Flo: A data-driven limited-area storm surge model
Nils Melsom Kristensen, Mateusz Matuszak, Paulina Tedesco, Ina Kristine Berentsen Kullmann, Johannes R\"ohrs

TL;DR
Flo is a novel data-driven storm surge model using graph neural networks, trained on 43 years of atmospheric data, achieving comparable accuracy to traditional models in simulating water levels in the North Sea region.
Contribution
This work introduces Flo, a machine learning-based storm surge model that leverages a graph neural network framework for high-resolution water level prediction, complementing traditional physics-based models.
Findings
Flo achieves accuracy similar to NORA-Surge in hindcast evaluations.
The model effectively captures key physical processes of storm surge.
It provides a flexible framework for future data integration and model improvements.
Abstract
We present Flo, a data-driven storm surge model, covering the North Sea, Norwegian Sea and Barents Sea. The model is built using the Anemoi framework for creating machine learning weather forecasting systems, developed by the European Centre for Medium-Range Weather Forecasts and partners. The model is based on a graph neural network, and is capable of simulating water level due to atmospheric effects (wind stress and inverse barometer effect, i.e. the non-tidally induced part of the total water level; the residual water level) at a horizontal resolution of 4 km and a temporal resolution of 1 hour with a quality comparable to the numerical model on which it was trained. The model was trained using a dataset consisting of 43 years of atmospheric data from the 3-km Norwegian Reanalysis hindcast for mean sea level pressure and winds, and the NORA-Surge hindcast for water level. Evaluation…
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Taxonomy
TopicsTropical and Extratropical Cyclones Research · Hydrological Forecasting Using AI · Meteorological Phenomena and Simulations
