2023
DOI: 10.5194/hess-27-4227-2023
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Rapid spatio-temporal flood modelling via hydraulics-based graph neural networks

Roberto Bentivoglio,
Elvin Isufi,
Sebastiaan Nicolas Jonkman
et al.

Abstract: Abstract. Numerical modelling is a reliable tool for flood simulations, but accurate solutions are computationally expensive. In recent years, researchers have explored data-driven methodologies based on neural networks to overcome this limitation. However, most models are only used for a specific case study and disregard the dynamic evolution of the flood wave. This limits their generalizability to topographies that the model was not trained on and in time-dependent applications. In this paper, we introduce s… Show more

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Cited by 9 publications
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