Artigo De: cienciavitae
Deep Learning Prediction of Streamflow in Portugal
Hydrology
2024 — MDPI
—Informações chave
Autores:
Publicado em
19/12/2024
Resumo
The transformative potential of deep learning models is felt in many research fields, including hydrology and water resources. This study investigates the effectiveness of the Temporal Fusion Transformer (TFT), a deep neural network architecture for predicting daily streamflow in Portugal, and benchmarks it against the popular Hydrologiska Byråns Vattenbalansavdelning (HBV) hydrological model. Additionally, it evaluates the performance of TFTs through selected forecasting examples. Information is provided about key input variables, including precipitation, temperature, and geomorphological characteristics. The study involved extensive hyperparameter tuning, with over 600 simulations conducted to fine–tune performances and ensure reliable predictions across diverse hydrological conditions. The results showed that TFTs outperformed the HBV model, successfully predicting streamflow in several catchments of distinct characteristics throughout the country. TFTs not only provide trustworthy predictions with associated probabilities of occurrence but also offer considerable advantages over classical forecasting frameworks, i.e., the ability to model complex temporal dependencies and interactions across different inputs or weight features based on their relevance to the target variable. Multiple practical applications can rely on streamflow predictions made with TFT models, such as flood risk management, water resources allocation, and support climate change adaptation measures.
Detalhes da publicação
Autores da comunidade :
Rafael Da Silva Francisco
ist196084
Versão da publicação
AO - Versão original do autor
Editora
MDPI
Ligação para a versão da editora
https://www.mdpi.com/2306-5338/11/12/217
Título do contentor da publicação
Hydrology
Volume
11(12),
Fascículo
127
Domínio Científico (FOS)
civil-engineering - Engenharia Civil
Palavras-chave
- streamflow
- hydrological prediction
- hydrological model
- deep learning
- temporal fusion transformer
- probabilistic prediction
- forecasting
Idioma da publicação (código ISO)
eng - Inglês
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