The paper is published in Environmental Research Letters: https://iopscience.iop.org/article/10.1088/1748-9326/abc443
This repo is setup for scientists interested to reproduce our Spring et al., 2020
paper. It contains scripts to reproduce the analysis and create the shown figures. It is inspired by Irving (2015)
to enhance reproducibility in geosciences.
- Irving, Damien. “A Minimum Standard for Publishing Computational Results in the Weather and Climate Sciences.” Bulletin of the American Meteorological Society 97, no. 7 (October 7, 2015): 1149–58. https://doi.org/10/gf4wzh.
- Maher, Nicola, Sebastian Milinski, Laura Suarez-Gutierrez, Michael Botzet, Mikhail Dobrynin, Luis Kornblueh, Jürgen Kröger, et al. “The Max Planck Institute Grand Ensemble - Enabling the Exploration of Climate System Variability.” Journal of Advances in Modeling Earth Systems 0, no. ja (June 4, 2019). https://doi.org/10/gf3kgt.
- model output aggregation:
cdo
- analysis:
xarray
- visualisation:
matplotlib
,cartopy
- predictive skill analysis:
climpred
- (private repo) data storage paths on supercomputer:
PMMPIESM
The results in this paper were obtained using a number of different software packages. The command line tool known as Climate Data Operators (CDO) was used to aggregate output and perform routine calculations on those files (e.g., the calculation of temporal and spatial means). For more complex analysis and visualization, a Python distribution called Anaconda was used. A Python library called xarray
was used for reading/writing netCDF files and data analysis. matplotlib
(the default Python plotting library) was used to generate the figures.
- CDO: Climate Data Operators, 2018. http://www.mpimet.mpg.de/cdo.
- Hoyer, Stephan, and Joe Hamman. “Xarray: N-D Labeled Arrays and Datasets in Python.” Journal of Open Research Software 5, no. 1 (April 5, 2017). https://doi.org/10/gdqdmw.
- Hunter, J. D. “Matplotlib: A 2D Graphics Environment.” Computing in Science Engineering 9, no. 3 (May 2007): 90–95. https://doi.org/10/drbjhg.
Dependencies (Packages installed) can be found in requirements.txt
(conda list in requirements_final.txt
). Installed via conda (see setup conda_info.txt
) and pip.