Silva, Ricardo Aragão e; https://orcid.org/0009-0007-9731-2463; http://lattes.cnpq.br/2256569076048534
Resumo:
Water resources play a vital role in a country's development. Streamflow is the primary
variable monitored at gauging stations, however measuring this variable involves significant
risks and high operational costs. The Brazilian National Hydrometeorological Network
(RHN), operated by the Geological Survey of Brazil (SGB) in partnership with the National
Water Agency (ANA), provides essential historical datasets for streamflow forecasting. This
study aims to develop time series models to forecast monthly river discharges, using as case
studies the gauging stations of Santa Maria da Vitória (1977–2022) and Batalha (2015–2023),
both located in Bahia. The research employs ARIMA models, implemented in the R Core
Team (2025), to evaluate the accuracy and applicability of forecasts at various temporal
horizons. The results demonstrate that the ARIMA (3,0,3)(3,1,1) model achieved a
satisfactory fit, with robust error metrics (MAPE, RMSE, and MAE). Statistical tests
confirmed stationarity. The forecasts closely followed the historical series’ behavior,
providing consistent estimates up to 12 months ahead. It is concluded that time series
modeling is a promising tool to complement the traditional rating curves, enabling greater
simplicity and reliability in streamflow predictions. This approach can further support water
resources management and hydrological alert systems in critical events such as droughts and
floods. Additionally, it contributes to the design of hydraulic structures and water allocation
processes, strengthening the use of quantitative data and statistical techniques as
decision-support tools in hydrology.