Digital map of Sum of Bases soil concentration for Amazonia and Area of Applicability

Beskrivning

The maps presented here are described and discussed in Zuquim et al. 2023. Geoderma Regional. If you use the data, please cite it. Check the citation here: https://doi.org/10.1016/j.geodrs.2023.e00645. The files are in .tif format and consists of digital spatial layers that can be opened in QGIS, R and other GIS or spatial analysis programs. Authors * Zuquim, Gabriela, Email: gabriela.zuquim@utu.fi, Web: Aarhus University, Denmark * Van doninck, Jasper, Email: j.vandoninck@utwente.nl, Web: Michigan State University, USA * Chaves, Pablo Perez, Email: papech@utu.fi, Web: Department of Biology, University of Turku, Finland * Quesada, Carlos Alberto, Email: quesada.beto@gmail.com, Web: National Institute of Amazonian Research, Manaus, Brazil * Ruokolainen, Kalle, Email: kalle.ruokolainen@utu.fi, Web: Department of Biology, University of Turku, Finland * Tuomisto, Hanna, Email: hanna.tuomisto@utu.fi, Web: Department of Biology, University of Turku, Finland Abstract: Soil maps are crucial for habitat and species distribution modeling under present and future conditions, thereby providing relevant background information for conservation planning. In Amazonia, soil conditions are highly heterogeneous, which has important implications for the distribution and dynamics of the area's exceptional biodiversity. Unfortunately, available soil maps for this region suffer from inaccuracies and lack of ecologically relevant variables. Here, we develop a map of exchangeable base cation concentration (Ca+Mg+K; SB) in the surface soil by applying machine learning to a comprehensive set of over 10,000 field data points of SB values directly measured from soil samples or inferred using indicator plant species occurrences. As predictors, we used rasters of soil type probabilities, elevation, biomass and reflectance values from Landsat satellite images. Random Forest (RF) models were trained and tested using two different cross-validation strategies. We also assessed in which areas the map was more reliable using the area of applicability approach and compared the results with two other soil layers. The best predictors of SB variation were Landsat bands 7, 4 and 3, elevation, and probability of Histosols. The regional patterns observed across Amazonia were consistent with current geological understanding; lower SB values tended to occur in central Amazonian soils and higher values in western Amazonian soils, with considerable variation within each region. The model was found applicable over most of the Amazonian biome, especially in non-inundated (terra-firme) forest, but not over coastal areas, floodplains of major rivers and wetlands, which were poorly represented in the training data. Our new SB map over performed previous SB map and represent an accurate and ecologically meaningful variable. It is available as a digital GIS layer and can be used in habitat mapping and in modeling the current or future distributions of biological communities and species. This will advance general understanding of Amazonian biogeography and help in conservation planning.
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Publiceringsår

2023

Typ av data

Upphovspersoner

Gabriela Zuquim - Upphovsperson, Utgivare

Projekt

Övriga uppgifter

Vetenskapsområden

Geovetenskaper; Ekologi, evolutionsbiologi

Språk

engelska

Öppen tillgång

Öppet

Licens

Creative Commons Attribution 4.0 International (CC BY 4.0)

Nyckelord

Landsat, machine learning, Soils, species distribution modeling, random forest, acrisols, Ca, edaphic conditions, ferrasols, GIS layer, Histosols, magnesium, Nutrient concentrations, Potassium, soil models, Soil types, soilgrids, species distribution modelling, SRTM, tropical forests

Ämnesord

jordarter, tropisk zon

Temporal täckning

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