# Multiple time series in one plot

I have a time series of several years that I need to plot in one graph. The largest series has a mean of 340 and a minimum of 245 and maximum of 900. The smallest series has a mean of 7 with a minimum of -28 and maximum of 31. The remaining series has values in the range of 6 to 700. The series follows a regular annual and seasonal pattern over years until suddenly there was an upsurge of temperature for a month which was followed by much increased deaths than usual.

I cannot provide any real data, but I have simulated the following data and tried the code below which was based on an example code found here http://www.r-bloggers.com/multiple-y-axis-in-a-r-plot/. But the plot has not produced what I have desired. I have the following questions

1. In the plot it is difficult to clearly depict any of the series and important facts are hidden in the detail. How can I better present this data?
2. The Y axes have different lengths. How could I have axes with the same length? I appreciate any idea and suggestion on how to improve this code and present a better plot. The data I have simulated does not reflect my data as I am unable to simulate the extreme values that mirror the period of extreme weather episode.

Many thanks

``````temp<- rnorm(365, 5, 10)
mort<- rnorm(365, 300, 45)
poll<- rpois(365,  lambda=76)
date<-seq(as.Date('2011-01-01'),as.Date('2011-12-31'),by = 1)
df<-data.frame(date,mort,poll,temp)

windows(600,600)
par(mar=c(5, 12, 4, 4) + 0.1)

with(df, {
plot(date, mort, axes=F, ylim=c(170,max(mort)), xlab="", ylab="",type="l",col="black", main="")
points(date,mort,pch=20,col="black")
axis(2, ylim=c(170,max(mort)),col="black",lwd=2)
mtext(2,text="Mortality",line=2)

})

par(new=T)
plot(date, poll, axes=F, ylim=c(45,max(poll)), xlab="", ylab="",
type="l",col="red",lty=2, main="",lwd=1)
axis(2,  ylim=c(45,max(poll)),lwd=1,line=3.5)
points(date, poll,pch=20)
mtext(2,text="PM10",line=5.5)

par(new=T)
plot(date,  temp, axes=F, ylim=c(-28,max(temp)), xlab="", ylab="",
type="l",lty=3,col="brown", main="",lwd=1)
axis(2, ylim=c(-28,max(temp)),lwd=1,line=7)

points(date,  temp,pch=20)
mtext(2,text="Temperature",line=9)

axis(1,pretty(range(date),10))
mtext("date",side=1,col="black",line=2)
``````
-

I'd use separate plots for each variable, making their y-axis different. I like this better than introducing multiple y-axes in one plot. I will use `ggplot2` to do this, and more specifically the concept of facetting:

``````library(ggplot2)
library(reshape2)

df_melt = melt(df, id.vars = 'date')
ggplot(df_melt, aes(x = date, y = value)) +
geom_line() +
facet_wrap(~ variable, scales = 'free_y', ncol = 1)
``````

Notice that I stack the facets on top of each other. This will enable you to easily compare the timing of events in each of the series. Alternatively, you could put them next to each other (using `nrow = 1` in `facet_wrap`), this will enable you to easily compare the y-values.

We can also introduce some extremes:

``````df = within(df, {
temp[61:90] = temp[61:90] + runif(30, 30, 50)
mort[61:90] = mort[61:90] + runif(30, 300, 500)
})
df_melt = melt(df, id.vars = 'date')
ggplot(df_melt, aes(x = date, y = value)) +
geom_line() +
facet_wrap(~ variable, scales = 'free_y', ncol = 1)
``````

Here you can see easily that the increase in temp is correlated with the increase in mortality.

-
Nice examples! +1! Cheers. –  Henrik Sep 14 '13 at 13:57
@Paul and G.Grothendieck, Thank you for these great examples which are all excellent to display my data. I will accept Paul's answer as it was the first. –  Meso Sep 14 '13 at 17:45

Here are 6 approaches:

``````library(zoo)

# classic graphics in separate and single plots
plot(z)
plot(z, screen = 1)

# lattice graphics in separate and single plots
library(lattice)
xyplot(z)
xyplot(z, screen = 1)

# ggplot2 graphics in separate and single plots
library(ggplot2)
autoplot(z) + facet_free()
autoplot(z, facet = NULL)
``````
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Nice examples! Thanks. +1 –  Henrik Sep 14 '13 at 13:45