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Artificial intelligence reveals past climate extremes by reconstructing historical records

Étienne Plésiat, Robert Dunn, Markus G. Donat, Christopher Kadow

2024Nature Communications24 citationsDOIOpen Access PDF

Abstract

The understanding of recent climate extremes and the characterization of climate risk require examining these extremes within a historical context. However, the existing datasets of observed extremes generally exhibit spatial gaps and inaccuracies due to inadequate spatial extrapolation. This problem arises from traditional statistical methods used to account for the lack of measurements, particularly prevalent before the mid-20th century. In this work, we use artificial intelligence to reconstruct observations of European climate extremes (warm and cold days and nights) by leveraging Earth system model data from CMIP6 through transfer learning. Our method surpasses conventional statistical techniques and diffusion models, showcasing its ability to reconstruct past extreme events and reveal spatial trends across an extensive time span (1901-2018) that is not covered by most reanalysis datasets. Providing our dataset to the climate community will improve the characterization of climate extremes, resulting in better risk management and policies.

Topics & Concepts

Context (archaeology)ExtrapolationClimate extremesClimatologyClimate changeClimate modelComputer scienceMeteorologyGeographyPrecipitationGeologyStatisticsOceanographyMathematicsArchaeologyClimate variability and modelsCryospheric studies and observationsMeteorological Phenomena and Simulations
Artificial intelligence reveals past climate extremes by reconstructing historical records | Litcius