Use of machine learning as a tool for determining fire management units in the brazilian atlantic forest.

Journal: Anais da Academia Brasileira de Ciencias
Published Date:

Abstract

Geoprocessing techniques are generally applied in natural disaster risk management due to their ability to integrate and visualize different sets of geographic data. The objective of this study was to evaluate the capacity of classification and regression tree (CART) to assess fire risk. MCD45A1 product of the burnt area, relative to a 16-year period (2000-2015) was used to obtain a fire occurrence map, from center points of the raster, using a kernel density approach. The resulting map was then used as a response variable for CART analysis with fire influence variables used as predictors. A total of 12 predictors were determined from several databases, including environmental, physical, and socioeconomic aspects. Rules generated by the regression process allowed to of define different risk levels, expressed in 35 management units, and used to produce a fire prediction map. Results of the regression process (r = 0.94 and r² = 0.88) demonstrate the capability of the CART algorithm in highlighting hierarchical relationships among predictors, while the model's easy interpretability provides a solid basis for decision making. This methodology can be expanded in other environmental risk analysis studies and applied to any area of the globe on a regional scale.

Authors

  • Ronie S Juvanhol
    Federal University of Piaui/UFPI, BR 135, Km 03, Planalto Horizonte, 64900-000 Bom Jesus, PI, Brazil.
  • Nilton Cesar Fiedler
    Federal University of Espírito Santo/UFES, PostGraduate Programme in Forest Sciences, Av. Governador Lindemberg, 316, 29550-000, Jerônimo Monteiro, ES, Brazil. Electronic address: fiedler@cnpq.pq.br.
  • Alexandre R Dos Santos
    Universidade Federal do Espírito Santo/UFES, Departamento de Engenharia Rural, Alto Universitário, s/n, 29500-000 Alegre, ES, Brazil.
  • Telma M O Peluzio
    Federal Institute of Espírito Santo, Campus Alegre, Rodovia ES 482, Km 47, 29500-000 Alegre, ES, Brazil.
  • Wellington B DA Silva
    Federal University of Espírito Santo/UFES, Department of Rural Engineering, Alto Universitário, s/n, 29500-000 Alegre, ES, Brazil.
  • Christiano Jorge G Pinheiro
    Federal University of Espírito Santo/UFES, Department of Rural Engineering, Alto Universitário, s/n, 29500-000 Alegre, ES, Brazil.
  • Helbecy Cristino P DE Sousa
    Federal University of Piaui/UFPI, BR 135, Km 03, Planalto Horizonte, 64900-000 Bom Jesus, PI, Brazil.