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I have multiple trajectories saved in simple feature (sf) of the type POINT. I'd like to calculate the Euclidean distances between subsequent locations (i.e. rows). Until now, I've "manually" calculated distances using the Pythagorean formula for calculating Euclidean Distances in 2D space. I was wondering if I could do the same using the function sf::st_distance(). Here's a quick example:

library(sf)
library(dplyr)

set.seed(1)

df <- data.frame(
  gr = c(rep("a",5),rep("b",5)),
  x  = rnorm(10),
  y = rnorm(10)
 )

df <- st_as_sf(df,coords = c("x","y"),remove = F)


df %>%
  group_by(gr) %>%
  mutate(
    dist = sqrt((lead(x)-x)^2+(lead(y)-y)^2)
  )
#> Simple feature collection with 10 features and 4 fields
#> geometry type:  POINT
#> dimension:      XY
#> bbox:           xmin: -0.8356286 ymin: -2.2147 xmax: 1.595281 ymax: 1.511781
#> epsg (SRID):    NA
#> proj4string:    NA
#> # A tibble: 10 x 5
#> # Groups:   gr [2]
#>    gr         x       y   dist                 geometry
#>    <fct>  <dbl>   <dbl>  <dbl>                  <POINT>
#>  1 a     -0.626  1.51    1.38     (-0.6264538 1.511781)
#>  2 a      0.184  0.390   1.44     (0.1836433 0.3898432)
#>  3 a     -0.836 -0.621   2.91   (-0.8356286 -0.6212406)
#>  4 a      1.60  -2.21    3.57        (1.595281 -2.2147)
#>  5 a      0.330  1.12   NA         (0.3295078 1.124931)
#>  6 b     -0.820 -0.0449  1.31  (-0.8204684 -0.04493361)
#>  7 b      0.487 -0.0162  0.992  (0.4874291 -0.01619026)
#>  8 b      0.738  0.944   0.204    (0.7383247 0.9438362)
#>  9 b      0.576  0.821   0.910    (0.5757814 0.8212212)
#> 10 b     -0.305  0.594  NA       (-0.3053884 0.5939013)

I would like to calculate dist with sf::st_distance(). How would I go about this?

2 Answers 2

29

The first thing to know about sf is that the geometry column (the one of class sfc) is stored as a list-column inside the dataframe. The key to usually do anything with a list-column is to either use purrr::map and friends or to use a function that accepts list-cols as arguments. In the case of st_distance its arguments can be an object of sf (a dataframe), sfc (the geometry column), or even an sfg (a single geom row), so there's no need for map and friends. The solution should look something like this:

df %>%
  group_by(gr) %>%
  mutate(
    dist = st_distance(geometry)
  )

However, this doesn't work. After some investigating, we find two problems. First, st_distance returns a distance matrix and not a single value. To solve this, we make use of the by_element = T argument of st_distance.

Next, we can't just do dist = st_distance(geometry, lead(geometry), by_element = T) because lead only works on vector columns, not list columns.

To solve this second problem, we create the lead column ourselves using geometry[row_number() + 1].

Here's the full solution:

library(sf)
library(dplyr)

df %>%
  group_by(gr) %>%
  mutate(
    lead = geometry[row_number() + 1],
    dist = st_distance(geometry, lead, by_element = T),
  )
#> Simple feature collection with 10 features and 4 fields
#> Active geometry column: geometry
#> geometry type:  POINT
#> dimension:      XY
#> bbox:           xmin: -0.8356286 ymin: -2.2147 xmax: 1.595281 ymax: 1.511781
#> epsg (SRID):    4326
#> proj4string:    +proj=longlat +datum=WGS84 +no_defs
#> # A tibble: 10 x 6
#> # Groups:   gr [2]
#>    gr         x       y  dist                       geometry
#>    <fct>  <dbl>   <dbl> <dbl>         <sf_geometry [degree]>
#>  1 a     -0.626  1.51   1.38     POINT (-0.6264538 1.511781)
#>  2 a      0.184  0.390  1.44     POINT (0.1836433 0.3898432)
#>  3 a     -0.836 -0.621  2.91   POINT (-0.8356286 -0.6212406)
#>  4 a      1.60  -2.21   3.57        POINT (1.595281 -2.2147)
#>  5 a      0.330  1.12   0         POINT (0.3295078 1.124931)
#>  6 b     -0.820 -0.0449 1.31  POINT (-0.8204684 -0.04493361)
#>  7 b      0.487 -0.0162 0.992  POINT (0.4874291 -0.01619026)
#>  8 b      0.738  0.944  0.204    POINT (0.7383247 0.9438362)
#>  9 b      0.576  0.821  0.910    POINT (0.5757814 0.8212212)
#> 10 b     -0.305  0.594  0       POINT (-0.3053884 0.5939013)
#> # ... with 1 more variable: lead <sf_geometry [degree]>
2
  • 6
    Thank you for not just sharing your solution, but also the thoughts that went into it. Makes this answer invaluable!
    – Ratnanil
    Commented Apr 16, 2018 at 19:54
  • I don't know when it happened, but lead() and lag() now work with lists. So you could just write dist = st_distance(geometry, lead(geometry), by_element = T) within mutate()
    – Ratnanil
    Commented Apr 28, 2023 at 7:21
1

Here is a base R solution. The trick is to

  1. split() the dataframe by the group column
  2. On each group
    • calculate the distance between subsequent locations using head() and tail()
    • append NA to the result (since the last position does not have a subsequent location)
  3. Bind the resulting sf objects back together using rbind in do.call().
split(df, df$gr) |> 
  lapply(\(x){
    x$dist <- c(st_distance(head(x,-1), tail(x,-1),by_element = TRUE), NA)
    x
  }) |> 
  do.call(rbind, args = _)

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