ecmwf-lab/med-extreme-prec-atm-patterns
The central point of ongoing research regarding the usefulness of the large-scale atmospheric variability in the Mediterranean for forecasting extreme precipitation in the domain.
This research provides insights into how large-scale weather patterns in the Mediterranean can help predict extreme rainfall days to weeks in advance. It takes information about atmospheric variability and produces an understanding of its connection to extreme precipitation. This is useful for meteorologists, agricultural planners, and emergency response teams who need to anticipate severe weather.
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Use this if you are a meteorologist or sector professional interested in understanding how large-scale atmospheric patterns can improve your ability to forecast extreme precipitation in the Mediterranean at medium-to-extended ranges.
Not ideal if you need a plug-and-play software tool for immediate operational forecasting, as this is currently a research repository rather than a standalone toolbox.
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Language
Jupyter Notebook
License
Apache-2.0
Category
Last pushed
Nov 19, 2022
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