# Creating a choropleth map with point data using voronoi created surface_polygons in Leaflet

I have a tricky issue.

I am trying to visualise some data in for a sort of 'pretty' meta data explorer. It's basic point data in the following format:

``````> print(tempdata[1:5, ])
Station  Lat_dec  Long_dec Surface_T
1     247 50.33445 -2.240283     15.19
2     245 50.58483 -2.535217     14.11
3     239 50.16883 -2.509250     15.41
4     225 50.32848 -2.765967     15.34
5     229 50.63900 -2.964800     14.09
``````

I can use the Lat, Long and Temp to create the following voronoi polygons, and a simple box to clip them so they don't extend forever.

``````# Creating Stations
stations <- st_as_sf(df,
coords = c("Long_dec","Lat_dec")
)

# Create voronoi/thiessen polygons
v <- stations %>%
st_union() %>%
st_voronoi() %>%
st_collection_extract()

# Creating boundary box
box <- st_bbox(stations) %>%
st_as_sfc()

# Clipping voronoi to boundary box
hmm <- st_crop(v, box)
``````

This produces the following surface polygon:

``````> str(hmm)
sfc_POLYGON of length 107; first list element: List of 1
\$ : num [1:7, 1:2] -7.23 -6.94 -6.95 -7.04 -7.24 ...
- attr(*, "class")= chr [1:3] "XY" "POLYGON" "sfg"
``````

Plotted as:

``````leaflet() %>%
``````

What I am trying to do, is colour the surface polygons by temperature, e.g. hotter being redder etc. I have tried all which ways and typically R crashes.

I think its something to do with not having any info on the surface polygons such as station or a polygon ID number that links to the original data.

I am stumped, any help would be awesome!!

packages:

``````library(sf)
library(dplyr)
library(rgdal)
library(leaflet)
``````

update:

``````> tempdata[1:10, ]
Station  Lat_dec  Long_dec Surface_T
1      247 50.33445 -2.240283     15.19
2      245 50.58483 -2.535217     14.11
3      239 50.16883 -2.509250     15.41
4      225 50.32848 -2.765967     15.34
5      229 50.63900 -2.964800     14.09
6      227 50.33757 -3.303217     15.12
7      217 50.16657 -3.563817     15.13
8      207 49.66683 -3.556550     15.04
9      213 50.16512 -3.824667     14.97
10     219 49.83707 -3.815483     14.78

stations <- st_as_sf(tempdata,
coords = c("Long_dec","Lat_dec"))

test <- st_sample(stations,
size = as.numeric(count(tempdata))
)

join <- st_sf("temp" = stations\$Surface_T, geometry = test)
``````
• How have you tried to color these so far, and what about it hasn't worked? – camille Mar 18 at 18:44
• I have only tried adding the colour by in leaflet, many thanks for taking the time to correct my spelling errors – Jim Mar 19 at 10:02

That was a new one for me, too. Never worked with voronois before. But the problem is indeed that your `stations` dataframe looses all its features with `st_union()`.

Just adding it doesn't seem to be viable, since the order of the polygons is not the same as the order of the points before. A spatial join might be a good workaround therefore.

Using my own sample data:

``````library(sf)
library(leaflet)

#will work with any polygon
samplepoints_sf <- st_sample(bw_polygon, size = 2000, type = "random", crs = st_crs(4326))[1:500]
# although coordinates are longitude/latitude, st_intersects assumes that they are planar

#create an sf-object like your example
bw_sf <- st_sf("some_variable" = sample(1:50, 500, replace = TRUE), geometry = samplepoints_sf)

#create the voronoi diagram, "some_variable" gets lost.
v <- bw_sf %>%
st_union() %>%
st_voronoi() %>%
st_collection_extract()

#do a spatial join with the original bw_sf data frame to get the data back
v_poly <- st_cast(v) %>%
st_intersection(bw_polygon) %>%
st_sf() %>%
st_join(bw_sf, join = st_contains)

#create a palette (many ways to do this step)
colors <- colorFactor(
palette = c("green", "yellow", "red"),
domain = (v_poly\$some_variable)

#create the leaflet
• But you don't need to sample points. I was just recreating your `tempdata` data so I can show the work. When you work with your data, you can skip that part. :-D – Humpelstielzchen Mar 20 at 10:06
• Yes I gathered haha! I am was struggling with the `no simple features geometry column present` but was using the raw data frame as oppose to stations! – Jim Mar 20 at 10:12