Published March 31, 2023 | Version v1
Journal article Open

Revealing the Statistics of Extreme Events Hidden in Short Weather Forecast Data

  • 1. Massachusetts Institute of Technology
  • 2. New York University
  • 3. University of Chicago

Description

Extreme weather events have significant consequences, dominating the impact of climate on society. While high-resolution weather models can forecast many types of extreme events on synoptic timescales, long-term climatological risk assessment is an altogether different problem. A once-in-a-century event takes, on average, 100 years of simulation time to appear just once, far beyond the typical integration length of a weather forecast model. Therefore, this task is left to cheaper, but less accurate, low-resolution or statistical models. But there is untapped potential in weather model output: despite being short in duration, weather forecast ensembles are produced multiple times a week. Integrations are launched with independent perturbations, causing them to spread apart over time and broadly sample phase space. Collectively, these integrations add up to thousands of years of data. We establish methods to extract climatological information from these short weather simulations. Using ensemble hindcasts by the European Center for Medium-range Weather Forecasting archived in the subseasonal-to-seasonal (S2S) database, we characterize sudden stratospheric warming (SSW) events with multi-centennial return times. Consistent results are found between alternative methods, including basic counting strategies and Markov state modeling. By carefully combining trajectories together, we obtain estimates of SSW frequencies and their seasonal distributions that are consistent with reanalysis-derived estimates for moderately rare events, but with much tighter uncertainty bounds, and which can be extended to events of unprecedented severity that have not yet been observed historically. These methods hold potential for assessing extreme events throughout the climate system, beyond this example of stratospheric extremes.

Data availability

Our analysis is based on publicly available data sets from the European Center for Medium-Range Weather Forecasts (ECMWF, 2022b) and from associated Copernicus Climate Data Store (ECMWF, 2022a). The public Zenodo repository at https://doi.org/10.5281/zenodo.7675972 contains Python scripts to download the necessary data, reproduce the paper's analysis, and apply the methods to other datasets. Please contact J. F. for help with using the code.

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Revealing-the-Statistics-of-Extreme-Events-Hidden-in-Short-Weather-Forecast-Data.pdf

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Additional details

Identifiers

DOI
10.1029/2023AV000881
Other
oai:uchicago.tind.io:5688

Funding

U.S. Department of Energy
Computational Science Graduate Fellowship
Massachusetts Institute of Technology
Climate Grand Challenge on Weather and Climate Extremes
National Science Foundation
OAC-2004572
National Science Foundation
DMS-2054306
U.S. Department of Energy
Advanced Scientific Computing Research Program

UChicago Information

Division(s)
Physical Sciences Division
Department(s)
Geophysical Sciences