Statistics of extreme events in coarse-scale climate simulations via machine learning correction operators trained on nudged datasets
Alexis-Tzianni Charalampopoulos, Shixuan Zhang, Bryce Harrop, Lai-yung, Ruby Leung, Themistoklis Sapsis

TL;DR
This paper introduces a machine learning correction method for coarse-scale climate models using nudged datasets, significantly improving the accuracy of statistical and extreme event predictions in climate simulations.
Contribution
The work develops a novel framework combining nudging and machine learning to correct coarse climate models, enabling accurate statistical and extreme event predictions without direct high-resolution training data.
Findings
ML-corrected outputs closely match observed statistics
Improved prediction of extreme event frequencies
Framework applicable to various turbulent systems
Abstract
This work presents a systematic framework for improving the predictions of statistical quantities for turbulent systems, with a focus on correcting climate simulations obtained by coarse-scale models. While high resolution simulations or reanalysis data are available, they cannot be directly used as training datasets to machine learn a correction for the coarse-scale climate model outputs, since chaotic divergence, inherent in the climate dynamics, makes datasets from different resolutions incompatible. To overcome this fundamental limitation we employ coarse-resolution model simulations nudged towards high quality climate realizations, here in the form of ERA5 reanalysis data. The nudging term is sufficiently small to not pollute the coarse-scale dynamics over short time scales, but also sufficiently large to keep the coarse-scale simulations close to the ERA5 trajectory over larger…
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Taxonomy
TopicsClimate variability and models · Meteorological Phenomena and Simulations · Tropical and Extratropical Cyclones Research
