""" ======================================= Contour plot of irregularly spaced data ======================================= Comparison of a contour plot of irregularly spaced data interpolated on a regular grid versus a tricontour plot for an unstructured triangular grid. Since `~.axes.Axes.contour` and `~.axes.Axes.contourf` expect the data to live on a regular grid, plotting a contour plot of irregularly spaced data requires different methods. The two options are: * Interpolate the data to a regular grid first. This can be done with on-board means, e.g. via `~.tri.LinearTriInterpolator` or using external functionality e.g. via `scipy.interpolate.griddata`. Then plot the interpolated data with the usual `~.axes.Axes.contour`. * Directly use `~.axes.Axes.tricontour` or `~.axes.Axes.tricontourf` which will perform a triangulation internally. This example shows both methods in action. """ import matplotlib.pyplot as plt import matplotlib.tri as tri import numpy as np np.random.seed(19680801) npts = 200 ngridx = 100 ngridy = 200 x = np.random.uniform(-2, 2, npts) y = np.random.uniform(-2, 2, npts) z = x * np.exp(-x**2 - y**2) fig, (ax1, ax2) = plt.subplots(nrows=2) # ----------------------- # Interpolation on a grid # ----------------------- # A contour plot of irregularly spaced data coordinates # via interpolation on a grid. # Create grid values first. xi = np.linspace(-2.1, 2.1, ngridx) yi = np.linspace(-2.1, 2.1, ngridy) # Linearly interpolate the data (x, y) on a grid defined by (xi, yi). triang = tri.Triangulation(x, y) interpolator = tri.LinearTriInterpolator(triang, z) Xi, Yi = np.meshgrid(xi, yi) zi = interpolator(Xi, Yi) # Note that scipy.interpolate provides means to interpolate data on a grid # as well. The following would be an alternative to the four lines above: #from scipy.interpolate import griddata #zi = griddata((x, y), z, (xi[None, :], yi[:, None]), method='linear') ax1.contour(xi, yi, zi, levels=14, linewidths=0.5, colors='k') cntr1 = ax1.contourf(xi, yi, zi, levels=14, cmap="RdBu_r") fig.colorbar(cntr1, ax=ax1) ax1.plot(x, y, 'ko', ms=3) ax1.set(xlim=(-2, 2), ylim=(-2, 2)) ax1.set_title('grid and contour (%d points, %d grid points)' % (npts, ngridx * ngridy)) # ---------- # Tricontour # ---------- # Directly supply the unordered, irregularly spaced coordinates # to tricontour. ax2.tricontour(x, y, z, levels=14, linewidths=0.5, colors='k') cntr2 = ax2.tricontourf(x, y, z, levels=14, cmap="RdBu_r") fig.colorbar(cntr2, ax=ax2) ax2.plot(x, y, 'ko', ms=3) ax2.set(xlim=(-2, 2), ylim=(-2, 2)) ax2.set_title('tricontour (%d points)' % npts) plt.subplots_adjust(hspace=0.5) plt.show() ############################################################################# # # ------------ # # References # """""""""" # # The use of the following functions and methods is shown in this example: import matplotlib matplotlib.axes.Axes.contour matplotlib.pyplot.contour matplotlib.axes.Axes.contourf matplotlib.pyplot.contourf matplotlib.axes.Axes.tricontour matplotlib.pyplot.tricontour matplotlib.axes.Axes.tricontourf matplotlib.pyplot.tricontourf