feat(wind): Bias correct wind speeds based on scaling to a known average#403
feat(wind): Bias correct wind speeds based on scaling to a known average#403coroa wants to merge 1 commit intoPyPSA:masterfrom
Conversation
The ERA5 long run average is determined during cutout preparation by averaging
the monthly mean wind speeds from 1980 to the last year and made available as
a dataset variable wnd100m_lra.
Example usage:
cutout.wind(
atlite.windturbines.Enercon_E101_3000kW,
real_long_run_average_windspeed="gwa3_250_windspeed_100m.tif",
)
|
Since the bias correction factor is independent of the turbine model and other settings of the conversion, it might make sense to either incorporate the full bias correction into the cutout preparation. Or disentangle it completely from the actual stored dataset. ie. there could be a |
|
Closing in favour of simpler and more flexible alternative in #405 |
The ERA5 long run average is determined during cutout preparation by averaging the monthly mean wind speeds from 1980 to the last year and made available as a dataset variable wnd100m_lra.
Example usage:
TODO:
Closes #373 .
Changes proposed in this Pull Request
Checklist
doc.environment.yaml,environment_docs.yamlandsetup.py(if applicable).doc/release_notes.rstof the upcoming release is included.