Reputation: 669
My ultimate goal is to connect all nearest neighbours of a set of buildings (based on Euclidean distance) on a ggmap using geom_path from the ggplot2 package. I need help with a loop that will allow me to plot all neighbours as easily as possible
I have created a distance matrix (called 'kmnew') in kilometres between 3 types of building in Beijing: B (x2), D (x2) and L (x1):
B B D D L
B NA 6.599014 5.758531 6.285787 3.770175
B NA NA 7.141096 3.873296 5.092667
D NA NA NA 3.690725 2.563017
D NA NA NA NA 2.832083
L NA NA NA NA NA
I try to discern the nearest neighbours of each building by row by declaring a matrix and using a loop to ascertain the nearest neighbour building:
nn <- matrix(NA,nrow=5,ncol=1)
for (i in 1:nrow(kmnew)){
nn[i,] <- which.min(kmnew[i,])
}
This returns the following error (not sure why):
Error in nn[i, ] <- which.min(kmnew[i, ]) : replacement has length zero
but seems to return the correct answer to nn:
[,1]
[1,] 5
[2,] 4
[3,] 5
[4,] 5
[5,] NA
I append this to an original dataframe called newbjdata:
colbj <- cbind(newbjdata,nn)
that returns
Name Store sqft long lat nn
1 B 1 1200 116.4579 39.93921 5
2 B 2 750 116.3811 39.93312 4
3 D 1 550 116.4417 39.88882 5
4 D 2 600 116.4022 39.90222 5
5 L 1 1000 116.4333 39.91100 NA
I then retrieve my map via ggmap:
bjgmap <- get_map(location = c(lon = 116.407395,lat = 39.904211),
zoom = 13, scale = "auto",
maptype = "roadmap",
messaging = FALSE, urlonly = FALSE,
filename = "ggmaptemp", crop = TRUE,
color = "bw",
source = "google", api_key)
My ultimate goal is to map the nearest neighbours together in a plot using geom_path from the ggplot package.
For example, the nn of the 1st building of type B (row 1) is the 1 building of type L (row 5). Obviously I can draw this line by subsetting the said 2 rows of the dataframe thus:
ggmap(bjgmap) +
geom_point(data = colbj, aes(x = long,y = lat, fill = factor(Name)),
size =10, pch = 21, col = "white") +
geom_path(data = subset(colbj[c(1,5),]), aes(x = long,y = lat),col = "black")
However, I need a solution that works like a loop, and I can't figure out how one might achieve this, as I need to reference the nn column and refer that back to the long lat data n times. I can well believe that I am not using the most efficient method, so am open to alternatives. Any help much appreciated.
Upvotes: 4
Views: 847
Reputation: 23574
Here is my attempt. I used gcIntermediate()
from the geosphere
package to set up lines. First, I needed to rearrange your data. When you use gcIntermediate()
, you need departure and arrival long/lat. That is you need four columns. In order to arrange your data in this way, I used the dplyr
package. mutate_each(colbj, funs(.[nn]), vars = long:lat)
works for you to pick up desired arrival long/lat. .
is for 'long' and 'lat'. [nn]
is the vector index for the variables. Then, I employed gcIntermediate()
. This creates SpatialLines. You need to make the object a SpatialLinesDataFrame. Then, you need to convert the output to "normal" data.frame. This step is essential so that ggplot
can read your data. fortify()
is doing the job.
library(ggmap)
library(geosphere)
library(dplyr)
library(ggplot2)
### Arrange the data: set up departure and arrival long/lat
mutate_each(colbj, funs(.[nn]), vars = long:lat) %>%
rename(arr_long = vars1, arr_lat = vars2) %>%
filter(complete.cases(nn)) -> mydf
### Get line information
rts <- gcIntermediate(mydf[,c("long", "lat")],
mydf[,c("arr_long", "arr_lat")],
50,
breakAtDateLine = FALSE,
addStartEnd = TRUE,
sp = TRUE)
### Convert the routes to a data frame for ggplot use
rts <- as(rts, "SpatialLinesDataFrame")
rts.df <- fortify(rts)
### Get a map (borrowing the OP's code)
bjgmap <- get_map(location = c(lon = 116.407395,lat = 39.904211),
zoom = 13, scale = "auto",
maptype = "roadmap",
messaging = FALSE, urlonly = FALSE,
filename = "ggmaptemp", crop = TRUE,
color = "bw",
source = "google", api_key)
# Draw the map
ggmap(bjgmap) +
geom_point(data = colbj,aes(x = long, y = lat, fill = factor(Name)),
size = 10,pch = 21, col = "white") +
geom_path(data = rts.df, aes(x = long, y = lat, group = group),
col = "black")
EDIT
If you want to do all data manipulation in one sequence, the following is one way to go. foo
is identical to rts.df
above.
mutate_each(colbj, funs(.[nn]), vars = long:lat) %>%
rename(arr_long = vars1, arr_lat = vars2) %>%
filter(complete.cases(nn)) %>%
do(fortify(as(gcIntermediate(.[,c("long", "lat")],
.[,c("arr_long", "arr_lat")],
50,
breakAtDateLine = FALSE,
addStartEnd = TRUE,
sp = TRUE), "SpatialLinesDataFrame"))) -> foo
identical(rts.df, foo)
#[1] TRUE
DATA
colbj <- structure(list(Name = structure(c(1L, 1L, 2L, 2L, 3L), .Label = c("B",
"D", "L"), class = "factor"), Store = c(1L, 2L, 1L, 2L, 1L),
sqft = c(1200L, 750L, 550L, 600L, 1000L), long = c(116.4579,
116.3811, 116.4417, 116.4022, 116.4333), lat = c(39.93921,
39.93312, 39.88882, 39.90222, 39.911), nn = c(5L, 4L, 5L,
5L, NA)), .Names = c("Name", "Store", "sqft", "long", "lat",
"nn"), class = "data.frame", row.names = c("1", "2", "3", "4",
"5"))
Upvotes: 1