# scipy.interpolate.griddata: cut z-value and get area inside it

Regarding to this: analogy to scipy.interpolate.griddata? I have an additional question: My output looks like this:

It's a pyramid with noise (and without ground side). Is there a possibility in scipy.interpolate.griddata to enter/choose a certain z-value so that all points which aren't equal this z-values gets deleted? In my example: e.g. I enter a high z-value -> only the points with a certain red-value (= z-value) should stay alive and show me a non-filled, noised, red triangle. The goal is to get the area inside this noised triangle.

edit: tldr: as I just learned, it's an isoline what I am looking for and the area inside it.

edit2: So I found out that from this example http://docs.scipy.org/doc/scipy/reference/generated/scipy.interpolate.griddata.html "grid_z1.T" returns me an array with all the z-values. In a loop I could eliminate all values which does not equal a certain z-value -> I got my isoline. Problem is, that it's not rellay an iso*line* but a grid with some iso-values. It's quite ok, but maybe there is a better solutions? Are there some other methods then grid_z.T which could fit my needs?

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This is best done before you transform the data to grid form:

``````>>> x = [0,4,17]
>>> y = [-7,25,116]
>>> z = [50,112,47]

>> data = np.column_stack([x, y, z])
array([[  0,  -7,  50],
[  4,  25, 112], # <<----------------  Keep this
[ 17, 116,  47]])
>>> data = data[data[:,2] == 112]  # points with z==112
array([[  4,  25, 112]])
``````

then you can transform the data for plotting using griddata or for example the function given here:

``````X, Y, Z = grid(data[0], data[1], data[2])
``````
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If I understand you right, then I will get a problem: I only have several points of the pyramid, but above you see all points because I did an interpolation. If I first cut out certain points and do interpolation only for them, the interpolation wouldn't be accurate enough for me. I need to do interpolation with all given points because, regarding to your/my example, points with higher and lower z-values have an effect on the triangle-look at z=-112. –  Munchkin Aug 29 '13 at 5:00

In that special case I could solve it an easy way: Instead of eliminating all values which doesn't equal a certain z-value, I just eliminated all values which ar above a certain z-value:

``````if grid_z1.T[i][j] > z0 or math.isnan(grid_z1.T[i][j]):
grid_z1.T[i][j] = np.nan
``````

Because I defined gridsize by myself I easily can calculate area by multiply gridsize with count of points.

OT: Sorry for replying that late - I've been 1 week in hospital.

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