
Data and scripts for the article "Assessing carbon cycle projections from complex and simple models under SSP scenarios" by I. Melnikova, P. Ciais, O. Boucher and K. Tanaka was accepted for publication in Climatic Change (https://doi.org/10.1007/s10584-023-03639-5) We use bash, CDO, and python. SSP2.xlsx contains preprocessed annual estimates of climate and carbon cycle variables from ESMs and SCMs used in the paper. Two bash scripts contain preprocessing cdo commands for ESM output.s SCMs were preprocessed directly in python. Jupyter notebook (python) contains preprocessing of data and plotting of all figures of the manuscript. The folder "additional" contains some more Excel files needed to run Jupyter-Notebook. Please adapt the folder names. If you have any questions, please contact the corresponding author Irina MELNIKOVA at melnikova . irina@nies.go.jp
ESM, SSP, carbon cycle, climate emulator, IAM, CMIP6
ESM, SSP, carbon cycle, climate emulator, IAM, CMIP6
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