Use este identificador para citar ou linkar para este item: http://repositorio.ufla.br/jspui/handle/1/40859
Registro completo de metadados
Campo DCValorIdioma
dc.creatorMachado, Diego Fernandes Terra-
dc.creatorSilva, Sérgio Henrique Godinho-
dc.creatorCuri, Nilton-
dc.creatorMenezes, Michele Duarte de-
dc.date.accessioned2020-05-12T18:32:35Z-
dc.date.available2020-05-12T18:32:35Z-
dc.date.issued2019-05-
dc.identifier.citationMACHADO, D. F. T. et al. Soil type spatial prediction from Random Forest: different training datasets, transferability, accuracy and uncertainty assessment. Scientia Agricola, Piracicaba, v. 76, n. 3, p. 243-254, May/June 2019.pt_BR
dc.identifier.urihttp://repositorio.ufla.br/jspui/handle/1/40859-
dc.description.abstractDifferent uses of soil legacy data such as training dataset as well as the selection of soil environmental covariables could drive the accuracy of machine learning techniques. Thus, this study evaluated the ability of the Random Forest algorithm to predict soil classes from different training datasets and extrapolate such information to a similar area. The following training datasets were extracted from legacy data: a) point data composed of 53 soil samples; b) 30 m buffer around the soil samples, and soil map polygons excluding: c) 20 m; and d) 30 m from the boundaries of polygons. These four datasets were submitted to principal component analysis (PCA) to reduce multidimensionality. Each dataset derived a new one. Different combinations of predictor variables were tested. A total of 52 models were evaluated by means of error of models, prediction uncertainty and external validation for overall accuracy and Kappa index. The best result was obtained by reducing the number of predictors with the PCA along with information from the buffer around the points. Although Random Forest has been considered a robust spatial predictor model, it was clear it is sensitive to different strategies of selecting training dataset. Effort was necessary to find the best training dataset for achieving a suitable level of accuracy of spatial prediction. To identify a specific dataset seems to be better than using a great number of variables or a large volume of training data. The efforts made allowed for the accurate acquisition of a mapped area 15.5 times larger than the reference area.pt_BR
dc.languageen_USpt_BR
dc.publisherEscola Superior de Agricultura "Luiz de Queiroz"pt_BR
dc.rightsAttribution 4.0 International*
dc.rightsacesso abertopt_BR
dc.rights.urihttp://creativecommons.org/licenses/by/4.0/*
dc.sourceScientia Agricolapt_BR
dc.subjectDigital soil mappingpt_BR
dc.subjectSoil surveypt_BR
dc.subjectLegacy datapt_BR
dc.subjectMapeamento digital do solopt_BR
dc.subjectLevantamento do solopt_BR
dc.subjectDados herdadospt_BR
dc.titleSoil type spatial prediction from Random Forest: different training datasets, transferability, accuracy and uncertainty assessmentpt_BR
dc.typeArtigopt_BR
Aparece nas coleções:DCS - Artigos publicados em periódicos



Este item está licenciada sob uma Licença Creative Commons Creative Commons