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Learning a weather dictionary of atmospheric patterns using Latent Dirichlet Allocation to study climate change & extreme events

ORAL

Abstract

Mid-latitude circulation dynamics is often described in terms of weather regimes. Each pattern is given by a given combination of several synoptic objects (cyclones and anticyclones). Such intrication makes it arduous to quantify recurrence and intensity of climate extremes. Here we apply Latent Dirichlet Allocation (LDA), used for topic modeling in linguistic, to build a weather dictionary: we define daily maps of a gridded target observable as documents, and the grid-points composing the map as words. LDA provides a representation of documents in terms of a combination of spatial patterns named motifs, which are latent patterns inferred from the set of snapshots. For atmospheric data, we find that motifs correspond to pure synoptic objects (cyclones and anticyclones), that can be seen as building blocks of weather regimes. We show that LDA weights provide a natural way to characterize the climate change for the recurrence of regimes associated with extreme events.

Publication: Lucas Fery, Berengere Dubrulle, Berengere Podvin, Flavio Pons, Davide Faranda. Learning a weather dictionary of atmospheric patterns using Latent Dirichlet Allocation. 2021. ⟨hal-03258523⟩

Presenters

  • Davide Faranda

    CEA-Saclay

Authors

  • Davide Faranda

    CEA-Saclay

  • Lucas Fery

    ENS Lyon

  • Berengere Dubrulle

    SPEC CEA Saclay, CNRS

  • Berengere Podvin

    LISN, Orsay France

  • Flavio Pons

    CNRS CEA Saclay