| """ |
| =========================================================== |
| SkewT-logP diagram: using transforms and custom projections |
| =========================================================== |
| |
| This serves as an intensive exercise of Matplotlib's transforms and custom |
| projection API. This example produces a so-called SkewT-logP diagram, which is |
| a common plot in meteorology for displaying vertical profiles of temperature. |
| As far as Matplotlib is concerned, the complexity comes from having X and Y |
| axes that are not orthogonal. This is handled by including a skew component to |
| the basic Axes transforms. Additional complexity comes in handling the fact |
| that the upper and lower X-axes have different data ranges, which necessitates |
| a bunch of custom classes for ticks, spines, and axis to handle this. |
| """ |
|
|
| from contextlib import ExitStack |
|
|
| from matplotlib.axes import Axes |
| import matplotlib.axis as maxis |
| from matplotlib.projections import register_projection |
| import matplotlib.spines as mspines |
| import matplotlib.transforms as transforms |
|
|
|
|
| |
| |
| class SkewXTick(maxis.XTick): |
| def draw(self, renderer): |
| |
| |
| |
| |
| with ExitStack() as stack: |
| for artist in [self.gridline, self.tick1line, self.tick2line, |
| self.label1, self.label2]: |
| stack.callback(artist.set_visible, artist.get_visible()) |
| needs_lower = transforms.interval_contains( |
| self.axes.lower_xlim, self.get_loc()) |
| needs_upper = transforms.interval_contains( |
| self.axes.upper_xlim, self.get_loc()) |
| self.tick1line.set_visible( |
| self.tick1line.get_visible() and needs_lower) |
| self.label1.set_visible( |
| self.label1.get_visible() and needs_lower) |
| self.tick2line.set_visible( |
| self.tick2line.get_visible() and needs_upper) |
| self.label2.set_visible( |
| self.label2.get_visible() and needs_upper) |
| super().draw(renderer) |
|
|
| def get_view_interval(self): |
| return self.axes.xaxis.get_view_interval() |
|
|
|
|
| |
| |
| class SkewXAxis(maxis.XAxis): |
| def _get_tick(self, major): |
| return SkewXTick(self.axes, None, major=major) |
|
|
| def get_view_interval(self): |
| return self.axes.upper_xlim[0], self.axes.lower_xlim[1] |
|
|
|
|
| |
| |
| |
| class SkewSpine(mspines.Spine): |
| def _adjust_location(self): |
| pts = self._path.vertices |
| if self.spine_type == 'top': |
| pts[:, 0] = self.axes.upper_xlim |
| else: |
| pts[:, 0] = self.axes.lower_xlim |
|
|
|
|
| |
| |
| |
| class SkewXAxes(Axes): |
| |
| |
| name = 'skewx' |
|
|
| def _init_axis(self): |
| |
| self.xaxis = SkewXAxis(self) |
| self.spines.top.register_axis(self.xaxis) |
| self.spines.bottom.register_axis(self.xaxis) |
| self.yaxis = maxis.YAxis(self) |
| self.spines.left.register_axis(self.yaxis) |
| self.spines.right.register_axis(self.yaxis) |
|
|
| def _gen_axes_spines(self): |
| spines = {'top': SkewSpine.linear_spine(self, 'top'), |
| 'bottom': mspines.Spine.linear_spine(self, 'bottom'), |
| 'left': mspines.Spine.linear_spine(self, 'left'), |
| 'right': mspines.Spine.linear_spine(self, 'right')} |
| return spines |
|
|
| def _set_lim_and_transforms(self): |
| """ |
| This is called once when the plot is created to set up all the |
| transforms for the data, text and grids. |
| """ |
| rot = 30 |
|
|
| |
| super()._set_lim_and_transforms() |
|
|
| |
| |
| |
| |
| |
| self.transDataToAxes = ( |
| self.transScale |
| + self.transLimits |
