适合科研人员的Python快速绘图工具2.0版本!A Python tool for researchers to create figures for academic papers! V2.0.
Project description
pyfastpaper重磅更新
旧版介绍-不再害怕数值仿真:快速绘制学术论文仿真图像的Python库——pyfastpaper
更新安装方式:pip install --upgrade pyfastpaper
新版说明:
-
新增了
make_example函数,能够生成示例程序代码。用户在此基础上修改核心内容,即可快速完成仿真绘图; -
对于
draw_max_area和draw_detail_area函数:(1)取消了原先的繁琐的theme属性,换成了更易于理解和设置的colors属性;(2)新增了patterns属性,用户可以设置不同区域的底纹图案;(3)修复了原先分区色彩和分区对不上的问题; -
优化了图片上的中英文字体显示问题。
from pyfastpaper import * # 固定写法
%config InlineBackend.figure_format = 'retina'
make_example('welcome')
Welcome to use the tools for thesis simulation drawing. The available functions include `data_lines`, `draw_lines`, `draw_3D`, `draw_max_area`, `draw_detail_area`, etc.
If you want to display high-definition pictures in Jupyter, please use `%config InlineBackend.figure_format = 'retina'`.
If you want to generate example code, please run the function`make_example(<data_lines/draw_lines/draw_3D/draw_max_area/draw_detail_area>)`.
欢迎使用论文模拟绘图工具。可用功能包括 `data_lines`(由数据点画线), `draw_lines`(符号函数仿真画线), `draw_3D`(符号函数仿真画3维图), `draw_max_area`(符号函数俩参数分析-“最大区域图”), `draw_detail_area`(符号函数俩参数分析-“不同关系区域图”) 等。
如果您想在 Jupyter 中显示高清图片,请使用 `% config InlineBackend.figure_format = 'retina'`。
如果你想生成实例代码,请运行函数`make_example(<data_lines/draw_lines/draw_3D/draw_max_area/draw_detail_area>)`。
# 能够生成示例程序代码。用户在此基础上修改核心内容,即可快速完成仿真绘图;
make_example('draw_max_area')
# 定义符号
# Define symbols
c_n, c_r, delta, e_n, e_r, p_e, E, k, b, alpha = symbols('c_n, c_r, delta, e_n, e_r, p_e, E, k, b, alpha')
# 四个表达式
# Four expressions
expressions = {
r'$\pi_r^{NW}$': E*p_e+(k*(alpha*delta*(c_n+e_n*p_e)-(c_r+e_r*p_e))**2)/(8*(k+alpha*delta*(1-alpha*delta))**2),
r'$\pi_r^{BW}$': E*p_e + ( k*(delta*(c_n+e_n*p_e)-(c_r+e_r*p_e+b))**2 )/( 8*(k+delta-delta**2)**2),
r'$\pi_r^{NS}$': E*p_e + ((k+2*alpha*delta)*(alpha*delta*(c_n+e_n*p_e)-(c_r+e_r*p_e))**2 )/( 8*(k+alpha*delta*(2-alpha*delta))**2),
r'$\pi_r^{BS}$': E*p_e + ( (k+2*delta)*(delta*(c_n+e_n*p_e)-(c_r+e_r*p_e+b))**2 )/( 8*(k+2*delta-delta**2)**2),
}
# 参数赋值
# Parameter assignment
assigns = {c_n: 0.2, c_r: 0.1, delta: 0.8, e_n: 1, e_r: 0.6, p_e: 0.1, E: 2, k: 1.1}
# 要分析的参数,及其取值范围
# The parameters to be analyzed and their value ranges.
the_var_x = alpha
start_end_x = [0.7, 0.8] # [起始值, 终止值]。 [starting value, ending value].
the_var_y = b
start_end_y = [0, 0.08] # [起始值, 终止值]。 [starting value, ending value].
# xyz轴的名字
# The names of the x-axis and y-axis.
x_name = '$\\alpha$ \n (b) With blockchain'
y_name = r'$b$'
# 图片保存路径、文件名
# Picture save path and file name.
save_dir = r'max_area.tiff'
# 四个表达式分别达到最大时显示的标签、区域背景颜色和区域图案。
# The labels, regional background colors and regional patterns displayed when the four expressions reach their maxima respectively.
texts = [r'NW', r'BW', r'NS', r'BS']
colors = ['#dae3f3', '#fbe5d6', '#e2f0d9', '#ededed']
patterns = [' ', '+', '\\', '-']
# 其他设置
text_fsize_add = 2 # 区域标签字号增量。 Increment of regional label font size.
figsize=[5, 4] # 图片大小:宽5高4。 icture size: width 5, height 4.
xrotation=0 # x轴标签名旋转角度(0为不旋转)。 Rotation angle of x-axis label name (0 means no rotation).
yrotation=0 # y轴标签名旋转角度(0为不旋转)。 Rotation angle of y-axis label name (0 means no rotation).
linewidths=0.1 # 线粗0.1. Line thickness: 0.1.
