Anais da Academia Brasileira de Ciências (Oct 2013)

Assessing rainfall erosivity indices through synthetic precipitation series and artificial neural networks

  • ROBERTO A. CECILIO,
  • MICHEL C. MOREIRA,
  • JOSE EDUARDO M. PEZZOPANE,
  • FERNANDO F. PRUSKI,
  • DANILO C. FUKUNAGA

DOI
https://doi.org/10.1590/0001-3765201398012
Journal volume & issue
Vol. 85, no. 4
pp. 1523 – 1535

Abstract

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The rainfall parameter that expresses the capacity to promote soil erosion is called rainfall erosivity (R), and is commonly represented by the indexes EI30 and KE>25. The calculations of these indexes requires pluviographical records, that are difficult to obtain in Brazil. This paper describes the use of synthetic rainfall series to compute EI30 and KE>25 in Espírito Santo State (Brazil). Artificial neural networks (ANNs) were also developed to spatially interpolate R values in Espírito Santo. EI30 and KE>25 indexes values were close to those calculated on a homogeneous area according to the similarity of rainfall distribution; indicating the applicability of the use of synthetic rainfall series to estimate the R factor. ANNs had a better performance than Inverse Distance Weighted and Kriging to spatially interpolate rainfall erosivity values in the State of Espírito Santo.

Keywords