上代码:

import pyecharts.options as opts
from pyecharts.charts import BMapdata = [["海门", 9],["鄂尔多斯", 12],["招远", 12],["舟山", 12],["齐齐哈尔", 14],["盐城", 15],["赤峰", 16],["青岛", 18],["乳山", 18],["金昌", 19],["泉州", 21],["莱西", 21],["日照", 21],["胶南", 22],["南通", 23],["拉萨", 24],["云浮", 24],["梅州", 25],["文登", 25],["上海", 25],["攀枝花", 25],["威海", 25],["承德", 25],["厦门", 26],["汕尾", 26],["潮州", 26],["丹东", 27],["太仓", 27],["曲靖", 27],["烟台", 28],["福州", 29],["瓦房店", 30],["即墨", 30],["抚顺", 31],["玉溪", 31],["张家口", 31],["阳泉", 31],["莱州", 32],["湖州", 32],["汕头", 32],["昆山", 33],["宁波", 33],["湛江", 33],["揭阳", 34],["荣成", 34],["连云港", 35],["葫芦岛", 35],["常熟", 36],["东莞", 36],["河源", 36],["淮安", 36],["泰州", 36],["南宁", 37],["营口", 37],["惠州", 37],["江阴", 37],["蓬莱", 37],["韶关", 38],["嘉峪关", 38],["广州", 38],["延安", 38],["太原", 39],["清远", 39],["中山", 39],["昆明", 39],["寿光", 40],["盘锦", 40],["长治", 41],["深圳", 41],["珠海", 42],["宿迁", 43],["咸阳", 43],["铜川", 44],["平度", 44],["佛山", 44],["海口", 44],["江门", 45],["章丘", 45],["肇庆", 46],["大连", 47],["临汾", 47],["吴江", 47],["石嘴山", 49],["沈阳", 50],["苏州", 50],["茂名", 50],["嘉兴", 51],["长春", 51],["胶州", 52],["银川", 52],["张家港", 52],["三门峡", 53],["锦州", 54],["南昌", 54],["柳州", 54],["三亚", 54],["自贡", 56],["吉林", 56],["阳江", 57],["泸州", 57],["西宁", 57],["宜宾", 58],["呼和浩特", 58],["成都", 58],["大同", 58],["镇江", 59],["桂林", 59],["张家界", 59],["宜兴", 59],["北海", 60],["西安", 61],["金坛", 62],["东营", 62],["牡丹江", 63],["遵义", 63],["绍兴", 63],["扬州", 64],["常州", 64],["潍坊", 65],["重庆", 66],["台州", 67],["南京", 67],["滨州", 70],["贵阳", 71],["无锡", 71],["本溪", 71],["克拉玛依", 72],["渭南", 72],["马鞍山", 72],["宝鸡", 72],["焦作", 75],["句容", 75],["北京", 79],["徐州", 79],["衡水", 80],["包头", 80],["绵阳", 80],["乌鲁木齐", 84],["枣庄", 84],["杭州", 84],["淄博", 85],["鞍山", 86],["溧阳", 86],["库尔勒", 86],["安阳", 90],["开封", 90],["济南", 92],["德阳", 93],["温州", 95],["九江", 96],["邯郸", 98],["临安", 99],["兰州", 99],["沧州", 100],["临沂", 103],["南充", 104],["天津", 105],["富阳", 106],["泰安", 112],["诸暨", 112],["郑州", 113],["哈尔滨", 114],["聊城", 116],["芜湖", 117],["唐山", 119],["平顶山", 119],["邢台", 119],["德州", 120],["济宁", 120],["荆州", 127],["宜昌", 130],["义乌", 132],["丽水", 133],["洛阳", 134],["秦皇岛", 136],["株洲", 143],["石家庄", 147],["莱芜", 148],["常德", 152],["保定", 153],["湘潭", 154],["金华", 157],["岳阳", 169],["长沙", 175],["衢州", 177],["廊坊", 193],["菏泽", 194],["合肥", 229],["武汉", 273],["大庆", 279],
]geoCoordMap = {"海门": [121.15, 31.89],"鄂尔多斯": [109.781327, 39.608266],"招远": [120.38, 37.35],"舟山": [122.207216, 29.985295],"齐齐哈尔": [123.97, 47.33],"盐城": [120.13, 33.38],"赤峰": [118.87, 42.28],"青岛": [120.33, 36.07],"乳山": [121.52, 36.89],"金昌": [102.188043, 38.520089],"泉州": [118.58, 24.93],"莱西": [120.53, 36.86],"日照": [119.46, 35.42],"胶南": [119.97, 35.88],"南通": [121.05, 32.08],"拉萨": [91.11, 29.97],"云浮": [112.02, 22.93],"梅州": [116.1, 24.55],"文登": [122.05, 37.2],"上海": [121.48, 31.22],"攀枝花": [101.718637, 26.582347],"威海": [122.1, 37.5],"承德": [117.93, 40.97],"厦门": [118.1, 24.46],"汕尾": [115.375279, 22.786211],"潮州": [116.63, 23.68],"丹东": [124.37, 40.13],"太仓": [121.1, 31.45],"曲靖": [103.79, 25.51],"烟台": [121.39, 37.52],"福州": [119.3, 26.08],"瓦房店": [121.979603, 