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Machine learning for stochastic parametrisations

Abstract:
Atmospheric models used for weather and climate prediction are traditionally formulated in a deterministic manner. In other words, given a particular state of the resolved scale variables, the most likely forcing from the subgrid scale processes is estimated and used to predict the evolution of the large-scale flow. However, the lack of scale separation in the atmosphere means that this approach is a large source of error in forecasts. Over recent years, an alternative paradigm has developed: the use of stochastic techniques to characterize uncertainty in small-scale processes. These techniques are now widely used across weather, subseasonal, seasonal, and climate timescales. In parallel, recent years have also seen significant progress in replacing parametrization schemes using machine learning (ML). This has the potential to both speed up and improve our numerical models. However, the focus to date has largely been on deterministic approaches. In this position paper, we bring together these two key developments and discuss the potential for data-driven approaches for stochastic parametrization. We highlight early studies in this area and draw attention to the novel challenges that remain.
Publication status:
Published
Peer review status:
Peer reviewed

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Publisher copy:
10.1017/eds.2024.45

Authors


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Institution:
University of Oxford
Division:
MPLS
Department:
Physics
Sub department:
Atmos Ocean & Planet Physics
Oxford college:
Wadham College
Role:
Author
ORCID:
0000-0001-8244-0218
More by this author
Institution:
University of Oxford
Division:
MPLS
Department:
Physics
Role:
Author
More by this author
Institution:
University of Oxford
Division:
MPLS
Department:
Physics
Role:
Author


More from this funder
Funder identifier:
https://ror.org/012mzw131
Grant:
RPG-2022-192
RL-2022-020
More from this funder
Funder identifier:
https://ror.org/001aqnf71
Grant:
10049639
More from this funder
Funder identifier:
https://ror.org/02b5d8509
Grant:
NE/P018238/1


Publisher:
Cambridge University Press
Journal:
Environmental Data Science More from this journal
Volume:
3
Article number:
e38
Publication date:
2025-01-02
Acceptance date:
2024-09-28
DOI:
EISSN:
2634-4602


Language:
English
Keywords:
Pubs id:
2036149
Local pid:
pubs:2036149
Deposit date:
2024-10-04

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