Publication Details

Category Text Publication
Reference Category Journals
DOI 10.3390/agriculture12111784
Licence creative commons licence
Title (Primary) Modeling the agricultural soil landscape of Germany—A data science approach involving spatially allocated functional soil process units
Author Ließ, M.
Source Titel Agriculture-Basel
Year 2022
Department BOSYS
Volume 12
Issue 11
Page From art. 1784
Language englisch
Topic T5 Future Landscapes
Data and Software links https://doi.org/10.20387/bonares-13qm-mw25
Keywords digital soil mapping; soil process units; soil parameter space; machine learning; unsupervised classification
Abstract The national-scale evaluation and modelling of the impact of agricultural management and cli-mate change on soils, crop growth, and the environment require soil information at a spatial res-olution addressing individual agricultural fields. This manuscript presents a data science ap-proach which agglomerates the soil parameter space into a limited number of functional soil pro-cess units (SPUs) which may be used to run agricultural process models. In fact, two unsupervised classification methods were developed to generate a multivariate 3D data product consisting of SPUs, each being defined by a multivariate parameter distribution along the depth profile from 0 to 100 cm. The two methods account for differences in variable types and distributions and in-volve genetic algorithm optimization to identify those SPUs with the lowest internal variability and maximum inter-unit difference with regards to both, their soil characteristics and landscape setting. The high potential of the methods was demonstrated by applying them to the agricultural German soil landscape. The resulting data product consists of twenty SPUs. It has a 100 m raster resolution in the 2D mapping space, and its resolution along the depth profile is 1 cm. It includes the soil properties texture, stone content, bulk density, hydromorphic properties, total organic carbon content, and pH.
Persistent UFZ Identifier https://www.ufz.de/index.php?en=20939&ufzPublicationIdentifier=26730
Ließ, M. (2022):
Modeling the agricultural soil landscape of Germany—A data science approach involving spatially allocated functional soil process units
Agriculture-Basel 12 (11), art. 1784 10.3390/agriculture12111784