On the benefits of clustering approaches in digital soil mapping: an application example concerning soil texture regionalization

被引:4
作者
Dunkl, Istvan [1 ,2 ]
Liess, Mareike [2 ]
机构
[1] Max Planck Inst Meteorol, Hamburg, Germany
[2] UFZ Helmholtz Ctr Environm Res, Dept Soil Syst Sci, Halle, Saale, Germany
关键词
SPATIAL VARIABILITY; ORGANIC-CARBON; R-PACKAGE; PREDICTION; REGRESSION; DISCOVERY; SELECTION; NETWORK; MAP;
D O I
10.5194/soil-8-541-2022
中图分类号
S15 [土壤学];
学科分类号
0903 ; 090301 ;
摘要
High-resolution soil maps are urgently needed by land managers and researchers for a variety of applications. Digital soil mapping (DSM) allows us to regionalize soil properties by relating them to environmental covariates with the help of an empirical model. In this study, a legacy soil dataset was used to train a machine learning algorithm in order to predict the particle size distribution within the catchment of the Bode River in Saxony-Anhalt (Germany). The random forest ensemble learning method was used to predict soil texture based on environmental covariates originating from a digital elevation model, land cover data and geologic maps. We studied the usefulness of clustering applications in addressing various aspects of the DSM procedure. To improve areal representativity of the legacy soil data in terms of spatial variability, the environmental covariates were used to cluster the landscape of the study area into spatial units for stratified random sampling. Different sampling strategies were used to create balanced training data and were evaluated on their ability to improve model performance. Clustering applications were also involved in feature selection and stratified cross-validation. Under the best-performing sampling strategy, the resulting models achieved an R-2 of 0.29 to 0.50 in topsoils and 0.16-0.32 in deeper soil layers. Overall, clustering applications appear to be a versatile tool to be employed at various steps of the DSM procedure. Beyond their successful application, further application fields in DSM were identified. One of them is to find adequate means to include expert knowledge.
引用
收藏
页码:541 / 558
页数:18
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