AgriEngineering (Apr 2023)

Development and Validation of a Model Based on Vegetation Indices for the Prediction of Sugarcane Yield

  • Julio Cezar Souza Vasconcelos,
  • Eduardo Antonio Speranza,
  • João Francisco Gonçalves Antunes,
  • Luiz Antonio Falaguasta Barbosa,
  • Daniel Christofoletti,
  • Francisco José Severino,
  • Geraldo Magela de Almeida Cançado

DOI
https://doi.org/10.3390/agriengineering5020044
Journal volume & issue
Vol. 5, no. 2
pp. 698 – 719

Abstract

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Currently, Brazil is the leading producer of sugarcane in the world, with self-sufficiency in the use of ethanol as a biofuel, as well as being one of the largest suppliers of sugar to the world. This study aimed to develop a predictive model for sugarcane production based on data extracted from aerial imagery obtained from drones or satellites, allowing the precise tracking of plant development in the field. A model based on a semiparametric approach associated with the inverse Gaussian distribution applied to vegetation indices (VIs), such as the Normalized Difference Vegetation Index (NDVI) and Visible Atmospherically Resistant Index (VARI), was developed with data from drone images obtained from two field experiments with randomized replications and four sugarcane varieties. These experiments were performed under conditions identical to those applied by sugarcane farmers. Further, the model validation was carried out by scaling up the analyses with data extracted from Sentinel-2 images of several commercial sugarcane fields. Very often, in countries such as Brazil, sugarcane crops occupy extensive areas. Consequently, the development of tools capable of being operated remotely automatically benefits the management of this crop in the field by avoiding laborious and time-consuming sampling and by promoting the reduction of operation costs. The results of the model application in both sources of data, i.e., data from field experiments as well as the data from commercial fields, showed a suitable level of overlap between the data of predicted yield using VIs generated from drone and satellite images with the data of verified yield obtained by measuring the production of experiments and commercial fields, indicating that the model is reliable for forecasting productivity months before the harvest time.

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