Zero-Shot Statistical Downscaling via Diffusion Posterior Sampling
About
Conventional supervised climate downscaling struggles to generalize to Global Climate Models (GCMs) due to the lack of paired training data and inherent domain gaps relative to reanalysis. Meanwhile, current zero-shot methods suffer from physical inconsistencies and vanishing gradient issues under large scaling factors. We propose Zero-Shot Statistical Downscaling (ZSSD), a zero-shot framework that performs statistical downscaling without paired data during training. ZSSD leverages a Physics-Consistent Climate Prior learned from reanalysis data, conditioned on geophysical boundaries and temporal information to enforce physical validity. Furthermore, to enable robust inference across varying GCMs, we introduce Unified Coordinate Guidance. This strategy addresses the vanishing gradient problem in vanilla DPS and ensures consistency with large-scale fields. Results show that ZSSD significantly outperforms existing zero-shot baselines in 99th percentile errors and successfully reconstructs complex weather events, such as tropical cyclones, across heterogeneous GCMs.
Related benchmarks
| Task | Dataset | Result | Rank | |
|---|---|---|---|---|
| Statistical Downscaling | ERA5 Synthetic 5.0° x20 scaling | MAE0.28 | 8 | |
| Statistical Downscaling | IPSL Real GCM | MAE0.87 | 8 | |
| Statistical Downscaling | ERA5 Synthetic 2.5° x10 scaling | MAE0.15 | 8 | |
| Statistical Downscaling | ERA5 Synthetic 1.5° x6 scaling | MAE0.09 | 8 | |
| Statistical Downscaling | MIROC6 Real GCM | MAE1.08 | 5 | |
| Statistical Downscaling | AWI Real GCM | MAE1.28 | 5 | |
| Statistical Downscaling | MPI-LR Real GCM | MAE1.24 | 5 | |
| Statistical Downscaling | MPI-HR Real GCM | MAE1.05 | 5 |