LGJul 24, 2022

Physics-Informed Learning of Aerosol Microphysics

MILA
arXiv:2207.11786v128 citationsh-index: 69
Originality Incremental advance
AI Analysis

This reduces computational constraints for climate modeling, enabling finer resolution or longer simulations, though it is incremental as it builds on existing models.

The researchers tackled the high computational cost of aerosol microphysics in climate models by using machine learning to emulate the M7 microphysics model, achieving an average R² score of 77.1% and a speed-up of over 64x on a GPU.

Aerosol particles play an important role in the climate system by absorbing and scattering radiation and influencing cloud properties. They are also one of the biggest sources of uncertainty for climate modeling. Many climate models do not include aerosols in sufficient detail due to computational constraints. In order to represent key processes, aerosol microphysical properties and processes have to be accounted for. This is done in the ECHAM-HAM global climate aerosol model using the M7 microphysics, but high computational costs make it very expensive to run with finer resolution or for a longer time. We aim to use machine learning to emulate the microphysics model at sufficient accuracy and reduce the computational cost by being fast at inference time. The original M7 model is used to generate data of input-output pairs to train a neural network on it. We are able to learn the variables' tendencies achieving an average $R^2$ score of $77.1\% $. We further explore methods to inform and constrain the neural network with physical knowledge to reduce mass violation and enforce mass positivity. On a GPU we achieve a speed-up of up to over 64x compared to the original model.

Foundations

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