Agronomy (Jul 2024)

Performance of Machine Learning Models in Predicting Common Bean (<i>Phaseolus vulgaris</i> L.) Crop Nitrogen Using NIR Spectroscopy

  • Marcos Silva Tavares,
  • Carlos Augusto Alves Cardoso Silva,
  • Jamile Raquel Regazzo,
  • Edson José de Souza Sardinha,
  • Thiago Lima da Silva,
  • Peterson Ricardo Fiorio,
  • Murilo Mesquita Baesso

DOI
https://doi.org/10.3390/agronomy14081634
Journal volume & issue
Vol. 14, no. 8
p. 1634

Abstract

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Beans are the main direct source of protein consumed by humans in the world and their productivity is directly linked to nitrogen. The short crop cycle imposes the need for fast methodologies for N quantification. In this work, we evaluated the performance of four machine learning algorithms in nitrogen estimation using NIR spectroscopy, comparing predictions between complete spectral data and only intervals obtained with the variable importance in projection (VIP). Doses of 0, 50, 100, and 150 kg ha−1 of N were applied and leaf reflectance was collected. Weka software was used to test the algorithms. The selection of the most effective spectral zones was made with the variable importance in projection (VIP). The intervals of 700–740 nm and 983–995 nm were considered the most important for the study of nitrogen. More efficient predictions were verified for RF and KNN models (R2 = 0.89, RMSE = 2.23 g kg−1; and R2 = 0.80, RMSE = 2.89 g kg−1, respectively) when only the most important spectral regions were included. The efficiency of nitrogen prediction based on NIR reflectance combined with machine learning was verified, which can serve as an important tool in precision agriculture.

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