AI RESEARCH
Hierarchy of extreme-event predictability in turbulence revealed by machine learning
arXiv CS.LG
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ArXi:2603.13789v1 Announce Type: cross Extreme-event predictability in turbulence is strongly state dependent, yet event-by-event predictability horizons are difficult to quantify without access to governing equations or costly perturbation ensembles. Here we train an autoregressive conditional diffusion model on direct numerical simulations of the two-dimensional Kolmogoro flow and use a CRPS-based skill score to define an event-wise predictability horizon. Enstrophy extremes exhibit a pronounced hierarchy: forecast skill persists from $\approx 1$ to $> 4$ Lyapuno times across events.