Artificial intelligence for climate prediction of extremes: State of the art, challenges, and future perspectives

Stefano Materia*, Lluís Palma García, Chiem van Straaten, O. Sungmin, Antonios Mamalakis, Leone Cavicchia, Dim Coumou, Paolo de Luca, Marlene Kretschmer, Markus Donat

*Corresponding author for this work

Research output: Contribution to JournalReview articleAcademicpeer-review

Abstract

Extreme events such as heat waves and cold spells, droughts, heavy rain, and storms are particularly challenging to predict accurately due to their rarity and chaotic nature, and because of model limitations. However, recent studies have shown that there might be systemic predictability that is not being leveraged, whose exploitation could meet the need for reliable predictions of aggregated extreme weather measures on timescales from weeks to decades ahead. Recently, numerous studies have been devoted to the use of artificial intelligence (AI) to study predictability and make climate predictions. AI techniques have shown great potential to improve the prediction of extreme events and uncover their links to large-scale and local drivers. Machine and deep learning have been explored to enhance prediction, while causal discovery and explainable AI have been tested to improve our understanding of the processes underlying predictability. Hybrid predictions combining AI, which can reveal unknown spatiotemporal connections from data, with climate models that provide the theoretical foundation and interpretability of the physical world, have shown that improving prediction skills of extremes on climate-relevant timescales is possible. However, numerous challenges persist in various aspects, including data curation, model uncertainty, generalizability, reproducibility of methods, and workflows. This review aims at overviewing achievements and challenges in the use of AI techniques to improve the prediction of extremes at the subseasonal to decadal timescale. A few best practices are identified to increase trust in these novel techniques, and future perspectives are envisaged for further scientific development. This article is categorized under: Climate Models and Modeling > Knowledge Generation with Models The Social Status of Climate Change Knowledge > Climate Science and Decision Making.

Original languageEnglish
Article numbere914
Pages (from-to)1-31
Number of pages31
JournalWiley Interdisciplinary Reviews. Climate Change
Volume15
Issue number6
Early online date3 Sept 2024
DOIs
Publication statusPublished - Dec 2024

Bibliographical note

Publisher Copyright:
© 2024 The Author(s). WIREs Climate Change published by Wiley Periodicals LLC.

Funding

FundersFunder number
National Research Foundation of Korea
Ministry of Education101065985, RS‐2023‐00248706, 101003876
Ministry of Education
European Space Agency4000137110/22/I‐EF, 101137656
European Space Agency
European Commission101003469
European Commission
Horizon 2020101033654
Horizon 2020
European Union's Horizon Europe Research and Innovation program101059659

    Keywords

    • artificial intelligence
    • climate extreme events
    • climate forecasting
    • hybrid modeling
    • subseasonal to decadal

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