Revista Ambiente & Água (Feb 2021)

Probability distribution of heavy rainfall and determination of IDF in the city of Caruaru – PE

  • Kevin Matheus Correia Mendes,
  • Aline Lima de Oliveira,
  • Lucas Ravellys Pyrrho de Alcântara,
  • Adriana Thays Araújo Alves,
  • Severino Martins dos Santos Neto,
  • Artur Paiva Coutinho,
  • Suzana Maria Gico Lima Montenegro,
  • José Moura Soares,
  • Antonio Celso Dantas Antonino

DOI
https://doi.org/10.4136/ambi-agua.2555
Journal volume & issue
Vol. 16, no. 1
pp. 1 – 15

Abstract

Read online

In the design of hydraulic engineering works, the estimation of project precipitation is fundamental. Rain forecasting depends on several factors, which makes estimating it simpler with stochastic processes. In this sense, the distributions of Gumbel (GUM), Log-Normal two-parameter (LN2P), Generalized Extreme Value (GEV), Fréchet with two and three parameters (FRE2P and FRE3P), Weibull with two and three parameters (W2P and W3P), Gamma (GAM2P), and Pareto with two and three parameters (PAR2P and PAR3P) were evaluated to the annual maximum daily precipitation (AMDP) adjustment in the city of Caruaru (Pernambuco´s Agreste). A series of AMDP was used, based on data obtained from the National Water Agency (Agência Nacional de Águas - ANA). Anderson Darling (AD), Kolmogorov-Smirnov (KS) and Pearson Chi-square (χ2) adherence tests, and the determination coefficient (R²) were used to assess the adherence quality of the distributions. The Likelihood Method presented a better fit quality than the Moment Method. The GEV distribution obtained the best results for the AD test in both methods to estimate the parameters. Among the adherence tests used, the AD test was considered the most restrictive. To verify the quality parameters’ fitness to the IDF relations, the Willmott performance coefficient was used. For all distributions employed in this study, Willmott performance coefficients presented values above 0.99, giving a perfect fit of IDF relations with determination coefficients close to 1.0.

Keywords