# Preparing data to plot contours in Matplotlib's Basemap

I'm having a hard time with plotting a basemap with Matplotlib and I'm fairly new to it so I was hoping for some help.

I have data of the format:

``````[ (lat1, lon1, data1),
(lat2, lon2, data2),
(lat3, lon3, data3),
...
(latN, lonN, dataN) ]
``````

And here is some sample data:

``````(32.0, -128.5, 3.99)
(31.0, -128.0, 3.5027272727272734)
(31.5, -128.0, 3.7383333333333333)
(32.0, -128.0, 3.624)
(32.5, -128.0, 3.913157894736842)
(33.0, -128.0, 4.443333333333334)
``````

Finally, here are some basic statistics about my data that I'm planning to plot:

``````LAT MIN:  22
LAT MAX:  50
LAT LEN:  1919
LON MIN:  -128
LON MAX:  -97
LON LEN:  1919
DATA MIN: 0
DATA MAX: 12
DATA LEN:  1919
``````

I need to contour plot on a basemap of the continental United States. I can't, for the life of me, seem to figure out how to setup the data for plotting.

I read that the X-Axis (LATS) needs to be a np.array, and Y-Axis (LONS) needs to be an np.array and that Z (DATA) needs to be a MxN matrix where M = len(LATS) and N = len(LONS). So to me, I see Z as a diagonal matrix where the diagonal contains the data on the diagonal is the values found in DATA corresponding to the index of LATS and LONS.

Here is my code:

``````def show_map(self, a):

a = sorted(a, key = lambda entry: entry[0])     # sort by latitude
a = sorted(a, key = lambda entry: entry[1])     # then sort by longitude

lats = [ x[0] for x in a ]
lons = [ x[1] for x in a ]
data = [ x[2] for x in a ]

lat_min = min(lats)
lat_max = max(lats)
lon_min = min(lons)
lon_max = max(lons)
data_min = min(data)
data_max = max(data)

x = np.array(lats)
y = np.array(lons)
z = np.diag(data)

m = Basemap(
projection = 'merc',
llcrnrlat=lat_min, urcrnrlat=lat_max,
llcrnrlon=lon_min, urcrnrlon=lon_max,
rsphere=6371200., resolution='l', area_thresh=10000
lat_ts = 20, resolution = 'c'
)

fig = plt.figure()
plt.subplot(211)
ax = plt.gca()

# draw parallels
delat = 10.0
parallels = np.arange(0., 90, delat)
m.drawparallels(parallels, labels=[1,0,0,0], fontsize=10)

# draw meridians
delon = 10.
meridians = np.arange(180.,360.,delon)
m.drawmeridians(meridians,labels=[0,0,0,1],fontsize=10)

# draw map features
m.drawcoastlines(linewidth = 0.50)
m.drawcountries(linewidth = 0.50)
m.drawstates(linewidth = 0.25)

ny = z.shape[0]; nx = z.shape[1]        # make grid
lo, la = m.makegrid(nx, ny)
X, Y = m(lo, la)
clevs = [0,1,2.5,5,7.5,10,15,20,30,40,50,70,100,150,200,250,300,400,500,600,750]
cs = m.contour(X, Y, z, clevs)

plt.show()
``````

The plot I get, however, is this: http://imgur.com/li1Wg. I need something to this effect: http://matplotlib.org/basemap/_images/plotprecip.png

Can someone point out what I'm doing wrong and help me plot this? Thank You.

Thanks

-
Probably you need to reshape your x, y and z arrays from 1D arrays to N-D arrays (where N is > 1). Hope this helps. – khan Sep 24 '12 at 16:50
@khan, could you please provide me with more details on how to do that? I'm kind of new to numpy and matplotlib as a whole, so I'm reading about it. x and y are really a list of latitude and longitude values (respectively). I don't see why they should be a N-D array. – David Daniel Sep 24 '12 at 17:10
I'm able to do the following and have it working as a regular plot (pyplot.contour(...) not with basemap.contour(...)) pastebin.com/keiSHwPL – David Daniel Sep 24 '12 at 18:16
However, when I do the same for Basemap.contour(...), using this code: pastebin.com/qBSUu79E, I get the error: pastebin.com/V97vRNJ9 – David Daniel Sep 24 '12 at 18:21
@daneil: try reshaping the data by np.reshape(m, n) where m and n are dimensions for the new matrix. – khan Sep 24 '12 at 18:23

I figured out how to do it. This is the code that I finally wrote, and I think this can help other users. If there is a better way of doing this, please state it, since I'm new to Matplotlib.

https://gist.github.com/3789221

-

Your linked gist is a solution but still wrong in another place.

In your question and in your linked gist you switched x and y coordinates with lon and lat.

x represents lon

y represents lat

``````z = np.diag(data)
From the documentation, `numpy.diag(v, k=0)` extracts a diagonal or construct a diagonal array. That should be why you only get a "diagonal area" of values...