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Machine Learning for Climate Physics and Simulations

Ching‐Yao Lai, Pedram Hassanzadeh, Aditi Sheshadri, Maike Sonnewald, Raffaele Ferrari, V. Balaji

2024Annual Review of Condensed Matter Physics24 citationsDOIOpen Access PDF

Abstract

We discuss the emerging advances and opportunities at the intersection of machine learning (ML) and climate physics, highlighting the use of ML techniques, including supervised, unsupervised, and equation discovery, to accelerate climate knowledge discoveries and simulations. We delineate two distinct yet complementary aspects: ( a ) ML for climate physics and ( b ) ML for climate simulations. Although physics-free ML-based models, such as ML-based weather forecasting, have demonstrated success when data are abundant and stationary, the physics knowledge and interpretability of ML models become crucial in the small-data/nonstationary regime to ensure generalizability. Given the absence of observations, the long-term future climate falls into the small-data regime. Therefore, ML for climate physics holds a critical role in addressing the challenges of ML for climate simulations. We emphasize the need for collaboration among climate physics, ML theory, and numerical analysis to achieve reliable ML-based models for climate applications.

Topics & Concepts

InterpretabilityClimate modelClimate scienceGeneralizability theoryIntersection (aeronautics)Climate changeMachine learningComputer scienceData scienceMathematicsEcologyBiologyEngineeringStatisticsAerospace engineeringMeteorological Phenomena and SimulationsHydrological Forecasting Using AIClimate variability and models
Machine Learning for Climate Physics and Simulations | Litcius