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High-accuracy reconstruction of water levels through integrating physics-based and data-driven models: application to the Seine estuary

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Taylor & Francis Group2025-11-26 更新2026-04-16 收录
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https://tandf.figshare.com/articles/dataset/High-accuracy_reconstruction_of_water_levels_through_integrating_physics-based_and_data-driven_models_application_to_the_Seine_estuary/30723869/1
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资源简介:
An accurate understanding of river dynamics is vital for preserving ecosystems, supporting economic activities, and tackling climate challenges. This study presents a hybrid modelling approach that combines physics-based models with deep learning to reconstruct high-frequency, long-term water levels in the Seine Estuary, Normandy, France. Deep learning – specifically bidirectional long short-term memory networks – enhances hydrodynamic model outputs by integrating diverse observational and meteorological data. The multi-process framework effectively captures spatial and temporal variability across hydrodynamic zones. Results show the hybrid model outperforms standalone physics-based and deep learning models, reducing RMSE by approximately 58% and improving accuracy by 50–65% during major storm events since 2017. Reconstruction quality is mainly influenced by the relevance of hydrodynamic outputs and observational data, while meteorological inputs play a lesser role due to their coarse resolution. These findings demonstrate the robustness and potential of hybrid models for accurate, reliable reconstructions and projections in complex river systems.
提供机构:
Huybrechts, Nicolas; Anh, Thi Kim; Garin, Théo; Vu, Minh Tan; Laborie, Vanessya
创建时间:
2025-11-26
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