Prediction of soil orders with high spatial resolution: response of different classifiers to sampling density
The objective of this work was to evaluate sampling density on the prediction accuracy of soil orders, with high spatial resolution, in a viticultural zone of Serra Gaúcha, Southern Brazil. A digital elevation model (DEM), a cartographic base, a conventional soil map, and the Idrisi software were us...
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Embrapa Informação Tecnológica
2012-09-01
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doaj-74b85e4a53544849bf333af59940836f2020-11-24T22:51:36ZengEmbrapa Informação TecnológicaPesquisa Agropecuária Brasileira1678-39212012-09-014791395140310.1590/S0100-204X2012000900025S0100-204X2012000900025Prediction of soil orders with high spatial resolution: response of different classifiers to sampling densityEliana Casco Sarmento0Elvio Giasson1Eliseu Weber2Carlos Alberto FloresHeinrich Hasenack3Universidade Federal do Rio Grande do SulUniversidade Federal do Rio Grande do SulUniversidade Federal do Rio Grande do SulUniversidade Federal do Rio Grande do SulThe objective of this work was to evaluate sampling density on the prediction accuracy of soil orders, with high spatial resolution, in a viticultural zone of Serra Gaúcha, Southern Brazil. A digital elevation model (DEM), a cartographic base, a conventional soil map, and the Idrisi software were used. Seven predictor variables were calculated and read along with soil classes in randomly distributed points, with sampling densities of 0.5, 1, 1.5, 2, and 4 points per hectare. Data were used to train a decision tree (Gini) and three artificial neural networks: adaptive resonance theory, fuzzy ARTMap; self‑organizing map, SOM; and multi‑layer perceptron, MLP. Estimated maps were compared with the conventional soil map to calculate omission and commission errors, overall accuracy, and quantity and allocation disagreement. The decision tree was less sensitive to sampling density and had the highest accuracy and consistence. The SOM was the less sensitive and most consistent network. The MLP had a critical minimum and showed high inconsistency, whereas fuzzy ARTMap was more sensitive and less accurate. Results indicate that sampling densities used in conventional soil surveys can serve as a reference to predict soil orders in Serra Gaúcha.http://www.scielo.br/scielo.php?script=sci_arttext&pid=S0100-204X2012000900025&lng=en&tlng=endenominação de origemárvore de decisãomodelo digital de elevaçãosistemas de informação geográficarede neuralmapeamento do solo |
collection |
DOAJ |
language |
English |
format |
Article |
sources |
DOAJ |
author |
Eliana Casco Sarmento Elvio Giasson Eliseu Weber Carlos Alberto Flores Heinrich Hasenack |
spellingShingle |
Eliana Casco Sarmento Elvio Giasson Eliseu Weber Carlos Alberto Flores Heinrich Hasenack Prediction of soil orders with high spatial resolution: response of different classifiers to sampling density Pesquisa Agropecuária Brasileira denominação de origem árvore de decisão modelo digital de elevação sistemas de informação geográfica rede neural mapeamento do solo |
author_facet |
Eliana Casco Sarmento Elvio Giasson Eliseu Weber Carlos Alberto Flores Heinrich Hasenack |
author_sort |
Eliana Casco Sarmento |
title |
Prediction of soil orders with high spatial resolution: response of different classifiers to sampling density |
title_short |
Prediction of soil orders with high spatial resolution: response of different classifiers to sampling density |
title_full |
Prediction of soil orders with high spatial resolution: response of different classifiers to sampling density |
title_fullStr |
Prediction of soil orders with high spatial resolution: response of different classifiers to sampling density |
title_full_unstemmed |
Prediction of soil orders with high spatial resolution: response of different classifiers to sampling density |
title_sort |
prediction of soil orders with high spatial resolution: response of different classifiers to sampling density |
publisher |
Embrapa Informação Tecnológica |
series |
Pesquisa Agropecuária Brasileira |
issn |
1678-3921 |
publishDate |
2012-09-01 |
description |
The objective of this work was to evaluate sampling density on the prediction accuracy of soil orders, with high spatial resolution, in a viticultural zone of Serra Gaúcha, Southern Brazil. A digital elevation model (DEM), a cartographic base, a conventional soil map, and the Idrisi software were used. Seven predictor variables were calculated and read along with soil classes in randomly distributed points, with sampling densities of 0.5, 1, 1.5, 2, and 4 points per hectare. Data were used to train a decision tree (Gini) and three artificial neural networks: adaptive resonance theory, fuzzy ARTMap; self‑organizing map, SOM; and multi‑layer perceptron, MLP. Estimated maps were compared with the conventional soil map to calculate omission and commission errors, overall accuracy, and quantity and allocation disagreement. The decision tree was less sensitive to sampling density and had the highest accuracy and consistence. The SOM was the less sensitive and most consistent network. The MLP had a critical minimum and showed high inconsistency, whereas fuzzy ARTMap was more sensitive and less accurate. Results indicate that sampling densities used in conventional soil surveys can serve as a reference to predict soil orders in Serra Gaúcha. |
topic |
denominação de origem árvore de decisão modelo digital de elevação sistemas de informação geográfica rede neural mapeamento do solo |
url |
http://www.scielo.br/scielo.php?script=sci_arttext&pid=S0100-204X2012000900025&lng=en&tlng=en |
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