From dbc4b4dd7244cf10507d8b541c49a1d170db1e16 Mon Sep 17 00:00:00 2001 From: Lukas Prause Date: Fri, 17 Mar 2023 15:16:32 +0100 Subject: [PATCH] Refactor plots. --- plot_single_transmission.py | 51 +++++++++++++++++++++++++------------ 1 file changed, 35 insertions(+), 16 deletions(-) diff --git a/plot_single_transmission.py b/plot_single_transmission.py index 91cd8ab..e2157c0 100755 --- a/plot_single_transmission.py +++ b/plot_single_transmission.py @@ -8,6 +8,24 @@ import matplotlib import pandas as pd import matplotlib.pyplot as plt +# Using seaborn's style +#plt.style.use('seaborn') + +tex_fonts = { + "pgf.texsystem": "lualatex", + # "legend.fontsize": "x-large", + # "figure.figsize": (15, 5), + "axes.labelsize": 15, # "small", + # "axes.titlesize": "x-large", + "xtick.labelsize": 15, # "small", + "ytick.labelsize": 15, # "small", + "legend.fontsize": 15, + "axes.formatter.use_mathtext": True, + "mathtext.fontset": "dejavusans", +} + +#plt.rcParams.update(tex_fonts) + if __name__ == "__main__": parser = ArgumentParser() @@ -87,41 +105,39 @@ if __name__ == "__main__": ) transmission_df = transmission_df.rename(columns={"PCID": "lte_pcid", "PCID.1": "nr_pcid"}) + transmission_df.index = transmission_df["arrival_time"] + # transmission timeline scaley = 1.5 scalex = 1.0 plt.title("{} with {}".format(transmission_direction, cc_algo)) fig, ax = plt.subplots(2, 1, figsize=[6.4 * scaley, 4.8 * scalex]) fig.subplots_adjust(right=0.75) + fig.suptitle("{} with {}".format(transmission_direction, cc_algo)) ax0 = ax[0] ax1 = ax0.twinx() ax2 = ax0.twinx() - ax2.spines.right.set_position(("axes", 3)) + #ax2.spines.right.set_position(("axes", 1.22)) ax00 = ax[1] ax01 = ax00.twinx() - transmission_df["lte_handovers"] = transmission_df["lte_pcid"].diff() - - - lte_handovers = transmission_df[transmission_df.lte_pcid.diff() != 0].index.values - nr_handovers = transmission_df[transmission_df.nr_pcid.diff() != 0].index.values - - print(transmission_df["lte_handovers"]) - print(len(transmission_df["lte_handovers"])) - continue - # Plot vertical lines - for item in lte_handovers[1::]: - ax00.axvline(item, ymin=0, ymax=1, color='red') - for item in nr_handovers[1::]: - ax00.axvline(item, ymin=0, ymax=1, color='red') + lte_handovers = transmission_df["lte_pcid"].diff().dropna() + for index, value in lte_handovers.items(): + if value > 0: + ax00.axvline(index, ymin=0, ymax=1, color="skyblue", label="4G Handover") + + nr_handovers = transmission_df["nr_pcid"].diff().dropna() + for index, value in nr_handovers.items(): + if value > 0: + ax00.axvline(index, ymin=0, ymax=1, color="greenyellow", label="5G Handover") ax0.plot(transmission_df["snd_cwnd"].dropna(), color="lime", linestyle="dashed", label="cwnd") ax1.plot(transmission_df["srtt"].dropna(), color="red", linestyle="dashdot", label="sRTT") ax2.plot(transmission_df["goodput_rolling"], color="blue", linestyle="solid", label="goodput") ax00.plot(transmission_df["downlink_cqi"].dropna(), color="magenta", linestyle="dotted", label="CQI") - ax01.plot(transmission_df["DL_bandwidth"].dropna(), color="peru", linestyle="dotted", label="DL_bandwidth") + ax01.plot(transmission_df["DL_bandwidth"].dropna(), color="peru", linestyle="dotted", label="bandwidth") ax2.spines.right.set_position(("axes", 1.1)) @@ -138,10 +154,13 @@ if __name__ == "__main__": ax0.set_ylabel("cwnd") ax01.set_ylabel("Bandwidth [MHz]") + fig.legend(loc="lower right") + plt.savefig("{}{}_plot.pdf".format(args.save, csv.replace(".csv", ""))) #except Exception as e: # print("Error processing file: {}".format(csv)) # print(str(e)) counter += 1 + plt.close(fig) plt.clf()