# Matplotlib contour from xyz data: griddata invalid index

I'm trying to do a contour plot using matplotlib of a file with the following format:

x1 y1 z1

x2 y2 z2

etc

I can load it with numpy.loadtxt to get the vectors. So far, no trouble.

I read this to learn how to plot, and can reproduce it by copy paste, so i'm sure nothin is wrong with my installation:

http://matplotlib.org/examples/pylab_examples/griddata_demo.html

I understand I have to input x and y as vector and z as an array ,which can be done with griddata. This is also what i find on this site.

The documentation says:

zi = griddata(x,y,z,xi,yi) fits a surface of the form z = f*(*x, y) to the data in the (usually) nonuniformly spaced vectors (x, y, z). griddata() interpolates this surface at the points specified by (xi, yi) to produce zi. xi and yi must describe a regular grid, can be either 1D or 2D, but must be monotonically increasing.

For the sake of the example, I have written this code:

``````import numpy as np
import matplotlib.pyplot as plt
import matplotlib.mlab as ml

x=np.linspace(1.,10.,20)
y=np.linspace(1.,10.,20)
z=np.linspace(1.,2.,20)

xi=np.linspace(1.,10.,10)
yi=np.linspace(1.,10.,10)

zi = ml.griddata(x,y,z,xi,yi)
``````

However, I get the following error when it comes to the griddata: IndexError: invalid index

So, I tried to modify a bit the exemple of the doc like following:

``````from matplotlib.mlab import griddata
import matplotlib.pyplot as plt
import numpy as np
x = np.linspace(-2.1,2.1,300)
y = np.linspace(-2.1,2.1,300)
z = x*np.exp(-x**2-y**2)
# define grid.
xi = np.linspace(-2.1,2.1,100)
yi = np.linspace(-2.1,2.1,200)
# grid the data.
zi = griddata(x,y,z,xi,yi,interp='linear')
``````

And I get the same error. I don't understand what's going wrong.

Thanks for your help.

-

Consider:

``````x = np.linspace(1., 10., 20)
y = np.linspace(1., 10., 20)
z = np.linspace(1., 2., 20)
``````

This means we know the z-values at certain points along the line `x=y`.

From there,

``````zi = ml.griddata(x,y,z,xi,yi)
``````

is asking `mlab.griddata` to extrapolate the values of `z` for all points in a rectangular grid.

We've given a lot of information about how `z` varies along this line, but no information about how `z` varies in the perpendicular direction (away from the `x = y` line). An error is being raised because `mlab.griddata` refuses to guess.

You'll get better results if your initial `x`, `y` data are distributed more randomly:

``````import numpy as np
import matplotlib.pyplot as plt
import matplotlib.mlab as ml

ndata = 10
ny, nx = 100, 200
xmin, xmax = 1, 10
ymin, ymax = 1, 10
# x = np.linspace(1, 10, ndata)
# y = np.linspace(1, 10, ndata)

x = np.random.randint(xmin, xmax, ndata)
y = np.random.randint(ymin, ymax, ndata)
z = np.random.random(ndata)

xi = np.linspace(xmin, xmax, nx)
yi = np.linspace(ymin, ymax, ny)
zi = ml.griddata(x, y, z, xi, yi)

plt.contour(xi, yi, zi, 15, linewidths = 0.5, colors = 'k')
plt.pcolormesh(xi, yi, zi, cmap = plt.get_cmap('rainbow'))

plt.colorbar()
plt.scatter(x, y, marker = 'o', c = 'b', s = 5, zorder = 10)
plt.xlim(xmin, xmax)
plt.ylim(ymin, ymax)
plt.show()
``````

If you want `mlab.griddata` to extrapolate data along the line `x=y` to the entire grid in an arbitrary way, you could add two extra boundary points `(xmin, ymax, z[0])` and `(xmax,ymin,z[-1])`:

``````import numpy as np
import matplotlib.pyplot as plt
import matplotlib.mlab as ml

np.random.seed(8)
ndata = 10
ny, nx = 100, 200
xmin, xmax = 1, 10
ymin, ymax = 1, 10
x = np.linspace(1, 10, ndata)
y = np.linspace(1, 10, ndata)
z = np.random.random(ndata)
x = np.r_[x,xmin,xmax]
y = np.r_[y,ymax,ymin]
z = np.r_[z,z[0],z[-1]]
xi = np.linspace(xmin, xmax, nx)
yi = np.linspace(ymin, ymax, ny)
zi = ml.griddata(x, y, z, xi, yi)

plt.contour(xi, yi, zi, 15, linewidths = 0.5, colors = 'k')
plt.pcolormesh(xi, yi, zi, cmap = plt.get_cmap('rainbow'))

plt.colorbar()
plt.scatter(x, y, marker = 'o', c = 'b', s = 10, zorder = 10)
plt.xlim(xmin, xmax)
plt.ylim(ymin, ymax)
plt.show()
``````

-
That's a strange behavior, I'm pretty sure Matlab does't complains about that. The scipy.interpolate.griddata works fine with nearest method,but retun a vector. Is there built-in function, then, to generate a matrix from the vector z that can be accepted for contour() ? The grid on which I run my simulation is regular,so if I get your point, I won't be able to use griddata... –  Napseis Dec 8 '12 at 20:31
Thanks for your help,your method works fine as well for what I wish to do, and allowed me to pin point my error with mlab.griddata. –  Napseis Dec 8 '12 at 20:46

ok, I finally found the solution to plot it. For those interested, here is the trick: use the griddata from Scipy with the 'nearest' method.

``````from scipy.interpolate import griddata
import numpy as np
import matplotlib.pyplot as plt
x=np.linspace(1.,10.,20)
y=np.linspace(1.,10.,20)
z=z = np.random.random(20)
xi=np.linspace(1.,10.,10)
yi=np.linspace(1.,10.,10)

X,Y= np.meshgrid(xi,yi)
Z = griddata((x, y), z, (X, Y),method='nearest')
plt.contourf(X,Y,Z)
``````
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