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I am looking for good R code (or package) that uses ggplot2 to create wind roses that show the frequency, magnitude and direction of winds.

I'm particularly interested in ggplot2 as building the plot that way gives me the chance to leverage the rest of the functionality in there.

Edit: test data

Download a year of data from the 80-m level on the National Wind Technology's "M2" tower. Details are available at http://www.nrel.gov/midc/nwtc_m2/.

# generate some data to use. This takes about 5 minutes.
data.in <- read.csv(file = "http://midcdmz.nrel.gov/apps/plot.pl?site=NWTC&start=20010824&edy=19&emo=3&eyr=2014&year=2013&month=01&day=1&endyear=2013&endmonth=12&endday=31&time=0&inst=21&inst=39&type=hour&wrlevel=2&preset=0&first=3&math=0&second=-1&value=0.0&user=0&axis=1",
                    col.names = c("date","hr","ws.80","wd.80"))

Get the time stamp:

data.in$timestamp <- as.POSIXct(paste0(data.in$date, " ", data.in$hr,":00"),
                                tz = "GMT",
                                format = "%m/%d/%Y %H:%M")

data.in$Year <- as.numeric(format(data.in$timestamp, "%Y"))
data.in$month <- factor(format(data.in$timestamp, "%B"),
                        levels = month.name)
share|improve this question
if no-one comes up with a better solution, I'll accept my answer. Feels a bit like cheating, though... –  Andy Clifton Jun 28 '13 at 23:41

1 Answer 1

up vote 23 down vote accepted

So far I've coded the function below, but I would be interested in other's experience or suggestions on how to improve this.

# WindRose.R

plot.windrose <- function(data,
                      spdres = 2,
                      dirres = 30,
                      spdmin = 2,
                      spdmax = 20,
                      spdseq = NULL,
                      palette = "YlGnBu",
                      countmax = NA,
                      debug = 0){

# Look to see what data was passed in to the function
  if (is.numeric(spd) & is.numeric(dir)){
    # assume that we've been given vectors of the speed and direction vectors
    data <- data.frame(spd = spd,
                       dir = dir)
    spd = "spd"
    dir = "dir"
  } else if (exists("data")){
    # Assume that we've been given a data frame, and the name of the speed 
    # and direction columns. This is the format we want for later use.    

  # Tidy up input data ----
  n.in <- NROW(data)
  dnu <- (is.na(data[[spd]]) | is.na(data[[dir]]))
  data[[spd]][dnu] <- NA
  data[[dir]][dnu] <- NA

  # figure out the wind speed bins ----
  if (missing(spdseq)){
    spdseq <- seq(spdmin,spdmax,spdres)
  } else {
    if (debug >0){
      cat("Using custom speed bins \n")
  # get some information about the number of bins, etc.
  n.spd.seq <- length(spdseq)
  n.colors.in.range <- n.spd.seq - 1

  # create the color map
  spd.colors <- colorRampPalette(brewer.pal(min(max(3,

  if (max(data[[spd]],na.rm = TRUE) > spdmax){    
    spd.breaks <- c(spdseq,
                    max(data[[spd]],na.rm = TRUE))
    spd.labels <- c(paste(c(spdseq[1:n.spd.seq-1]),
                          max(data[[spd]],na.rm = TRUE)))
    spd.colors <- c(spd.colors, "grey50")
  } else{
    spd.breaks <- c(seq(spdseq))
    spd.labels <- paste(c(spdseq[1:n.spd.seq-1]),
  data$spd.binned <- cut(x = data[[spd]],
                         breaks = spd.breaks,
                         labels = spd.labels,
                         ordered_result = TRUE)

  # figure out the wind direction bins
  dir.breaks <- c(-dirres/2,
                  seq(dirres/2, 360-dirres/2, by = dirres),
  dir.labels <- c(paste(360-dirres/2,"-",dirres/2),
                  paste(seq(dirres/2, 360-3*dirres/2, by = dirres),
                        seq(3*dirres/2, 360-dirres/2, by = dirres)),
  # assign each wind direction to a bin
  dir.binned <- cut(data[[dir]],
                    breaks = dir.breaks,
                    ordered_result = TRUE)
  levels(dir.binned) <- dir.labels
  data$dir.binned <- dir.binned

  # Run debug if required ----
  if (debug>0){    
    cat(speedcuts.colors, "\n")    

  # create the plot ----
  p.windrose <- ggplot(data = data,
                       aes(x = dir.binned,
                           fill = spd.binned)) +
    geom_bar() + 
    scale_x_discrete(drop = FALSE,
                     labels = waiver()) +
    coord_polar(start = -((dirres/2)/360) * 2*pi) +
    scale_fill_manual(name = "Wind Speed (m/s)", 
                      values = spd.colors,
                      drop = FALSE) +
    theme(axis.title.x = element_blank())

  # adjust axes if required
  if (!is.na(countmax)){
    p.windrose <- p.windrose +

  # print the plot

  # return the handle to the wind rose

The simple way to use this with the M2 data is to just pass in spd and dir (speed and direction):

# try the default settings
p <- plot.windrose(spd = data.in$ws.80,
                   dir = data.in$wd.80)

A wind rose with regular bins

And if we want custom bins, we can add those as arguments:

p <- plot.windrose(spd = data.in$ws.80,
                   dir = data.in$wd.80,
                   spdseq = c(0,3,6,12,20))

A wind rose with custom bins

To make the plots more compatible with ggplot(), you can also pass in a data frame and the name of the speed and direction variables:

p.wr2 <- plot.windrose(data = data.in,
              spd = "ws.80",
              dir = "wd.80")

then you can apply faceting:

p.wr3 <- p.wr2 + facet_wrap(~month,
                            ncol = 3)

(assuming that you've broken the time into months):

enter image description here

A couple of comments to the code:

  • The inputs are vectors of speed (spd) and direction (dir), plus optional values of the bin size for wind speed (spdres) and direction (dirres). The palette is the name of a colorbrewer sequential palette, and countmax sets the range of the wind rose. debug is a switch (0,1,2) to enable different levels of debugging.
  • I wanted to be able to set the maximum speed (spdmax) and the count (countmax) for the plots so that I can compare windroses from different data sets
  • If there are wind speeds that exceed (spdmax), those are added as a grey region (see the figure). I should probably code something like spdmin as well, and color-code regions where the wind speeds are less than that.
  • Following a request, I implemented a method to use custom wind speed bins. They can be added using the spdseq = c(1,3,5,12) argument.
  • You can remove the degree bin labels using the usual ggplot commands to clear the x axis: p.wr3 + theme(axis.text.x = element_blank(),axis.title.x = element_blank()).
share|improve this answer
holy...nice work...I'm saving this one! –  Aaron Brown Jun 24 '13 at 6:04
+1! Very nice stuff! –  Ricardo Saporta Sep 28 '13 at 1:44
This is really nice work (+1) –  Richard Scriven Sep 22 '14 at 17:01

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