Non-parametric approximations for anisotropy estimation in two-dimensional differentiable Gaussian random fields

被引:6
|
作者
Petrakis, Manolis P. [1 ]
Hristopulos, Dionissios T. [1 ]
机构
[1] Tech Univ Crete, Sch Mineral Resources Engn, Geostat Lab, Khania 73100, Greece
关键词
Anisotropy; Probability regions; Isotropy; Monte Carlo simulations; Nonparametric; Radiation exposure; DIFFUSION; INTERPOLATION; INFERENCE; MODELS;
D O I
10.1007/s00477-016-1361-0
中图分类号
X [环境科学、安全科学];
学科分类号
08 ; 0830 ;
摘要
Spatially referenced data often have autocovariance functions with elliptical isolevel contours, a property known as geometric anisotropy. The anisotropy parameters include the tilt of the ellipse (orientation angle) with respect to a reference axis and the aspect ratio of the principal correlation lengths. Since these parameters are unknown a priori, sample estimates are needed to define suitable spatial models for the interpolation of incomplete data. The distribution of the anisotropy statistics is determined by a non-Gaussian sampling joint probability density. By means of analytical calculations, we derive an explicit expression for the joint probability density function of the anisotropy statistics for Gaussian, stationary and differentiable random fields. Based on this expression, we obtain an approximate joint density which we use to formulate a statistical test for isotropy. The approximate joint density is independent of the autocovariance function and provides conservative probability and confidence regions for the anisotropy parameters. We validate the theoretical analysis by means of simulations using synthetic data, and we illustrate the detection of anisotropy changes with a case study involving background radiation exposure data. The approximate joint density provides (i) a stand-alone approximate estimate of the anisotropy statistics distribution (ii) informed initial values for maximum likelihood estimation, and (iii) a useful prior for Bayesian anisotropy inference.
引用
收藏
页码:1853 / 1870
页数:18
相关论文
共 26 条
  • [1] Non-parametric approximations for anisotropy estimation in two-dimensional differentiable Gaussian random fields
    Manolis P. Petrakis
    Dionissios T. Hristopulos
    Stochastic Environmental Research and Risk Assessment, 2017, 31 : 1853 - 1870
  • [2] Non-parametric estimation of reference intervals in small non-Gaussian sample sets
    Bjerner, Johan
    Theodorsson, Elvar
    Hovig, Eivind
    Kallner, Anders
    ACCREDITATION AND QUALITY ASSURANCE, 2009, 14 (04) : 185 - 192
  • [3] Non-parametric estimation of reference intervals in small non-Gaussian sample sets
    Johan Bjerner
    Elvar Theodorsson
    Eivind Hovig
    Anders Kallner
    Accreditation and Quality Assurance, 2009, 14 : 185 - 192
  • [4] Anisotropy of Holder Gaussian random fields: characterization, estimation, and application to image textures
    Richard, Frederic J. P.
    STATISTICS AND COMPUTING, 2018, 28 (06) : 1155 - 1168
  • [5] Joint non-parametric estimation of mean and auto-covariances for Gaussian processes
    Krivobokova, Tatyana
    Serra, Paulo
    Rosales, Francisco
    Klockmann, Karolina
    COMPUTATIONAL STATISTICS & DATA ANALYSIS, 2022, 173
  • [6] Non-parametric individual treatment effect estimation for survival data with random forests
    Tabib, Sami
    Larocque, Denis
    BIOINFORMATICS, 2020, 36 (02) : 629 - 636
  • [7] Non-parametric calibration estimation of distribution function under stratified random sampling
    Alomair, Abdullah Mohammed
    Zhu, Weineng
    Shahzad, Usman
    Alarfaj, Fawaz Khaled
    AIMS MATHEMATICS, 2025, 10 (02): : 4457 - 4472
  • [8] Anisotropy of Hölder Gaussian random fields: characterization, estimation, and application to image textures
    Frédéric J. P. Richard
    Statistics and Computing, 2018, 28 : 1155 - 1168
  • [9] TARGET DETECTION IN INHOMOGENOUS NON-GAUSSIAN HYPERSPECTRAL DATA, BASED ON NON-PARAMETRIC DENSITY ESTIMATION
    Tidhar, G. A.
    Rotman, S. R.
    2013 5TH WORKSHOP ON HYPERSPECTRAL IMAGE AND SIGNAL PROCESSING: EVOLUTION IN REMOTE SENSING (WHISPERS), 2013,
  • [10] Target Detection in Inhomogeneous Non-Gaussian Hyperspectral Data, Based On Non-Parametric Density Estimation
    Tidhar, G. A.
    Rotman, S. R.
    ALGORITHMS AND TECHNOLOGIES FOR MULTISPECTRAL, HYPERSPECTRAL, AND ULTRASPECTRAL IMAGERY XIX, 2013, 8743