I'm having some troubles with trying to get a monthly average with Sentinel 3 images on... Everything, really. Python, Matlab, we are two people getting stuck in this problem.
The main reason deals with the fact that these images' information is not on a single netcdf file, neatly put with coordinates and products. Instead, they are all in separate files inside a one day folder as different .nc files with different information each, about one single satellite image. SNAP uses an xmlxs file to work with all of these separate .nc files as I understand it.
Now, I though it would be a good idea to try to merge and create/edit the .nc files as to create a new daily .nc which included the chlorophyll, the coordinates and, might as well add it, time. Later on, I would merge these new ones so to be able to make a monthly mean with xarray. At least that was my idea but I can't do the first part. It might be an obvious solution however here's what I tried, using the xarray module
import os
import numpy as np
import xarray as xr
import netCDF4
from netCDF4 import Dataset
nc_folder = df_try.iloc[0] #folder where the image files are
#open dataset in xarray
nc_chl = xr.open_dataset(str(nc_folder['path']) + '/' + 'chl_nn.nc') #path to chlorophyll file
nc_chl
n_coord =xr.open_dataset(str(nc_folder['path'])+ '/'+ 'geo_coordinates.nc') #path to coordinates file
n_time = xr.open_dataset(str(nc_folder['path'])+ '/' + 'time_coordinates.nc') #path to time file
ds_grid = [[nc_chl], [n_coord], [n_time]]
combined = xr.combine_nested(ds_grid, concat_dim=[None, None])
combined #dataset with all but not recognizing coordinates
ds = combined.rename({'latitude': 'lat', 'longitude': 'lon', 'time_stamp' : 'time'}).set_coords(['lon', 'lat', 'time']) #dataset recognizing coordinates as coordinates
ds
which gives a dataset with
Dimensions: columns 4865 rows: 4091
3 coordinates (lat, lon and time) and the chl variable.
Now, it doesn't save to netcdf4 (I tried but there was an error) but I was also thinking if anyone knew of another way to make an average? I have images from three years (beginning on 2017 to ending on 2019) I would need to average in different ways (monthly, seasonally...). My main current problem is that the chlorophyll values are separate from the geographical coordinates so directly only using the chlorophyll files should not work and would just make a mess.
Any suggestions?