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Investigations into Green's function as inversion-free solution of the Kriging equation, with geodetic applications.

机译:研究格林作为Kriging方程的无逆解的功能,并进行了大地测量。

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摘要

Statistical interpolation has been proven to be a legitimate and efficient approach for data processing in the field of geodetic and geophysical sciences. Pursuing the minimization of the mean squared prediction error, the technique, known as Kriging or least-squares collocation, is able to densify, respectively filter a spatially and/or temporally referenced dataset, provided that its associated covariance model is given or estimated in advance. The involvement of the covariance matrix which to some extent reflects the physical behavior of the underlying process may, however, potentially lead to an ill-conditioned situation when the data are observed at a relatively high sampling rate.; A new perspective, interpreting the Kriging equation in the continuous sense, is therefore proposed in this research so that, instead of matrix terms, a convolution equation is set up for the Green's function where the covariance function is preserved in its analytic form. Two methods to approximate the solution of such a convolution equation are employed: One transforms the unknown Green's function into a series consisting of a linear combination of (partial) derivatives of the covariance function so that the approximation of the Green's function can be determined through a term-by-term approach; the other one manipulates the convolution equation in the spectral domain where the inversion can be treated within the space of real number.; The proposed approach has been applied to various covariance models, especially several more recently established spatial-temporal models which have attracted increasing interests for geophysical applications. Examples from geodetic science include the cases of data fusion and terrain profile monitoring; although based on simulated data, the demonstration of this innovative approach shows great potential.
机译:在大地测量和地球物理科学领域,统计插值已被证明是一种合法有效的数据处理方法。为了使均方预测误差最小,被称为Kriging或最小二乘配置的技术能够密集化或分别过滤空间和/或时间参考的数据集,前提是预先给出或估计了其相关的协方差模型。 。然而,当以相对较高的采样率观察到数据时,协方差矩阵的参与在某种程度上反映了基础过程的物理行为,可能会导致状况不佳。因此,本研究提出了一种从连续意义上解释克里格方程的新观点,从而代替矩阵项,为格林函数建立了一个卷积方程,其中协方差函数以其解析形式得以保留。有两种方法可以近似求解这种卷积方程的解:一种将未知的格林函数转换为由协方差函数的(偏)导数的线性组合组成的级数,从而可以通过以下公式确定格林函数的近似值:逐项研究方法;另一个在谱域中处理卷积方程,其中可以在实数空间内处理反演。所提出的方法已经应用于各种协方差模型,尤其是最近建立的几种时空模型,这些模型已经吸引了越来越多的地球物理应用兴趣。大地科学的例子包括数据融合和地形剖面监测的案例;尽管基于模拟数据,但这种创新方法的演示显示出巨大的潜力。

著录项

  • 作者

    Cheng, Ching-Chung.;

  • 作者单位

    The Ohio State University.;

  • 授予单位 The Ohio State University.;
  • 学科 Statistics.; Geodesy.
  • 学位 Ph.D.
  • 年度 2004
  • 页码 134 p.
  • 总页数 134
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类 统计学;大地测量学;
  • 关键词

  • 入库时间 2022-08-17 11:44:26

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