Substitution random fields with Gaussian and gamma distributions: Theory and application to a pollution data set
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2008-01Metadata
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Emery, Xavier
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Substitution random fields with Gaussian and gamma distributions: Theory and application to a pollution data set
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Abstract
This paper presents random field models with Gaussian or gamma univariate distributions and isofactorial bivariate distributions, constructed by composing two independent random fields: a directing function with stationary Gaussian increments and a stationary coding process with bivariate Gaussian or gamma distributions. Two variations are proposed, by considering a multivariate directing function and a coding process with a separable covariance, or by including drift components in the directing function. Iterative algorithms based on the Gibbs sampler allow one to condition the realizations of the substitution random fields to a set of data, while the inference of the model parameters relies on simple tools such as indicator variograms and variograms of different orders. A case study in polluted soil management is presented, for which a gamma model is used to quantify the risk that pollutant concentrations over remediation units exceed a given toxicity level. Unlike the multivariate Gaussian model, the proposed gamma model accounts for an asymmetry in the spatial correlation of the indicator functions around the median and for a spatial clustering of high pollutant concentrations.
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URI: https://repositorio.uchile.cl/handle/2250/125162
DOI: 10.1007/s11004-007-9130-8
ISSN: 1874-8961
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MATHEMATICAL GEOSCIENCES Volume: 40 Issue: 1 Pages: 83-99 Published: JAN 2008
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