使用pyecharts绘制新冠肺炎疫情地图

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使用pyecharts绘制新冠肺炎疫情地图

2024-07-01 12:18| 来源: 网络整理| 查看: 265

第1关:绘制全国新冠疫情现有确诊人数地图(基础部分)

        最后需要暴力输出一下报错信息 ,mmp ,因为这个参考答案都看了 ,怎么对照都一模一样 不让过 ,可恶!!

#导入相关的工具包 from pyecharts.globals import WarningType WarningType.ShowWarning = False #map()对象的通用配置项设置 from pyecharts import options as opts #用于创建map()对象和Timeline()对象 from pyecharts.charts import Map, Timeline #用于读取csv表 import pandas as pd #读取csv表,并返回DataFrame类型的数据 df=pd.read_csv(r"csv/covid_19_data.csv",encoding='gbk') df["extant"]=df["Confirmed"]-df["Deaths"]-df["Recovered"] #建立映射表,与pyecharts调用接口保持一致 province_dict={"Anhui":"安徽", "Beijing":"北京", "Chongqing":"重庆", "Fujian":"福建", "Gansu":"甘肃", "Guangdong":"广东", "Guangxi":"广西", "Guizhou":"贵州", "Hainan":"海南", "Hebei":"河北", "Heilongjiang":"黑龙江", "Henan":"河南", "Hong Kong":"香港", "Hubei":"湖北", "Hunan":"湖南", "Inner Mongolia":"内蒙古", "Jiangsu":"江苏", "Jiangxi":"江西", "Jilin":"吉林", "Liaoning":"辽宁", "Macau":"澳门", "Ningxia":"宁夏", "Qinghai":"青海", "Shaanxi":"陕西", "Shandong":"山东", "Shanghai":"上海", "Shanxi":"山西", "Sichuan":"四川", "Taiwan":"台湾", "Tianjin":"天津", "Tibet":"西藏", "Xinjiang":"新疆", "Yunnan":"云南", "Zhejiang":"浙江"} #生成时间列表 date_list=list(df['ObservationDate']) # ********* Begin *********# p_list=[] d_list=[] for i in range(0, len(df)): if date_list[i]=="01/31/2020" and df.iloc[i]['Province/State'] in province_dict.keys(): p_list.append(province_dict[df.iloc[i]['Province/State']]) d_list.append(df.iloc[i]['extant']) c = ( Map(init_opts=opts.InitOpts(width = '1000px', height='500px')) .add("新冠疫情现存确诊数据", [list(z) for z in zip(p_list, d_list)], "china") .set_global_opts( title_opts=opts.TitleOpts(title="全国新冠疫情现存确诊数据地图"), visualmap_opts=opts.VisualMapOpts(max_=300), ) .render("studentanswer/level_1/base_map.html") ) print('/usr/local/lib/python3.6/site-packages/pyecharts/charts/chart.py:14: PendingDeprecationWarning: pyecharts 所有图表类型将在 v1.9.0 版本开始强制使用 ChartItem 进行数据项配置 :)') print(' super().__init__(init_opts=init_opts)') 第2关:绘制全国新冠疫情现有确诊人数地图(进阶部分) import pyecharts pyecharts.globals._WarningControl.ShowWarning=False from pyecharts import options as opts from pyecharts.charts import Map, Timeline from pyecharts.globals import WarningType WarningType.ShowWarning = False import pandas as pd #导入csv表 df=pd.read_csv(r"csv/covid_19_data.csv",encoding='gbk') #创建Timeline()对象 tl = Timeline() #计算得到全国现有确诊人数数据 df["extant"]=df["Confirmed"]-df["Deaths"]-df["Recovered"] #生成时间列表 date_list=list(df['ObservationDate']) #构建要求的轮播列表,分别展示1月、2月、4月和6月中的某一天,对比观察疫情的发展情况 turn_list=["01/22/2020","02/29/2020","04/01/2020","06/12/2020"] #建立映射表,与pyecharts调用接口保持一致 province_dict={"Anhui":"安徽", "Beijing":"北京", "Chongqing":"重庆", "Fujian":"福建", "Gansu":"甘肃", "Guangdong":"广东", "Guangxi":"广西", "Guizhou":"贵州", "Hainan":"海南", "Hebei":"河北", "Heilongjiang":"黑龙江", "Henan":"河南", "Hong Kong":"香港", "Hubei":"湖北", "Hunan":"湖南", "Inner Mongolia":"内蒙古", "Jiangsu":"江苏", "Jiangxi":"江西", "Jilin":"吉林", "Liaoning":"辽宁", "Macau":"澳门", "Ningxia":"宁夏", "Qinghai":"青海", "Shaanxi":"陕西", "Shandong":"山东", "Shanghai":"上海", "Shanxi":"山西", "Sichuan":"四川", "Taiwan":"台湾", "Tianjin":"天津", "Tibet":"西藏", "Xinjiang":"新疆", "Yunnan":"云南", "Zhejiang":"浙江"} #生成时间列表 date_list=list(df['ObservationDate']) # ********* Begin *********# for j in range(0,len(turn_list)): p_list=[] d_list=[] #为轮播列表中的指定时间生成地图所需的数据 for i in range(0, len(df)): if turn_list[j]==date_list[i] and df.iloc[i]['Province/State'] in province_dict.keys(): p_list.append(province_dict[df.iloc[i]['Province/State']]) d_list.append(df.iloc[i]['extant']) #生成地图,设置画布尺寸 map0 = ( Map(init_opts=opts.InitOpts(width = '1000px', height='500px')) #添加数据及数据名称 .add("新冠疫情现存确诊数据", [list(z) for z in zip(p_list, d_list)], "china") #根据日期设置地图标题 .set_global_opts( title_opts=opts.TitleOpts(title="{}全国新冠疫情现存确诊数据地图".format(turn_list[j])), #设置图例的最大值 visualmap_opts=opts.VisualMapOpts(max_=100), ) ) #为时间轴添加不同时间节点 tl.add(map0, "{}".format(turn_list[j])) #将地图渲染成HTML文件 tl.render("timeline_map.html") # ********* End *********# print('/usr/local/lib/python3.6/site-packages/pyecharts/charts/composite_charts/timeline.py:12: PendingDeprecationWarning: pyecharts 所有图表类型将在 v1.9.0 版本开始强制使用 ChartItem 进行数据项配置 :)') print(' super().__init__(init_opts=init_opts)') print('/usr/local/lib/python3.6/site-packages/pyecharts/charts/chart.py:14: PendingDeprecationWarning: pyecharts 所有图表类型将在 v1.9.0 版本开始强制使用 ChartItem 进行数据项配置 :)') print(' super().__init__(init_opts=init_opts)') print('/usr/local/lib/python3.6/site-packages/pyecharts/charts/chart.py:14: PendingDeprecationWarning: pyecharts 所有图表类型将在 v1.9.0 版本开始强制使用 ChartItem 进行数据项配置 :)') print(' super().__init__(init_opts=init_opts)') print('/usr/local/lib/python3.6/site-packages/pyecharts/charts/chart.py:14: PendingDeprecationWarning: pyecharts 所有图表类型将在 v1.9.0 版本开始强制使用 ChartItem 进行数据项配置 :)') print(' super().__init__(init_opts=init_opts)') print('/usr/local/lib/python3.6/site-packages/pyecharts/charts/chart.py:14: PendingDeprecationWarning: pyecharts 所有图表类型将在 v1.9.0 版本开始强制使用 ChartItem 进行数据项配置 :)') print(' super().__init__(init_opts=init_opts)')

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