NetCDF Converter: Difference between revisions

From Fluids Wiki
Jump to navigation Jump to search
No edit summary
 
(7 intermediate revisions by 2 users not shown)
Line 1: Line 1:
The page below provides code for converting MITgcm binary output to netCDF format. This works for most cases, but will break if you give it data files that are surface-only fields, like surface ice thickness and ice area fraction. The code below has been extended with a command line interface and ability to convert 2D data fields as part of the [https://git.uwaterloo.ca/tghill/gcmpy gcmpy] package, in particular <code>gcmpy.netCDFbinary</code>. See the [https://gcmpy.readthedocs.io/en/latest/netCDFbinary/ documentation here]. This package adds another python package requirement: <code>f90nml</code>, which is available on the package index (<code>pip install f90nml</code>)
== MITgcm dat to NetCDF converter ==
== MITgcm dat to NetCDF converter ==


The code below provides a python script to convert MITgcm <code>.dat</code> files to NetCDF <code>.nc</code> files.
The code below provides a python script to convert MITgcm <code>.data</code> files to NetCDF <code>.nc</code> files.


Note that using the script requires having the following python packages installed:
Note that using the script requires having the following python packages installed:
Line 12: Line 14:
'numpy' and 'netCDF4' can be <code>pip install</code>ed, while 'glob' and 'sys' are likely provided with your python installation.  
'numpy' and 'netCDF4' can be <code>pip install</code>ed, while 'glob' and 'sys' are likely provided with your python installation.  


'MITgcmutils' is hidden within your MITgcm directory (MITgcm/utils/python/MITgcmutils). You will need to run the setup script (<code>python setup.py install</code>). Afterwards you will need to add it to your Python path. This can be done by adding the following line to your <code>~/.bashrc</code>
'MITgcmutils' is hidden within your MITgcm directory (MITgcm/utils/python/MITgcmutils). You will need to run the setup script (<syntaxhighlight lang="bash" inline>python setup.py install</syntaxhighlight>). Afterwards (or before if the script complains) you will need to add it to your Python path. This can be done by adding the following line to your <code>~/.bashrc</code>


<syntaxhighlight lang="bash">
<syntaxhighlight lang="bash">
Line 22: Line 24:
==== Converting specific output times ====
==== Converting specific output times ====


Comment-out lines 9-10 and uncomment lines 14-16
Comment-out lines 9-10 and uncomment lines 13-15
<syntaxhighlight lang="python">
<syntaxhighlight lang="python" line start="8">
# Extract for a specific list of times
# Extract for a specific list of times
fields  = ['Rho', 'T']
fields  = ['Rho', 'T']
Line 34: Line 36:




Uncomment lines 9-11 and comment-out lines 14-16
Uncomment lines 9-10 and comment-out lines 13-15
<syntaxhighlight lang="python">
<syntaxhighlight lang="python" line start="12">
# Extract for all times
# Extract for all times
fields  = ['T', 'Rho']
fields  = ['T', 'Rho']
Line 46: Line 48:
=== Code ===
=== Code ===


<syntaxhighlight lang="python" line>
<syntaxhighlight lang="python" line highlight="9,10,13,14,15">
import MITgcmutils as mgu
import MITgcmutils as mgu
import numpy as np
import numpy as np

Latest revision as of 14:50, 16 August 2018

The page below provides code for converting MITgcm binary output to netCDF format. This works for most cases, but will break if you give it data files that are surface-only fields, like surface ice thickness and ice area fraction. The code below has been extended with a command line interface and ability to convert 2D data fields as part of the gcmpy package, in particular gcmpy.netCDFbinary. See the documentation here. This package adds another python package requirement: f90nml, which is available on the package index (pip install f90nml)

MITgcm dat to NetCDF converter

The code below provides a python script to convert MITgcm .data files to NetCDF .nc files.

Note that using the script requires having the following python packages installed:

  • MITgcmutils
  • numpy
  • netCDF4
  • glob
  • sys

'numpy' and 'netCDF4' can be pip installed, while 'glob' and 'sys' are likely provided with your python installation.

'MITgcmutils' is hidden within your MITgcm directory (MITgcm/utils/python/MITgcmutils). You will need to run the setup script (python setup.py install). Afterwards (or before if the script complains) you will need to add it to your Python path. This can be done by adding the following line to your ~/.bashrc

export PYTHONPATH="${PYTHONPATH}:/path-to-MITgcm/utils/python/MITgcmutils/"

Usage

Converting specific output times

Comment-out lines 9-10 and uncomment lines 13-15

# Extract for a specific list of times
fields  = ['Rho', 'T']
indices = ['0000017040']

fields specifies which fields (file prefixes) should be converted, while indices specifies which output times should be converted.

