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    Textural classification of soils in rice-growing areas in Colombia

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    Authors
    Silva, Mayesse A. da
    Rodríguez, Maryory
    Majin, Marvin
    Chirinda, Ngonidzashe
    Date Issued
    2015-05
    Language
    es
    Type
    Dataset
    Accessibility
    Open Access
    Metadata
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    Citation
    Da Silva, Mayesse; Rodriguez, Maryory; Majin, Marvin; Chirinda, Ngonidzashe. 2015. "Textural classification of soils in rice-growing areas in Colombia.
    Permanent link to cite or share this item: https://hdl.handle.net/10568/77681
    DOI: https://doi.org/10.7910/DVN/WKAOIL
    Abstract/Description
    EnglishThe Digital Soil Mapping (DSM) approach was used to generate maps of the soil texture (sand, silt, and clay) in Colombia, based on the soil geomorphology. The soil units were differentiated by land shapes using a STRM 90-m DEM, and stratified by geopedological units from the Agustín Codazzi Geographic Institute (IGAC). The digital maps of soil texture were generated using the fuzzy logic approach, which enabled determining statistically the value limits of percent-slope classes, moisture index and standardized height on each of the soil units. Data inherited from IGAC s soil profiles were used to determine the gauge values for the mapping model (80% of total data) for sand, stilt, and clay, as well as to validate (20% of total data) based on the DSM approach. The root mean squared error (RMSE) was 21, 12, and 15% for sand, stilt, and clay, respectively, and these values are the same as the standard deviation of the field data. The map of texture classes was generated with the information on sand, stilt, and clay.EspañolSe usó el enfoque de Mapeo Digital del Suelo (MDS) para generar los mapas de textura del suelo (arena, limo y arcilla) para Colombia basado en la geomorfología del suelo. Las unidades del suelo fueron diferenciadas por formas del terreno usando un DEM SRTM de 90 m de resolución y además, estratificadas por unidades geopedológicas del Instituto Geográfico Agustín Codazzi (IGAC). Los mapas digitales de textura del suelo fueron generados usando el enfoque de lógica difusa, donde se determinaron estadísticamente los límites de los valores de las clases de porcentaje de pendiente, índice de humedad y altura normalizada en cada una de las unidades de suelo. Se usaron datos heredados de perfiles de suelos de IGAC, para determinar los valores de calibración del modelo de mapeo (80% del total de los datos) para arena, limo y arcilla, así como para validar (20% del total de los datos) según el enfoque de MDS. La raíz del error medio cuadrado (RMSE) fue 21, 12 y 15 % para arena, limo y arcilla respectivamente, valores que son iguales a la desviación estándar de los datos de campo. Con la información de arena, arcilla y limo se generó el mapa de clases de textura.
    CGIAR Author ORCID iDs
    Ngonidzashe Chirindahttps://orcid.org/0000-0002-4213-6294
    MAYESSE DA SILVAhttps://orcid.org/0000-0002-3734-9586
    AGROVOC Keywords
    soil texture; digital soil mapping; cartography; soil; latin america and the caribbean
    Subjects
    SOIL INFORMATION; RICE;
    Countries
    Colombia
    Regions
    Latin America; South America
    Organizations Affiliated to the Authors
    International Center for Tropical Agriculture
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    • CIAT Datasets [221]

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