# 传给draw_max_area函数(不要改!)
# Passed to the draw_max_area function (Don't change!).
draw_max_area(expressions=expressions, assigns=assigns,
the_var_x=the_var_x, start_end_x=start_end_x,
the_var_y=the_var_y, start_end_y=start_end_y,
x_name=x_name, y_name=y_name,
fsize=14, texts=texts, text_fsize_add=text_fsize_add,
save_dir=save_dir, figsize=figsize, colors=colors, patterns=patterns,
xrotation=xrotation, yrotation=yrotation, linewidths=linewidths)
# 以方括号(列表、numpy数组均可)形式给出数据,并给这组数据起个名字:
data = {
'景区1旅游人次': [1230, 45789, 2600, 320, 991480, 65780, 89990, 70001, 6423, 415000, 340, 102],
'景区2旅游人次': [800, 34000, 1690, 139, 76788, 453565, 87898, 64302, 3423, 325001, 127, 13],
'景区3旅游人次': [5230, 65789, 7600, 820, 1091480, 85780, 99995, 90001, 9423, 705000, 640, 707],
}
# 给横轴添加刻度标签,注意要和data长度一致!
label_x = ['2020-1', '2020-2', '2020-3', '2020-4', '2020-5', '2020-6', '2020-7', '2020-8', '2020-9',
'2020-10', '2020-11', '2020-12']
# 自定义xy轴名称:
x_name = '月总旅游人次'
y_name = '月份'
# 保存路径
save_dir = 'data_sigle.tiff'
# 图例的方位,可以选填的内容有'best','northeast','northwest','southwest','southeast','east','west','south','north','center'。
# 默认值为'best',表示自动安排至合适的位置。
location = 'best'
# 图例的列数,默认为1列,即竖着排布。
ncol = 1
fsize = 14 # 图片中字号的大小,默认值为14。
figsize = [7, 5] # 图片的大小,写成`[宽, 高]`的形式。
# 横轴刻度标签旋转角度。用于刻度为年份,横着挤不下的情况,可以设成45度,错开排布。默认不旋转,即0度。
xt_rotation = 45
# 横轴名字标签旋转角度,默认值0,基本不需要动。
xrotation = 0
# 纵轴名字标签旋转角度,默认值90,字是正的。如果y轴的名字较长,不好看,可以设成0,字是竖倒着写的,紧贴y轴。
yrotation = 90
# 一组线的形状,如实线'-',点横线'-.',虚线'--',点线':'。
linestyles = ['-', '-.','--']
linewidth = 1.2 # 线粗。
markers = ['o','s', '*'] # 线上的标记符号,关于标记符号的详细说明 https://matplotlib.org/stable/api/markers_api.html#module-matplotlib.markers
markersize = 3.5 # 标记符号的大小,默认3.5。
# 四条线的颜色
colors = ['blue','red','green']
