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Probabilistic Weather Forecasting with Hierarchical Graph Neural Networks (2406.04759v2)

Published 7 Jun 2024 in cs.LG and stat.ML

Abstract: In recent years, machine learning has established itself as a powerful tool for high-resolution weather forecasting. While most current machine learning models focus on deterministic forecasts, accurately capturing the uncertainty in the chaotic weather system calls for probabilistic modeling. We propose a probabilistic weather forecasting model called Graph-EFM, combining a flexible latent-variable formulation with the successful graph-based forecasting framework. The use of a hierarchical graph construction allows for efficient sampling of spatially coherent forecasts. Requiring only a single forward pass per time step, Graph-EFM allows for fast generation of arbitrarily large ensembles. We experiment with the model on both global and limited area forecasting. Ensemble forecasts from Graph-EFM achieve equivalent or lower errors than comparable deterministic models, with the added benefit of accurately capturing forecast uncertainty.

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Authors (4)
  1. Joel Oskarsson (10 papers)
  2. Tomas Landelius (6 papers)
  3. Marc Peter Deisenroth (73 papers)
  4. Fredrik Lindsten (69 papers)
Citations (5)

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