From Data to Action: Flood Forecasting Leveraging Graph Neural Networks and Digital Twin Visualization
Naghmeh Shafiee Roudbari,
Shubham Rajeev Punekar,
Zachary Patterson
et al.
Abstract:Forecasting floods encompasses significant complexity due to the nonlinear nature of hydrological systems, which involve intricate interactions among precipitation, landscapes, river systems, and hydrological networks. Recent efforts in hydrology have aimed at predicting water flow, floods, and quality, yet most methodologies overlook the influence of adjacent areas and lack advanced visualization for water level assessment. Our contribution is twofold: firstly, we introduce a graph neural network model equipp… Show more
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