Data-driven transition path analysis yields a statistical understanding of sudden stratospheric warming events in an idealized model
Justin Finkel, Robert J. Webber, Edwin P. Gerber, Dorian S. Abbot,, Jonathan Weare

TL;DR
This paper applies transition path theory to an idealized model of sudden stratospheric warmings, providing a statistical framework to understand and predict these impactful atmospheric regime transitions.
Contribution
It demonstrates the use of transition path theory for linking SSW predictability with long-term frequency, including backward analysis of initial conditions.
Findings
Reactive current visualizes physical drivers of SSW transitions.
Upper-level wind response occurs late, after the transition is nearly complete.
TPT quantities help understand the dynamics of regime transitions.
Abstract
Atmospheric regime transitions are highly impactful as drivers of extreme weather events, but pose two formidable modeling challenges: predicting the next event (weather forecasting), and characterizing the statistics of events of a given severity (the risk climatology). Each event has a different duration and spatial structure, making it hard to define an objective "average event." We argue here that transition path theory (TPT), a stochastic process framework, is an appropriate tool for the task. We demonstrate TPT's capacities on a wave-mean flow model of sudden stratospheric warmings (SSWs) developed by Holton and Mass (1976), which is idealized enough for transparent TPT analysis but complex enough to demonstrate computational scalability. Whereas a recent article (Finkel et al. 2021) studied near-term SSW predictability, the present article uses TPT to link predictability to…
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Taxonomy
TopicsClimate variability and models · Ecosystem dynamics and resilience · Meteorological Phenomena and Simulations