isgrid = False # 是否要网格。要就填True,不要就是False,默认不要。
# x/y轴刻度值距离横轴的距离
xpad = 3
ypad = 3
# x/y轴名字标签距离横轴刻度的距离。
xlabelpad = 3
ylabelpad = 3
# 传给data_lines函数 (不要改!)
# Passed to the data_lines function (Don't change!).
data_lines(data, label_x=label_x, x_name=x_name, y_name=y_name, save_dir=save_dir, location=location, ncol=ncol,
fsize=fsize, figsize=figsize, xt_rotation=xt_rotation, xrotation=xrotation, yrotation=yrotation,
linestyles=linestyles, linewidth=linewidth, markers=markers, markersize=markersize, colors=colors,
isgrid=isgrid, xpad=xpad, ypad=ypad, xlabelpad=xlabelpad, ylabelpad=ylabelpad)
<module 'matplotlib.pyplot' from 'C:\\Python311\\Lib\\site-packages\\matplotlib\\pyplot.py'>
# 定义符号
# Define symbols
c_n, c_r, delta, e_n, e_r, p_e, E, k, b, alpha = symbols('c_n, c_r, delta, e_n, e_r, p_e, E, k, b, alpha')
# 四个表达式
# Four expressions
expressions = {
r'$\pi_r^{NW}$': E*p_e+(k*(alpha*delta*(c_n+e_n*p_e)-(c_r+e_r*p_e))**2)/(8*(k+alpha*delta*(1-alpha*delta))**2),
r'$\pi_r^{BW}$': E*p_e + ( k*(delta*(c_n+e_n*p_e)-(c_r+e_r*p_e+b))**2 )/( 8*(k+delta-delta**2)**2),
r'$\pi_r^{NS}$': E*p_e + ((k+2*alpha*delta)*(alpha*delta*(c_n+e_n*p_e)-(c_r+e_r*p_e))**2 )/( 8*(k+alpha*delta*(2-alpha*delta))**2),
r'$\pi_r^{BS}$': E*p_e + ( (k+2*delta)*(delta*(c_n+e_n*p_e)-(c_r+e_r*p_e+b))**2 )/( 8*(k+2*delta-delta**2)**2),
}
# 参数赋值
# Parameter assignment
assigns = {c_n: 0.2, c_r: 0.1, delta: 0.8, e_n: 1, e_r: 0.6, p_e: 0.1, E: 2, k: 1.1, alpha:0.9}
# 要分析的参数,及其取值范围
# The parameters to be analyzed and their value ranges.
the_var = b
ranges = [0, 0.08, 0.01] # [起始值, 终止值, 间隔]。 [Starting value, ending value, interval].
# xy轴的名字
# The names of the x-axis and y-axis.
x_name = r'(a) Parameter $b$'
y_name = r'$\pi_r$'
# 图片保存路径、文件名
# Picture save path and file name.
save_dir = r'mutiple_line.tiff'
# 图例的方位,可以选填的内容有'best','northeast','northwest','southwest','southeast','east','west','south','north','center'。
# 默认值为'best',表示自动安排至合适的位置。
location = 'best'
# 图例的列数,默认为1列,即竖着排布。
ncol = 1
# 图片中字号的大小
fsize = 14
# 图片的大小,写成`[宽, 高]`的形式。
figsize = [5, 4]
xt_rotation = 0 # 横轴刻度标签旋转角度。用于刻度为年份,横着挤不下的情况,可以设成45度,错开排布。默认不旋转,即0度。
# xrotation/yrotation: x/y轴名字标签旋转角度。
xrotation = 0
yrotation = 90
linestyles = ['-','-.','--', ':'] # 线的风格,实线'-',点横线'-.',虚线'--',点线':'。
linewidth = 1.0 # 线粗。
markers = ['o','s', '*', 'P'] # 线上的标记符号,关于标记符号的详细说明 https://matplotlib.org/stable/api/markers_api.html#module-matplotlib.markers
markersize = 3.5 # 标记符号的大小,默认3.5。
# 四条线的颜色
colors = ['black','blue','red','green']
# 是否要网格。要就填True,不要就是False
isgrid = False
# 分别为x/y轴刻度值距离横轴的距离。
xpad = 3
ypad = 3
# 分别为x/y轴名字标签距离纵轴刻度的距离。
xlabelpad = 2
ylabelpad = 2
# 传给draw_lines函数 (不要改!)
# Passed to the draw_lines function (Don't change!).
draw_lines(expressions=expressions, assigns=assigns, the_var=the_var, ranges=ranges, x_name=x_name, y_name=y_name,
save_dir=save_dir, location=location, ncol=ncol, fsize=fsize, figsize=figsize, xt_rotation=xt_rotation,
xrotation=xrotation, yrotation=yrotation, linestyles=linestyles, linewidth=linewidth, markers=markers,
markersize=markersize, colors=colors, isgrid=isgrid, xpad=xpad, ypad=ypad, xlabelpad=xlabelpad, ylabelpad=ylabelpad)
<module 'matplotlib.pyplot' from 'C:\\Python311\\Lib\\site-packages\\matplotlib\\pyplot.py'>
# 定义符号
# Define symbols
c_n, c_r, delta, e_n, e_r, p_e, E, k, b, alpha = symbols('c_n, c_r, delta, e_n, e_r, p_e, E, k, b, alpha')
# 四个表达式
# Four expressions
expressions = {
r'$\pi_r^{NW}$': E*p_e+(k*(alpha*delta*(c_n+e_n*p_e)-(c_r+e_r*p_e))**2)/(8*(k+alpha*delta*(1-alpha*delta))**2),
r'$\pi_r^{BW}$': E*p_e + ( k*(delta*(c_n+e_n*p_e)-(c_r+e_r*p_e+b))**2 )/( 8*(k+delta-delta**2)**2),
r'$\pi_r^{NS}$': E*p_e + ((k+2*alpha*delta)*(alpha*delta*(c_n+e_n*p_e)-(c_r+e_r*p_e))**2 )/( 8*(k+alpha*delta*(2-alpha*delta))**2),
r'$\pi_r^{BS}$': E*p_e + ( (k+2*delta)*(delta*(c_n+e_n*p_e)-(c_r+e_r*p_e+b))**2 )/( 8*(k+2*delta-delta**2)**2),
}
# 参数赋值
# Parameter assignment
assigns = {c_n: 0.2, c_r: 0.1, delta: 0.8, e_n: 1, e_r: 0.6, p_e: 0.1, E: 2, k: 1.1}
