Fine-scale soil mapping with Earth Observation data: a multiple geographic level comparison

dc.contributor.authorSafanelli, José Lucas
dc.contributor.authorDemattê, José Alexandre Melo
dc.contributor.authorSantos, Natasha Valadares dos
dc.contributor.authorRosas, Jorge Tadeu Fim
dc.contributor.authorSilvero, Nélida Elizabet Quiñonez
dc.contributor.authorBonfatti, Benito Roberto
dc.contributor.authorMendes, Wanderson de Sousa
dc.date.accessioned2022-09-15T14:33:07Z
dc.date.available2022-09-15T14:33:07Z
dc.date.issued2021-09-24
dc.description.abstractMultitemporal collections of satellite images and their products have recently been explored in digital soil mapping. This study aimed to produce a bare soil image (BSI) for the São Paulo State (Brazil) to perform a pedometric analysis for different geographical levels. First, we assessed the potential of the BSI for predicting the surface (0.00-0.20 m) and subsurface (0.80-1.00 m) clay, iron oxides (Fe 2 O 3 ), aluminum (m%) and bases saturation (V%) contents at the state level, which are important properties for soil classification. In this task, legacy soil samples, the BSI and terrain attributes were employed in machine learning. In a second moment, we evaluated the capacity of the BSI for clustering the landscape at the regional level, comparing the predicted patterns with a legacy semi-detailed soil map from a smaller reference site. In the final stage, the predicted soil maps from the state level were investigated at the farm level considering several sites distributed across the São Paulo state. Our results demonstrated that clay and Fe 2 O 3 reached the best prediction performance for both depths at the state level, reaching a RMSE of less than 10 %, RPIQ higher than 1.6 and R 2 of at least 0.41. Additionally, the predicted landscape clusters had a significant association with the main pedological classes, subsurface color, soil mineralogy and texture from the legacy semi-detailed soil map. Illustrative examples at the farm level indicated great capacity of BSI in detecting the variations of soils, which were linked to several soil properties, such as texture, iron content, drainage network, among others. Therefore, this study demonstrates that BSI is valuable information derived from optical Earth Observation data that can contribute to the future of soil survey and mapping in Brazil (PronaSolos).en
dc.identifier.citationSafanelli JL, Demattê JAM, Santos NV, Rosas JTF, Silvero NEQ, Bonfatti BR, Mendes WS. Fine-scale soil mapping with Earth Observation data: a multiple geographic level comparison. Rev Bras Cienc Solo. 2021;45:e0210080.pt-BR
dc.identifier.issn1806-9657
dc.identifier.urihttps://locus.ufv.br//handle/123456789/29912
dc.language.isoengpt-BR
dc.publisherRevista Brasileira de Ciência do Solopt-BR
dc.relation.ispartofseriesVol. 45, 2021.pt-BR
dc.rightsCreative Commons Attribution Licensept-BR
dc.subjectremote sensingen
dc.subjectsoil cartographyen
dc.subjectsoil mappingen
dc.subjectpedometricsen
dc.subjectPronaSolosen
dc.titleFine-scale soil mapping with Earth Observation data: a multiple geographic level comparisonen
dc.typeArtigopt-BR

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