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PEAR: Equal Area Weather Forecasting on the Sphere

About

Artificial intelligence is rapidly reshaping the natural sciences, with weather forecasting emerging as a flagship AI4Science application where machine learning models can now rival and even surpass traditional numerical simulations. Following the success of the landmark models Pangu Weather and Graphcast, outperforming traditional numerical methods for global medium-range forecasting, many novel data-driven methods have emerged. A common limitation shared by many of these models is their reliance on an equiangular discretization of the sphere which suffers from a much finer grid at the poles than around the equator. In contrast, in the Hierarchical Equal Area iso-Latitude Pixelization (HEALPix) of the sphere, each pixel covers the same surface area, removing unphysical biases. Motivated by a growing support for this grid in meteorology and climate sciences, we propose to perform weather forecasting with deep learning models which natively operate on the HEALPix grid. To this end, we introduce Pangu Equal ARea (PEAR), a transformer-based weather forecasting model which operates directly on HEALPix-features and outperforms the corresponding model on an equiangular grid, and other baselines, without any computational overhead. Furthermore, we perform numerical experiments on the equivariance properties of our setup and verify the performance of PEAR on climate model emulation.

Hampus Linander, Tage Tykesson, Pietro Rosso, Christoffer Petersson, Daniel Persson, Jan E. Gerken• 2025

Related benchmarks

TaskDatasetResultRank
Global Weather ForecastingERA5 lite
RMSE0.68
108
Weather forecastingERA5 lite
ACC (MSL Surface)0.814
8
Weather forecastingERA5 lite
Inference Time (ms)17
4
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