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ntr-interferences/plot/main.py

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import os
import matplotlib.pyplot as plt
import numpy as np
import pandas as pd
nb_files = os.listdir(".." + os.sep + "export")
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size = len(nb_files)
def mean_mkn(arr: list[tuple[int, np.ndarray]]) -> np.ndarray:
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averages_mkn = np.empty((size, 2))
nb = 0
for nb_users, data in arr:
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rb = data[:, 4]
total = 0.0
for x in rb:
total = total + x
average = total / len(rb)
averages_mkn[nb, 0] = nb_users
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averages_mkn[nb, 1] = average
nb += 1
return averages_mkn
def rb_available(arr: list[tuple[int, np.ndarray]]) -> np.ndarray:
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available = np.zeros((size, 2))
nb = 0
for nb_users, data in arr:
available[nb, 0] = nb_users
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available[nb, 1] = (data.shape[0] / (200 * 10000)) * 100
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nb += 1
return available
def delay(arr: list[tuple[int, np.ndarray]]) -> np.ndarray:
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delays = np.zeros((size, 2))
nb = 0
for nb_users, data in arr:
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d = data[:, 5]
for x in d:
delays[nb, 0] = nb_users
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delays[nb, 1] = float(x)
nb += 1
return delays
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np_arr: list[tuple[int, np.ndarray]] = list()
for i in nb_files:
np_arr.append((int(i.split(".")[0]), pd.read_csv(".." + os.sep + "export" + os.sep + i, delimiter=';').to_numpy()))
averages = mean_mkn(np_arr)
available = rb_available(np_arr)
delays = delay(np_arr)
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delays.sort(axis=0)
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# Data for plotting
averages.sort(axis=0)
fig, ax = plt.subplots()
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ax.scatter(averages[:, 0], averages[:, 1])
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ax.set(xlabel='number of users', ylabel='Efficacité spectrale', title='Efficacité spectrale')
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ax.grid()
# fig.savefig("test.png")
plt.show()
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fig, ax = plt.subplots()
ax.scatter(available[:, 0], available[:, 1])
ax.set(xlabel='number of users', ylabel='RB utilisés', title='Pourcentage de RB utilisés')
ax.grid()
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plt.show()
fig, ax = plt.subplots()
ax.scatter(delays[:, 0], delays[:, 1])
ax.set(xlabel='number of users', ylabel='delays(ms)', title='Delay')
ax.grid()
plt.show()