39.627114],"即墨": [120.45, 36.38],"抚顺": [123.97, 41.97],"玉溪": [102.52, 24.35],"张家口": [114.87, 40.82],"阳泉": [113.57, 37.85],"莱州": [119.942327, 37.177017],"湖州": [120.1, 30.86],"汕头": [116.69, 23.39],"昆山": [120.95, 31.39],"宁波": [121.56, 29.86],"湛江": [110.359377, 21.270708],"揭阳": [116.35, 23.55],"荣成": [122.41, 37.16],"连云港": [119.16, 34.59],"葫芦岛": [120.836932, 40.711052],"常熟": [120.74, 31.64],"东莞": [113.75, 23.04],"河源": [114.68, 23.73],"淮安": [119.15, 33.5],"泰州": [119.9, 32.49],"南宁": [108.33, 22.84],"营口": [122.18, 40.65],"惠州": [114.4, 23.09],"江阴": [120.26, 31.91],"蓬莱": [120.75, 37.8],"韶关": [113.62, 24.84],"嘉峪关": [98.289152, 39.77313],"广州": [113.23, 23.16],"延安": [109.47, 36.6],"太原": [112.53, 37.87],"清远": [113.01, 23.7],"中山": [113.38, 22.52],"昆明": [102.73, 25.04],"寿光": [118.73, 36.86],"盘锦": [122.070714, 41.119997],"长治": [113.08, 36.18],"深圳": [114.07, 22.62],"珠海": [113.52, 22.3],"宿迁": [118.3, 33.96],"咸阳": [108.72, 34.36],"铜川": [109.11, 35.09],"平度": [119.97, 36.77],"佛山": [113.11, 23.05],"海口": [110.35, 20.02],"江门": [113.06, 22.61],"章丘": [117.53, 36.72],"肇庆": [112.44, 23.05],"大连": [121.62, 38.92],"临汾": [111.5, 36.08],"吴江": [120.63, 31.16],"石嘴山": [106.39, 39.04],"沈阳": [123.38, 41.8],"苏州": [120.62, 31.32],"茂名": [110.88, 21.68],"嘉兴": [120.76, 30.77],"长春": [125.35, 43.88],"胶州": [120.03336, 36.264622],"银川": [106.27, 38.47],"张家港": [120.555821, 31.875428],"三门峡": [111.19, 34.76],"锦州": [121.15, 41.13],"南昌": [115.89, 28.68],"柳州": [109.4, 24.33],"三亚": [109.511909, 18.252847],"自贡": [104.778442, 29.33903],"吉林": [126.57, 43.87],"阳江": [111.95, 21.85],"泸州": [105.39, 28.91],"西宁": [101.74, 36.56],"宜宾": [104.56, 29.77],"呼和浩特": [111.65, 40.82],"成都": [104.06, 30.67],"大同": [113.3, 40.12],"镇江": [119.44, 32.2],"桂林": [110.28, 25.29],"张家界": [110.479191, 29.117096],"宜兴": [119.82, 31.36],"北海": [109.12, 21.49],"西安": [108.95, 34.27],"金坛": [119.56, 31.74],"东营": [118.49, 37.46],"牡丹江": [129.58, 44.6],"遵义": [106.9, 27.7],"绍兴": [120.58, 30.01],"扬州": [119.42, 32.39],"常州": [119.95, 31.79],"潍坊": [119.1, 36.62],"重庆": [106.54, 29.59],"台州": [121.420757, 28.656386],"南京": [118.78, 32.04],"滨州": [118.03, 37.36],"贵阳": [106.71, 26.57],"无锡": [120.29, 31.59],"本溪": [123.73, 41.3],"克拉玛依": [84.77, 45.59],"渭南": [109.5, 34.52],"马鞍山": [118.48, 31.56],"宝鸡": [107.15, 34.38],"焦作": [113.21, 35.24],"句容": [119.16, 31.95],"北京": [116.46, 39.92],"徐州": [117.2, 34.26],"衡水": [115.72, 37.72],"包头": [110, 40.58],"绵阳": [104.73, 31.48],"乌鲁木齐": [87.68, 43.77],"枣庄": [117.57, 34.86],"杭州": [120.19, 30.26],"淄博": [118.05, 36.78],"鞍山": [122.85, 41.12],"溧阳": [119.48, 31.43],"库尔勒": [86.06, 41.68],"安阳": [114.35, 36.1],"开封": [114.35, 34.79],"济南": [117, 36.65],"德阳": [104.37, 31.13],"温州": [120.65, 28.01],"九江": [115.97, 29.71],"邯郸": [114.47, 36.6],"临安": [119.72, 30.23],"兰州": [103.73, 36.03],"沧州": [116.83, 38.33],"临沂": [118.35, 35.05],"南充": [106.110698, 30.837793],"天津": [117.2, 39.13],"富阳": [119.95, 30.07],"泰安": [117.13, 36.18],"诸暨": [120.23, 29.71],"郑州": [113.65, 34.76],"哈尔滨": [126.63, 45.75],"聊城": [115.97, 36.45],"芜湖": [118.38, 