Digital mapping of GlobalSoilMap soil properties at a broad scale: A review
2022
Chen, Songchao | Arrouays, Dominique | Leatitia Mulder, Vera | Poggio, Laura | Minasny, Budiman | Roudier, Pierre | Libohova, Zamir | Lagacherie, Philippe | Shi, Zhou | Hannam, Jacqueline | Meersmans, Jeroen | Richer-De-Forges, Anne C | Walter, Christian | InfoSol (InfoSol) ; Institut National de Recherche pour l’Agriculture, l’Alimentation et l’Environnement (INRAE) | Zhejiang University [Hangzhou, China] | Sol Agro et hydrosystème Spatialisation (SAS) ; Institut National de Recherche pour l’Agriculture, l’Alimentation et l’Environnement (INRAE)-Institut Agro Rennes Angers ; Institut national d'enseignement supérieur pour l'agriculture, l'alimentation et l'environnement (Institut Agro)-Institut national d'enseignement supérieur pour l'agriculture, l'alimentation et l'environnement (Institut Agro) | Soil Geography and Landscape Group ; Wageningen University and Research [Wageningen] (WUR) | World Soil Information (ISRIC) | School of Environmental and Life Sciences - SELS (Callaghan, Australia) ; University of Newcastle [Callaghan, Australia] (UoN) | Manaaki Whenua – Landcare Research [Lincoln] | USDA-NRCS National Soil Survey Center | Laboratoire d'étude des Interactions Sol - Agrosystème - Hydrosystème (UMR LISAH) ; Institut de Recherche pour le Développement (IRD)-AgroParisTech-Institut National de Recherche pour l’Agriculture, l’Alimentation et l’Environnement (INRAE)-Institut Agro Montpellier ; Institut national d'enseignement supérieur pour l'agriculture, l'alimentation et l'environnement (Institut Agro)-Institut national d'enseignement supérieur pour l'agriculture, l'alimentation et l'environnement (Institut Agro) | Institute of Agricultural Remote Sensing and Information Technology Application, College of Environmental and Resource Sciences ; Zhejiang University [Hangzhou, China] | Cranfield University | Department of Biosystem Engineering (BIOSE), Gembloux Agro-Bio Tech (GxABT), ; Université de Liège = University of Liège = Universiteit van Luik = Universität Lüttich (ULiège) | This work is supported by LE STUDIUM Loire Valley Institute for Advanced Studies (France) . Songchao Chen received support from the China Scholarship Council (grant no. 201606320211) . This work benefited from collaborations established in the framework of the EU EJP Soil "Towards climate-smart sustainable management of agricul-tural soils" (grant no. 862695) .
International audience
Show more [+] Less [-]English. Soils are essential for supporting food production and providing ecosystem services but are under pressure due to population growth, higher food demand, and land use competition. Because of the effort to ensure the sustainable use of soil resources, demand for current, updatable soil information capable of supporting decisions across scales is increasing. Digital soil mapping (DSM) addresses the drawbacks of conventional soil mapping and has been increasingly used for delivering soil information in a time- and cost-efficient manner with higher spatial resolution, better map accuracy, and quantified uncertainty estimates. We reviewed 244 articles published between January 2003 and July 2021 and then summarised the progress in broad-scale (spatial extent 10,000 km2) DSM, focusing on the 12 mandatory soil properties for GlobalSoilMap. We observed that DSM publications continued to increase exponentially; however, the majority (74.6%) focused on applications rather than methodology development. China, France, Australia, and the United States were the most active countries, and Africa and South America lacked country-based DSM products. Approximately 78% of articles focused on mapping soil organic matter/carbon content and soil organic carbon stocks because of their significant role in food security and climate regulation. Half the articles focused on soil information in topsoil only (<30 cm), and studies on deep soil (100-200 cm) were less represented (21.7%). Relief, organisms, and climate were the three most frequently used environmental covariates in DSM. Nonlinear models (i.e. machine learning) have been increasingly used in DSM for their capacity to manage complex interactions between soil information and environmental covariates. Soil pH was the best predicted soil property (average R2 of 0.60, 0.63, and 0.56 at 0-30, 30-100, and 100-200 cm). Other relatively well-predicted soil properties were clay, silt, sand, soil organic carbon (SOC), soil organic matter (SOM), SOC stocks, and bulk density, and coarse fragments and soil depth were poorly predicted (R2 < 0.28). In addition, decreasing model performance with deeper depth intervals was found for most soil properties. Further research should pursue rescuing legacy data, sampling new data guided by welldesigned sampling schemas, collecting representative environmental covariates, improving the performance and interpretability of advanced spatial predictive models, relating performance indicators such as accuracy and precision to cost-benefit and risk assessment analysis for improving decision support; moving from static DSM to dynamic DSM; and providing high-quality, fine-resolution digital soil maps to address global challenges related to soil resources.
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