Abstract

Spatial soil information in forests is crucial to assess ecosystem services such as carbon storage, water purification or biodiversity. However, spatially continuous information on soil properties at adequate resolution is rare in forested areas, especially in mountain regions. Therefore, we aimed to build high-resolution soil property maps for pH, soil organic carbon, clay, sand, gravel and soil density for six depth intervals as well as for soil thickness for the entire forested area of Switzerland. We used legacy data from 2071 soil profiles and evaluated six different modelling approaches of digital soil mapping, namely lasso, robust external-drift kriging, geoadditive modelling, quantile regression forest (QRF), cubist and support vector machines. Moreover, we combined the predictions of the individual models by applying a weighted model averaging approach. All models were built from a large set of potential covariates which included e.g. multi-scale terrain attributes and remote sensing data characterizing vegetation cover.Model performances, evaluated against an independent dataset were similar for all methods. However, QRF achieved the best prediction performance in most cases (18 out of 37 models), while model averaging outperformed the individual models in five cases. For the final soil property maps we therefore used the QRF predictions. Prediction performance showed large differences for the individual soil properties. While for fine earth density the R2 of QRF varied between 0.51 and 0.64 across all depth intervals, soil organic carbon content was more difficult to predict (R2 = 0.19–0.32). Since QRF was used for map prediction, we assessed the 90% prediction intervals from which we derived uncertainty maps. The latter are valuable to better interpret the predictions and provide guidance for future mapping campaigns to improve the soil maps.

Highlights

  • Forest soils provide a wide range of crucial ecosystem services such as carbon storage, water cycle regulation and water filtering, wood production and biodiversity (Guo et al, 2001; Greiner et al, 2017; Pereira et al, 2018)

  • All measured soil properties showed a high variability reflecting the high variation of soil forming factors in the study region (Supplementary Tables S2 for descriptive statistics of untransformed soil properties)

  • All statistical modelling methods used were able to deal with the large number of potential covariates and selected the relevant variables efficiently with a minimum of user interaction

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Summary

Introduction

Forest soils provide a wide range of crucial ecosystem services such as carbon storage, water cycle regulation and water filtering, wood production and biodiversity (Guo et al, 2001; Greiner et al, 2017; Pereira et al, 2018). In Switzerland, for example, the legacy Swiss Soil Suitability Map (SSSM) at the scale of 1:200,000 (Swiss Federal Statistical Office, 2001) was used for forest species distribution model­ ling (SDM) e.g. by Camathias et al (2013) as no more detailed maps of Swiss forest soils were available This coarse scaled map contains data collected mainly in agricultural areas with focus on agricultural soil suitability that have limited information on forest soils. Understanding the ecological requirements that determine, for example, the distribu­ tion of tree species is a prerequisite for sustainable forest management This requires knowledge of ecological conditions, such as the spatial distribution of edaphic information. Recent studies on SDM have emphasised that more effort should be made to derive covariates such as soil pH and nutrients reflecting local edaphic conditions to improve SDM predictions (Mod et al, 2016; Scherrer and Guisan, 2019; Buri et al, 2020)

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