31.33],"唐山": [118.02, 39.63],"平顶山": [113.29, 33.75],"邢台": [114.48, 37.05],"德州": [116.29, 37.45],"济宁": [116.59, 35.38],"荆州": [112.239741, 30.335165],"宜昌": [111.3, 30.7],"义乌": [120.06, 29.32],"丽水": [119.92, 28.45],"洛阳": [112.44, 34.7],"秦皇岛": [119.57, 39.95],"株洲": [113.16, 27.83],"石家庄": [114.48, 38.03],"莱芜": [117.67, 36.19],"常德": [111.69, 29.05],"保定": [115.48, 38.85],"湘潭": [112.91, 27.87],"金华": [119.64, 29.12],"岳阳": [113.09, 29.37],"长沙": [113, 28.21],"衢州": [118.88, 28.97],"廊坊": [116.7, 39.53],"菏泽": [115.480656, 35.23375],"合肥": [117.27, 31.86],"武汉": [114.31, 30.52],"大庆": [125.03, 46.58],
}def convert_data():res = []for i in range(len(data)):geo_coord = geoCoordMap[data[i][0]]geo_coord.append(data[i][1])res.append([data[i][0], geo_coord])return res(BMap(init_opts=opts.InitOpts(width="1400px", height="800px")).add(type_="effectScatter",series_name="pm2.5",data_pair=convert_data(),symbol_size=10,effect_opts=opts.EffectOpts(),label_opts=opts.LabelOpts(formatter="{b}", position="right", is_show=False),itemstyle_opts=opts.ItemStyleOpts(color="purple"),).add_schema(baidu_ak="FAKE_AK",center=[104.114129, 37.550339],zoom=5,is_roam=True,map_style={"styleJson": [{"featureType": "water","elementType": "all","stylers": {"color": "#044161"},},{"featureType": "land","elementType": "all","stylers": {"color": "#004981"},},{"featureType": "boundary","elementType": "geometry","stylers": {"color": "#064f85"},},{"featureType": "railway","elementType": "all","stylers": {"visibility": "off"},},{"featureType": "highway","elementType": "geometry","stylers": {"color": "#004981"},},{"featureType": "highway","elementType": "geometry.fill","stylers": {"color": "#005b96", "lightness": 1},},{"featureType": "highway","elementType": "labels","stylers": {"visibility": "off"},},{"featureType": "arterial","elementType": "geometry","stylers": {"color": "#004981"},},{"featureType": "arterial","elementType": "geometry.fill","stylers": {"color": "#00508b"},},{"featureType": "poi","elementType": "all","stylers": {"visibility": "off"},},{"featureType": "green","elementType": "all","stylers": {"color": "#056197", "visibility": "off"},},{"featureType": "subway","elementType": "all","stylers": {"visibility": "off"},},{"featureType": "manmade","elementType": "all","stylers": {"visibility": "off"},},{"featureType": "local","elementType": "all","stylers": {"visibility": "off"},},{"featureType": "arterial","elementType": "labels","stylers": {"visibility": "off"},},{"featureType": "boundary","elementType": "geometry.fill","stylers": {"color": "#029fd4"},},{"featureType": "building","elementType": "all","stylers": {"color": "#1a5787"},},{"featureType": "label","elementType": "all","stylers": {"visibility": "off"},},]},).set_global_opts(title_opts=opts.TitleOpts(title="全国主要城市空气质量",subtitle="data from PM25.in",subtitle_link="http://www.pm25.in",pos_left="center",title_textstyle_opts=opts.TextStyleOpts(color="#fff"),),tooltip_opts=opts.TooltipOpts(trigger="item"),).render("air_quality_baidu_map.html")
)

