Streamflow forecasting in Tocantins river basins using machine learning

Author:

Duarte Victor Braga Rodrigues1ORCID,Viola Marcelo Ribeiro2,Giongo Marcos1,Uliana Eduardo Morgan3,de Mello Carlos Rogério2

Affiliation:

1. a Center for Environmental Monitoring and Fire Management, Forest Engineering Department, Federal University of Tocantins, Gurupi, TO 77404-970, Brazil

2. b Water Resources Department, Federal University of Lavras, Lavras, MG 37200-900, Brazil

3. c Institute of Agrarian and Environmental Sciences, Federal University of Mato Grosso, Sinop, MT 78557-267, Brazil

Abstract

Abstract Understanding the behavior of the river regime in watersheds is fundamental for water resources planning and management. Empirical hydrological models are powerful tools for this purpose, with the selection of input variables as one of the main steps of the modeling. Therefore, the objectives of this study were to select the best input variables using the genetic, recursive feature elimination, and vsurf algorithms, and to evaluate the performance of the random forest, artificial neural networks, support vector regression, and M5 model tree models in forecasting daily streamflow in Sono (SRB), Manuel Alves da Natividade (MRB), and Palma (PRB) River basins. Based on several performance indexes, the best model in all basins was the M5 model tree, which showed the best performances in SRB and PRB using the variables selected by the recursive feature elimination algorithm. The good performance of the evaluated models allows them to be used to assist different demands faced by the water resources management in the studied river basins, especially the M5 model tree model using streamflow lags, average rainfall, and evapotranspiration as inputs.

Funder

Coordenação de Aperfeiçoamento de Pessoal de Nível Superior

Conselho Nacional de Desenvolvimento Científico e Tecnológico

Publisher

IWA Publishing

Subject

Water Science and Technology

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5. Agência Nacional de Águas – ANA 2015 Conjuntura dos recursos hídricos no Brasil: regiões hidrográficas brasileiras (Situation of Water Resources in Brazil: Brazilian Hydrographic Regions). Brasília.

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