# R interpolated polar contour plot

I'm attempting to script a contour polar plot in R from interpolated point data. In other words, I have data in polar coordinates with a magnitude value I would like to plot and show interpolated values. I'd like to mass produce plots similar to the following (produced in OriginPro): My closest attempt in R to this point is basically:

``````### Convert polar -> cart
# ToDo #

### Dummy data
x = rnorm(20)
y = rnorm(20)
z = rnorm(20)

### Interpolate
library(akima)
tmp = interp(x,y,z)

### Plot interpolation
library(fields)
image.plot(tmp)

### ToDo ###
#Turn off all axis
#Plot polar axis ontop
``````

Which produces something like: While this is obviously not going to be the final product, is this the best way to go about creating contour polar plots in R?

I can't find anything on the topic other than an archive mailing list dicussion from 2008. I guess I'm not fully dedicated to using R for the plots (though that is where I have the data), but I am opposed to manual creation. So, if there is another language with this capability, please suggest it (I did see the Python example).

### EDIT

Regarding the suggestion using ggplot2 - I can't seem to get the geom_tile routine to plot interpolated data in polar_coordinates. I have included code below that illustrates where I'm at. I can plot the original in Cartesian and polar, but I can only get the interpolated data to plot in Cartesian. I can plot the interpolation points in polar using geom_point, but I can't extend that approach to geom_tile. My only guess was that this is related to data order - i.e. geom_tile is expecting sorted/ordered data - I've tried every iteration I can think of sorting the data into ascending/descending azimuth and zenith with no change.

``````## Libs
library(akima)
library(ggplot2)

## Sample data in az/el(zenith)
tmp = seq(5,355,by=10)
geoms <- data.frame(az = tmp,
zen = runif(length(tmp)),
value = runif(length(tmp)))
## These points plot fine
ggplot(geoms)+geom_point(aes(az,zen,colour=value))+
coord_polar()+
scale_x_continuous(breaks=c(0,45,90,135,180,225,270,315,360),limits=c(0,360))+

## Need to interpolate - most easily done in cartesian
df.ptsc = data.frame(x=x,y=y,z=geoms\$value)
intc = interp(x,y,geoms\$value,
xo=seq(min(x), max(x), length = 100),
yo=seq(min(y), max(y), length = 100),linear=FALSE)
df.intc = data.frame(expand.grid(x=intc\$x,y=intc\$y),
z=c(intc\$z),value=cut((intc\$z),breaks=seq(0,1,.1)))
## This plots fine in cartesian coords
ggplot(df.intc)+scale_x_continuous(limits=c(-1.1,1.1))+
scale_y_continuous(limits=c(-1.1,1.1))+
geom_point(data=df.ptsc,aes(x,y,colour=z))+
ggplot(df.intc)+geom_tile(aes(x,y,fill=z))+
scale_x_continuous(limits=c(-1.1,1.1))+
scale_y_continuous(limits=c(-1.1,1.1))+
geom_point(data=df.ptsc,aes(x,y,colour=z))+

## Convert back to polar
int_az = atan2(df.intc\$x,df.intc\$y)
int_az = int_az*180/pi
int_az = unlist(lapply(int_az,function(x){if(x<0){x+360}else{x}}))
int_zen = sqrt(df.intc\$x^2+df.intc\$y^2)
df.intp = data.frame(az=int_az,zen=int_zen,z=df.intc\$z,value=df.intc\$value)
## Just to check
az = atan2(x,y)
az = az*180/pi
az = unlist(lapply(az,function(x){if(x<0){x+360}else{x}}))
zen = sqrt(x^2+y^2)
## The conversion looks correct [[az = geoms\$az, zen = geoms\$zen]]

## This plots the interpolated locations
ggplot(df.intp)+geom_point(aes(az,zen))+coord_polar()
## This doesn't track to geom_tile
ggplot(df.intp)+geom_tile(aes(az,zen,fill=value))+coord_polar()
``````

