用emoji表情包来可视化北京市历史天气状况!

用emoji表情包来可视化北京市历史天气状况!

最近有了一个突如其来的想法,主要是看到了R社区有大神做了emoji表情包,并已经打通了ggplot的链接,所以想用ggplot结合emoji表情做一期天气可视化!

library(RCurl)
library(XML)
library(dplyr)
library(stringr)
library(tidyr) library(plyr) library(rvest) library(ggimage) library(Cairo) library(showtext) library(lubridate) 

以下是北京2016年全年日度历史天气的获取过程!

url<-"http://lishi.tianqi.com/beijing/index.html"
myheader <-c("User-Agent"="Mozilla/5.0 (Windows NT 10.0; WOW64) AppleWebKit/537.36 (KHTML, like Gecko) Chrome/56.0.2924.87 Safari/537.36")
webpage<-getURL(url,httpheader=myheader)
mymonthlink<-getHTMLLinks(url,externalOnly=TRUE)%>%grep(".*?2016\\d{2}.html",.,value=T)

刚开始信誓旦旦的要用RCurl去爬,结果给我整蒙逼了,不是爬不了,数据弄出来太碎了,后来我用了rvest。

####
#page1<-getURL(mymonthlink[2],.encoding="gbk")
#rd<-iconv(page1,"gbk","utf-8")
#rdhtml<-htmlParse(rd,encoding="UTF-8")
#cesh<-readHTMLList(rdhtml,trim=TRUE,elFun=xmlValue)%>%grep("\\d{4}-\\d{2}-\\d{2}",.,value=T) #cesh<-cesh%>%sub("([a-z])(\\()(\\\)","",.) #cesh<-cesh1%>%str_split(',')%>%plyr::ldply(.fun=NULL) #cesh$V1<-cesh$V1%>%sub("[a-z]\\(","",.)%>%as.Date() #names(cesh)<-c("date","high","low","state","wind","index") #### 以上代码写了一半写不下去了,我有rvest为啥要用RCurl,肯定自己脑抽筋了! 

用了rvest就轻松多了!

mynewdata<-c()
for (i in mymonthlink){
mymonthdata<-read_html(i,encoding="gbk")%>%html_nodes("div.tqtongji2>ul")%>%html_text(trim=FALSE)%>%str_trim(.,side="right")%>%.[-1]
mynewdata<-c(mynewdata,mymonthdata)
} 

爬出来弄成一个 向量了,需要分列,其实可以直接使用节点区每一个变量的值,但是那样我觉得太麻烦!所以简单粗暴,爬到一起然后使用stringr去处理!

mynewdata1<-mynewdata
mynewdata<-mynewdata1%>%gsub("\t\t\t|\t|\r\n","",.)%>%str_split('   ')%>%plyr::ldply(.fun=NULL)%>%.[,-2]
names(mynewdata)<-c("date","high","low","state","wind","index")
mynewdata$date<-as.Date(mynewdata$date)
mynewdata$high<-as.numeric(mynewdata$high) mynewdata$low<-as.numeric(mynewdata$low) 

将天气进行归类!

unique(mynewdata$state)
happy<-c("晴","阵雨~晴","多云转晴","多云~晴","雷阵雨~晴","阴~晴","霾~晴","浮尘~晴")
depressed<-c("霾","阴","多云","晴~多云","霾~多云","晴~霾","多云~霾","阵雨转多云","多云转阴","阴~多云","多云~阴","晴~阴","阵雨~多云","小雨~多云","小雨~阴","霾~雾","小雪~阴","阴~小雪","小雨~雨夹雪")
angry<-c("小雨","雨夹雪","小雪","雷阵雨","阵雨","中雨","小到中雨","雷阵雨~阴","多云~雷阵雨","阴~雷阵雨","霾~雷阵雨","多云~阵雨","晴~阵雨","阴~小雨","阵雨~小雨")
Terrified<-c("中到大雨","暴雨","雷阵雨~中到大雨") 

分类赋值!

mynewdata$mode<-NULL
mynewdata$mood<-ifelse(mynewdata$state%in% happy,"happy",ifelse(mynewdata$state%in% depressed,"depressed",ifelse(mynewdata$state%in% angry,"angry","Terrified")))    

