I am storing weather forecasts as netcdf4 files. These netcdf4 files are batched following the google maps tiles principle. This means I define a zoom level (here 6) to get the extent of each tile. Based on that information I used the following code to slice the array:
sliced_data = data.where( (data[lat_coord_name] <= maxLat) & (data[lat_coord_name] > minLat) & (data[lon_coord_name] <= maxLon) & (data[lon_coord_name] > minLon), drop=True, )
Here, data is a
xarray.Dataset. At the end of this process I have 36 tiles for a weather model covering middle europe.
My problem is to merge them back to the native untiled
xarray.Dataset. The projection of the weather model differs from the projection of the tile maps. So at the end I have netcdf4 files with different shapes in x and y dimension. So I have no axis to align them with xarray.
The dimension of the native grid is 340x340. You can find a test dataset here
My expectation was:
import glob import xarray file_list = glob.glob('test_data_stackoverflow/*') file_list.sort() dataset = xarray.open_mfdataset(file_list, engine="h5netcdf")
But this will fail due to different shaped datasets.
I am open using other tools like netcdf4, h5netcdf or cdo. But the data should not be manipulated e.g. with an interpolation to the origin grid.