Assessment of Time Series Models for Mean Discharge Modeling and Forecasting in a Sub-Basin of the Paranaíba River, Brazil

Author:

Costa Gabriela Emiliana de Melo e1ORCID,Menezes Filho Frederico Carlos M. de1ORCID,Canales Fausto A.2ORCID,Fava Maria Clara3ORCID,Brandão Abderraman R. Amorim4ORCID,de Paes Rafael Pedrollo5ORCID

Affiliation:

1. Institute of Exact and Technological Sciences, Federal University of Viçosa, Campus of Rio Paranaíba, Rodovia BR 230 KM 7, Rio Paranaíba 38810-000, Brazil

2. Department of Civil and Environmental, Universidad de la Costa, Calle 58 #55-66, Barranquilla 080002, Colombia

3. Departamento de Engenharia Civil, Universidade Federal de São Carlos, R. dos Bem-te-vis 321, São Carlos 13565-905, Brazil

4. Department of Hydraulics and Sanitation Engineering, University of São Paulo, Av. Trab. São Carlense 400, Parque Arnold Schmidt, São Carlos 13566-590, Brazil

5. Sanitary and Environmental Engineering Department, Graduate Program in Water Resources, Federal University of Mato Grosso, Av. Fernando Correa da Costa 2367, Boa Esperança, Cuiabá 78060-900, Brazil

Abstract

Stochastic modeling to forecast hydrological variables under changing climatic conditions is essential for water resource management and adaptation planning. This study explores the applicability of stochastic models, specifically SARIMA and SARIMAX, to forecast monthly average river discharge in a sub-basin of the Paranaíba River near Patos de Minas, MG, Brazil. The Paranaíba River is a vital water source for the Alto Paranaíba region, serving industrial supply, drinking water effluent dilution for urban communities, agriculture, fishing, and tourism. The study evaluates the performance of SARIMA and SARIMAX models in long-term discharge modeling and forecasting, demonstrating the SARIMAX model’s superior performance in various metrics, including the Nash–Sutcliffe coefficient (NSE), the root mean square error (RMSE), and the mean absolute percentage error (MAPE). The inclusion of precipitation as a regressor variable considerably improves the forecasting accuracy, and can be attributed to the multivariate structure of the SARIMAX model. While stochastic models like SARIMAX offer valuable decision-making tools for water resource management, the study underscores the significance of employing long-term time series encompassing flood and drought periods and including model uncertainty analysis to enhance the robustness of forecasts. In this study, the SARIMAX model provides a better fit for extreme values, overestimating peaks by around 11.6% and troughs by about 5.0%, compared with the SARIMA model, which tends to underestimate peaks by an average of 6.5% and overestimate troughs by approximately 76.0%. The findings contribute to the literature on water management strategies and mitigating risks associated with extreme hydrological events.

Publisher

MDPI AG

Subject

Earth-Surface Processes,Waste Management and Disposal,Water Science and Technology,Oceanography

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