# 要分析的参数,及其取值范围
# The parameters to be analyzed and their value ranges.
the_var_x = alpha
start_end_x = [0.7, 0.8] # [起始值, 终止值]。 [starting value, ending value].
the_var_y = b
start_end_y = [0, 0.08] # [起始值, 终止值]。 [starting value, ending value].
# xy轴的名字
# The names of the x-axis and y-axis.
x_name = r'$\alpha$'
y_name = r'$b$'
z_name = r'$\pi_r$'
# 图片保存路径、文件名
# Picture save path and file name.
save_dir = r'muti_3d.tiff'
# 曲面的透明度。取值范围0到1,浮点数。0表示全透明,1表示完全不透明。
color_alpha = 0.8
# 图例的方位,可以选填的内容有'best','northeast','northwest','southwest','southeast','east','west','south','north','center'。
# 默认值为'best',表示自动安排至合适的位置。
location = 'best'
# 图例的列数,默认为1列,即竖着排布。
ncol = 4
# 图片中字号的大小
fsize = 14
# 图片的大小,写成`[宽, 高]`的形式。默认为`[7, 5]`。
figsize = [7, 5]
# xrotation/yrotation: x/y轴名字标签旋转角度,默认值0,基本不需要动。
xrotation = 0
yrotation = 0
# Z轴名字标签旋转角度,默认值90,字是正的。如果Z轴的名字较长,不好看,可以设成0,字是竖倒着写的,紧贴Z轴
zrotation = 90
# 是否要网格。要就填True,不要就是False
isgrid = True
# 在多面图中用于按顺序制定每个面的颜色(包含标记符号的颜色)。
colors = ['yellow','blue','red','green']
# 曲面上线框的颜色。若为None,则曲面上不画线。当该参数不为None时,参数`linestyles`,`linewidth`和`density`才起作用。
edgecolor = 'black'
