Analysis scripts and dataset for Zhang et. al. (2023)

This archive containspost-processed data and scripts for analyses in Zhang et al. (2023) " A Machine Learning Bias Correction of Large-scale Environment of Extreme Weather Events in E3SM Atmosphere Model" .These data are derived from the model outputs from the simulations conducted with DO...

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Bibliographic Details
Main Authors: Zhang, Shixuan, Charalampopoulos, Alexis-Tzianni
Format: Other/Unknown Material
Language:unknown
Published: Zenodo 2023
Subjects:
Online Access:https://doi.org/10.5281/zenodo.10106706
Description
Summary:This archive containspost-processed data and scripts for analyses in Zhang et al. (2023) " A Machine Learning Bias Correction of Large-scale Environment of Extreme Weather Events in E3SM Atmosphere Model" .These data are derived from the model outputs from the simulations conducted with DOE's E3SM Atmosphere ModelVersion 2 (EAMv2). There are two groups of simulations. The first group consists of three model simulations were conducted with EAMv2, including one preset-day and two pseudo-global warming simulations with prescribed perturbations on sea surface temperature (SST) and sea ice concentrations (SICs). The second group contains the three same simulations that were post-processed with a machine learning bias correction model. A detailed description of the model and simulations can be found in Zhang et. al. (2023).