Author: ORNL DAAC
Date: February 28, 2018
Contact for ORNL DAAC: [email protected]
These tutorials demonstrate how to use the Python netCDF4 and numpy modules to work with a dataset in netCDF file format using N-dimensional array objects. Python numpy array methods are shown that open and subset a temporal range from a gridded multidimentional netCDF file. The example uses data from the maximum temperature variables of a dataset (Daymet) that contain daily gridded meteorologic data. In the first tutorial, a summer average maximum temperature is created and the results saved into a new netCDF file. A second tutorial condenses introductory information and demonstates how to loop through more than one year of data.
Spatial subsets of the North American Daymet dataset daily data: https://daymet.ornl.gov.
For these tutorials, spatial subsets were obtained from the ORNL DAAC's THREDDS netCDF Subset Service (NCSS). A tutorial of the NCSS is available here under the "Gridded Subsets" tab: .
You can download the 2015 maximum temperature Daymet subset data used in these tutorials by pasting the following HTTP GET NCSS Request URL into a browser:
https://thredds.daac.ornl.gov/thredds/ncss/ornldaac/1328/2015/daymet_v3_tmax_2015_na.nc4?var=lat&var=lon&var=tmax&north=36.61&west=-85.37&east=-81.29&south=33.57&disableProjSubset=on&horizStride=1&time_start=2015-01-01T12%3A00%3A00Z&time_end=2015-12-31T12%3A00%3A00Z&timeStride=1&accept=netcdf
Daymet subset data for 2016 can be downloaded by updating the URL above to the 2016 dataset path and changing to 2016 in the time_start and time_end parameters.
Python 2.7 or later. Python modules: netCDF4, numpy, matplotlib, pylab, datetime
You can access the two tutorials here: Tutorial 1 Tutorial 2