### Final Results

I finally took code from the accepted answer (base graphics) and updated the code. I added a thin plate spline interpolation method, an option to extrapolate or not, data point overlays, and the ability to do continuous colors or segmented colors for the interpolated surface. See the examples below.

``````PolarImageInterpolate <- function(
### Plotting data (in cartesian) - will be converted to polar space.
x, y, z,
### Plot component flags
contours=TRUE,   # Add contours to the plotted surface
legend=TRUE,        # Plot a surface data legend?
axes=TRUE,      # Plot axes?
points=TRUE,        # Plot individual data points
extrapolate=FALSE, # Should we extrapolate outside data points?
### Data splitting params for color scale and contours
col_breaks_source = 1, # Where to calculate the color brakes from (1=data,2=surface)
# If you know the levels, input directly (i.e. c(0,1))
col_levels = 10,    # Number of color levels to use - must match length(col) if
#col specified separately
col = rev(heat.colors(col_levels)),  # Colors to plot
contour_breaks_source = 1, # 1=z data, 2=calculated surface data
# If you know the levels, input directly (i.e. c(0,1))
contour_levels = col_levels+1, # One more contour break than col_levels (must be
# specified correctly if done manually
### Plotting params
spatial_res=1000, #Resolution of fitted surface
single_point_overlay=0, #Overlay "key" data point with square
#(0 = No, Other = number of pt)
### Fitting parameters
interp.type = 1, #1 = linear, 2 = Thin plate spline
lambda=0){ #Used only when interp.type = 2

# interpolate the data
if (interp.type ==1 ){
Interp <- akima:::interp(x = x, y = y, z = z,
extrap = extrapolate,
xo = minitics,
yo = minitics,
linear = FALSE)
Mat <- Interp[]
}
else if (interp.type == 2){
library(fields)
grid.list = list(x=minitics,y=minitics)
t = Tps(cbind(x,y),z,lambda=lambda)
tmp = predict.surface(t,grid.list,extrap=extrapolate)
Mat = tmp\$z
}
else {stop("interp.type value not valid")}

# mark cells outside circle as NA
markNA <- matrix(minitics, ncol = spatial_res, nrow = spatial_res)
Mat[!sqrt(markNA ^ 2 + t(markNA) ^ 2) < outer.radius] <- NA

### Set contour_breaks based on requested source
if ((length(contour_breaks_source == 1)) & (contour_breaks_source == 1)){
contour_breaks = seq(min(z,na.rm=TRUE),max(z,na.rm=TRUE),
by=(max(z,na.rm=TRUE)-min(z,na.rm=TRUE))/(contour_levels-1))
}
else if ((length(contour_breaks_source == 1)) & (contour_breaks_source == 2)){
contour_breaks = seq(min(Mat,na.rm=TRUE),max(Mat,na.rm=TRUE),
by=(max(Mat,na.rm=TRUE)-min(Mat,na.rm=TRUE))/(contour_levels-1))
}
else if ((length(contour_breaks_source) == 2) & (is.numeric(contour_breaks_source))){
contour_breaks = pretty(contour_breaks_source,n=contour_levels)
contour_breaks = seq(contour_breaks_source,contour_breaks_source,
by=(contour_breaks_source-contour_breaks_source)/(contour_levels-1))
}
else {stop("Invalid selection for \"contour_breaks_source\"")}

### Set color breaks based on requested source
if ((length(col_breaks_source) == 1) & (col_breaks_source == 1))
{zlim=c(min(z,na.rm=TRUE),max(z,na.rm=TRUE))}
else if ((length(col_breaks_source) == 1) & (col_breaks_source == 2))
{zlim=c(min(Mat,na.rm=TRUE),max(Mat,na.rm=TRUE))}
else if ((length(col_breaks_source) == 2) & (is.numeric(col_breaks_source)))
{zlim=col_breaks_source}
else {stop("Invalid selection for \"col_breaks_source\"")}

# begin plot
Mat_plot = Mat
Mat_plot[which(Mat_plot<zlim)]=zlim
Mat_plot[which(Mat_plot>zlim)]=zlim
image(x = minitics, y = minitics, Mat_plot , useRaster = TRUE, asp = 1, axes = FALSE, xlab = "", ylab = "", zlim = zlim, col = col)

if (contours){
CL <- contourLines(x = minitics, y = minitics, Mat, levels = contour_breaks)
A <- lapply(CL, function(xy){
lines(xy\$x, xy\$y, col = gray(.2), lwd = .5)
})
}
# add interpolated point if desired
if (points){
points(x,y,pch=4)
}
# add overlay point (used for trained image marking) if desired
if (single_point_overlay!=0){
points(x[single_point_overlay],y[single_point_overlay],pch=0)
}

if (axes){
# internals for axis markup
}

circle <- function(x, y, rad = 1, nvert = 500){
cbind(xcoords, ycoords)
}

# draw circles
}

lines(circle(0, 0, i), col = "#66666650")
}

# put on radial spoke axes:
axis.rads <- c(0, pi / 6, pi / 3, pi / 2, 2 * pi / 3, 5 * pi / 6)
r.labs <- c(90, 60, 30, 0, 330, 300)
l.labs <- c(270, 240, 210, 180, 150, 120)

endpoints <- zapsmall(c(RMat(axis.rads[i]) %*% matrix(c(1, 0, -1, 0) * outer.radius,ncol = 2)))
segments(endpoints, endpoints, endpoints, endpoints, col = "#66666650")
endpoints <- c(RMat(axis.rads[i]) %*% matrix(c(1.1, 0, -1.1, 0) * outer.radius, ncol = 2))
lab1 <- bquote(.(r.labs[i]) * degree)
lab2 <- bquote(.(l.labs[i]) * degree)
text(endpoints, endpoints, lab1, xpd = TRUE)
text(endpoints, endpoints, lab2, xpd = TRUE)
}

}

# this could be sloppy if there are lots of breaks, and that's why it's optional.
# another option would be to use fields:::image.plot(), using only the legend.
# There's an example for how to do so in its documentation
if (legend){
library(fields)
image.plot(legend.only=TRUE, smallplot=c(.78,.82,.1,.8), col=col, zlim=zlim)
# rect(1.2 * outer.radius, ylevs[1:(length(ylevs) - 1)], 1.3 * outer.radius, ylevs[2:length(ylevs)], col = col, border = NA, xpd = TRUE)
# rect(1.2 * outer.radius, min(ylevs), 1.3 * outer.radius, max(ylevs), border = "#66666650", xpd = TRUE)
# text(1.3 * outer.radius, ylevs[seq(1,length(ylevs),length.out=length(contour_breaks))],round(contour_breaks, 1), pos = 4, xpd = TRUE)
}
}
``````   • awesome, thanks for posting your final result – tim riffe Jun 26 '12 at 14:29

