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I have a data.frame with time series. There are also NAs in it as well as there is a factor that I'd like to use to highlight different segments of a line.

flow.mndnr <- function(id, start, end) {
  uri <- sprintf("http://maps1.dnr.state.mn.us/cgi-bin/csg.pl?mode=dump_hydro_data_as_csv&site=%s&startdate=%s&enddate=%s", id, start, end)
  dat <- read.csv(url(uri), colClasses=c(Timestamp="Date"))
  rng <- range(dat$Timestamp)
  d <- data.frame(Timestamp=seq(rng[1], rng[2], by='day'))
  merge(d, dat, all.x=TRUE)
}
dat <- flow.mndnr("28062001", as.Date("2002-04-02"), as.Date("2011-10-05"))

I can plot it unconditionally

library(lattice)
xyplot(Discharge..cfs. ~ Timestamp, dat, type='l', cex=0.5, auto.key=TRUE)

enter image description here

But I can't get rid of connecting lines when I try to introduce factor

xyplot(Discharge..cfs. ~ Timestamp, dat, type='l',
    groups=dat$Discharge..cfs..Quality, cex=0.5, auto.key=TRUE)

enter image description here

Same with ggplot2

dat$quality <- dat$Discharge..cfs..Quality
ggplot(dat, aes(x=Timestamp, y=Discharge..cfs.)) +
  geom_path(aes(colour=quality)) + theme(legend.position='bottom')

enter image description here

I tried geom_line with no success. I read in ggplot2 mailing archive that geom_path is the way to go. But it does not quite work for me.

P.S. Why ggplot2 does not like dots in a name so I had to use another one?

share|improve this question
    
+1! because you have tried ggplot2 and lattice! reproducible example and clear question. –  agstudy Mar 6 '13 at 21:52
    
Re:dots, in order to work properly, ggplot has to do a fair bit of fancy evaluation of its arguments, so something is likely going wrong there. In general, it would be considered good practice to clean up your column names anyway. A simple gsub to remove the dots, for instance. –  joran Mar 7 '13 at 17:00

1 Answer 1

up vote 2 down vote accepted

The problem is with the grouping. You can use the year to skip these jumps. Just do:

dat$grp <- format(dat$Timestamp, "%Y")
ggplot(dat, aes(x=Timestamp, y=Discharge..cfs.)) +
    geom_path(aes(colour = quality, group = grp)) + 
    theme(legend.position='bottom')

You get:

enter image description here

Edit: To answer the comment in detail: As long as you don't know which variable to group by, you can not group properly. If you have some months missing within the year, of course this code will produce jumps. In that case, I suggest doing something like this:

dat$grp <- paste(format(dat$Timestamp, "%Y"), format(dat$Timestamp, "%m"))
ggplot(dat, aes(x=Timestamp, y=Discharge..cfs.)) +
    geom_path(aes(colour = quality, group = grp)) + 
    theme(legend.position='bottom')

You get this:

enter image description here

share|improve this answer
    
This is not robust. It may work in this case. But it won't help much if there was no data from sensor within a year. –  mlt Mar 6 '13 at 22:05
    
You'll always have to know which variable to group by. If there is a huge gap within a year, then you'll have to get the month and year separately and paste them together as a grp. –  Arun Mar 6 '13 at 22:10
    
@mlt, probably the alternate (edit) gives you an idea of creating a grouping variable for missing data within year (or other alternate situations). –  Arun Mar 6 '13 at 22:17
    
I somehow missed this so it looks like I can get away by just using groups=1. Hm... it did not work on the second thought on the aforementioned example :( –  mlt Mar 6 '13 at 22:45
1  
Yes indeed, group=1. It (always) skips my mind! Glad you figured it out. I suggest you write it as the answer and mark it as such. –  Arun Mar 6 '13 at 22:49

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