Abstract
Precipitation nowcasting is a crucial element in current weather service
systems. Data-driven methods have proven highly advantageous, due to
their flexibility in utilizing detailed initial hydrometeor
observations, and their capability to approximate meteorological
dynamics effectively given sufficient training data. However, current
data-driven methods often encounter severe approximation/optimization
errors, rendering their predictions and associated uncertainty estimates
unreliable. Here we develop a probabilistic diffusion model-based
precipitation nowcasting methodology, overcoming the notorious
blurriness and mode collapse issues in existing practices. Our approach
results in a 3.7% improvement in continuous ranked probability score
compared to state-of-the-art generative adversarial model-based method.
Critically, we significantly enhance the reliability of forecast
uncertainty estimates, evidenced in a 68% gain of spread-skill ratio
skill. As a result, our approach provides more reliable probabilistic
precipitation nowcasting, showing the potential to better support
weather-related decision makings.