Predictive modelling of chlorophyll in Mombaça grass leaves by hyperspectral reflectance data and machine learning
Miller Ruiz Sánchez,
Carlos Augusto Alves Cardoso Silva,
José Alexandre Melo Demattê
et al.
Abstract:Chlorophyll (Chl) concentration is one of the factors that affects crop productivity. This study investigated the prediction of chlorophyll concentrations in Mombaça grass' leaves using hyperspectral data and machine learning techniques. Chlorophyll variations were induced by different levels of nitrogen fertilization (104, 208, 312, and 416 kg ha−1). Spectral signatures (400–2500 nm) and chlorophyll contents of the leaves were obtained in October, November, and December 2017, and January 2018. Models were gen… Show more
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