Hybrid Model of Artificial Neural Networks and Principal Component Decomposition for Predicting Greenhouse Gas Emissions in the Brazilian MATOPIBA Region

Authors

  • Milena Monteiro Feitosa

  • E Jose De Jesus Sousa Lemos

Keywords:

brazilian agriculture, EMBRAPA, change in land use, cerrado biome, evolution of GHG emissions

Abstract

Greenhouse gas GHG emissions in agricultural production represent a global environmental challenge and it is necessary to understand the factors that influence them to develop sustainable practices The general objective of this research is to investigate some of the factors that probably influence GHG emissions and reductions in agricultural production in the MATOPIBA region of Brazil between 2006 and 2017 A hybrid methodology was used and the first stage used linear models decomposition into principal components and non-linear models artificial neural networks to determine the relationships that should exist between the dependent variable GHG emissions and 11 variables The data was obtained from the 2006 and 2017 Brazilian Agricultural Census MapBiomas SEEG and NOAA The results showed that of the 373 municipalities that make up MATOPIBA only 100 did not see an increase in GHG emissions between 2006 and 2017 The principal component decomposition method reduced the 11 initial variables into 3 orthogonal and unobserved variables In one of the unobserved variables 4 of the five variables that are supposed to cause a reduction in GHG emissions were brought together The 5 variables thought to have caused an increase in GHG emissions were condensed into 5

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How to Cite

Hybrid Model of Artificial Neural Networks and Principal Component Decomposition for Predicting Greenhouse Gas Emissions in the Brazilian MATOPIBA Region. (2025). Global Journal of Human-Social Science, 25(E1), 69-80. https://testing.socialscienceresearch.org/index.php/GJHSS/article/view/104316

References

Hybrid Model of Artificial Neural Networks

Published

2025-04-26

How to Cite

Hybrid Model of Artificial Neural Networks and Principal Component Decomposition for Predicting Greenhouse Gas Emissions in the Brazilian MATOPIBA Region. (2025). Global Journal of Human-Social Science, 25(E1), 69-80. https://testing.socialscienceresearch.org/index.php/GJHSS/article/view/104316