I am trying to map an irregularly gridded dataset (raw satellite data) with associated latitudes and longitudes to a regularly gridded set of latitudes and longitudes given by basemap.makegrid(). I am using matplotlib.mlab.griddata with mpl_toolkits.natgrid installed. Below is a list of the variables being used as output by whos in ipython and some stats on the variables:
Variable Type Data/Info
-------------------------------
datalat ndarray 666x1081: 719946 elems, type `float32`, 2879784 bytes (2 Mb)
datalon ndarray 666x1081: 719946 elems, type `float32`, 2879784 bytes (2 Mb)
gridlat ndarray 1200x1000: 1200000 elems, type `float64`, 9600000 bytes (9 Mb)
gridlon ndarray 1200x1000: 1200000 elems, type `float64`, 9600000 bytes (9 Mb)
var ndarray 666x1081: 719946 elems, type `float32`, 2879784 bytes (2 Mb)
In [11]: var.min()
Out[11]: -30.0
In [12]: var.max()
Out[12]: 30.0
In [13]: datalat.min()
Out[13]: 27.339874
In [14]: datalat.max()
Out[14]: 47.05302
In [15]: datalon.min()
Out[15]: -137.55658
In [16]: datalon.max()
Out[16]: -108.41629
In [17]: gridlat.min()
Out[17]: 30.394031556984299
In [18]: gridlat.max()
Out[18]: 44.237140350357713
In [19]: gridlon.min()
Out[19]: -136.17646180595321
In [20]: gridlon.max()
Out[20]: -113.82353819404671
datalat and datalon are the orignal data coordinates
gridlat and gridlon are the coordinates to interpolate to
var contains the actual data
Using these variables, when I call griddata(datalon, datalat, var, gridlon, gridlat) it has taken as long as 20 minutes to complete and returns an array of nan. From looking at the data, the latitudes and longitudes appear to be correct with the original coordinates overlapping a portion of the new area and a few data points lying outside of the new area. Does anyone have any suggestions? The nan values suggest that I'm doing something stupid...