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SOBEK outputs NetCDF files (*.nc). This tutorial shows you how to access these files in Python. We will investigate the contents of the netCDF file and plot a timeseries.
Step-by-step guide
You can find SOBEK output in the <projectname>.dsproj_data folder. Here you will find several files with the *.nc extension. These are NetCDF files. They correspond to the output selected in DeltaShell. Note: if this folder contains files with the extension *.nc.changes you have not saved your project after running the model. Save the project in DeltaShell before continuing.
Info NetCDF (Network Common Data Form) is an open standard for storing scientific data. Delft3D Flexible Mesh (and SOBEK) use the CF-1.0 convention.
- For this tutorial we will use the observation point output for water level. If you do not have a SOBEK model readily available, download the following output file: Water level (op).nc
Open your Python editor of choice. First we import the necessary modules and define a variable pointing to the *.nc file:
Code Block language py linenumbers true import matplotlib.pyplot as plt import netCDF4 ncfile = './Water level (op).nc'
Next, we build a dataset object and print all the variables in the netcdf file
Code Block linenumbers true ncfid = netCDF4.Dataset(path) for variable in ncfid.variables: print variable
In the next steps, we will extract the times, values and observation point names from the NetCDF file
The variable for the timestamps is called 'time', but note that it is in 'milliseconds since 1970-01-01'! Let's change this to python datetime objects
Code Block linenumbers true # Read data from nc file time = np.array(ncfid.variables['time']) # Convert to datetime objects time = [datetime(year=1970, month=1, day=1) + timedelta(seconds=t/1000.) for t in time]
The values (which are water levels, in this case) are easily extracted. We convert it to a numpy array to easily transpose:
Code Block linenumbers true # Read data from nc file waterlevels = np.array(ncfid.variables['value']).T
Finally, the names of the observation stations are stored under the attribute 'feature_name'. Reading this data will return a transposed character array. It is convenient to transform this to a proper list immediatly:
Code Block linenumbers true # Read data from nc file names = [''.join(i).strip() for i in ncfid.variables['feature_name']]
With the data read from file, we are ready to plot the result:
Code Block linenumbers true # Note in Python the first index is 0 (in MATLAB it is 1) station_index = 0 fig, ax = plt.subplots() ax.plot(time, waterlevels[station_index]) plt.title(names[station_index]) # Tweak the appearance of the plot ax.get_yaxis().set_tick_params(direction='out') ax.get_xaxis().set_tick_params(direction='out') plt.grid(b=True, which='both', color='0.65',linestyle='-') for spine in ['bottom', 'top', 'right', 'left']: ax.spines[spine].set_color((0.3, 0.3, 0.3)) plt.show()
That's it!
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