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Non-stationary Geostatistical Modeling Based on Distance Weighted Statistics and Distributions
Authors:David F. Machuca-Mory  Clayton V. Deutsch
Affiliation:1. Centre for Computational Geostatistics, Department of Civil and Environmental Engineering, University of Alberta, Edmonton, Alberta, Canada
2. Stochastic Mine Planning Laboratory, Department of Mining and Materials Engineering, McGill University, Frank Dawson Adams Building, Room 112 3450 University Street, Montreal, Quebec, Canada, H3A 2A7
Abstract:A common assumption in geostatistics is that the underlying joint distribution of possible values of a geological attribute at different locations is stationary within a homogeneous domain. This joint distribution is commonly modeled as multi-Gaussian, with correlations defined by a stationary covariance function. This results in attribute maps that fail to reproduce local changes in the mean, in the variance and, particularly, in the spatial continuity. The proposed alternative is to build local distributions, variograms, and correlograms. These are inferred by weighting the samples depending on their distance to selected locations. The local distributions are locally transformed into Gaussian distributions embedding information on the local histogram. The distance weighted experimental variograms and correlograms are able to adapt to local changes in the direction and range of spatial continuity. The automatically fitted local variogram models and the local Gaussian transformation parameters are used in spatial estimation algorithms assuming local stationarity. The resulting maps are rich in nonstationary spatial features. The proposed process implies a higher computational effort than traditional stationary techniques, but if data availability allows for a reliable inference of the local distributions and statistics, a higher accuracy of estimates can be achieved.
Keywords:
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