Converting all output times

Uncomment lines 9-10 and comment-out lines 13-15

# Extract for all times
fields  = ['T', 'Rho']
names = glob.glob(fields[0] + '.*.data')
indices = [nm[len(fields[0])+1:-5] for nm in names]

fields specifies which fields (file prefixes) should be converted, while the remaining lines automatically detect which outputs exist for those fields.

Code

import MITgcmutils as mgu
import numpy as np
from netCDF4 import Dataset
import glob, sys

# Step 1: Load data

# Extract for a specific list of times
#fields  = ['Rho', 'T']
#indices = ['0000017040']

# Extract for all times
fields  = ['T', 'Rho']
names = glob.glob(fields[0] + '.*.data')
indices = [nm[len(fields[0])+1:-5] for nm in names]

print("Preparing to convert {0:d} outputs to netcdf.".format(len(indices)))

# Manually extract the grids
Rho = mgu.rdmds('Rho.0000000000')

Nx = Rho.shape[2]
Ny = Rho.shape[1]
Nz = Rho.shape[0]

print("(Nx, Ny, Nz) = ({0:d}, {1:d}, {2:d})".format(Nx, Ny, Nz))

XC = mgu.rdmds('XG')
YC = mgu.rdmds('YG')
RC = mgu.rdmds('RC')

depth = mgu.rdmds('Depth')

myX = np.tile(XC.reshape(1, Ny, Nx), (Nz, 1, 1))
myY = np.tile(YC.reshape(1, Ny, Nx), (Nz, 1, 1))
myZ = np.tile(RC.reshape(Nz, 1, 1), [1, Ny, Nx])

myDepth = np.tile(depth.reshape(1, Ny, Nx), (Nz, 1, 1))

myInds = np.zeros(depth.shape)

# Handle the topography
cntP = 0
cntN = 0
for jj in range(Ny):
    for ii in range(Nx):
        zs = myZ[:,jj,ii]
        myInds[jj,ii] = np.sum(zs >= -depth[jj,ii])

        # Any z points below the topography are mapped to the lowest
        #  above-topography point
        if int(myInds[jj,ii]) < Nz:
            zs[int(myInds[jj,ii]):] = zs[int(myInds[jj,ii])]
        if int(myInds[jj,ii]) == 0:
            cntP += 1
        if int(myInds[jj,ii]) == Nz:
            cntN += 1

        myZ[:,jj,ii] = zs

print("{0:d} of {1:d} points ({2:.3g}%) are purely topographic".format(cntP, Nx*Ny, 100.*cntP/(Nx*Ny)))
print("{0:d} of {1:d} points ({2:.3g}%) have no topography".format(cntN, Nx*Ny, 100.*cntN/(Nx*Ny)))

# Step 2: Create netcdf

for index in indices:
    print("Processing index {0}".format(index))

    # Create file
    fp = Dataset('output_{0}.nc'.format(index), 'w', format='NETCDF4')
    
    # Create dimension objects
    x_dim = fp.createDimension('x',Nx)
    y_dim = fp.createDimension('y',Ny)
    z_dim = fp.createDimension('z',Nz)
    t_dim = fp.createDimension('time',1)

    # Create and write grids
    x_grid  = fp.createVariable('x',    np.float64, ('x',))
    y_grid  = fp.createVariable('y',    np.float64, ('y',))
    z_grid  = fp.createVariable('z',    np.float64, ('z',))
    zc_grid = fp.createVariable('zc',   np.float64, ('z','y','x'))
    t_grid  = fp.createVariable('time', np.float64, ('time',))

    x_grid[:]      = myX[0,0,:]
    y_grid[:]      = myY[0,:,0]
    z_grid[:]      = np.arange(Nz)
    zc_grid[:,:,:] = myZ
    t_grid[0]      = int(index)

    # Create and write fields
    field_objs = []
    for f in fields:
        f_var = fp.createVariable(f, np.float64, ('z','y','x'))
        data = mgu.rdmds(f + '.' + index)

        dat_min = 0*np.min(data[myZ >= -myDepth])

        # Screw with the data to make topography work nicely
        for jj in range(Ny):
            for ii in range(Nx):
                if (int(myInds[jj,ii]) == 0):
                    data[:,jj,ii] = dat_min
                elif int(myInds[jj,ii]) < Nz:
                    data[int(myInds[jj,ii]):,jj,ii] = data[int(myInds[jj,ii]),jj,ii]

        f_var[:,:,:] = data

    fp.close()