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- Title
Regionalization of GR4J model parameters for river flow prediction in Paraná, Brazil.
- Authors
Akemi Kuana, Louise; Scortegagna Almeida, Arlan; Ferreira Mercuri, Emílio Graciliano; Manfred Noe, Steffen
- Abstract
Abstract. Regionalization methods dependent on hydrological models comprise techniques for transferring calibrated parameters in instrumented watersheds (donor basins) to non-instrumented watersheds (target basins). This study aims to evaluate regionalization methods for transferring GR4J parameters and predict river flow in catchments from the south of Brazil. We created a dataset for Paraná state with daily hydrological time series (precipitation, evapotranspiration, and river flow) and watershed physiographic and climatological indices for 126 catchments. Rigorous quality control techniques were applied to recover the rainfall history from 1979 to 2020, and manual efforts were made to georeference the fluviometric stations. The regionalization methods compared in this study are based on: simple spatial proximity, physiographic-climatic similarity and regression by Random Forest. Direct regression of Q95 was calculated using Random Forest and compared with indirect methods, i.e. using regionalization of GR4J parameters. A set of 100 basins were used to train the regionalization models and another 26 catchments, pseudo non-instrumented, were used to evaluate and compare the performance of regionalizations. The GR4J model showed acceptable performances for the sample of 126 catchments, 65% of watersheds presented log-transformed Nash-Sutcliffe coefficient greater than 0.70 during validation period. According to evaluation carried out for the sample of 26 basins, regionalization based on physiographic-climatic similarity showed to be the most robust method for prediction of daily and Q95 reference flow in basins from Paraná state. When increasing the number of donor basins, the method based on spatial proximity has comparable performance to the method based on physiographic-climatic similarity. Based on the physiographic-climatic characteristics of the basins, it was possible to classify 6 distinct groups of watersheds in Paraná. The basins showed similarities in their size, forest cover, urban area, number of days with more than 150 mm of precipitation, and average duration of consecutive dry days.
- Subjects
PARANA (Brazil : State); BRAZIL; STREAMFLOW; WATERSHEDS; RANDOM forest algorithms; HYDROLOGIC models; TIME series analysis; FORECASTING; QUALITY control
- Publication
Hydrology & Earth System Sciences Discussions, 2023, p1
- ISSN
1812-2108
- Publication type
Article
- DOI
10.5194/egusphere-2023-1755