5

I have a data set with some locations:

ex <- data.frame(lat = c(55, 60, 40), long = c(6, 6, 10))

and than I have climate data

clim <- structure(list(lat = c(55.047, 55.097, 55.146, 55.004, 55.054, 
55.103, 55.153, 55.202, 55.252, 55.301), long = c(6.029, 6.0171, 
6.0051, 6.1269, 6.1151, 6.1032, 6.0913, 6.0794, 6.0675, 6.0555
), alt = c(0.033335, 0.033335, 0.033335, 0.033335, 0.033335, 
0.033335, 0.033335, 0.033335, 0.033335, 0.033335), x = c(0, 0, 
0, 0, 0, 0, 0, 0, 0, 0), y = c(1914, 1907.3, 1901.8, 1921.1, 
1914.1, 1908.3, 1902.4, 1896, 1889.8, 1884)), row.names = c(NA, 
10L), class = "data.frame", .Names = c("lat", "long", "alt", 
"x", "y"))

      lat   long      alt x      y
1  55.047 6.0290 0.033335 0 1914.0
2  55.097 6.0171 0.033335 0 1907.3
3  55.146 6.0051 0.033335 0 1901.8
4  55.004 6.1269 0.033335 0 1921.1
5  55.054 6.1151 0.033335 0 1914.1
6  55.103 6.1032 0.033335 0 1908.3
7  55.153 6.0913 0.033335 0 1902.4
8  55.202 6.0794 0.033335 0 1896.0
9  55.252 6.0675 0.033335 0 1889.8
10 55.301 6.0555 0.033335 0 1884.0

What I want to do is to "merge" both datasets to have climate data in the ex file. The values of lat and long in ex are different than values of lat and long in clim so I they can not be merged directly (it is the same for long). I need to find the best point (closest point in clim for each of row in the ex considering both lat and long)

The expected output for the example is:

  lat long      alt x      y
1  55    6 0.033335 0 1914.0
2  60    6 0.033335 0 1884.0
3  40   10 0.033335 0 1921.1
1

You can find the row index in clim with the lowest absolute difference of lat and long from ex, and then add in the clim columns to ex based on that index.

import(tidyverse)

ex %>%
  group_by(lat, long) %>%
  summarise(closest_clim = which.min(abs(lat - clim$lat) + 
                                       abs(long - clim$long))) %>%
  mutate(alt = clim$alt[closest_clim],
         x = clim$x[closest_clim],
         y = clim$y[closest_clim])

# A tibble: 3 x 6
# Groups:   lat [3]
    lat  long closest_clim    alt     x     y
  <dbl> <dbl>        <int>  <dbl> <dbl> <dbl>
1   40.   10.            4 0.0333    0. 1921.
2   55.    6.            1 0.0333    0. 1914.
3   60.    6.           10 0.0333    0. 1884.
| improve this answer | |
  • Shall I bother about the warning: in lat-clim$lat: longer object length is not a multiple of shorter object length when I scale up the example to the whole data set I have??? – Mateusz1981 May 24 '18 at 8:17
  • @Mateusz1981 those warnings are likely due to duplicate points in ex, resulting in groupings of lat and long that have a length > 1. Since they are all the same points, you can get rid of the warnings by putting first(lat) and first(long) in the summarise expression. – janusvm May 24 '18 at 9:15
3

The function dist can be used to calculate Euclidean (or other) distances between all points in a matrix or data frame, so a way of finding the points in clim that are closest to those in ex is by

# Distance between all points in ex and clim combined,
# with distances between points in same matrix filtered out
n <- nrow(ex)
tmp <- as.matrix(dist(rbind(ex, clim[, 1:2])))[-(1:n), 1:n]

# Indices in clim corresponding to the closest points to those in ex
idx <- apply(tmp, 2, which.min)

# Points from ex with additional info from closest points in clim
cbind(ex, clim[idx, -(1:2)])
#>    lat long      alt x      y
#> 1   55    6 0.033335 0 1914.0
#> 10  60    6 0.033335 0 1884.0
#> 4   40   10 0.033335 0 1921.1
| improve this answer | |
  • Thx, when I want to scale it up for the real dataset I encounter Error: cannot allocate vector of size 16.4 Gb – Mateusz1981 May 24 '18 at 7:25
  • @Mateusz1981 How many points do you have in the real ex and clim? and how is the data stored (file, database, etc.)? – janusvm May 24 '18 at 7:40
  • ex - 1790 rows, clim ca 65000. I import from .csvs – Mateusz1981 May 24 '18 at 8:13

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