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I have a data frame with Lat Lon mean_wind and wind_dir in each grid cells. I am trying to make a spatial plot with mean wind in background and wind direction as arrow on each grid cells.

I have tried following on sample data-frame wind.dt

win.plt<- ggplot(wind.dt,aes(x=Lon,y=Lat))+
           #Mean wind plot : OK
        geom_tile(aes(fill=mean_wind),alpha=1)+
        geom_tile(aes(color=mean_wind), fill=NA) +
        scale_fill_gradientn(colours=(brewer.pal(9,rev("RdYlGn"))))+ 
        scale_color_gradientn(colours=(brewer.pal(9,rev("RdYlGn"))),guide=F)
          #Wind Direction : doesnot work
        geom_segment(arrow = arrow(),aes(yend = Lon + wind_dir, xend = Lat + wind_dir))

win.plt

wind.dt<-structure(list(Lon = c(170.25, 171, 171.75, 172.5, 173.25, 174, 
174.75, 175.5, 176.25, 177, 177.75, 178.5, 179.25, 180, 180.75, 
181.5, 182.25, 183, 183.75, 184.5, 185.25, 186, 186.75, 187.5, 
188.25, 189, 189.75, 190.5, 191.25, 192, 192.75, 193.5, 194.25, 
170.25, 171, 171.75, 172.5, 173.25, 174, 174.75, 175.5, 176.25, 
177, 177.75, 178.5, 179.25, 180, 180.75, 181.5, 182.25, 183, 
183.75, 184.5, 185.25, 186, 186.75, 187.5, 188.25, 189, 189.75, 
190.5, 191.25, 192, 192.75, 193.5, 194.25, 170.25, 171, 171.75, 
172.5, 173.25, 174, 174.75, 175.5, 176.25, 177, 177.75, 178.5, 
179.25, 180, 180.75, 181.5, 182.25, 183, 183.75, 184.5, 185.25, 
186, 186.75, 187.5, 188.25, 189, 189.75, 190.5, 191.25, 192, 
192.75, 193.5, 194.25, 170.25, 171, 171.75, 172.5, 173.25, 174, 
174.75, 175.5, 176.25, 177, 177.75, 178.5, 179.25, 180, 180.75, 
181.5, 182.25, 183, 183.75, 184.5, 185.25, 186, 186.75, 187.5, 
188.25, 189, 189.75, 190.5, 191.25, 192, 192.75, 193.5, 194.25, 
170.25, 171, 171.75, 172.5, 173.25, 174, 174.75, 175.5, 176.25, 
177, 177.75, 178.5, 179.25, 180, 180.75, 181.5, 182.25, 183, 
183.75, 184.5, 185.25, 186, 186.75, 187.5, 188.25, 189, 189.75, 
190.5, 191.25, 192, 192.75, 193.5, 194.25, 170.25, 171, 171.75, 
172.5, 173.25, 174, 174.75, 175.5, 176.25, 177, 177.75, 178.5, 
179.25, 180, 180.75, 181.5, 182.25, 183, 183.75, 184.5, 185.25, 
186, 186.75, 187.5, 188.25, 189, 189.75, 190.5, 191.25, 192, 
192.75, 193.5, 194.25), Lat = c(14.25, 14.25, 14.25, 14.25, 14.25, 
14.25, 14.25, 14.25, 14.25, 14.25, 14.25, 14.25, 14.25, 14.25, 
14.25, 14.25, 14.25, 14.25, 14.25, 14.25, 14.25, 14.25, 14.25, 
14.25, 14.25, 14.25, 14.25, 14.25, 14.25, 14.25, 14.25, 14.25, 
14.25, 13.5, 13.5, 13.5, 13.5, 13.5, 13.5, 13.5, 13.5, 13.5, 
13.5, 13.5, 13.5, 13.5, 13.5, 13.5, 13.5, 13.5, 13.5, 13.5, 13.5, 
13.5, 13.5, 13.5, 13.5, 13.5, 13.5, 13.5, 13.5, 13.5, 13.5, 13.5, 
13.5, 13.5, 12.75, 12.75, 12.75, 12.75, 12.75, 12.75, 12.75, 
12.75, 12.75, 12.75, 12.75, 12.75, 12.75, 12.75, 12.75, 12.75, 
12.75, 12.75, 12.75, 12.75, 12.75, 12.75, 12.75, 12.75, 12.75, 
12.75, 12.75, 12.75, 12.75, 12.75, 12.75, 12.75, 12.75, 12, 12, 
12, 12, 12, 12, 12, 12, 12, 12, 12, 12, 12, 12, 12, 12, 12, 12, 
12, 12, 12, 12, 12, 12, 12, 12, 12, 12, 12, 12, 12, 12, 12, 11.25, 
11.25, 11.25, 11.25, 11.25, 11.25, 11.25, 11.25, 11.25, 11.25, 