按照分类匹配emoji表情代码:

mynewdata <- within(mynewdata,{
  mood_code <- NA
  mood_code[mood=="happy"]<-"1f604"
  mood_code[mood=="depressed"]<-"1f633"
 mood_code[mood=="angry"]<-"1f62d"  mood_code[mood=="Terrified"]<-"1f621" }) 

创建多个时间变量!

mynewdata$month<-as.numeric(as.POSIXlt(mynewdata$date)$mon+1)
mynewdata$monthf<-factor(mynewdata$month,levels=as.character(1:12),labels=c("Jan","Feb","Mar","Apr","May","Jun","Jul","Aug","Sep","Oct","Nov","Dec"),ordered=TRUE)    
mynewdata$weekday<-as.POSIXlt(mynewdata$date)$wday
mynewdata$weekdayf<-factor(mynewdata$weekday,levels=rev(0:6),labels=rev(c("Sun","Mon","Tue","Wed","Thu","Fri","Sat")),ordered=TRUE)
mynewdata$week <- as.numeric(format(mynewdata$date,"%W")) mynewdata<-ddply(mynewdata,.(monthf),transform,monthweek=1+week-min(week)) mynewdata$day<-day(mynewdata$date) 

读写数据,最怕整理好了断网了或者关机了什么的,所以要市场做好备份!

write.table(mynewdata,"historyweather.csv",sep=",",row.names=FALSE)
mynewdata<-read.csv("historyweather.csv",stringsAsFactors = FALSE,check.names = FALSE)  

图一的主题:

mytheme<-theme(
         rect=element_blank(),
         axis.ticks=element_blank(),
         text=element_text(face="plain",lineheight=0.9,hjust=0.5,vjust=0.5,size=15),
 title=element_text(face="plain",lineheight=0.9,hjust=0,vjust=0.5,size=30),  axis.title=element_blank(),  strip.text=element_text(size = rel(0.8)),  plot.margin = unit(c(5,2,5,2),"lines")  ) 

图一效果:

CairoPNG("emoji1.png",1000,870)
showtext.begin()
ggplot(mynewdata,aes(weekdayf,monthweek,fill=high))+
geom_tile(colour='white')+
scale_fill_gradient(low=NA, high=NA,guide=FALSE)+
ggtitle("The emoji-weather visualization of beijing in 2016")+
scale_y_reverse(breaks=seq(from=6,to=0,by=-1))+
ggimage::geom_emoji(aes(image=mood_code),size=.1)+
facet_wrap(~monthf ,nrow=3)+
mytheme
showtext.end()
dev.off()
图二主题:
mytheme2<-theme(
         rect=element_blank(),
         axis.ticks=element_blank(),
         text=element_text(face="plain",lineheight=0.9,hjust=0.5,vjust=0.5,size=15),
 title=element_text(face="plain",lineheight=0.9,hjust=0,vjust=0.5,size=30),  axis.title=element_blank(),  strip.text=element_text(size = rel(0.8)),  plot.margin = unit(c(1,1,1,1),"lines")  ) 

图二效果:

setwd("F:/数据可视化/R/R语言学习笔记/可视化/ggplot2/商务图表")
CairoPNG("emoji2.png",1200,1200)
showtext.begin()
ggplot(mynewdata,aes(x=factor(day),y=monthf,fill=high))+
geom_tile(colour='white')+ expand_limits(y =c(-12,12))+ scale_x_discrete(position=c("bottom"))+ coord_polar(theta="x")+ scale_fill_gradient(low=NA, high=NA,guide=FALSE)+ ggimage::geom_emoji(aes(image=mood_code),size=.015)+ geom_image(aes(x=0,y=-12),image ="weather.png", size =.15)+ ggtitle("The emoji-weather visualization of beijing in 2016")+ mytheme2 showtext.end() dev.off() 

OK了,做完收工~

作者简介:

-------

wechat:ljty1991 
Mail:[email protected] 
个人公众号:数据小魔方(datamofang) 
团队公众号:EasyCharts 
qq交流群:[魔方学院]553270834

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转载自www.cnblogs.com/timxgb/p/9844361.html
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