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Deep Learning-Based River Flow Forecasting with MLPs: Comparative Exploratory Analysis Applied to the Tejo and the Mondego Rivers

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dc.contributor.author Jesus, G. pt_BR
dc.contributor.author Korani, Z. pt_BR
dc.contributor.author Alves, E. pt_BR
dc.contributor.author Oliveira, A. pt_BR
dc.contributor.editor Yuh-Shyan Chen and Wei Yi pt_BR
dc.date.accessioned 2025-04-08T09:06:17Z pt_BR
dc.date.accessioned 2025-04-22T12:58:02Z
dc.date.available 2025-04-08T09:06:17Z pt_BR
dc.date.available 2025-04-22T12:58:02Z
dc.date.issued 2025-03-28 pt_BR
dc.identifier.citation https://doi.org/10.3390/s25072154 pt_BR
dc.identifier.uri http://dspace2.lnec.pt:8080/jspui/handle/123456789/1018502 pt_BR
dc.identifier.uri http://repositorio.lnec.pt:8080/jspui/handle/123456789/1018502
dc.description.abstract Abstract: This paper presents an innovative service for river flow forecasting and its demonstration in two dam-controlled rivers in Portugal, Tejo, and Mondego rivers, based on using Multilayer Perceptron (MLP) models to predict and forecast river flow. The main goal is to create and improve AI models that operate as remote services, providing precise and timely river flow predictions for the next 3 days. This paper examines the use of MLP architectures to predict river discharge using comprehensive hydrological data from Portugal’s National Water Resources Information System (Sistema Nacional de Informação de Recursos Hídricos, SNIRH), demonstrated for the Tejo and Mondego river basins. The methodology is described in detail, including data preparation, model training, and forecasting processes, and provides a comparative study of the MLP model’s performance in both case studies. The analysis shows that MLP models attain acceptable accuracy in short-term river flow forecasts for the selected scenarios and datasets, adeptly reflecting discharge patterns and peak occurrences. These models seek to enhance water resources management and decision-making by amalgamating modern data-driven methodologies with established hydrological and meteorological data sources, facilitating better flood mitigation and sustainable water resource planning as well as accurate boundary conditions for downstream forecast systems. pt_BR
dc.language.iso eng pt_BR
dc.publisher MDPI pt_BR
dc.rights openAccess pt_BR
dc.subject River flow forecasting; pt_BR
dc.subject Artificial intelligence; pt_BR
dc.subject Deep learning; pt_BR
dc.subject MLP; pt_BR
dc.subject SNIRH pt_BR
dc.title Deep Learning-Based River Flow Forecasting with MLPs: Comparative Exploratory Analysis Applied to the Tejo and the Mondego Rivers pt_BR
dc.type article pt_BR
dc.description.pages 27p. pt_BR
dc.description.volume Revista Sensors pt_BR
dc.description.sector CICTI/NTIII pt_BR
dc.description.magazine MDPI Journal (Sensors) pt_BR
dc.contributor.peer-reviewed SIM pt_BR
dc.contributor.academicresearchers SIM pt_BR
dc.contributor.arquivo SIM pt_BR


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