2018
DOI: 10.1590/18069657rbcs20170021
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Environmental Correlation and Spatial Autocorrelation of Soil Properties in Keller Peninsula, Maritime Antarctica

Abstract: ABSTRACT:The pattern of variation in soil and landform properties in relation to environmental covariates are closely related to soil type distribution. The aim of this study was to apply digital soil mapping techniques to analysis of the pattern of soil property variation in relation to environmental covariates under periglacial conditions at Keller Peninsula, Maritime Antarctica. We considered the hypothesis that covariates normally used for environmental correlation elsewhere can be adequately employed in p… Show more

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Cited by 5 publications
(2 citation statements)
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“…This approach helps to observe the influence of climate and parent material on REE distribution (Silva et al, 2017). The spatial distribution of several soil properties is often described (Aquino et al, 2015;Azevedo et al, 2015;Camargo et al, 2015;Shukla et al, 2016;Moraes et al, 2017). However, the spatial variability of REEs has seldom been shown.…”
Section: Distribution Of Rare Earth Elements In Soilsmentioning
confidence: 99%
“…This approach helps to observe the influence of climate and parent material on REE distribution (Silva et al, 2017). The spatial distribution of several soil properties is often described (Aquino et al, 2015;Azevedo et al, 2015;Camargo et al, 2015;Shukla et al, 2016;Moraes et al, 2017). However, the spatial variability of REEs has seldom been shown.…”
Section: Distribution Of Rare Earth Elements In Soilsmentioning
confidence: 99%
“…Stochastic simulation can generate a large number of implementations by using different types of data, each of which shows the same spatial pattern in different ways. Kriging interpolation method pursues the local optimal estimation of soil characteristics, while the stochastic simulation method is as close as possible to the real spatial distribution, which makes up for the deficiency of kriging interpolation [24,25]. In recent years, geostatistics was widely used to study the spatial distribution of soil properties [26,27], such as soil salinity, water conductivity [28], soil texture [29].…”
Section: Introductionmentioning
confidence: 99%