Spatial Prediction of Organic Matter Quality in German Agricultural Topsoils
Ali Sakhaee,
Thomas Scholten,
Ruhollah Taghizadeh-Mehrjardi
et al.
Abstract:Soil organic matter (SOM) and the ratio of soil organic carbon to total nitrogen (C/N ratio) are fundamental to the ecosystem services provided by soils. Therefore, understanding the spatial distribution and relationships between the SOM components mineral-associated organic matter (MAOM), particulate organic matter (POM), and C/N ratio is crucial. Three ensemble machine learning models were trained to obtain spatial predictions of the C/N ratio, MAOM, and POM in German agricultural topsoil (0–10 cm). Paramete… Show more
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