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Direct Pattern-Based Simulation of Non-stationary Geostatistical Models

Authors :
Mehrdad Honarkhah
Jef Caers
Source :
Mathematical Geosciences. 44:651-672
Publication Year :
2012
Publisher :
Springer Science and Business Media LLC, 2012.

Abstract

Non-stationary models often capture better spatial variation of real world spatial phenomena than stationary ones. However, the construction of such models can be tedious as it requires modeling both statistical trend and stationary stochastic component. Non-stationary models are an important issue in the recent development of multiple-point geostatistical models. This new modeling paradigm, with its reliance on the training image as the source for spatial statistics or patterns, has had considerable practical appeal. However, the role and construction of the training image in the non-stationary case remains a problematic issue from both a modeling and practical point of view. In this paper, we provide an easy to use, computationally efficient methodology for creating non-stationary multiple-point geostatistical models, for both discrete and continuous variables, based on a distance-based modeling and simulation of patterns. In that regard, the paper builds on pattern-based modeling previously published by the authors, whereby a geostatistical realization is created by laying down patterns as puzzle pieces on the simulation grid, such that the simulated patterns are consistent (in terms of a similarity definition) with any previously simulated ones. In this paper we add the spatial coordinate to the pattern similarity calculation, thereby only borrowing patterns locally from the training image instead of globally. The latter would entail a stationary assumption. Two ways of adding the geographical coordinate are presented, (1) based on a functional that decreases gradually away from the location where the pattern is simulated and (2) based on an automatic segmentation of the training image into stationary regions. Using ample two-dimensional and three-dimensional case studies we study the behavior in terms of spatial and ensemble uncertainty of the generated realizations.

Details

ISSN :
18748953 and 18748961
Volume :
44
Database :
OpenAIRE
Journal :
Mathematical Geosciences
Accession number :
edsair.doi...........280d271c6b5347851e44745008ec5c1a
Full Text :
https://doi.org/10.1007/s11004-012-9413-6