Your browser doesn't support javascript.
loading
Pedotransfer functions to estimate bulk density from soil properties and environmental covariates: Rio Doce basin
Souza, Eliana de; Fernandes Filho, Elpídio Inácio; Schaefer, Carlos Ernesto Gonçalves Reynaud; Batjes, Niels H; Santos, Gerson Rodrigues dos; Pontes, Lucas Machado.
Affiliation
  • Souza, Eliana de; Federal University of Viçosa. Dept. of Soil. Viçosa. Brasil
  • Fernandes Filho, Elpídio Inácio; Federal University of Viçosa. Dept. of Soil. Viçosa. Brasil
  • Schaefer, Carlos Ernesto Gonçalves Reynaud; Federal University of Viçosa. Dept. of Soil. Viçosa. Brasil
  • Batjes, Niels H; International Soil Reference and Information Centre. World Soil Information. Wageningen. Holanda
  • Santos, Gerson Rodrigues dos; Federal University of Viçosa. Dept. of Statistic. Brasil
  • Pontes, Lucas Machado; Federal University of Viçosa. Dept. of Soil. Viçosa. Brasil
Sci. agric. ; 73(6): 525-534, 2016. tab, mapas
Article in En | VETINDEX | ID: vti-684154
Responsible library: BR68.1
Localization: BR68.1
ABSTRACT
Soil bulk density (b) data are needed for a wide range of environmental studies. However, b is rarely reported in soil surveys. An alternative to obtain b for data-scarce regions, such as the Rio Doce basin in southeastern Brazil, is indirect estimation from less costly covariates using pedotransfer functions (PTF). This study primarily aims to develop region-specific PTFs for b using multiple linear regressions (MLR) and random forests (RF). Secondly, it assessed the accuracy of PTFs for data grouped into soil horizons and soil classes. For that purpose, we compared the performance of PTFs compiled from the literature with those developed here. Two groups of data were evaluated as covariates 1) readily available soil properties and 2) maps derived from a digital elevation model and MODIS satellite imagery, jointly with lithological and pedological maps. The MLR model was applied step-wise to select significant predictors and its accuracy assessed by means of cross-validation. The PTFs developed using all data estimated b from soil properties by MLR and RF, with R2 of 0.41 and 0.51, respectively. Alternatively, using environmental covariates, RF predicted b with R2 of 0.41. Grouping criteria did not lead to a significant increase in the estimates of b. The accuracy of the regional PTFs developed for this study was greater than that found with the compiled PTFs. The best PTF will be firstly used to assess soil carbon stocks and changes in the Rio Doce basin.(AU)
Subject(s)
Key words

Full text: 1 Database: VETINDEX Main subject: Soil Analysis / Soil Characteristics / Forecasting Language: En Journal: Sci. agric / Sci. agric. Year: 2016 Document type: Article

Full text: 1 Database: VETINDEX Main subject: Soil Analysis / Soil Characteristics / Forecasting Language: En Journal: Sci. agric / Sci. agric. Year: 2016 Document type: Article