| + transforms.Affine2D().skew_deg(rot, 0) |
| ) |
| |
| self.transData = self.transDataToAxes + self.transAxes |
|
|
| |
| |
| self._xaxis_transform = ( |
| transforms.blended_transform_factory( |
| self.transScale + self.transLimits, |
| transforms.IdentityTransform()) |
| + transforms.Affine2D().skew_deg(rot, 0) |
| + self.transAxes |
| ) |
|
|
| @property |
| def lower_xlim(self): |
| return self.axes.viewLim.intervalx |
|
|
| @property |
| def upper_xlim(self): |
| pts = [[0., 1.], [1., 1.]] |
| return self.transDataToAxes.inverted().transform(pts)[:, 0] |
|
|
|
|
| |
| register_projection(SkewXAxes) |
|
|
| if __name__ == '__main__': |
| |
| from io import StringIO |
|
|
| import matplotlib.pyplot as plt |
| import numpy as np |
|
|
| from matplotlib.ticker import (MultipleLocator, NullFormatter, |
| ScalarFormatter) |
|
|
| |
| data_txt = ''' |
| 978.0 345 7.8 0.8 |
| 971.0 404 7.2 0.2 |
| 946.7 610 5.2 -1.8 |
| 944.0 634 5.0 -2.0 |
| 925.0 798 3.4 -2.6 |
| 911.8 914 2.4 -2.7 |
| 906.0 966 2.0 -2.7 |
| 877.9 1219 0.4 -3.2 |
| 850.0 1478 -1.3 -3.7 |
| 841.0 1563 -1.9 -3.8 |
| 823.0 1736 1.4 -0.7 |
| 813.6 1829 4.5 1.2 |
| 809.0 1875 6.0 2.2 |
| 798.0 1988 7.4 -0.6 |
| 791.0 2061 7.6 -1.4 |
| 783.9 2134 7.0 -1.7 |
| 755.1 2438 4.8 -3.1 |
| 727.3 2743 2.5 -4.4 |
| 700.5 3048 0.2 -5.8 |
| 700.0 3054 0.2 -5.8 |
| 698.0 3077 0.0 -6.0 |
| 687.0 3204 -0.1 -7.1 |
| 648.9 3658 -3.2 -10.9 |
| 631.0 3881 -4.7 -12.7 |
| 600.7 4267 -6.4 -16.7 |
| 592.0 4381 -6.9 -17.9 |
| 577.6 4572 -8.1 -19.6 |
| 555.3 4877 -10.0 -22.3 |
| 536.0 5151 -11.7 -24.7 |
| 533.8 5182 -11.9 -25.0 |
| 500.0 5680 -15.9 -29.9 |
| 472.3 6096 -19.7 -33.4 |
| 453.0 6401 -22.4 -36.0 |
| 400.0 7310 -30.7 -43.7 |
| 399.7 7315 -30.8 -43.8 |
| 387.0 7543 -33.1 -46.1 |
| 382.7 7620 -33.8 -46.8 |
| 342.0 8398 -40.5 -53.5 |
| 320.4 8839 -43.7 -56.7 |
| 318.0 8890 -44.1 -57.1 |
| 310.0 9060 -44.7 -58.7 |
| 306.1 9144 -43.9 -57.9 |
| 305.0 9169 -43.7 -57.7 |
| 300.0 9280 -43.5 -57.5 |
| 292.0 9462 -43.7 -58.7 |
| 276.0 9838 -47.1 -62.1 |
| 264.0 10132 -47.5 -62.5 |
| 251.0 10464 -49.7 -64.7 |
| 250.0 10490 -49.7 -64.7 |
| 247.0 10569 -48.7 -63.7 |
| 244.0 10649 -48.9 -63.9 |
| 243.3 10668 -48.9 -63.9 |
| 220.0 11327 -50.3 -65.3 |
| 212.0 11569 -50.5 -65.5 |
| 210.0 11631 -49.7 -64.7 |
| 200.0 11950 -49.9 -64.9 |
| 194.0 12149 -49.9 -64.9 |
| 183.0 12529 -51.3 -66.3 |
| 164.0 13233 -55.3 -68.3 |
| 152.0 13716 -56.5 -69.5 |
| 150.0 13800 -57.1 -70.1 |
| 136.0 14414 -60.5 -72.5 |
| 132.0 14600 -60.1 -72.1 |
| 131.4 14630 -60.2 -72.2 |
| 128.0 14792 -60.9 -72.9 |
| 125.0 14939 -60.1 -72.1 |
| 119.0 15240 -62.2 -73.8 |
| 112.0 15616 -64.9 -75.9 |
| 108.0 15838 -64.1 -75.1 |
| 107.8 15850 -64.1 -75.1 |
| 105.0 16010 -64.7 -75.7 |
| 103.0 16128 -62.9 -73.9 |
| 100.0 16310 -62.5 -73.5 |
| ''' |
|
|
| |
| sound_data = StringIO(data_txt) |
| p, h, T, Td = np.loadtxt(sound_data, unpack=True) |
|
|
| |
| fig = plt.figure(figsize=(6.5875, 6.2125)) |
| ax = fig.add_subplot(projection='skewx') |
|
|
| plt.grid(True) |
|
|
| |
| |
| ax.semilogy(T, p, color='C3') |
| ax.semilogy(Td, p, color='C2') |
|
|
| |
| l = ax.axvline(0, color='C0') |
|
|
| |
| ax.yaxis.set_major_formatter(ScalarFormatter()) |
| ax.yaxis.set_minor_formatter(NullFormatter()) |
| ax.set_yticks(np.linspace(100, 1000, 10)) |
| ax.set_ylim(1050, 100) |
|
|
| ax.xaxis.set_major_locator(MultipleLocator(10)) |
| ax.set_xlim(-50, 50) |
|
|
| plt.show() |
|
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