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CirT: Global Subseasonal-to-Seasonal Forecasting with Geometry-inspired Transformer

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Accurate Subseasonal-to-Seasonal (S2S) climate forecasting is pivotal for decision-making including agriculture planning and disaster preparedness but is known to be challenging due to its chaotic nature. Although recent data-driven models have shown promising results, their performance is limited by inadequate consideration of geometric inductive biases. Usually, they treat the spherical weather data as planar images, resulting in an inaccurate representation of locations and spatial relations. In this work, we propose the geometric-inspired Circular Transformer (CirT) to model the cyclic characteristic of the graticule, consisting of two key designs: (1) Decomposing the weather data by latitude into circular patches that serve as input tokens to the Transformer; (2) Leveraging Fourier transform in self-attention to capture the global information and model the spatial periodicity. Extensive experiments on the Earth Reanalysis 5 (ERA5) reanalysis dataset demonstrate our model yields a significant improvement over the advanced data-driven models, including PanguWeather and GraphCast, as well as skillful ECMWF systems. Additionally, we empirically show the effectiveness of our model designs and high-quality prediction over spatial and temporal dimensions.

Yang Liu, Zinan Zheng, Jiashun Cheng, Fugee Tsung, Deli Zhao, Yu Rong, Jia Li• 2025

Related benchmarks

TaskDatasetResultRank
Spatiotemporal forecastingGlobal ocean-weather-land 120-day forecast
RMSE2.2117
12
Spatiotemporal forecastingGlobal ocean-weather-land 180-day forecast
RMSE2.297
12
Spatiotemporal forecastingGlobal ocean-weather-land 240-day forecast
RMSE2.3083
12
Spatiotemporal forecastingGlobal ocean-weather-land 300-day forecast
RMSE2.2577
12
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