Modulated Adaptive Fourier Neural Operators for Temporal Interpolation of Weather Forecasts
Weather and climate data are often available at limited temporal resolution, either due to storage limitations, or in the case of weather forecast models based on deep learning, their inherently long time steps. The coarse temporal resolution makes it difficult to capture rapidly evolving weather ev...
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Zusammenfassung: | Weather and climate data are often available at limited temporal resolution,
either due to storage limitations, or in the case of weather forecast models
based on deep learning, their inherently long time steps. The coarse temporal
resolution makes it difficult to capture rapidly evolving weather events. To
address this limitation, we introduce an interpolation model that reconstructs
the atmospheric state between two points in time for which the state is known.
The model makes use of a novel network layer that modifies the adaptive Fourier
neural operator (AFNO), which has been previously used in weather prediction
and other applications of machine learning to physics problems. The modulated
AFNO (ModAFNO) layer takes an embedding, here computed from the interpolation
target time, as an additional input and applies a learned shift-scale operation
inside the AFNO layers to adapt them to the target time. Thus, one model can be
used to produce all intermediate time steps. Trained to interpolate between two
time steps 6 h apart, the ModAFNO-based interpolation model produces 1 h
resolution intermediate time steps that are visually nearly indistinguishable
from the actual corresponding 1 h resolution data. The model reduces the RMSE
loss of reconstructing the intermediate steps by approximately 50% compared to
linear interpolation. We also demonstrate its ability to reproduce the
statistics of extreme weather events such as hurricanes and heat waves better
than 6 h resolution data. The ModAFNO layer is generic and is expected to be
applicable to other problems, including weather forecasting with tunable lead
time. |
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DOI: | 10.48550/arxiv.2410.18904 |