11.25, 11.25, 11.25, 11.25, 11.25, 11.25, 11.25, 11.25, 11.25, 
11.25, 11.25, 11.25, 11.25, 11.25, 11.25, 11.25, 11.25, 11.25, 
11.25, 11.25, 11.25, 11.25, 11.25, 10.5, 10.5, 10.5, 10.5, 10.5, 
10.5, 10.5, 10.5, 10.5, 10.5, 10.5, 10.5, 10.5, 10.5, 10.5, 10.5, 
10.5, 10.5, 10.5, 10.5, 10.5, 10.5, 10.5, 10.5, 10.5, 10.5, 10.5, 
10.5, 10.5, 10.5, 10.5, 10.5, 10.5), mean_wind = c(8.34, 8.33, 
8.31, 8.29, 8.27, 8.24, 8.22, 8.2, 8.19, 8.16, 8.14, 8.13, 8.1, 
8.08, 8.06, 8.02, 7.99, 7.96, 7.93, 7.89, 7.85, 7.81, 7.78, 7.73, 
7.7, 7.67, 7.63, 7.62, 7.6, 7.58, 7.56, 7.53, 7.54, 8.65, 8.64, 
8.61, 8.59, 8.56, 8.53, 8.51, 8.48, 8.46, 8.43, 8.41, 8.39, 8.38, 
8.37, 8.33, 8.31, 8.28, 8.24, 8.2, 8.15, 8.12, 8.07, 8.03, 8.01, 
7.97, 7.94, 7.92, 7.89, 7.87, 7.85, 7.85, 7.83, 7.8, 8.85, 8.84, 
8.81, 8.8, 8.77, 8.74, 8.72, 8.69, 8.67, 8.65, 8.63, 8.61, 8.59, 
8.58, 8.55, 8.54, 8.5, 8.46, 8.44, 8.4, 8.37, 8.33, 8.29, 8.26, 
8.21, 8.18, 8.16, 8.13, 8.12, 8.09, 8.06, 8.06, 8.03, 9.01, 8.99, 
8.96, 8.94, 8.91, 8.89, 8.86, 8.83, 8.82, 8.79, 8.78, 8.77, 8.75, 
8.75, 8.73, 8.7, 8.68, 8.66, 8.63, 8.59, 8.55, 8.52, 8.47, 8.43, 
8.4, 8.38, 8.35, 8.32, 8.31, 8.29, 8.26, 8.25, 8.23, 9.07, 9.06, 
9.04, 9.01, 8.99, 8.97, 8.94, 8.92, 8.91, 8.9, 8.89, 8.88, 8.88, 
8.87, 8.86, 8.84, 8.83, 8.8, 8.75, 8.74, 8.7, 8.67, 8.63, 8.59, 
8.57, 8.53, 8.52, 8.51, 8.47, 8.47, 8.45, 8.42, 8.41, 9.1, 9.08, 
9.06, 9.04, 9.02, 9, 8.98, 8.97, 8.96, 8.96, 8.95, 8.95, 8.97, 
8.96, 8.96, 8.94, 8.91, 8.89, 8.86, 8.84, 8.8, 8.76, 8.73, 8.69, 
8.67, 8.64, 8.63, 8.63, 8.61, 8.59, 8.57, 8.54, 8.53), wind_dir = c(81.27, 
81.34, 81.38, 81.44, 81.47, 81.34, 81.31, 81.51, 81.56, 81.46, 
81.54, 81.53, 81.42, 81.53, 81.66, 81.76, 81.86, 81.96, 82.02, 
82.28, 82.65, 82.77, 83.07, 83.46, 83.78, 84.15, 84.52, 84.92, 
85.39, 85.87, 86.15, 86.38, 86.53, 81.34, 81.34, 81.38, 81.31, 
81.2, 81.25, 81.39, 81.36, 81.31, 81.4, 81.47, 81.48, 81.59, 
81.64, 81.58, 81.62, 81.75, 81.98, 82.13, 82.26, 82.52, 82.77, 
82.97, 83.15, 83.49, 83.74, 84.23, 84.78, 85.04, 85.49, 85.73, 
86.05, 86.35, 81.5, 81.41, 81.32, 81.28, 81.32, 81.31, 81.24, 
81.17, 81.28, 81.33, 81.24, 81.3, 81.44, 81.46, 81.55, 81.76, 
81.8, 81.88, 82.11, 82.31, 82.4, 82.61, 82.88, 82.95, 83.29, 
83.59, 83.93, 84.46, 84.8, 85.26, 85.47, 85.78, 86.11, 81.3, 
81.29, 81.29, 81.28, 81.32, 81.22, 81.24, 81.32, 81.31, 81.23, 
81.34, 81.47, 81.37, 81.42, 81.5, 81.6, 81.78, 81.98, 82.06, 
82.26, 82.49, 82.52, 82.7, 82.79, 83.05, 83.46, 83.79, 84.18, 
84.5, 84.91, 85.23, 85.49, 85.7, 81.31, 81.33, 81.28, 81.19, 
81.26, 81.29, 81.36, 81.24, 81.16, 81.18, 81.23, 81.23, 81.23, 
81.47, 81.5, 81.55, 81.73, 81.99, 82.14, 82.18, 82.41, 82.46, 
82.63, 82.83, 82.97, 83.27, 83.62, 84.01, 84.34, 84.64, 85.01, 
85.38, 85.55, 81.14, 81.14, 81.1, 81.15, 81.2, 81.1, 81.14, 81.06, 
81.21, 81.26, 81.13, 81.16, 81.17, 81.22, 81.28, 81.63, 81.71, 
81.77, 82.13, 82.22, 82.37, 82.48, 82.56, 82.7, 82.92, 83.19, 
83.43, 83.74, 84.15, 84.59, 84.89, 85.22, 85.39)), row.names = c(NA, 
-198L), .Names = c("Lon", "Lat", "mean_wind", "wind_dir"), class = c("tbl_df", 
"tbl", "data.frame"))
0
32