linestyles = ['-','-.','--', ':'] # 实线'-',点横线'-.',虚线'--',点线':'。
linewidth = 0.5 # 线粗。
density = 50 # 曲面上画线的密度,也就是曲面横纵方向各画多少根线。默认100。
# 仰角 (elevation)。定义了观察者与 xy 平面之间的夹角,也就是观察者与 xy 平面之间的旋转角度。
elevation = 15
# 方位角 (azimuth)。定义了观察者绕 z 轴旋转的角度。它决定了观察者在 xy 平面上的位置。
azimuth = 45
# 左、下、右、上的图片留白,默认分别为0,0,1,1。不需要动,除非不好看。
left_margin = 0
bottom_margin = 0
right_margin = 1
top_margin = 1
# 分别为/y/z轴刻度值距离横轴的距离。
xpad = 1
ypad = 1
zpad = 5
# 分别为/y/z轴名字标签距离纵轴刻度的距离。
xlabelpad = 2
ylabelpad = 2
zlabelpad = 12
# 传给draw_3D函数 (不要改!)
# Passed to the draw_3D function (Don't change!).
draw_3D(expressions=expressions, assigns=assigns, the_var_x=the_var_x, start_end_x=start_end_x, the_var_y=the_var_y,
start_end_y=start_end_y, x_name=x_name, y_name=y_name, z_name=z_name,
save_dir=save_dir, color_alpha=color_alpha, location=location, ncol=ncol, fsize=fsize, figsize=figsize,
xrotation=xrotation, yrotation=yrotation, zrotation=zrotation, isgrid=isgrid, colors=colors,
edgecolor=edgecolor, linestyles=linestyles, linewidth=linewidth, density=density, elevation=elevation, azimuth=azimuth,
left_margin=left_margin, bottom_margin=bottom_margin, right_margin=right_margin, top_margin=top_margin,
xpad=xpad, ypad=ypad, zpad=zpad, xlabelpad=xlabelpad, ylabelpad=ylabelpad, zlabelpad=zlabelpad)
<module 'matplotlib.pyplot' from 'C:\\Python311\\Lib\\site-packages\\matplotlib\\pyplot.py'>
# 定义符号
# Define symbols
c_n, c_r, delta, e_n, e_r, p_e, E, k, b, alpha = symbols('c_n, c_r, delta, e_n, e_r, p_e, E, k, b, alpha')
# 四个表达式
# Four expressions
expressions = {
r'$\pi_r^{NW}$': E*p_e+(k*(alpha*delta*(c_n+e_n*p_e)-(c_r+e_r*p_e))**2)/(8*(k+alpha*delta*(1-alpha*delta))**2),
r'$\pi_r^{BW}$': E*p_e + ( k*(delta*(c_n+e_n*p_e)-(c_r+e_r*p_e+b))**2 )/( 8*(k+delta-delta**2)**2),
r'$\pi_r^{NS}$': E*p_e + ((k+2*alpha*delta)*(alpha*delta*(c_n+e_n*p_e)-(c_r+e_r*p_e))**2 )/( 8*(k+alpha*delta*(2-alpha*delta))**2),
r'$\pi_r^{BS}$': E*p_e + ( (k+2*delta)*(delta*(c_n+e_n*p_e)-(c_r+e_r*p_e+b))**2 )/( 8*(k+2*delta-delta**2)**2),
}
# 参数赋值
# Parameter assignment
assigns = {c_n: 0.2, c_r: 0.1, delta: 0.8, e_n: 1, e_r: 0.6, p_e: 0.1, E: 2, k: 1.1}
# 要分析的参数,及其取值范围
# The parameters to be analyzed and their value ranges.
the_var_x = alpha
start_end_x = [0.7, 0.8] # [起始值, 终止值]。 [starting value, ending value].
the_var_y = b
start_end_y = [0, 0.08] # [起始值, 终止值]。 [starting value, ending value].
# xy轴的名字
# The names of the x-axis and y-axis.
x_name = '$\\alpha$ \n (b) With blockchain'
y_name = r'$b$'
# 图片保存路径、文件名
# Picture save path and file name.
save_dir = r'max_area.tiff'
# 四个表达式分别达到最大时显示的标签、区域背景颜色和区域图案。
# The labels, regional background colors and regional patterns displayed when the four expressions reach their maxima respectively.
texts = [r'NW', r'BW', r'NS', r'BS']
colors = ['#dae3f3', '#fbe5d6', '#e2f0d9', '#ededed']
patterns = [' ', '+', '\\', '-']
# 其他设置
text_fsize_add = 2 # 区域标签字号增量。 Increment of regional label font size.
figsize=[5, 4] # 图片大小:宽5高4。 icture size: width 5, height 4.
xrotation=0 # x轴标签名旋转角度(0为不旋转)。 Rotation angle of x-axis label name (0 means no rotation).
yrotation=0 # y轴标签名旋转角度(0为不旋转)。 Rotation angle of y-axis label name (0 means no rotation).
linewidths=0.1 # 线粗0.1. Line thickness: 0.1.
