EGU25-10945, updated on 15 Mar 2025
https://doi.org/10.5194/egusphere-egu25-10945
EGU General Assembly 2025
© Author(s) 2025. This work is distributed under
the Creative Commons Attribution 4.0 License.
Oral | Wednesday, 30 Apr, 14:31–14:41 (CEST)
 
Room 0.11/12
Diffusion Model Data Assimilation of Sparse Weather Station Observations at Kilometer Scales
Peter Manshausen1, Yair Cohen2, Jaideep Pathak2, Mike Pritchard2, Piyush Garg2, Morteza Mardani2, Karthik Kashinath2, Simon Byrne2, and Noah Brenowitz2
Peter Manshausen et al.
  • 1University of Oxford, Atmospheric, Oceanic and Planetary Physics, Department of Physics, Oxford, United Kingdom of Great Britain – England, Scotland, Wales (peter.manshausen@physics.ox.ac.uk)
  • 2NVIDIA Inc., Santa Clara, CA, United States of America

Data assimilation of observational data into full atmospheric states is essential for weather forecast model initialization. Recently, methods for deep generative data assimilation have been proposed which allow for using new input data without retraining the model. They could also dramatically accelerate the costly data assimilation process used in operational regional weather models. Here, in a central US testbed, we demonstrate the viability of score-based data assimilation in the context of realistically complex km-scale weather. We train an unconditional diffusion model to generate snapshots of a state-of-the-art km-scale analysis product, the High Resolution Rapid Refresh. Then, using score-based data assimilation to incorporate sparse weather station data, the model produces maps of precipitation and surface winds. The generated fields display physically plausible structures, such as gust fronts, and sensitivity tests confirm learnt physics through multivariate relationships. Preliminary skill analysis shows the approach already outperforms a naive baseline of the High-Resolution Rapid Refresh system itself. By incorporating observations from 40 weather stations, 10% lower RMSEs on left-out stations are attained. Despite some lingering imperfections such as insufficiently disperse ensemble DA estimates, we find the results overall an encouraging proof of concept, and the first at km-scale. It is a ripe time to explore extensions that combine increasingly ambitious regional state generators with an increasing set of in situ, ground-based, and satellite remote sensing data streams.

How to cite: Manshausen, P., Cohen, Y., Pathak, J., Pritchard, M., Garg, P., Mardani, M., Kashinath, K., Byrne, S., and Brenowitz, N.: Diffusion Model Data Assimilation of Sparse Weather Station Observations at Kilometer Scales, EGU General Assembly 2025, Vienna, Austria, 27 Apr–2 May 2025, EGU25-10945, https://doi.org/10.5194/egusphere-egu25-10945, 2025.