Bridging Artificial Intelligence and Data Assimilation: The Data-driven Ensemble Forecasting System ClimaX-LETKF
By: Akira Takeshima , Kenta Shiraishi , Atsushi Okazaki and more
While machine learning-based weather prediction (MLWP) has achieved significant advancements, research on assimilating real observations or ensemble forecasts within MLWP models remains limited. We introduce ClimaX-LETKF, the first purely data-driven ML-based ensemble weather forecasting system. It operates stably over multiple years, independently of numerical weather prediction (NWP) models, by assimilating the NCEP ADP Global Upper Air and Surface Weather Observations. The system demonstrates greater stability and accuracy with relaxation to prior perturbation (RTPP) than with relaxation to prior spread (RTPS), while NWP models tend to be more stable with RTPS. RTPP replaces an analysis perturbation with a weighted blend of analysis and background perturbations, whereas RTPS simply rescales the analysis perturbation. Our experiments reveal that MLWP models are less capable of restoring the atmospheric field to its attractor than NWP models. This work provides valuable insights for enhancing MLWP ensemble forecasting systems and represents a substantial step toward their practical applications.
Similar Papers
Observation-driven correction of numerical weather prediction for marine winds
Machine Learning (CS)
Improves ocean wind forecasts using smart computer learning.
Generative assimilation and prediction for weather and climate
Machine Learning (CS)
Predicts weather and climate accurately for years.
CRPS-LAM: Regional ensemble weather forecasting from matching marginals
Machine Learning (CS)
Faster weather forecasts that are just as good.