Hydro-informer: a deep learning model for accurate water level and flood predictions
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DOI: 10.1007/s11069-024-06949-8
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- Vijendra Kumar & Hazi Md. Azamathulla & Kul Vaibhav Sharma & Darshan J. Mehta & Kiran Tota Maharaj, 2023. "The State of the Art in Deep Learning Applications, Challenges, and Future Prospects: A Comprehensive Review of Flood Forecasting and Management," Sustainability, MDPI, vol. 15(13), pages 1-33, July.
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Keywords
Deep learning; Water level prediction; Flood forecasting; Extreme event forecasting; LSTM; GRU; Hydrological attention; Hydrological embedding;All these keywords.
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