Streamflow regionalization in Brazil: Traditional methods and state of the art

Author:

Duarte Sérgio N.1ORCID,Wolff Wagner1ORCID,Nascimento Jéssica G.2ORCID,Lopes Tárcio R.3ORCID,Charles Thaís da S.1ORCID,Marques Patrícia A. A.1ORCID,Pacheco Adriano B.4ORCID,Ricardo Hugo C.1ORCID

Affiliation:

1. Universidade de São Paulo, Brazil

2. University of Nebraska, USA

3. Universidade Estadual de Maringá, Brazil

4. Universidade Federal Rural da Amazônia, Brazil

Abstract

ABSTRACT Water resources management aims to solve problems arising from intensive use of water. The proper management of this resource is based on understanding water availability, often using information from hydrometric stations; flow data is the most important information. The availability of information on river flows is often insufficient for all regions of interest. A technique called hydrological regionalization can be an alternative for obtaining information on streamflow. The objective of this study was to review the main regionalization techniques used, their advantages and limitations, as well as perspectives for the future. Traditional and widely used methods for forecasting hydrological variable, such as spatial proximity and multiple linear regression, were addressed, as well as new technologies, such as the geostatistical approach, techniques using volume balance in watersheds based on remote sensing products, and machine learning techniques. These techniques allow working with several physical characteristics of basins, generally ensuring better performances than the multiple linear regression. Further advancements in this area of knowledge are expected shortly, as the great potential of machine learning has been explored only to a small extent for hydrological regionalization purposes.

Publisher

FapUNIFESP (SciELO)

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