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    Predicting runoff risks by digital soil mapping

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    Authors
    Silva, Mayesse A. da
    Naves Silva, Marx Leandro
    Ray Owens, Phillip
    Curi, Nilton
    Hoffmann Oliveira, Anna
    Moreira Candido, Bernardo
    Date Issued
    2016
    Language
    en
    Type
    Journal Article
    Review status
    Peer Review
    ISI journal
    Accessibility
    Open Access
    Metadata
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    Citation
    Da Silva, Mayesse; Silva, Marx; Owens, Phillip; Curi, Nilton; Oliveira, Anna; Candido, Bernardo. 2016. Predicting runoff risks by digital soil mapping . Revista Brasileira de Ciência do solo. 40:e0150353.
    Permanent link to cite or share this item: https://hdl.handle.net/10568/77398
    DOI: https://doi.org/10.1590/18069657rbcs20150353
    Abstract/Description
    Digital soil mapping (DSM) permits continuous mapping soil types and properties through raster formats considering variation within soil class, in contrast to the traditional mapping that only considers spatial variation of soils at the boundaries of delineated polygons. The objective of this study was to compare the performance of SoLIM (Soil Land Inference Model) for two sets of environmental variables on digital mapping of saturated hydraulic conductivity and solum depth (A + B horizons) and to apply the best model on runoff risk evaluation. The study was done in the Posses watershed, MG, Brazil, and SoLIM was applied for the following sets of co-variables: 1) terrain attributes (AT): slope, plan curvature, elevation and topographic wetness index. 2) Geomorphons and terrain attributes (GEOM): slope, plan curvature, elevation and topographic wetness index combined with geomorphons. The most precise methodology was applied to predict runoff areas risk through the Wetness Index based on contribution area, solum depth, and saturated hydraulic conductivity. GEOM was the best set of co-variables for both properties, so this was the DSM model used to predict the runoff risk. The runoff risk showed that the critical months are from November to March. The new way to classify the landscape to use on DSM was demonstrated to be an efficient tool with which to model process that occurs on watersheds and can be used to forecast the runoff risk.
    CGIAR Author ORCID iDs
    MAYESSE DA SILVAhttps://orcid.org/0000-0002-3734-9586
    AGROVOC Keywords
    simulation models; soil; erosion; land use; soil properties; modelos de simulación; suelo; erosión; utilización de la tierra
    Subjects
    SOIL HEALTH;
    Collections
    • CIAT Articles in Journals [2636]
    • CIAT Soils [227]

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