A coupled system based on Differential Evolution for the determination of Rainfall intensity equations
Revista Brasileira de Recursos Hídricos
Brazilian Journal of Water Resources
Versão On-line ISSN 2318-0331
RBRH, Porto Alegre, v. 23, e55, 2018
Scientific/Technical Article
https://doi.org/10.1590/2318-0331.231820170165
A coupled system based on Differential Evolution for the determination of Rainfall
intensity equations
Um sistema acoplado baseado em Evolução Diferencial para determinação
de equações de chuvas intensas
Guilherme José Cunha Gomes1 and Eurípedes do Amaral Vargas Júnior2
Departamento de Estradas de Rodagem do Espírito Santo, Vitória, ES, Brasil
1
Pontifícia Universidade Católica do Rio de Janeiro, Rio de Janeiro, RJ, Brasil
2
E-mails: (GJCG), (EAVJ)
Received: October 10, 2017 - Revised: August 05, 2018 - Accepted: September 24, 2018
ABSTRACT
Rainfall intensity equations are fundamental in hydrological studies of road design, which require a project rainfall definition to
estimate the project flow and the subsequent design of the hydraulic structure. This paper develops an integrated framework for
rainfall intensity equations analyses from global optimization via Differential Evolution. The code was specially developed to facilitate
the Gumbel model adjustment in the frequency analysis of annual series, as well as the intensity-duration-frequency model fit, without
prior knowledge about the parameters of both models. The developed system was evaluated by using Markov chain Monte Carlo
simulation, that search efficiently the model parameter space in pursuit of posterior samples and the posterior prediction uncertainty
for both models. The results indicate that simulations are shown to be in good agreement with the measured flow and precipitation
data. The optimal parameters obtained with the developed framework agreed with the maximum a-posteriori value of the Monte Carlo
simulations. The paper illustrates explicitly the benefits of the method using real-world precipitation data collected for a hydrologic
study of a highway design.
Keywords: Precipitation; Rainfall intensity equations; Global optimization; Differential Evolution; Highway design.
RESUMO
As equações de chuvas intensas são fundamentais em estudos hidrológicos de projetos rodoviários, os quais requerem a definição
da chuva de projeto para estimativa da vazão de projeto e o posterior dimensionamento da estrutura hidráulica. Neste trabalho,
desenvolveu-se um sistema computacional para a obtenção da equação de chuvas intensas, a partir de otimização global via Evolução
Diferencial. O sistema foi especialmente projetado para facilitar o ajuste do modelo de Gumbel na análise de frequência de séries
anuais, bem como o ajuste do modelo da curva intensidade-duração-frequência, sem que o usuário necessite conhecimento prévio
sobre os parâmetros de ambos os modelos. Simulações Monte Carlo via cadeia de Markov foram realizadas para avaliar a metodologia
desenvolvida através da distribuição posterior dos parâmetros e da incerteza preditiva de ambos os modelos. Os resultados obtidos
indicaram bons ajustes para os modelos de Gumbel e da equação de chuvas intensas com o uso da otimização global via Evolução
Diferencial, uma vez que os parâmetros ótimos obtidos pelo sistema concordaram com o valor máximo a-posteriori oriundo das
simulações Monte Carlo. Um estudo de caso envolvendo a obtenção da equação de chuvas em um estudo hidrológico de projeto
rodoviário ilustram a usabilidade e aplicabilidade do sistema e da metodologia desenvolvida.
Palavras-chave: Precipitação; Equação de chuvas intensas; Otimização global; Evolução Diferencial; Projetos rodoviários.
This is an Open Access article distributed under the terms of the Creative Commons Attribution License, which permits unrestricted use, distribution,
and reproduction in any medium, provided the original work is properly cited.
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A coupled system based on Differential Evolution for the determination of Rainfall intensity equations
INTRODUCTION
Rainfall controls a very wide range of processes on the
Earth´s surface. However, the behavior of exceptional rainfall is
hard to determine, and is generally handled in a probabilistic way.
These rains can be determined through rainfall intensity equations,
which are broadly utilized for dimensioning drainage structures with
different purposes, including agricultural (VIVEKANANDAN,
2017) and urban drainage systems (SABÓIA et al., 2017), channels
(WRIGHT; SMITH; BAECK, 2014), and engineering structures
in road projects (KANG et al., 2009). A precise characterization
of rainfall intensity equations is therefore vital for the appropriate
sizing of different drainage structures.
Different probabilistic models (e.g. normal, log-normal,
and Gumbel) can be used to obtain an event (rainfall or discharge)
that can be exceeded, on average, once at every specified period of
time (usually years). Such models, non-linear in their parameters,
consist in the probability cumulative functions of each statistical
distribution. From the historical observations of the event
(e.g. annual maximum daily precipitations), the statistical model
is mixed with the observed events through the estimation of
parameters that provide better adjustment of the employed model
to the observed rainfall data. Among the statistical distributions,
the Gumbel model is widely used for estimating precipitation or
discharge data regarding a certain return period (Tr ). A detailed
description of the adjustment of statistical distributions to data
on rainfall events is provided by Tucci (1993), including different
techniques for estimating the parameters of the models. After this
optimization process is completed, the maximum daily precipitations
are determined for different values of Tr .
The rainfall intensity equation, also called intensityduration-frequency (IDF) curve, provides estimates of rainfall
intensity concerning different rainfall durations and different
values of Tr . The IDF relations, obtained from the disaggregation
of the annual maximum daily precipitations, constitute one of the
elements necessary for calculating the design discharge, i.e. the
discharge employed for the sizing of drainage structures. Different
models for the IDF curves have been proposed in the literature
(KOUTSOYIANNIS; KOZONIS; MANETAS, 1998) and, like
the probability cumulative functions of the statistical distributions,
they require techniques for estimating the parameters of adjustment
between calibration data and models.
Different techniques are available for estimating the
parameters of the Gumbel model. These techniques include
the method of moments (TUCCI, 1993; MADSEN et al., 2002;
MOHYMONT; DEMARÉE; FAKA, 2004), maximum likelihood
estimation (CHOW; MAIDMENT; MAYS, 1988; FADHEL et al.,
2017), approximate Bayesian computations (DEMIRHAN, 2017),
among others. For the IDF equations, the search for the model
parameters can be performed through linear regression with the
linearization of the model (SILVA et al., 2012), besides iterative
methods or non-l (...truncated)