AI Article Synopsis

  • Climate change projections rely on physical models that struggle with small-scale processes, leading to uncertainties in predictions.
  • Recent machine learning algorithms show potential for improving these models but often fail when applied to new climate conditions they weren't originally trained on.
  • The proposed "climate-invariant" ML framework integrates physical knowledge into machine learning, enhancing accuracy and adaptability across various climate scenarios and improving Earth system modeling.

Article Abstract

Projecting climate change is a generalization problem: We extrapolate the recent past using physical models across past, present, and future climates. Current climate models require representations of processes that occur at scales smaller than model grid size, which have been the main source of model projection uncertainty. Recent machine learning (ML) algorithms hold promise to improve such process representations but tend to extrapolate poorly to climate regimes that they were not trained on. To get the best of the physical and statistical worlds, we propose a framework, termed "climate-invariant" ML, incorporating knowledge of climate processes into ML algorithms, and show that it can maintain high offline accuracy across a wide range of climate conditions and configurations in three distinct atmospheric models. Our results suggest that explicitly incorporating physical knowledge into data-driven models of Earth system processes can improve their consistency, data efficiency, and generalizability across climate regimes.

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Source
http://www.ncbi.nlm.nih.gov/pmc/articles/PMC10849594PMC
http://dx.doi.org/10.1126/sciadv.adj7250DOI Listing

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