Releases: NCAR/GARD
Releases · NCAR/GARD
Version 1.0
This release represents the first complete version of the code as used in the published paper.
Gutmann, E. D., J. J. Hamman, M. P. Clark, T. Eidhammer, A. W. Wood, and J. R. Arnold, 2022: En-GARD: A Statistical Downscaling Framework to Produce and Test Large Ensembles of Climate Projections. J. Hydrometeor., 23, 1545–1561, https://doi.org/10.1175/JHM-D-21-0142.1.
What's Changed
- Many small bugfixes
- Addition of stochastic perturbation to analog fields to prevent identical values from always selecting the first dates
- Improved calendar handling
- Speed improvements to a few components
- Internal code cleanup
- adding ERA5 conversion file by @sam-hartke-ucar in #79
- Update writeERA5file.py to run in parallel by @sam-hartke-ucar in #81
New Contributors
- @wcurrier made their first contribution in 4f150e9
- @sam-hartke-ucar made their first contribution in #79
Full Changelog: v0.4...v1.0
v0.4
v0.4.0 (12 March 2017)
This release contains a number of new features and bug fixes.
New Features
- GARD documentation is now hosted on Read-the-docs (#3, #13, #19)
- Continuous integration testing on Travis-CI (#4)
- Add timezone option to handle different timezones in the training/prediction data for the GEFS option (#18)
- Default transform was changed to "No Transform" (#21)
- New option for using training data mean/std to normalize prediction data. This is particularly useful when the prediction data record is quite short. (#22)
- Improved minimum value handling in normalization (#25)
- New option for passing the prediction straight through GARD without any statistical modification (#27)
- Added new
interactive
option to allow users to specify what command line behavior they want (#31) - Improvements to output files, variable names are now sensible (#33)
- New
agg_method
option (GEFS Only) to allow the method (sum or mean) that GARD will aggregate over the time indices in the prediction data (#35) - Weighted averaging (GEFS Only) #37
- Allow for users to cache/reuse coefficients from the pure regression option (#39)
- Experimental post-processing utilities inside of GARD (#49)
- Experimental QQ-Normal transform (#51)