Biometric characteristics and canopy reflectance association for early-stage sugarcane biomass prediction

ABSTRACT: Knowing the spatial variability of sugarcane biomass in the early stages of development may help growers in their management decision-making. Proximal canopy sensing is a promising technology that can identify this variability but is limited to quantifying plant-specific parameters. In this study, we evaluated whether biometric variables integrated with canopy reflectance data can assist in the generation of models for early-stage sugarcane biomass prediction. To substantiate this assertion, four sugarcane-producing fields were measured with an active crop canopy sensor and 30 sampling plots were selected for manually quantifying chlorophyll content, plant height, stalk number and aboveground biomass. We determined that Random Forest and Multiple Linear Regression models are similarly able to predict biomass, and that associating biometric variables such as number of stalks and plant height with reflectance data can assist model performance, depending on the attributes selected. This indicates that, when estimating biomass in the early stages, sugarcane growers can carry out site-specific management in order to increase yield and reduce the use of inputs.

Saved in:
Bibliographic Details
Main Authors: Rocha,Murillo Grespan da, Barros,Flávio Margarito Martins de, Oliveira,Stanley Robson de Medeiros, Amaral,Lucas Rios do
Format: Digital revista
Language:English
Published: Escola Superior de Agricultura "Luiz de Queiroz" 2019
Online Access:http://old.scielo.br/scielo.php?script=sci_arttext&pid=S0103-90162019001400274
Tags: Add Tag
No Tags, Be the first to tag this record!
id oai:scielo:S0103-90162019001400274
record_format ojs
spelling oai:scielo:S0103-901620190014002742019-03-18Biometric characteristics and canopy reflectance association for early-stage sugarcane biomass predictionRocha,Murillo Grespan daBarros,Flávio Margarito Martins deOliveira,Stanley Robson de MedeirosAmaral,Lucas Rios do Random forest canopy sensor vegetation indices precision farming data mining ABSTRACT: Knowing the spatial variability of sugarcane biomass in the early stages of development may help growers in their management decision-making. Proximal canopy sensing is a promising technology that can identify this variability but is limited to quantifying plant-specific parameters. In this study, we evaluated whether biometric variables integrated with canopy reflectance data can assist in the generation of models for early-stage sugarcane biomass prediction. To substantiate this assertion, four sugarcane-producing fields were measured with an active crop canopy sensor and 30 sampling plots were selected for manually quantifying chlorophyll content, plant height, stalk number and aboveground biomass. We determined that Random Forest and Multiple Linear Regression models are similarly able to predict biomass, and that associating biometric variables such as number of stalks and plant height with reflectance data can assist model performance, depending on the attributes selected. This indicates that, when estimating biomass in the early stages, sugarcane growers can carry out site-specific management in order to increase yield and reduce the use of inputs.info:eu-repo/semantics/openAccessEscola Superior de Agricultura "Luiz de Queiroz"Scientia Agricola v.76 n.4 20192019-07-01info:eu-repo/semantics/articletext/htmlhttp://old.scielo.br/scielo.php?script=sci_arttext&pid=S0103-90162019001400274en10.1590/1678-992x-2017-0301
institution SCIELO
collection OJS
country Brasil
countrycode BR
component Revista
access En linea
databasecode rev-scielo-br
tag revista
region America del Sur
libraryname SciELO
language English
format Digital
author Rocha,Murillo Grespan da
Barros,Flávio Margarito Martins de
Oliveira,Stanley Robson de Medeiros
Amaral,Lucas Rios do
spellingShingle Rocha,Murillo Grespan da
Barros,Flávio Margarito Martins de
Oliveira,Stanley Robson de Medeiros
Amaral,Lucas Rios do
Biometric characteristics and canopy reflectance association for early-stage sugarcane biomass prediction
author_facet Rocha,Murillo Grespan da
Barros,Flávio Margarito Martins de
Oliveira,Stanley Robson de Medeiros
Amaral,Lucas Rios do
author_sort Rocha,Murillo Grespan da
title Biometric characteristics and canopy reflectance association for early-stage sugarcane biomass prediction
title_short Biometric characteristics and canopy reflectance association for early-stage sugarcane biomass prediction
title_full Biometric characteristics and canopy reflectance association for early-stage sugarcane biomass prediction
title_fullStr Biometric characteristics and canopy reflectance association for early-stage sugarcane biomass prediction
title_full_unstemmed Biometric characteristics and canopy reflectance association for early-stage sugarcane biomass prediction
title_sort biometric characteristics and canopy reflectance association for early-stage sugarcane biomass prediction
description ABSTRACT: Knowing the spatial variability of sugarcane biomass in the early stages of development may help growers in their management decision-making. Proximal canopy sensing is a promising technology that can identify this variability but is limited to quantifying plant-specific parameters. In this study, we evaluated whether biometric variables integrated with canopy reflectance data can assist in the generation of models for early-stage sugarcane biomass prediction. To substantiate this assertion, four sugarcane-producing fields were measured with an active crop canopy sensor and 30 sampling plots were selected for manually quantifying chlorophyll content, plant height, stalk number and aboveground biomass. We determined that Random Forest and Multiple Linear Regression models are similarly able to predict biomass, and that associating biometric variables such as number of stalks and plant height with reflectance data can assist model performance, depending on the attributes selected. This indicates that, when estimating biomass in the early stages, sugarcane growers can carry out site-specific management in order to increase yield and reduce the use of inputs.
publisher Escola Superior de Agricultura "Luiz de Queiroz"
publishDate 2019
url http://old.scielo.br/scielo.php?script=sci_arttext&pid=S0103-90162019001400274
work_keys_str_mv AT rochamurillogrespanda biometriccharacteristicsandcanopyreflectanceassociationforearlystagesugarcanebiomassprediction
AT barrosflaviomargaritomartinsde biometriccharacteristicsandcanopyreflectanceassociationforearlystagesugarcanebiomassprediction
AT oliveirastanleyrobsondemedeiros biometriccharacteristicsandcanopyreflectanceassociationforearlystagesugarcanebiomassprediction
AT amarallucasriosdo biometriccharacteristicsandcanopyreflectanceassociationforearlystagesugarcanebiomassprediction
_version_ 1756407147226202112