planning spatial sampling of the soil from an uncertain reconnaissance variogram
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2017
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Abstract
An estimated variogram of a soil property can be used to support a rational
choice of sampling intensity for geostatistical mapping. However, it is known
that estimated variograms are subject to uncertainty. In this paper we
address two practical questions. First, how can we make a robust decision on
sampling intensity, given the uncertainty in the variogram? Second, what are
the costs incurred in terms of oversampling because of uncertainty in the
variogram model used to plan sampling? To achieve this we show how samples of
the posterior distribution of variogram parameters, from a computational
Bayesian analysis, can be used to characterize the effects of variogram
parameter uncertainty on sampling decisions. We show how one can select a
sample intensity so that a target value of the kriging variance is not
exceeded with some specified probability. This will lead to oversampling,
relative to the sampling intensity that would be specified if there were no
uncertainty in the variogram parameters. One can estimate the magnitude of
this oversampling by treating the tolerable grid spacing for the final sample
as a random variable, given the target kriging variance and the posterior
sample values. We illustrate these concepts with some data on total uranium
content in a relatively sparse sample of soil from agricultural land near
mine tailings in the Copperbelt Province of Zambia.
| Reference Key |
lark2017soilplanning
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|---|---|
| Authors | ;R. M. Lark;E. M. Hamilton;B. Kaninga;B. Kaninga;K. K. Maseka;M. Mutondo;G. M. Sakala;G. M. Sakala;M. J. Watts |
| Journal | energy and environment |
| Year | 2017 |
| DOI |
10.5194/soil-3-235-2017
|
| URL | |
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