运行后产生,air_quality_baidu_map.html文件:该HTML文件需要用谷歌浏览器或者IE浏览器打开

打开后如下图

pyechart1.19 全国空气质量展示相关推荐

  1. 基于 Python 的全国空气质量监测与可视化分析平台

    温馨提示:文末有 CSDN 平台官方提供的学长 Wechat / QQ 名片 :) 1. 项目背景 空气质量优劣程度与一个城市的综合竞争力密切相关,它直接影响到投资环境和居民健康,因此越来越受到政府和 ...

  2. ECharts实现全国空气质量查询

    ECharts实现全国空气质量查询 ECharts实现全国空气质量查询   项目简介   效果展示   主要技术   主要流程   环境配置 Python Flask框架建立项目 Python 爬虫爬 ...

  3. 全国空气质量查询程序说明和下载

    全国空气质量查询程序说明和下载 ECharts实现全国空气质量查询 Python Flask框架建立项目 Python 爬虫爬取空气质量数据 Echarts实现空气质量查询网页 全国空气质量查询程序说 ...

  4. python爬取空气质量_python爬取全国空气质量信息

    主要模块 requests模块.使用requests模块来获取http响应 gevent模块.使用gevent开启多个协程,加快爬取速度 re模块或beautifulsoup模块.正则表达式解析与be ...

  5. 全国空气质量排行,云贵川和西藏新疆等地空气质量更好

    哈喽,大家好,春节刚刚过去,不知道大家是不是都开始进入工作状态了呢? 春节期间,允许燃放烟花爆竹的地区的朋友们不知道都去欣赏烟花表演没有?其他地区的朋友们相比烟花表演可能更关心燃放烟花爆竹造成的环境污 ...

  6. 爬取全国空气质量数据

    思路: 1.空气质量在线监测平台 https://www.aqistudy.cn/: 2.分析网站,找到历史数据查询入口:https://www.aqistudy.cn/historydata/,首页 ...

  7. 全国空气质量网址解析

    1.解决网站的反爬机制,无限debugger以及检测到非法调试(这里以msedge浏览器为例) 第一步 点击右上角三个点--更多工具--开发人员工具 第二步 点击开发者工具右上角三个点,然后点击左边的 ...

  8. 下载和java io流处理全国空气质量历史数据

    下载源数据http://beijingair.sinaapp.com/ 源数据格式: 需要格式: javaIO流处理代码: import java.io.BufferedReader; import ...

  9. 五、空气质量分析与结果展示

    五.空气质量分析与结果展示 5.1 实验背景 近年来随着城市化和工业化的发展,城市空气质量越来越差,从中央到地方各级政府对城市空气质量也越发重视.并对全国各个城市的空气质量进行了长期的采样.下面对全国 ...

最新文章

  1. tcpdump-根据IP查看程序与服务都用了哪些端口
  2. 【Java】IO Stream详细解读
  3. 学Java发展前景好的三个原因
  4. Matlab增加块注释
  5. jQuery中的ready
  6. [css] css的user-select:all 有什么用处?
  7. Pro ASP.NET 4 CMS
  8. LeetCode 1640. 能否连接形成数组(哈希)
  9. linux 内核模型,The Linux Kernel Device Model - Overview -- Linux 内核设备模型概述
  10. 进入Activity后让EditText自动弹出小键盘
  11. 【机器人】项目疑难杂症
  12. android 手势输入法,基于触摸屏的手势输入法
  13. 安全学习木马查杀打卡第二十一天
  14. 移动视频客户端详细对比
  15. 左岸读书-知识分子的典型
  16. QQ被盗后,如何找回好友
  17. 凸包算法(Graham扫描法)
  18. 关于2019年签证的总结:
  19. python3:urllib/urllib2
  20. 学业水平考试b能上985吗_学业水平测试要求

热门文章

  1. Proteus仿真与实际的差别
  2. securecrt 连接配置存放目录_SecureCRT上传和下载文件(下载默认目录)
  3. vba for wps 7.0_微信7.0.5正式升级,大封面提升文章点击率
  4. Vue前端JavaScript实现PDF预览与图片预览
  5. prototype.js+ajax+随机数添加入url(原创)
  6. 外卖新时代的来临,蚁巢智能取餐柜的开始
  7. sharding-jdbc4.1.1 分库分表后 mysql查询优化(count)
  8. java webservice配置文件_webservice配置文件
  9. 提高工作效率的小建议
  10. jdk配置环境变量中path、classpath路径