Gaussian and non-Gaussian inverse modeling of groundwater flow using copulas and random mixing

被引:23
|
作者
Bardossy, Andras [1 ]
Hoerning, Sebastian [1 ]
机构
[1] Univ Stuttgart, Inst Modelling Hydraul & Environm Syst, Stuttgart, Germany
关键词
inverse modeling; random mixing; copula; non-Gaussianity; CONDITIONAL SIMULATION; GRADUAL DEFORMATION; ITERATIVE CALIBRATION; TRANSMISSIVITY FIELDS; ENSEMBLE; TRANSPORT;
D O I
10.1002/2014WR016820
中图分类号
X [环境科学、安全科学];
学科分类号
08 ; 0830 ;
摘要
This paper presents a new copula-based methodology for Gaussian and non-Gaussian inverse modeling of groundwater flow. The presented approach is embedded in a Monte Carlo framework and it is based on the concept of mixing spatial random fields where a spatial copula serves as spatial dependence function. The target conditional spatial distribution of hydraulic transmissivities is obtained as a linear combination of unconditional spatial fields. The corresponding weights of this linear combination are chosen such that the combined field has the prescribed spatial variability, and honors all the observations of hydraulic transmissivities. The constraints related to hydraulic head observations are nonlinear. In order to fulfill these constraints, a connected domain in the weight space, inside which all linear constraints are fulfilled, is identified. This domain is defined analytically and includes an infinite number of conditional fields (i.e., conditioned on the observed hydraulic transmissivities), and the nonlinear constraints can be fulfilled via minimization of the deviation of the modeled and the observed hydraulic heads. This procedure enables the simulation of a great number of solutions for the inverse problem, allowing a reasonable quantification of the associated uncertainties. The methodology can be used for fields with Gaussian copula dependence, and fields with specific non-Gaussian copula dependence. Further, arbitrary marginal distributions can be considered.
引用
收藏
页码:4504 / 4526
页数:23
相关论文
共 50 条
  • [31] Non-Gaussian Methods for Causal Structure Learning
    Shimizu, Shohei
    PREVENTION SCIENCE, 2019, 20 (03) : 431 - 441
  • [32] Non-Gaussian Methods for Causal Structure Learning
    Shohei Shimizu
    Prevention Science, 2019, 20 : 431 - 441
  • [33] Angular spectra for non-Gaussian isotropic fields
    Terdik, Gyoergy
    BRAZILIAN JOURNAL OF PROBABILITY AND STATISTICS, 2015, 29 (04) : 833 - 865
  • [34] Primordial non-Gaussian signatures in CMB polarization
    Ganesan, Vidhya
    Chingangbam, Pravabati
    Yogendran, K. P.
    Park, Changbom
    JOURNAL OF COSMOLOGY AND ASTROPARTICLE PHYSICS, 2015, (02):
  • [35] Non-Gaussian isocurvature perturbations in dark radiation
    Kawakami, Etsuko
    Kawasaki, Masahiro
    Miyamoto, Koichi
    Nakayama, Kazunori
    Sekiguchi, Toyokazu
    JOURNAL OF COSMOLOGY AND ASTROPARTICLE PHYSICS, 2012, (07):
  • [36] Direct Inverse Modeling for Electromagnetic Components Using Gaussian Kernel Regression
    Sato, Yuki
    Kawano, Kenji
    Igarashi, Hajime
    IEEE TRANSACTIONS ON MAGNETICS, 2022, 58 (05)
  • [37] High-order Statistics of Spatial Random Fields: Exploring Spatial Cumulants for Modeling Complex Non-Gaussian and Non-linear Phenomena
    Dimitrakopoulos, Roussos
    Mustapha, Hussein
    Gloaguen, Erwan
    MATHEMATICAL GEOSCIENCES, 2010, 42 (01) : 65 - 99
  • [38] Non-Gaussian shape discrimination with spectroscopic galaxy surveys
    Byun, Joyce
    Bean, Rachel
    JOURNAL OF COSMOLOGY AND ASTROPARTICLE PHYSICS, 2015, (03):
  • [39] Consistency relations for sharp inflationary non-Gaussian features
    Mooij, Sander
    Palma, Gonzalo A.
    Panotopoulos, Grigoris
    Soto, Alex
    JOURNAL OF COSMOLOGY AND ASTROPARTICLE PHYSICS, 2016, (09):
  • [40] Current inversion induced by colored non-Gaussian noise
    Bag, Bidhan Chandra
    Hu, Chin-Kung
    JOURNAL OF STATISTICAL MECHANICS-THEORY AND EXPERIMENT, 2009,