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Graph Neural Networks for Enhancing Ensemble Forecasts of Extreme Rainfall

7 April 2025
Christopher Bülte
Sohir Maskey
Philipp Scholl
Jonas von Berg
Gitta Kutyniok
    AI4CE
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Abstract

Climate change is increasing the occurrence of extreme precipitation events, threatening infrastructure, agriculture, and public safety. Ensemble prediction systems provide probabilistic forecasts but exhibit biases and difficulties in capturing extreme weather. While post-processing techniques aim to enhance forecast accuracy, they rarely focus on precipitation, which exhibits complex spatial dependencies and tail behavior. Our novel framework leverages graph neural networks to post-process ensemble forecasts, specifically modeling the extremes of the underlying distribution. This allows to capture spatial dependencies and improves forecast accuracy for extreme events, thus leading to more reliable forecasts and mitigating risks of extreme precipitation and flooding.

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@article{bülte2025_2504.05471,
  title={ Graph Neural Networks for Enhancing Ensemble Forecasts of Extreme Rainfall },
  author={ Christopher Bülte and Sohir Maskey and Philipp Scholl and Jonas von Berg and Gitta Kutyniok },
  journal={arXiv preprint arXiv:2504.05471},
  year={ 2025 }
}
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