# 传给draw_max_area函数(不要改!)
# Passed to the draw_max_area function (Don't change!).
draw_max_area(expressions=expressions, assigns=assigns,
the_var_x=the_var_x, start_end_x=start_end_x,
the_var_y=the_var_y, start_end_y=start_end_y,
x_name=x_name, y_name=y_name,
fsize=14, texts=texts, text_fsize_add=text_fsize_add,
save_dir=save_dir, figsize=figsize, colors=colors, patterns=patterns,
xrotation=xrotation, yrotation=yrotation, linewidths=linewidths)
区域 0: 中心坐标 = [0.7671627089581086, 0.0634762952000335]
区域 1: 中心坐标 = [0.74544927 0.03695231]
区域 2: 中心坐标 = [0.7224541825812423, 0.07136930428315474]
<module 'matplotlib.pyplot' from 'C:\\Python311\\Lib\\site-packages\\matplotlib\\pyplot.py'>
# 定义符号
# Define symbols
c_n, c_r, delta, e_n, e_r, p_e, E, k, b, alpha = symbols('c_n, c_r, delta, e_n, e_r, p_e, E, k, b, alpha')
# 四个表达式
# Four expressions
expressions = {
r'$\pi_r^{NW}$': E*p_e+(k*(alpha*delta*(c_n+e_n*p_e)-(c_r+e_r*p_e))**2)/(8*(k+alpha*delta*(1-alpha*delta))**2),
r'$\pi_r^{BW}$': E*p_e + ( k*(delta*(c_n+e_n*p_e)-(c_r+e_r*p_e+b))**2 )/( 8*(k+delta-delta**2)**2),
r'$\pi_r^{NS}$': E*p_e + ((k+2*alpha*delta)*(alpha*delta*(c_n+e_n*p_e)-(c_r+e_r*p_e))**2 )/( 8*(k+alpha*delta*(2-alpha*delta))**2),
r'$\pi_r^{BS}$': E*p_e + ( (k+2*delta)*(delta*(c_n+e_n*p_e)-(c_r+e_r*p_e+b))**2 )/( 8*(k+2*delta-delta**2)**2),
}
# 参数赋值
# Parameter assignment
assigns = {c_n: 0.2, c_r: 0.1, delta: 0.8, e_n: 1, e_r: 0.6, p_e: 0.1, E: 2, k: 1.1}
# 要分析的参数,及其取值范围
# The parameters to be analyzed and their value ranges.
the_var_x = alpha
start_end_x = [0.7, 0.8] # [起始值, 终止值]。 [starting value, ending value].
the_var_y = b
start_end_y = [0, 0.08] # [起始值, 终止值]。 [starting value, ending value].
# xy轴的名字
# The names of the x-axis and y-axis.
x_name = '$\\alpha$ \n (b) With blockchain'
y_name = r'$b$'
# 图片保存路径、文件名
# Picture save path and file name.
save_dir = r'max_area_detail.tiff'
# 每个关系区域的标签前缀、编号样式、背景颜色和图案。
# The label prefix, numbering style, background color and pattern of each relational area.
prefix=r'Region' # 前缀。可以是"区域"也可以是"Region",默认"Region"。
numbers='roman' # 序号标记风格。有三种可选:"roman", "letter" 和"number",分别表示罗马数字、大写英文字母和阿拉伯数字。Numbering style. There are three options: "roman", "letter", and "number".
colors = ['#dae3f3', '#fbe5d6', '#e2f0d9', '#ededed', 'yellow', '#adb9ca', 'white']
patterns = [' ', '+', '\\', '-', '//', '|', 'o']
# 其他设置
text_fsize_add = -2 # 区域标签字号增量。 Increment of regional label font size.
figsize=[7, 4] # 图片大小:宽5高4。 icture size: width 5, height 4.
xrotation=0 # x轴标签名旋转角度(0为不旋转)。 Rotation angle of x-axis label name (0 means no rotation).
yrotation=0 # y轴标签名旋转角度(0为不旋转)。 Rotation angle of y-axis label name (0 means no rotation).
linewidths=0.1 # 线粗0.1. Line thickness: 0.1.
# 传给draw_detail_area函数(不要改!)
# Passed to the draw_detail_area function (Don't change!).
draw_detail_area(expressions=expressions, assigns=assigns,
the_var_x=the_var_x, start_end_x=start_end_x,
the_var_y=the_var_y, start_end_y=start_end_y,
x_name=x_name, y_name=y_name,
fsize=14, text_fsize_add=text_fsize_add,
save_dir=save_dir, figsize=figsize, colors=colors, patterns=patterns,
xrotation=xrotation, yrotation=yrotation, linewidths=linewidths,
prefix=prefix, numbers=numbers)
区域 $\pi_r^{BW} > \pi_r^{BS} > \pi_r^{NS} > \pi_r^{NW}$: 中心坐标 = [0.71801738 0.03542176]
区域 $\pi_r^{BW} > \pi_r^{BS} > \pi_r^{NW} > \pi_r^{NS}$: 中心坐标 = [0.7522649316484371, 0.050000071576472446]
区域 $\pi_r^{NW} > \pi_r^{NS} > \pi_r^{BW} > \pi_r^{BS}$: 中心坐标 = [0.75467691 0.06691737]
区域 $\pi_r^{NS} > \pi_r^{NW} > \pi_r^{BW} > \pi_r^{BS}$: 中心坐标 = [0.72038526 0.07323454]
<module 'matplotlib.pyplot' from 'C:\\Python311\\Lib\\site-packages\\matplotlib\\pyplot.py'>
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