Applied Sciences (Jan 2022)

Quantifying Nutrient Content in the Leaves of Cowpea Using Remote Sensing

  • Julyanne Braga Cruz Amaral,
  • Fernando Bezerra Lopes,
  • Ana Caroline Messias de Magalhães,
  • Sebastian Kujawa,
  • Carlos Alberto Kenji Taniguchi,
  • Adunias dos Santos Teixeira,
  • Claudivan Feitosa de Lacerda,
  • Thales Rafael Guimarães Queiroz,
  • Eunice Maia de Andrade,
  • Isabel Cristina da Silva Araújo,
  • Gniewko Niedbała

DOI
https://doi.org/10.3390/app12010458
Journal volume & issue
Vol. 12, no. 1
p. 458

Abstract

Read online

Although hyperspectral remote sensing techniques have increasingly been used in the nutritional quantification of plants, it is important to understand whether the method shows a satisfactory response during the various phenological stages of the crop. The aim of this study was to quantify the levels of phosphorus (P), potassium (K), calcium (Ca) and zinc (Zn) in the leaves of Vigna Unguiculata (L.) Walp using spectral data obtained by a spectroradiometer. A randomised block design was used, with three treatments and twenty-five replications. The crop was evaluated at three growth stages: V4, R6 and R9. Single-band models were fitted using simple correlations. For the band ratio models, the wavelengths were selected by 2D correlation. For the models using partial least squares regression (PLSR), the stepwise method was used. The model showing the best fit was used to estimate the phosphorus content in the single-band (R² = 0.62; RMSE = 0.54 and RPD = 1.61), band ratio (R² = 0.66; RMSE = 0.65 and RPD = 1.52) and PLSR models, using data from each of the phenological stages (R² = 0.80; RMSE = 0.47 and RPD = 1.66). Accuracy in modelling leaf nutrients depends on the phenological stage, as well as the amount of data used, and is more accurate with a larger number of samples.

Keywords