mirror of
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117 lines
3.7 KiB
Python
117 lines
3.7 KiB
Python
"""
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Routines to assist in plotting
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"""
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import matplotlib.pyplot as plt
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import numpy as np
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def annotate_width(ax, name, x1, x2, y, text_kw={}, arrow_kw={}):
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default_arrow_kw = dict(
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xy = (x1, y),
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xytext = (x2,y),
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arrowprops = dict(
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arrowstyle="<->",
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shrinkA=False,
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shrinkB=False
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),
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)
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default_text_kw = dict(
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va='bottom',
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ha='center',
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xy=((x1+x2)/2, y)
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)
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an1 = ax.annotate("", **{**default_arrow_kw, **arrow_kw})
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an2 = ax.annotate(name, **{**default_text_kw, **text_kw})
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return [an1, an2]
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def beacon_sync_figure(
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time, impulses, beacons,
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delta_t=0,
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beacon_offsets=[],
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impulse_offsets=[],
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f_beacon=1,
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colors=['y','g'],
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show_annotations=False,
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multiplier_name = ['m','n'],
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fig_kwargs = {'figsize': (12,4)},
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ns=1e-3
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):
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if not hasattr(delta_t, "__len__"):
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delta_t = np.array([0, delta_t])
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if not hasattr(impulse_offsets, "__len__"):
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impulse_offsets = np.repeat(impulse_offsets, 2)
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if not hasattr(beacon_offsets, "__len__"):
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beacon_offsets = np.repeat(beacon_offsets, 2)
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N_axes = 2
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if show_annotations:
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N_axes += 1
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fig, axes = plt.subplots(N_axes,1, sharex=True, **fig_kwargs)
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axes[-1].set_xlabel("Time [ns]")
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for i in range(0, 2):
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axes[i].set_yticks([],[])
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axes[i].set_ylabel("Antenna {:d}".format(i+1))
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axes[i].plot((time-delta_t[i])/ns, impulses[i])
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axes[i].plot((time-delta_t[i])/ns, beacons[i], marker='.')
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# indicate timing of pulses
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for i, impulse_offset in enumerate(impulse_offsets):
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kwargs = dict(color=colors[i])
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axes_list = [axes[i]]
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if show_annotations:
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axes_list.append(axes[-1])
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[ax.axvline((impulse_offset-delta_t[i])/ns, **kwargs) for ax in axes_list]
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# indicate timing of beacon
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for i, beacon_offset in enumerate(beacon_offsets):
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kwargs = dict(color=colors[i], ls=(0, (3,2)))
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tick_kwargs = dict(color='k', alpha=0.2)
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axes_list = [axes[i]]
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if show_annotations:
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axes_list.append(axes[-1])
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# indicate every period of the beacon
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beacon_ticks = beacon_offset + [(n)*1/f_beacon for n in range(1+int((time[-1] - time[0]) * f_beacon))]
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[axes[i].axvline((tick-delta_t[i])/ns, **{**kwargs, **tick_kwargs}) for tick in beacon_ticks]
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# reference period in beacon
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# is the first tick > 0
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ref_tick = beacon_ticks[0]
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[ax.axvline((ref_tick-delta_t[i])/ns, **kwargs) for ax in axes_list]
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if show_annotations:
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# annotate width between impulse and closest beacon tick
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# and closest beacon tick and reference tick
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closest_beacon_tick_id = np.argmin(np.abs(beacon_ticks-impulse_offsets[i]))
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if closest_beacon_tick_id != 0 and beacon_ticks[closest_beacon_tick_id] > impulse_offsets[i]:
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closest_beacon_tick_id -= 1
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closest_beacon_tick = beacon_ticks[closest_beacon_tick_id]
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annotate_width(axes[i], f"$A_{i+1}$", (closest_beacon_tick - delta_t[i])/ns, (impulse_offsets[i]-delta_t[i])/ns, 0.7)
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annotate_width(axes[i], f"$B_{i+1}={multiplier_name[i]}T$", (closest_beacon_tick-delta_t[i])/ns, (ref_tick-delta_t[i])/ns, 0.4)
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if show_annotations:
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axes[-1].set_yticks([],[])
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# annotate width between beacon reference periods
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annotate_width(axes[-1], "$t_\phi$", (beacon_offsets[0]-delta_t[0])/ns, (beacon_offsets[-1]-delta_t[-1])/ns, 0.4)
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# annotate width between pulses
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annotate_width(axes[-1], "$\Delta t$", (impulse_offsets[0]-delta_t[0])/ns, (impulse_offsets[-1]-delta_t[-1])/ns, 0.4)
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return fig, axes
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