The sensitivity of evapotranspiration for land uses and topography in Cerrado Biome – Brazil

Autores

  • Lucas Augusto Pereira da Silva Universidade Federal de Uberlândia Doutorando no Programa de Pós-Graduação em Geografia – PPGEO/UFU
  • Édson Luís Bolfe Embrapa Secretaria de Inteligência e Relações Estratégicas
  • Cristiano Marcelo Pereira de Souza Universidade Estadual de Montes Claros Programa de Pós Graduação em Geografia – PPGEO/UNIMONTES
  • Roberto Filgueiras Universidade Federal de Viçosa Programa de Pós-Graduação em Engenharia Agrícola – POSDEA/UFV

DOI:

https://doi.org/10.26512/2236-56562021e40281

Palavras-chave:

Sensoriamento Remoto, SAFER, GLM, Regiões Altimétricas

Resumo

Evapotranspiration (ET) is a crucial element in the spatiotemporal dynamics of moisture, energy, and heat, and is related to climatic, pedogeomorphological, and phytophysiognomic aspects of the landscape. Therefore, estimating ET requires dynamic and integrated temporal analysis with biophysical landscape factors. The study aimed to analyze the behavior of ET through the analysis of land use and land cover and topographic in time series. The Simple Algorithm for Evapotranspiration Recovery (SAFER) model was used to obtain the variable ET in the periods of 01/21, 02/22, 05/13 and 06/30/2019 (variables). A database of explanatory covariates was constructed, including land use and land cover, satellite image data (Landsat-8) and digital elevation model (SRTM). The values of variables and covariates were extracted into a grid of points and separated for three altimetric conditions, and the linear Gaussian Models (GLM) were applied to the point data. The most explanatory spectral covariates for the ET variation were Albedo and Surface Temperature. And the covariates related to topography were Digital Elevation Model and Topographic Moisture Index. In general, the wet period presents a higher ET rate (2.06 mm d-¹). Forests generated the highest ET regardless of period (1.62 mm d-¹ to 4.03 mm d-¹). Elevated topography also influences the increase in ET in relation to the same lower altimetry classes (A2 and A3). This influence is associated with the altitude dynamics and intrinsic elements of the region, such as the marshy environment in the A3 region, where the highest ET values occurred. This work stands out from its peers for addressing the influence of landscape aspects on the knowledge of evapotranspiration variation, a vanguard theme in the scope of spatial analysis.

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Publicado

01/21/2022

Como Citar

Pereira da Silva, L. A. ., Bolfe, Édson L. ., Pereira de Souza, C. M. ., & Filgueiras, R. . . (2022). The sensitivity of evapotranspiration for land uses and topography in Cerrado Biome – Brazil. Revista Espaço E Geografia, 24(1), 132–148. https://doi.org/10.26512/2236-56562021e40281

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