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We daily produce maps that show a calculated level for temperature in 30 distinct areas of our region, each area is filled with a different colour depending on the level. This maps look like

enter image description here

Now I want to switch map generation to R. I've downloaded provincial and municipal boundaries (you can find boundaries for whole Spain or here the subset for my region) and managed to plot them with ggplot2 following Hadley's example.

I can also produce an ascii file that contains two columns: identifier (CODINE) and daily level. You can download here.

This is my first script attempting to plot shapefiles with R and ggplot2 so there may be mistakes and for sure it can be improved, suggestions welcome. The following code (based on Hadley's previously mentioned) works for me:

> require("rgdal")
> require("maptools")
> require("ggplot2")
> require("plyr")

# Reading municipal boundaries

esp = readOGR(dsn=".", layer="lineas_limite_municipales_etrs89")

muni=subset(esp, esp$PROV1 == "46" | esp$PROV1 == "12" | esp$PROV1 == "3")
muni@data$id = rownames(muni@data)
muni.points = fortify(muni, region="id")
muni.df = join(muni.points, muni@data, by="id")

# Reading province boundaries

prov = readOGR(dsn=".", layer="poligonos_provincia_etrs89")

pr=subset(prov, prov$CODINE == "46" | prov$CODINE == "12" | prov$CODINE == "03" )
pr@data$id = rownames(pr@data)
pr.points = fortify(pr, region="id")
pr.df = join(pr.points, pr@data, by="id")

ggplot(muni.df) + aes(long,lat,group=group) + geom_path(color="blue") +
+ coord_equal()+ geom_path(data=pr.df, + 
aes(x=long, y=lat, group=group),color="red", size=0.5) 

This code plots a nice map with all the boundaries enter image description here

For polygon filling by level I tried to read and then merge as suggested in

level=read.csv("levels.dat",header=T,sep=" ")

but it gives an error

Error en, x) : 'by' must specify a uniquely valid column

I am not familiar with shapefiles, maybe I need to learn more on shp data attributes to find the right choice to merge both data sets. How can I merge data so I can plot the lines (municipal boundaries) and then fill it with levels?

share|improve this question
An update of this question with some extra features on the map can be found at [] –  pacomet Jan 29 at 12:51

1 Answer 1

up vote 9 down vote accepted

[NB: This question was asked over a month ago so OP has probably found a different way to solve their problem. I stumbled upon it while working on this related question. This answer is included in hopes it will benefit someone else.]

This appears to be what OP is asking for...

... and was produced with the following code:


# read temperature data
setwd("<location if your data file>")        <- read.csv(file = "levels.dat", header=TRUE, sep=" ", na.string="NA", dec=".", strip.white=TRUE)$CODINE <- str_pad($CODINE, width = 5, side = 'left', pad = '0')

# read municipality polygons
setwd("<location of your shapefile")
esp     <- readOGR(dsn=".", layer="poligonos_municipio_etrs89")
muni    <- subset(esp, esp$PROVINCIA == "46" | esp$PROVINCIA == "12" | esp$PROVINCIA == "3")
# fortify and merge: muni.df is used in ggplot
muni@data$id <- rownames(muni@data)
muni.df <- fortify(muni)
muni.df <- join(muni.df, muni@data, by="id")
muni.df <- merge(muni.df,, by.x="CODIGOINE", by.y="CODINE", all.x=T,
# create the map layers
ggp <- ggplot(data=muni.df, aes(x=long, y=lat, group=group)) 
ggp <- ggp + geom_polygon(aes(fill=LEVEL))         # draw polygons
ggp <- ggp + geom_path(color="grey", linestyle=2)  # draw boundaries
ggp <- ggp + coord_equal() 
ggp <- ggp + scale_fill_gradient(low = "#ffffcc", high = "#ff4444", 
                                 space = "Lab", na.value = "grey50",
                                 guide = "colourbar")
ggp <- ggp + labs(title="Temperature Levels: Comunitat Valenciana")
# render the map


Shapefiles imported into R with readOGR(...) are of type SpacialDataFrame and have two main sections: a ploygon section which contains the coordinates of all the points on each polygon, and a data section which contains information about each polygon (so, one row per polygon). These can be referenced, e.g., using muni@polygons and muni@data. The utility function fortify(...) converts the polygon section to a data frame organized for plotting with ggplot. So the basic workflow is:

[1] Import temperature data file (
[2] Import polygon shapefile of municipalities (muni)
[3] Convert muni polygons to a data frame for plotting (muni.df <- fortify(...))
[4] Join columns from muni@data to muni.df
[5] Join columns from to muni.df
[6] Make the plot

The joins must be done on common fields, and this is where most of the problems come in. Each polygon in the original shapefile has a unique ID attribute. Running fortify(...) on the shapefile creates a column, id, which is based on this. But there is no ID column in the data section. Instead, the polygon IDs are stored as row names. So first we must add an id column to muni@data as follows:

muni@data$id <- rownames(muni@data)

Now we have an id field in muni@data and a corresponding id field in muni.df, so we can do the join:

muni.df <- join(muni.df, muni@data, by="id")

To create the map we will need to set fill colors based on temperature level. To do that we need to join the LEVEL column from to muni.df. In there is a field CODINE which identifies the municipality. There is also, now, a corresponding field CODIGOINE in muni.df. But there's a problem: CODIGOINE is char(5), with leading zeros, whereas CODINE is integer which means leading zeros are missing (imported from Excel, perhaps?). So just joining on these two fields produces no matches. We must first convert CODINE into char(5) with leading zeros:$CODINE <- str_pad($CODINE, width = 5, side = 'left', pad = '0')

Now we can join temp.dat to muni.df based on the corresponding fields.

muni.df <- merge(muni.df,, by.x="CODIGOINE", by.y="CODINE", all.x=T,

We use merge(...) instead of join(...) because the join fields have different names and join(...) requires them to have the same name. (Note, however that join(...) is faster and should be used if possible). So, finally, we have a data frame which contains all the information for plotting the polygons and the temperature LEVEL which can be used to establish the fill color for each polygon.

Some notes on OP's original code:

  1. OP's first map (the green one at the top) identifies "30 distinct areas for our region...". I could find no shapefile identifying those areas. The municipality file identifies 543 municipalities, and I could see no way to group these into 30 areas. In addition, the temperature level file has 542 rows, one for each municipality (more or less).

  2. OP was importing line shapefiles for municipality to draw the boundaries. You don't need that because geom_polygon(...) will draw (and fill) the polygons and geom_path(...) will draw the boundaries.

share|improve this answer
Hi, I didn't find a solution but I'm gonna try your code. Your map looks impressive and exactly what I wanted. I had to leave the question for a time as I had another problems to solve before. Thank you very much for your hard work. –  pacomet Dec 10 '13 at 8:42
If this works for you please consider selecting as the answer (green checkmark). –  jlhoward Dec 10 '13 at 18:29
I had some problem with your script because of my shapefile. I downloaded again and now the code runs perfect for my needs. Great job @jlhoward –  pacomet Dec 11 '13 at 9:25
This is fantastic. Thank you for this most helpful explanation! –  duhaime Dec 1 '14 at 1:16
I had to do it a bit differently. With fortify(muni, region = 'id') (otherwise it does not use id variable) and with merge (I guess, a different version of dplyr). See… –  Piotr Migdal Sep 27 at 16:59

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