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maybe a easy question but I cannot figure out. That's my original df:

                Date.time      P    ID
    1   2013-07-03 11:15:00 1207.7  K0904
    2   2013-07-03 11:20:00 1207.7  K0904
    3   2013-07-03 11:25:00 1207.9  K0904
    4   2013-07-03 11:30:00 1208.0  K0904
    5   2013-07-03 11:35:00 1208.0  K0904
    70  2013-07-03 17:00:00 1208.6  K0955
    71  2013-07-03 17:05:00 1208.4  K0955
    72  2013-07-03 17:10:00 1208.4  K0955
    73  2013-07-03 17:15:00 1208.6  K0955
    74  2013-07-03 17:20:00 1208.8  K0955

And with this code

    ggplot(df1, aes(x=Date.time, y=P, group=ID, color=ID)) + 
      geom_line() +
      facet_grid(~ID) +

I create this plot

enter image description here

Simply I want to overlay the last 3 plots to the first 3 ones (so the plot is smaller and more readable. I tried to split the df into 2 ones, each one made by 3 ID and then combine them adding 2 geom_line() one for every df but nothing changed. Any idea? Code to extract the new df is:

df1<-subset(df, ID %in% c("K1142", "K0904", "K1136"))
df2<-subset(df, ID %in% c("K0955", "K1148", "K8651"))

and then the new attempt

ggplot(df1, aes(x=Date.time, y=P, group=ID, color=ID)) + 
  geom_line() +
  geom_line(data=df2, aes(x=Date.time, y=P, color=ID)) +
  facet_grid(~ID) +
share|improve this question
Can you show the code you used? – Señor O Aug 15 '13 at 20:01
Also, on SO, it is important to make post your question as a fully reproducible example - for instance by recreating your problem from one of hte built-in data sets, making up fake data and posting the code, or posting your actual data in a public repository. See link:… – Drew Steen Aug 15 '13 at 20:20
Yeah - it's difficult to answer precisely without the data, but you essentially need to split ID into two variables: one that you'll use to facet the plot, and one that you'll map to the group and color aesthetics. So if you want to overlay K1142 and K0955, create a second ID variable in which they have the same value and use that to facet the plots. Then you could continue to use your current ID to map group and color. – Matt Parker Aug 15 '13 at 20:25
In my experience, it's pretty damn unusual to pass two data.frames to the same ggplot - I've only ever used that to add arbitrary text annotations to a plot. – Matt Parker Aug 15 '13 at 20:28
@Drew and Matt sorry guys. I edit now my question with a piece of my df – matteo Aug 15 '13 at 20:32
up vote 4 down vote accepted

This will do the job (basically what @MattParker suggested)

# Recreate your data (fake)
Date.time <- rep(1:100, 6)
P <- runif(600) + rep(0:5, each=100)
ID <- gl(6, 100, labels=c("K1142", "K0904", "K1136", "K0955", "K1148", "K8651"))
d <- data.frame(Date.time=Date.time, P=P, ID=ID)

#Create a new dummy variable to facet by
#    (There's a cleaner way to do this, but this way is easy to understand)
d$newID <- NA
d$newID[d$ID %in% levels(d$ID)[1:2]] <- "groupA"
d$newID[d$ID %in% levels(d$ID)[3:4]] <- "groupB"
d$newID[d$ID %in% levels(d$ID)[5:6]] <- "groupC"

# Make the plot, faceting on the dummy variable
ggplot(d, aes(x=Date.time, y=P, colour=ID)) + geom_line() +
share|improve this answer
Yes it works! Thank you – matteo Aug 15 '13 at 20:47

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