Full documentation on GRIB functionality in Metview is here.
Setup
Navigate into the 2_grib folder within Metview.
Customising the plot to bring out information
Right-click on the Metview desktop, Create new icon and select Contouring. Rename the newly created icon to 'shade' and edit it, setting these parameters:
Parameter | Value |
---|---|
Legend | On |
Contour Shade | On |
Contour Shade Method | Area Fill |
You can also play with the colour settings. When done, click OK to close the editor, then visualise the GRIB file and drop your shade icon into the plot window.
There are loads of options in the Contouring icon, which exposes all of the Magics parameters. Supplied in the folder are some additional Contouring icons for you to try dropping into the plot window to see what effect they have.
Icon | Description |
---|---|
shade30 | 30 contour levels, no isolines |
grid_shade | no interpolation, just shade the grid boxes (looks best with anti-aliasing turned off) |
marker_shade | plots a coloured marker at each grid point location |
grid_points | plots a small marker at each grid point location |
grid_vals | plots values at each grid point location |
Have a look at the supplied Python script plot_max_value_locations.py and execute it. It shows one way to plot the locations of the highest values, by masking off the lower values as invalid. Another way would be a customised Contouring icon that only plotted large values.
Examine the GRIB metadata
Right-click on the GRIB file icon and choose Examine. This brings up the GRIB examiner tool - have a look!
If you find this tool useful, you can invoke it directly from the command line:
metview -e grib <path/to/grib/file>
If you have time...
Compute and plot a time series from a point
Look at the supplied script plot_time_series.py as an example. It takes a GRIB file containing temperature data on multiple vertical levels for multiple time steps. The script plots a time series for each level for a given grid point.
Convert a GRIB field into text format
Create a new Grib to Geopoints icon. Edit it and drop one of the GRIB files into the Data box as shown.
Executing this icon will convert the first GRIB field into Geopoints format. The result can be directly visualised, examined or saved to disk.
Get a Python xarray from a GRIB file
The script grib_xarray.py shows how to get an xarray from a GRIB file. This Jupyter notebook gives a more detailed example using ensemble data.