Deep Learning Climate Model Emulation with PEAR - Adapting a Transformer-Based Weather Forecasting Model onthe HEALPix Grid to the Climate Domain
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Författare
Typ
Examensarbete för masterexamen
Master's Thesis
Master's Thesis
Modellbyggare
Tidskriftstitel
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Volymtitel
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Sammanfattning
Climate model emulation aims to approximate the forcing–response behaviour of
computationally expensive Earth system models at a fraction of their original cost.
This thesis adapts PEAR, a HEALPix-based Volumetric Swin Transformer originally
developed for medium-range weather prediction on the sphere, to the task of
climate model emulation. Instead of predicting future atmospheric states from initial
conditions, the adapted model learns to map greenhouse-gas and aerosol emission
forcings to global fields of near-surface air temperature and precipitation. The model
is evaluated on ClimateSet, a machine-learning-ready dataset containing processed
CMIP6 outputs from multiple Earth system models, and benchmarked against UNet
and ClimaX baselines from the ClimateSet benchmarks. Across 15 climate models
and 5 random seeds, PEAR achieves competitive performance despite its small size,
with 4.3M trainable parameters compared with 18.3M for UNet and 106.6M for
ClimaX. Although the larger ClimaX model obtains the strongest overall results,
PEAR performs favourably compared with UNet, outperforming it on 13 of the
15 climate models in overall RMSE on normalized labels. The strongest results
are found for precipitation, where PEAR achieves the lowest RMSE on a majority
of the evaluated models. These results suggest that PEAR provides a promising
parameter-efficient architecture for climate model emulation, with further potential
for improvement through architectural, temporal, and capacity-related refinements.
Beskrivning
Ämne/nyckelord
Climate Model Emulation, PEAR, Machine Learning, Deep Learning, ClimateSet, Vision Transformer, Swin Transformer, HEALPix
