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Prediction of soil CO2 flux in sugarcane management systems using the Random Forest approach
Tavares, Rose Luiza Moraes; Oliveira, Stanley Robson de Medeiros; Barros, Flávio Margarito Martins de; Farhate, Camila Viana Vieira; Souza, Zigomar Menezes de; La Scala Junior, Newton.
Afiliação
  • Tavares, Rose Luiza Moraes; University of Rio Verde. Escola Superior de Ciências Agrárias. Rio Verde. Brasil
  • Oliveira, Stanley Robson de Medeiros; Embrapa Agricultural Informatics. Artificial Intelligence Laboratory. Campinas. Brasil
  • Barros, Flávio Margarito Martins de; University of Campinas. Faculdade de Engenharia Agrícola. Campinas. Brasil
  • Farhate, Camila Viana Vieira; University of Campinas. Faculdade de Engenharia Agrícola. Campinas. Brasil
  • Souza, Zigomar Menezes de; University of Campinas. Faculdade de Engenharia Agrícola. Campinas. Brasil
  • La Scala Junior, Newton; São Paulo State University Júlio de Mesquita Filho. Department of Exact Sciences. Jaboticabal. Brasil
Sci. agric. ; 75(4): 281-287, jul.-ago. 2018. tab, graf
Artigo em Inglês | VETINDEX | ID: vti-728767
Biblioteca responsável: BR68.1
ABSTRACT
The Random Forest algorithm is a data mining technique used for classifying attributes in order of importance to explain the variation in an attribute-target, as soil CO2 flux. This study aimed to identify prediction of soil CO2 flux variables in management systems of sugarcane through the machine-learning algorithm called Random Forest. Two different management areas of sugarcane in the state of São Paulo, Brazil, were selected burned and green. In each area, we assembled a sampling grid with 81 georeferenced points to assess soil CO2 flux through automated portable soil gas chamber with measuring spectroscopy in the infrared during the dry season of 2011 and the rainy season of 2012. In addition, we sampled the soil to evaluate physical, chemical, and microbiological attributes. For data interpretation, we used the Random Forest algorithm, based on the combination of predicted decision trees (machine learning algorithms) in which every tree depends on the values of a random vector sampled independently with the same distribution to all the trees of the forest. The results indicated that clay content in the soil was the most important attribute to explain the CO2 flux in the areas studied during the evaluated period. The use of the Random Forest algorithm originated a model with a good fit (R2 = 0.80) for predicted and observed values.(AU)
Assuntos


Texto completo: Disponível Base de dados: VETINDEX Assunto principal: Dióxido de Carbono / Análise do Solo / Argila / Saccharum Idioma: Inglês Revista: Sci. agric. Ano de publicação: 2018 Tipo de documento: Artigo Instituição/País de afiliação: Embrapa Agricultural Informatics/Brasil / São Paulo State University Júlio de Mesquita Filho/Brasil / University of Campinas/Brasil / University of Rio Verde/Brasil

Texto completo: Disponível Base de dados: VETINDEX Assunto principal: Dióxido de Carbono / Análise do Solo / Argila / Saccharum Idioma: Inglês Revista: Sci. agric. Ano de publicação: 2018 Tipo de documento: Artigo Instituição/País de afiliação: Embrapa Agricultural Informatics/Brasil / São Paulo State University Júlio de Mesquita Filho/Brasil / University of Campinas/Brasil / University of Rio Verde/Brasil
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