Creating a delta column to plot time series differences in R

I have a set of motorsport laptime data (mld) of the form:

``````  car lap laptime
1  1   1 138.523
2  1   2 122.373
3  1   3 121.395
4  1   4 137.871
``````

and I want to produce something of the form:

``````  lap  car.1    car.1.delta
1  1   138       NA
2  2   122       -16
3  3   121       -1
4  4   127       6
``````

I can use the R command diff(mld\$laptime, lag=1) to produce the difference column, but how do I elegantly create the padded difference column in R?

-

Here are a couple of approaches:

1) zoo

If we represented this as a time series using zoo then the calculation would be particularly simple:

``````# test data with two cars

Lines <- "car lap laptime
1   1 138.523
1   2 122.373
1   3 121.395
1   4 137.871
2   1 138.523
2   2 122.373
2   3 121.395
2   4 137.871"
cat(Lines, "\n", file = "data.txt")

# read it into a zoo series, splitting it
# on car to give wide form (rather than long form)

library(zoo)
z <- read.zoo("data.txt", header = TRUE, split = 1, index = 2, FUN = as.numeric)

# now that its in the right form its simple

zz <- cbind(z, diff(z))
``````

The last statement gives:

``````> zz
1.z     2.z 1.diff(z) 2.diff(z)
1 138.523 138.523        NA        NA
2 122.373 122.373   -16.150   -16.150
3 121.395 121.395    -0.978    -0.978
4 137.871 137.871    16.476    16.476
``````

To plot `zz`, one column per panel, try this:

``````plot(zz, type = "o")
``````

To only plot the differences we do not really need `zz` in the first place as this will do:

``````plot(diff(z), type = "o")
``````

(Add the `screen=1` argument to the `plot` command to plot everything on the same panel.)

2) ave. Here is a second solution that uses just plain R (except for the plotting) and keeps the output in long form; however, it is a bit more complex:

``````# assume same input as above

DF\$diff <- ave(DF\$laptime, DF\$car, FUN = function(x) c(NA, diff(x)))
``````

The result is:

``````> DF
car lap laptime    diff
1   1   1 138.523      NA
2   1   2 122.373 -16.150
3   1   3 121.395  -0.978
4   1   4 137.871  16.476
5   2   1 138.523      NA
6   2   2 122.373 -16.150
7   2   3 121.395  -0.978
8   2   4 137.871  16.476
``````

To plot just the differences, one per panel, try this:

``````library(lattice)
xyplot(diff ~ lap | car, DF, type = "o")
``````

Update

Added info above on plotting since the title of the question mentions this.

-

I think this is enough:

``````mld\$car.1.delta = c(NA, diff(mld\$laptime, lag = 1))
``````

In your example you have truncated laptimes but rounded `car.1.delta`, so if you really depends on how you want that to work, but code below gives what you posted.

Wrap everything in `with` to simplify, and create a new data.frame based on modifications of the existing columns. Prepend an `NA` to the `diff` to pad it out.

``````with(mld,
data.frame(
lap = lap,
car.1 = trunc(laptime),
car.1.delta = c(NA, round(diff(laptime)))
)
)

lap car.1 car.1.delta
1   1   138          NA
2   2   122         -16
3   3   121          -1
4   4   137          16
``````

I wonder if you want to do this `by` car, and if so it will need a bit more handling but since you've literally asked for column `car.1` I think this works so far as that goes.

-
Thanks - yes, the original plan was to be able to cope with different cars identified in column 1, but I also wanted to be sure to have the simple case Q&A'd explicitly (partly in the hope that I could work out the next step myself!) –  psychemedia Sep 26 '11 at 11:06