Advancing Medium-Range Streamflow Forecasting for Large Hydropower Reservoirs in Brazil by Means of Continental-Scale Hydrological Modeling

Author:

Kolling Neto Arthur1,Siqueira Vinícius Alencar1,Gama Cléber Henrique de Araújo1,Paiva Rodrigo Cauduro Dias de1,Fan Fernando Mainardi1ORCID,Collischonn Walter1,Silveira Reinaldo2,Paranhos Cássia Silmara Aver3,Freitas Camila3

Affiliation:

1. Instituto de Pesquisas Hidráulicas, Universidade Federal do Rio Grande do Sul, Porto Alegre 90010-150, RS, Brazil

2. Sistema de Tecnologia e Monitoramento Ambiental do Paraná—SIMEPAR, Curitiba 81531-980, PR, Brazil

3. Companhia Paranaense de Energia—COPEL, Curitiba 80420-170, PR, Brazil

Abstract

Streamflow forecasts from continental to global scale hydrological models have gained attention, but their performance against operational forecasts at local to regional scales must be evaluated. This study assesses the skill of medium-range, weekly streamflow forecasts for 147 large Brazilian hydropower plants (HPPs) and compares their performance with forecasts issued operationally by the National Electric System Operator (ONS). A continental-scale hydrological model was forced with ECMWF medium-range forecasts, and outputs were corrected using quantile mapping (QM) and autoregressive model approaches. By using both corrections, the percentage of HPPs with skillful forecasts against climatology and persistence for 1–7 days ahead increased substantially for low to moderate (9% to 56%) and high (72% to 94%) flows, while using only the QM correction allowed positive skill mainly for low to moderate flows and for 8–15 days ahead (29% to 64%). Compared with the ONS, the corrected continental-scale forecasts issued for the first week exhibited equal or better performance in 60% of the HPPs, especially for the North and Southeast subsystems, the DJF and MAM months, and for HPPs with less installed capacity. The findings suggest that using simple corrections on streamflow forecasts issued by continental-scale models can result in competitive forecasts even for regional-scale applications.

Funder

Brazilian Agency of Electrical Energy

Hydraulic Research Institute (IPH) from the Federal University of Rio Grande do Sul

Publisher

MDPI AG

Subject

Water Science and Technology,Aquatic Science,Geography, Planning and Development,Biochemistry

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