""" ============= Contourf demo ============= How to use the `.axes.Axes.contourf` method to create filled contour plots. """ import matplotlib.pyplot as plt import numpy as np delta = 0.025 x = y = np.arange(-3.0, 3.01, delta) X, Y = np.meshgrid(x, y) Z1 = np.exp(-X**2 - Y**2) Z2 = np.exp(-(X - 1)**2 - (Y - 1)**2) Z = (Z1 - Z2) * 2 nr, nc = Z.shape # put NaNs in one corner: Z[-nr // 6:, -nc // 6:] = np.nan # contourf will convert these to masked Z = np.ma.array(Z) # mask another corner: Z[:nr // 6, :nc // 6] = np.ma.masked # mask a circle in the middle: interior = np.sqrt(X**2 + Y**2) < 0.5 Z[interior] = np.ma.masked # %% # Automatic contour levels # ------------------------ # We are using automatic selection of contour levels; this is usually not such # a good idea, because they don't occur on nice boundaries, but we do it here # for purposes of illustration. fig1, ax2 = plt.subplots(layout='constrained') CS = ax2.contourf(X, Y, Z, 10, cmap=plt.cm.bone) # Note that in the following, we explicitly pass in a subset of the contour # levels used for the filled contours. Alternatively, we could pass in # additional levels to provide extra resolution, or leave out the *levels* # keyword argument to use all of the original levels. CS2 = ax2.contour(CS, levels=CS.levels[::2], colors='r') ax2.set_title('Nonsense (3 masked regions)') ax2.set_xlabel('word length anomaly') ax2.set_ylabel('sentence length anomaly') # Make a colorbar for the ContourSet returned by the contourf call. cbar = fig1.colorbar(CS) cbar.ax.set_ylabel('verbosity coefficient') # Add the contour line levels to the colorbar cbar.add_lines(CS2) # %% # Explicit contour levels # ----------------------- # Now make a contour plot with the levels specified, and with the colormap # generated automatically from a list of colors. fig2, ax2 = plt.subplots(layout='constrained') levels = [-1.5, -1, -0.5, 0, 0.5, 1] CS3 = ax2.contourf(X, Y, Z, levels, colors=('r', 'g', 'b'), extend='both') # Our data range extends outside the range of levels; make # data below the lowest contour level yellow, and above the # highest level cyan: CS3.cmap.set_under('yellow') CS3.cmap.set_over('cyan') CS4 = ax2.contour(X, Y, Z, levels, colors=('k',), linewidths=(3,)) ax2.set_title('Listed colors (3 masked regions)') ax2.clabel(CS4, fmt='%2.1f', colors='w', fontsize=14) # Notice that the colorbar gets all the information it # needs from the ContourSet object, CS3. fig2.colorbar(CS3) # %% # Extension settings # ------------------ # Illustrate all 4 possible "extend" settings: extends = ["neither", "both", "min", "max"] cmap = plt.colormaps["winter"].with_extremes(under="magenta", over="yellow") # Note: contouring simply excludes masked or nan regions, so # instead of using the "bad" colormap value for them, it draws # nothing at all in them. Therefore, the following would have # no effect: # cmap.set_bad("red") fig, axs = plt.subplots(2, 2, layout="constrained") for ax, extend in zip(axs.flat, extends): cs = ax.contourf(X, Y, Z, levels, cmap=cmap, extend=extend) fig.colorbar(cs, ax=ax, shrink=0.9) ax.set_title("extend = %s" % extend) ax.locator_params(nbins=4) plt.show() # %% # Orient contour plots using the origin keyword # --------------------------------------------- # This code demonstrates orienting contour plot data using the "origin" keyword x = np.arange(1, 10) y = x.reshape(-1, 1) h = x * y fig, (ax1, ax2) = plt.subplots(ncols=2) ax1.set_title("origin='upper'") ax2.set_title("origin='lower'") ax1.contourf(h, levels=np.arange(5, 70, 5), extend='both', origin="upper") ax2.contourf(h, levels=np.arange(5, 70, 5), extend='both', origin="lower") plt.show() # %% # # .. admonition:: References # # The use of the following functions, methods, classes and modules is shown # in this example: # # - `matplotlib.axes.Axes.contour` / `matplotlib.pyplot.contour` # - `matplotlib.axes.Axes.contourf` / `matplotlib.pyplot.contourf` # - `matplotlib.axes.Axes.clabel` / `matplotlib.pyplot.clabel` # - `matplotlib.figure.Figure.colorbar` / `matplotlib.pyplot.colorbar` # - `matplotlib.colors.Colormap` # - `matplotlib.colors.Colormap.set_bad` # - `matplotlib.colors.Colormap.set_under` # - `matplotlib.colors.Colormap.set_over`