present new results. In particular, we introduce explicit representations of the error and its derivatives. Moreover, for a sufficiently smooth function $f$ in $[-1,1]$, we present a method for approximating the successive derivatives of $f$ at a point $x\in [-1,1]$, based on the constrained mock-Chebyshev least squares operator and provide estimates for these approximations. Numerical tests demonstrate the effectiveness of the proposed method.

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