New ways for dynamical prediction of extreme heat waves: rare event simulations and stochastic process-based machine learning.
ORAL · Invited
Abstract
We will discuss several new algorithms and theoretical approaches, based on large deviation theory, rare event simulations, and machine learning for stochastic processes, which we have specifically designed for the prediction of the committor function (the probability of the extreme event to occur). We will discuss results for the study of midlatitude extreme heat waves and demonstrate the performance of these tools.
Using the best available climate models, our approach shed new light on the fluid mechanics processes which lead to extreme heat waves. We will describe quasi-stationary patterns of turbulent Rossby waves that lead to global teleconnection pattern in connection with heat waves and analyze their dynamics.
We stress the relevance of these patterns for recently observed extreme heat waves with huge impact and the prediction potential of our approach.
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Publication: 1. F. Ragone and F. Bouchet, 2020, Computation of extremes values of time averaged observables in climate models with large deviation techniques, J. Stat. Phys., pp 1–29, arXiv:1907.05762, [pdf], https://doi.org/10.1007/s10955-019-02429-7.<br>2. C. Herbert, R. Caballero and F. Bouchet, 2020, Atmospheric bistability and abrupt transitions to superrotation: wave-jet resonance and Hadley cell feedbacks, Journal of the Atmospheric Sciences, vol. 77, no. 1, https://doi.org/10.1175/JAS-D-19-0089.1, arXiv:1905.12401.<br>3. E. Simonnet, J. Roland and F. Bouchet, Multistability and rare spontaneous transitions in barotropic β-plane turbulence, Journal of atmospherical sciences, 78, 6, 1889–1911, https://doi.org/10.1175/JAS-D-20-0279.1, arXiv:2009.09913.<br>4. F Ragone, F Bouchet, 2021, Rare event algorithm study of extreme warm summers and heat waves over Europe, Geophysical Research Letters, 48, e2020GL091197.https://doi.org/10.1029/2020GL091197 arXiv:2009.02519.<br>5. V. Jacques-Dumas, F. Ragone, F. Bouchet, P. Borgnat and P. Abry, 2021, Deep Learning based Extreme Heatwave Forecast, submitted to IEEE TPAMI. arXiv:2103.09743.
Presenters
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Freddy Bouchet
CNRS
Authors
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Freddy Bouchet
CNRS
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Francesco Ragone
UC Louvain
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Dario Lucente
ENS de Lyon
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George Miloshevich
ENS de Lyon
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Corentin Herbert
CNRS and ENS de Lyon