Quantifying the Importance of Soil Forming Factors Using Multivariate
Soil Data at Landscape Scale
Abstract
The role of soil forming factors (time, parent material, climate, biota,
topography) on soil processes has commonly been studied using soil
sequences where only one factor varies between sites. However, when
multiple factors change, it becomes difficult to partition the
importance of different soil forming factors for soil formation. We show
for an altitudinal gradient how proximal sensing (portable XRF,
Fourier-Transform Infrared [FTIR]), multivariate statistics and
Bayesian mixing modelling can help to quantify the importance of two
soil forming factors. First, we confirmed the existing qualitative
soil-landscape model of concomitant shifts in parent material (greywacke
loess to mafic volcanics) and climate (higher precipitation) with
altitude, leading to increases in pedogenic oxides, soil carbon, and
soil Fe, while Si concentrations and pH declined. Second, we applied a
mixing model using immobile elements as parent material tracers to
quantify the parent material contribution in soils across our gradient.
Third, we conducted a variation analysis to determine how much variation
in the soil FTIR spectra could be explained by parent material and
climate. Parent material alone explained 31% of the variation, climate
alone only 9%. However, if we had only considered climate as
explanatory variable, it would have accounted for almost half of the
total variation (41%) because of the strong interaction between climate
and parent material, and therefore concealing the leading role of parent
material. Given that parent material is often omitted in modern digital
soil mapping, our results emphasize the importance of parent material as
a predictor of spatial soil distribution.