
This archive contains data, code, and plotting scripts needed to generate the results described in Barthel et.al. (2024) A non-intrusive machine learning framework for debiasing long-time coarse resolution climate simulations and quantifying rare events statistics. The archive includes raw and processed data from simulations of a 2 layer Quasi-Geostrophic model generated using an in-house solver, simulations of DOE's E3SM Atmosphere Model Version 2 (EAMv2), and ERA5 reanalysis data. A detailed description of the model and simulations can be found in Barthel et. al. (2024).
Climate modeling, Machine learning
Climate modeling, Machine learning
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