geom_spoke was made for this particular sort of plot. Cleaned up a little,

library(ggplot2)

ggplot(wind.dt, 
       aes(x = Lon , 
           y = Lat, 
           fill = mean_wind, 
           angle = wind_dir, 
           radius = scales::rescale(mean_wind, c(.2, .8)))) +
    geom_raster() +
    geom_spoke(arrow = arrow(length = unit(.05, 'inches'))) + 
    scale_fill_distiller(palette = "RdYlGn") + 
    coord_equal(expand = 0) + 
    theme(legend.position = 'bottom', 
          legend.direction = 'horizontal')

Adjust scaling and sizes as desired.


Edit: Controlling the number of arrows

To adjust the number of arrows, a quick-and-dirty route is to subset one of the aesthetics passed to geom_spoke with a recycling vector that will cause some rows to be dropped, e.g.

library(ggplot2)

ggplot(wind.dt, 
       aes(x = Lon , 
           y = Lat, 
           fill = mean_wind, 
           angle = wind_dir[c(TRUE, NA, NA, NA, NA)],    # causes some values not to plot
           radius = scales::rescale(mean_wind, c(.2, .8)))) +
    geom_raster() +
    geom_spoke(arrow = arrow(length = unit(.05, 'inches'))) + 
    scale_fill_distiller(palette = "RdYlGn") + 
    coord_equal(expand = 0) + 
    theme(legend.position = 'bottom', 
          legend.direction = 'horizontal')
#> Warning: Removed 158 rows containing missing values (geom_spoke).

This depends on your data frame being in order and is not infinitely flexible, but if it gets you a nice plot with minimal effort, can be useless nonetheless.

A more robust approach is to make a subsetted data frame for use by geom_spoke, say, selecting every other value of Lon and Lat, here using recycling subsetting on a vector of distinct values:

library(dplyr)

wind.arrows <- wind.dt %>% 
    filter(Lon %in% sort(unique(Lon))[c(TRUE, FALSE)], 
           Lat %in% sort(unique(Lat))[c(TRUE, FALSE)])

ggplot(wind.dt, 
       aes(x = Lon , 
           y = Lat, 
           fill = mean_wind, 
           angle = wind_dir, 
           radius = scales::rescale(mean_wind, c(.2, .8)))) +
    geom_raster() +
    geom_spoke(data = wind.arrows,    # this is the only difference in the plotting code
               arrow = arrow(length = unit(.05, 'inches'))) + 
    scale_fill_distiller(palette = "RdYlGn") + 
    coord_equal(expand = 0) + 
    theme(legend.position = 'bottom', 
          legend.direction = 'horizontal')

This approach makes getting (and scaling) a grid fairly easy, but getting a diamond pattern will take a bit more logic:

wind.arrows <- wind.dt %>% 
    filter(( Lon %in% sort(unique(Lon))[c(TRUE, FALSE)] & 
             Lat %in% sort(unique(Lat))[c(TRUE, FALSE)] ) | 
           ( Lon %in% sort(unique(Lon))[c(FALSE, TRUE)] & 
             Lat %in% sort(unique(Lat))[c(FALSE, TRUE)] ))

5
  • Great answer, thank you. In addition, how can I plot arrows by skipping every 5 grids? ie plot arrow on the first grid cell and 5 th and 10th and so on. Dec 19 '17 at 23:40
  • @LilyNature Updated with a couple options
    – alistaire
    Dec 20 '17 at 7:12
  • it seems the direction were not plotted properly here, for example first gird cell has value of 81.7 degree. The arrow doesn't seems show 81.7 degree. what should be changed to make it proper direction. Mar 28 '18 at 23:34
  • Oops, the docs don't state it explicitly, but looking at the example, it looks like the angles are supposed to be in radians, not degrees, so set angle = wind_dir / 180 * pi in aes or convert beforehand and everything will point more or less upwards (angles are measured from the positive x-axis).
    – alistaire
    Mar 28 '18 at 23:44
  • 2
    Thank you @ alistaire, to get proper direction ( with reference to meteorological convention) we have to subtract the direction from 270 and use angle = wind_dir / 180 * pi. Apr 3 '18 at 19:27

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