G4-DESCSS/utils/vis.py

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Python
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2022-10-16 17:16:25 +08:00
import numpy as np
import pandas as pd
from matplotlib import pyplot as plt
plt.rcParams['font.family'] = ['Microsoft YaHei']
def process(df, col):
df = df[col]
df = df.sort_values(by=col[1]).to_numpy()
name = df[:-1, 0]
data = df[:-1, 1]
dSum = df[-1, 1]
lng = len(data) - 1
value = []
label = []
for k in range(lng):
if data[lng - k] / dSum > 0.01:
value.append(data[lng - k])
label.append(name[lng - k])
else:
break
value.append(dSum - np.sum(value))
label.append('else')
return value, label
df = pd.read_csv('result/anl-P.csv')
value, label = process(df, ['Particle', 'energy deposition'])
# plt.title('能量沉积(按粒子划分)')
plt.pie(value, labels=label, autopct='%0.2f%%')
plt.savefig('docs/eDep-P.png', bbox_inches='tight')
plt.close()
value, label = process(df, ['Particle', 'absorbed dose'])
# plt.title('吸收剂量(按粒子划分)')
plt.pie(value, labels=label, autopct='%0.2f%%')
plt.savefig('docs/aDoes-P.png', bbox_inches='tight')
plt.close()
value, label = process(df, ['Particle', 'equivalent dose'])
# plt.title('当量剂量(按粒子划分)')
plt.pie(value, labels=label, autopct='%0.2f%%')
plt.savefig('docs/eqDose-P.png', bbox_inches='tight')
plt.close()
value, label = process(df, ['Particle', 'effective dose'])
# plt.title('有效剂量(按粒子划分)')
plt.pie(value, labels=label, autopct='%0.2f%%')
plt.savefig('docs/efDose-P.png', bbox_inches='tight')
plt.close()
df = pd.read_csv('result/anl-O.csv')
value, label = process(df, ['Organ', 'energy deposition'])
# plt.title('能量沉积(按器官划分)')
plt.pie(value, labels=label, autopct='%0.2f%%')
plt.savefig('docs/eDep-O.png', bbox_inches='tight')
plt.close()
value, label = process(df, ['Organ', 'absorbed dose'])
# plt.title('吸收剂量(按器官划分)')
plt.pie(value, labels=label, autopct='%0.2f%%')
plt.savefig('docs/aDoes-O.png', bbox_inches='tight')
plt.close()
value, label = process(df, ['Organ', 'equivalent dose'])
# plt.title('当量剂量(按器官划分)')
plt.pie(value, labels=label, autopct='%0.2f%%')
plt.savefig('docs/eqDose-O.png', bbox_inches='tight')
plt.close()
value, label = process(df, ['Organ', 'effective dose'])
# plt.title('有效剂量(按器官划分)')
plt.pie(value, labels=label, autopct='%0.2f%%')
plt.savefig('docs/efDose-O.png', bbox_inches='tight')
plt.close()