Daily rainfall estimates considering seasonality from a MODWT-ANN hybrid model
Analyses based on precipitation data may be limited by the quality of the data, the size of the available historical series and the efficiency of the adopted methodologies; these factors are especially limiting when conducting analyses at the daily scale. Thus, methodologies are sought to overcome t...
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doaj-ee38483f62c543cfbe4e567cb7061b5d2021-09-06T19:41:41ZengSciendoJournal of Hydrology and Hydromechanics0042-790X2021-03-01691132810.2478/johh-2020-0043Daily rainfall estimates considering seasonality from a MODWT-ANN hybrid modelGomes Evanice Pinheiro0Blanco Claudio José Cavalcante1Civil Engineering Graduate Program, Federal University of Pará – PPGEC/ITEC/UFPA, Av. Augusto Corrêa, 01, 66075-110, Belém, Brazil.School of Environmental and Sanitary Engineering, Federal University of Pará – FAESA/ITEC/UFPA, Av. Augusto Corrêa, 01, 66075-110, Belém, Brazil.Analyses based on precipitation data may be limited by the quality of the data, the size of the available historical series and the efficiency of the adopted methodologies; these factors are especially limiting when conducting analyses at the daily scale. Thus, methodologies are sought to overcome these barriers. The objective of this work is to develop a hybrid model through the maximum overlap discrete wavelet transform (MODWT) to estimate daily rainfall in homogeneous regions of the Tocantins-Araguaia Hydrographic Region (TAHR) in the Amazon (Brazil). Data series from the Climate Prediction Center morphing (CMORPH) satellite products and rainfall data from the National Water Agency (ANA) were divided into seasonal periods (dry and rainy), which were adopted to train the model and for model forecasting. The results show that the hybrid model had a good performance when forecasting daily rainfall using both databases, indicated by the Nash–Sutcliffe efficiency coefficients (0.81–0.95), thus, the hybrid model is considered to be potentially useful for modelling daily rainfall.https://doi.org/10.2478/johh-2020-0043artificial intelligenceclimate prediction center morphingdry and rainy periodsamazon |
collection |
DOAJ |
language |
English |
format |
Article |
sources |
DOAJ |
author |
Gomes Evanice Pinheiro Blanco Claudio José Cavalcante |
spellingShingle |
Gomes Evanice Pinheiro Blanco Claudio José Cavalcante Daily rainfall estimates considering seasonality from a MODWT-ANN hybrid model Journal of Hydrology and Hydromechanics artificial intelligence climate prediction center morphing dry and rainy periods amazon |
author_facet |
Gomes Evanice Pinheiro Blanco Claudio José Cavalcante |
author_sort |
Gomes Evanice Pinheiro |
title |
Daily rainfall estimates considering seasonality from a MODWT-ANN hybrid model |
title_short |
Daily rainfall estimates considering seasonality from a MODWT-ANN hybrid model |
title_full |
Daily rainfall estimates considering seasonality from a MODWT-ANN hybrid model |
title_fullStr |
Daily rainfall estimates considering seasonality from a MODWT-ANN hybrid model |
title_full_unstemmed |
Daily rainfall estimates considering seasonality from a MODWT-ANN hybrid model |
title_sort |
daily rainfall estimates considering seasonality from a modwt-ann hybrid model |
publisher |
Sciendo |
series |
Journal of Hydrology and Hydromechanics |
issn |
0042-790X |
publishDate |
2021-03-01 |
description |
Analyses based on precipitation data may be limited by the quality of the data, the size of the available historical series and the efficiency of the adopted methodologies; these factors are especially limiting when conducting analyses at the daily scale. Thus, methodologies are sought to overcome these barriers. The objective of this work is to develop a hybrid model through the maximum overlap discrete wavelet transform (MODWT) to estimate daily rainfall in homogeneous regions of the Tocantins-Araguaia Hydrographic Region (TAHR) in the Amazon (Brazil). Data series from the Climate Prediction Center morphing (CMORPH) satellite products and rainfall data from the National Water Agency (ANA) were divided into seasonal periods (dry and rainy), which were adopted to train the model and for model forecasting. The results show that the hybrid model had a good performance when forecasting daily rainfall using both databases, indicated by the Nash–Sutcliffe efficiency coefficients (0.81–0.95), thus, the hybrid model is considered to be potentially useful for modelling daily rainfall. |
topic |
artificial intelligence climate prediction center morphing dry and rainy periods amazon |
url |
https://doi.org/10.2478/johh-2020-0043 |
work_keys_str_mv |
AT gomesevanicepinheiro dailyrainfallestimatesconsideringseasonalityfromamodwtannhybridmodel AT blancoclaudiojosecavalcante dailyrainfallestimatesconsideringseasonalityfromamodwtannhybridmodel |
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1717765622240116736 |