Smart Agricultural Technology (Aug 2023)

Predicting coffee water potential from spectral reflectance indices with neural networks

  • Pedro Henrique Nunes,
  • Eduardo Vilela Pierangeli,
  • Meline Oliveira Santos,
  • Helbert Rezende Oliveira Silveira,
  • Christiano Sousa Machado de Matos,
  • Alessandro Botelho Pereira,
  • Helena Maria Ramos Alves,
  • Margarete Marin Lordelo Volpato,
  • Vânia Aparecida Silva,
  • Danton Diego Ferreira

Journal volume & issue
Vol. 4
p. 100213

Abstract

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Leaf water potential is one of the main parameters used to assess water relations in plants by revealing levels of tissue hydration. It is commonly measured with the Scholander pressure chamber; which demands hard work and a time-consuming process. On the other hand, there is a diversified literature demonstrating the assessments of several plant variables via indices of leaf reflectance, that also present direct and indirect relationships with water potential. The aim of this work is to exploit spectral variables to estimate the water potential of coffee plants by using computational intelligence approaches. Data was collected in the cities of Santo Antônio do Amparo and Diamantina, Brazil, from 2014 to 2018. Two neural networks (Multi-Layer Perceptron) were designed to estimate and classify leaf water potential based on spectral variables. Moreover, a classifier and an estimator based on decision tree were also developed. The results showed that the artificial neural network model was superior as an estimator when compared with the decision tree model, with an average confidence index of 0.8550. On the other hand, decision trees showed a slightly higher performance as a classifier, with an overall accuracy of 88.8% and a Kappa index of 70.07%. We concluded that the leaf reflectance indices may be properly used to build accurate models for estimating coffee water potential. The indices PRI, NDVI, CRI1 and SIPI were the most relevant ones for estimating and classifying the coffee water potential.

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