# How do I use a common axis for three similar time/value graphs

I have three timestamped measurement series, taken over the same interval, but with different actual timestamps. I'd like to show these three trajectories in a combined plot, but because the x-axis (timestamps) is different in each case, I'm having some trouble. Is there a way to do this without picking an x-axis to use and interpolating the y-values for the other two measurement series? I'm fairly new to R, but I feel like there's something obvious I'm overlooking.

For example:

### Series 1

``````Time    Value
1.023   5.786
2.564   10.675
3.678   14.678
5.023   17.456
``````

### Series 2

``````0.787   1.765
1.567   3.456
3.011   5.879
4.598   7.768
``````

### Series 3

``````1.208   3.780
2.478   6.890
3.823   9.091
5.125   12.769
``````
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Can you add some sample data (real or fictional) so that we will know what type of time/date data you have? –  kmm May 24 '11 at 19:38
That's better, you can make our lives easier if you instead use `dput(data)`, where data is wherever you got series1, series2, and series3 –  Rguy May 24 '11 at 19:50
Rguy, could you expand on that? How can my question be improved by dput? –  William Gunn May 24 '11 at 20:06
@william - dput will let others copy and paste the exact structure of your data into our R sessions. This is often the easiest and most efficient way to communicate data. It ensures that the type of data is consistent with your R session, and eliminates almost all possibilities of differences between your R session and others. –  Chase May 24 '11 at 20:26
OK, that makes sense. So for long datasets, you'd just show the first couple rows? –  William Gunn May 24 '11 at 20:32

With base graphics, you can use a combination of `plot` and `points` or `lines`:

``````dat1 <- data.frame(Time = c(1.023, 2.564, 3.678, 5.023), Value = c(5.786, 10.675, 14.678, 17.456))
dat2 <- data.frame(Time = c(0.787, 1.567, 3.011, 4.598), Value = c(1.765, 3.456, 5.879, 7.768))
dat3 <- data.frame(Time = c(1.208, 2.478, 3.823, 5.125), Value = c(3.780, 6.890, 9.091, 12.769))

with(dat1, plot(Time, Value, xlim = c(0,6), ylim = c(0,20)))
with(dat2, points(Time, Value, col = "red"))
with(dat3, points(Time, Value, col = "green"))
``````

Take a look at `?legend` to add a legend. Or, learn `ggplot2` and let it handle that part of it for you:

``````library(ggplot2)
library(reshape)
plotdata <- melt(list(dat1 = dat1, dat2 = dat2, dat3 = dat3), "Time")

qplot(Time, value, data = plotdata, colour = L1)
``````
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you are missing library(reshape) from which the function melt comes. –  PatrickT Mar 18 '13 at 8:23
Thanks @patrickT, fixed. This answer was from the days when reshape was loaded when calling ggplot2...that no longer happens. –  Chase Mar 18 '13 at 13:05

Try this:

``````t1 <- "Time Value
1.023   5.786
2.564   10.675
3.678   14.678
5.023   17.456"

t2 <- "Time Value
0.787   1.765
1.567   3.456
3.011   5.879
4.598   7.768"

t3 <- "Time Value
1.208   3.780
2.478   6.890
3.823   9.091
5.125   12.769"

plot(tex1, type="l", xlim=range(tex1\$Time, tex2\$Time, tex3\$Time), ylim=range(tex1\$Value, tex2\$Value, tex3\$Value), main="Common Time Axis for 3 Data Series", col="black")
grid()
lines(tex2, col="red")
lines(tex3, col="blue")
``````

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Without any further information, it seems you're going to have to use a combination of: `points` and `xlim`.
Plot a single combination of the points (or lines) using `plot`, passing the `xlim` argument so that all of your time inputs could fit on the plot.
Then, use `points` or `lines` to add the other data to the plot, and maybe pass a `color` parameter to these functions as well to distinguish the outputs.
We can provide more details if you include a minimal reproducible example!

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That'll work & is much better than interpolation. At least I know now there's no obvious easier way I've overlooked. –  William Gunn May 24 '11 at 19:59
@Chase provided a more thorough answer above, and his works well! –  Rguy May 24 '11 at 20:03

Subtract the minimum value for time in each series. Determine maximum of the three results as your xlim[2]. Plot using matplot with label suppression, and then add your labels= and at= with axis().

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