Adversarial Observations in Weather Forecasting
About
AI-based systems, such as Google's GenCast, have recently redefined the state of the art in weather forecasting, offering more accurate and timely predictions of both everyday weather and extreme events. While these systems are on the verge of replacing traditional meteorological methods, they also introduce new vulnerabilities into the forecasting process. In this paper, we investigate this threat and present a novel attack on autoregressive diffusion models, such as those used in GenCast, capable of manipulating weather forecasts and fabricating extreme events, including hurricanes, heat waves, and intense rainfall. The attack introduces subtle perturbations into weather observations that are statistically indistinguishable from natural noise and change less than 0.1% of the measurements - comparable to tampering with data from a single meteorological satellite. As modern forecasting integrates data from nearly a hundred satellites and many other sources operated by different countries, our findings highlight a critical security risk with the potential to cause large-scale disruptions and undermine public trust in weather prediction.
Related benchmarks
| Task | Dataset | Result | Rank | |
|---|---|---|---|---|
| Adversarial Detection | TC2 | Precision99.74 | 12 | |
| Adversarial Attack on Tropical Cyclone Prediction | TC2 | False Positive Rate (FPR)0.12 | 7 | |
| Weather perturbation control | WeatherBench2 | Reduction Ratio94.91 | 6 | |
| Adversarial Attack on Tropical Cyclone Prediction | TC1 | FPR0.01 | 6 | |
| Perturbation Transferability | GenCast-to-GraphCast Transfer Target Region | Reduction Ratio47.73 | 6 | |
| Perturbation Transferability | GenCast-to-GraphCast Transfer Non-target Region | RMSE1.86e-4 | 6 | |
| Spatial precipitation pattern evaluation | GenCast to GraphCast transfer Non-target region (test) | FSS@1°46.52 | 6 |