Can we predict the predictability of high-impact weather events?

Coleman, A., Ancell, B., Schwartz, C. S.. (2024). Can we predict the predictability of high-impact weather events?. Monthly Weather Review, doi:https://doi.org/10.1175/MWR-D-23-0293.1

Title Can we predict the predictability of high-impact weather events?
Genre Article
Author(s) Austin Coleman, B. Ancell, Craig S. Schwartz
Abstract Ensemble sensitivity analysis (ESA) offers a computationally inexpensive way to diagnose sources of high-impact forecast feature uncertainty by relating a localized forecast phenomenon of interest (response function) back to early or initial forecast conditions (sensitivity variables). These information-rich diagnostic fields allow us to quantify the predictability characteristics of a specific forecast event. This work harnesses insights from a month-long dataset of ESA applied to convection-allowing model precipitation forecasts in the Central Plains of the United States. Temporally averaged and spatially averaged sensitivity statistics are correlated with a variety of other metrics, such as skill, spread, and mean forecast precipitation accumulation. A high, but imperfect, correlation (0.81) between forecast precipitation and sensitivity is discovered. This quantity confirms the qualitatively known notion that while there is a connection between predictability and event magnitude, a high-end event does not necessarily entail a low-predictability (high-sensitivity) forecast. Flow regimes within this dataset are analyzed to see which patterns lend themselves to high- and low-predictability forecast scenarios. Finally, a novel metric known as the error growth realization (EGR) ratio is introduced. Derived by dividing the two mathematical formulations of ESA, this metric shows preliminary promise as a predictor of forecast skill prior to the onset of a high-impact convective event. In essence, this research exemplifies the potential of ESA beyond its traditional use in case studies. By applying ESA to a broader dataset, we can glean valuable insight into the predictability of high-impact weather events and, in turn, work toward a collective baseline on what constitutes a high- or low-predictability event in the first place.
Publication Title Monthly Weather Review
Publication Date Nov 1, 2024
Publisher's Version of Record https://doi.org/10.1175/MWR-D-23-0293.1
OpenSky Citable URL https://n2t.net/ark:/85065/d7b280m1
OpenSky Listing View on OpenSky
MMM Affiliations MMMAO, PARC

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