Akademska digitalna zbirka SLovenije - logo
E-viri
Celotno besedilo
Recenzirano
  • Visible and near infrared s...
    de Santana, Felipe Bachion; de Souza, André Marcelo; Poppi, Ronei Jesus

    Spectrochimica acta. Part A, Molecular and biomolecular spectroscopy, 02/2018, Letnik: 191
    Journal Article

    This study evaluates the use of visible and near infrared spectroscopy (Vis-NIRS) combined with multivariate regression based on random forest to quantify some quality soil parameters. The parameters analyzed were soil cation exchange capacity (CEC), sum of exchange bases (SB), organic matter (OM), clay and sand present in the soils of several regions of Brazil. Current methods for evaluating these parameters are laborious, timely and require various wet analytical methods that are not adequate for use in precision agriculture, where faster and automatic responses are required. The random forest regression models were statistically better than PLS regression models for CEC, OM, clay and sand, demonstrating resistance to overfitting, attenuating the effect of outlier samples and indicating the most important variables for the model. The methodology demonstrates the potential of the Vis-NIR as an alternative for determination of CEC, SB, OM, sand and clay, making possible to develop a fast and automatic analytical procedure. Display omitted •Analytical methodology based on Vis-NIRS spectroscopy and random forest•Determination of quality soil parameters as CEC, SB, organic matter, clay and sand•Random forest was statistically superior to PLS regression.•Random forest attenuates the effect of outlier samples.•Fast and automatic alternative methodology for soil analysis