[[major edit]] I was finally able to add contour lines to my original attempt, but since the two sides of the original matrix that gets contorted don't actually touch, the lines don't match up between 360 and 0 degree. So I've totally rethought the problem, but leave the original post below because it was still kind of cool to plot a matrix that way. The function I'm posting now takes x,y,z and several optional arguments, and spits back something pretty darn similar to your desired examples, radial axes, legend, contour lines and all:

``````    PolarImageInterpolate <- function(x, y, z, outer.radius = 1,
breaks, col, nlevels = 20, contours = TRUE, legend = TRUE,

# interpolate the data
Interp <- akima:::interp(x = x, y = y, z = z,
extrap = TRUE,
xo = minitics,
yo = minitics,
linear = FALSE)
Mat <- Interp[]

# mark cells outside circle as NA
markNA <- matrix(minitics, ncol = 1000, nrow = 1000)
Mat[!sqrt(markNA ^ 2 + t(markNA) ^ 2) < outer.radius] <- NA

# sort out colors and breaks:
if (!missing(breaks) & !missing(col)){
if (length(breaks) - length(col) != 1){
stop("breaks must be 1 element longer than cols")
}
}
if (missing(breaks) & !missing(col)){
breaks <- seq(min(Mat,na.rm = TRUE), max(Mat, na.rm = TRUE), length = length(col) + 1)
nlevels <- length(breaks) - 1
}
if (missing(col) & !missing(breaks)){
col <- rev(heat.colors(length(breaks) - 1))
nlevels <- length(breaks) - 1
}
if (missing(breaks) & missing(col)){
breaks <- seq(min(Mat,na.rm = TRUE), max(Mat, na.rm = TRUE), length = nlevels + 1)
col <- rev(heat.colors(nlevels))
}

# if legend desired, it goes on the right and some space is needed
if (legend) {
par(mai = c(1,1,1.5,1.5))
}

# begin plot
image(x = minitics, y = minitics, t(Mat), useRaster = TRUE, asp = 1,
axes = FALSE, xlab = "", ylab = "", col = col, breaks = breaks)

if (contours){
CL <- contourLines(x = minitics, y = minitics, t(Mat), levels = breaks)
A <- lapply(CL, function(xy){
lines(xy\$x, xy\$y, col = gray(.2), lwd = .5)
})
}

if (axes){
# internals for axis markup
}

circle <- function(x, y, rad = 1, nvert = 500){
cbind(xcoords, ycoords)
}

# draw circles
}

lines(circle(0, 0, i), col = "#66666650")
}

# put on radial spoke axes:
axis.rads <- c(0, pi / 6, pi / 3, pi / 2, 2 * pi / 3, 5 * pi / 6)
r.labs <- c(90, 60, 30, 0, 330, 300)
l.labs <- c(270, 240, 210, 180, 150, 120)

endpoints <- zapsmall(c(RMat(axis.rads[i]) %*% matrix(c(1, 0, -1, 0) * outer.radius,ncol = 2)))
segments(endpoints, endpoints, endpoints, endpoints, col = "#66666650")
endpoints <- c(RMat(axis.rads[i]) %*% matrix(c(1.1, 0, -1.1, 0) * outer.radius, ncol = 2))
lab1 <- bquote(.(r.labs[i]) * degree)
lab2 <- bquote(.(l.labs[i]) * degree)
text(endpoints, endpoints, lab1, xpd = TRUE)
text(endpoints, endpoints, lab2, xpd = TRUE)
}
}

# this could be sloppy if there are lots of breaks, and that's why it's optional.
# another option would be to use fields:::image.plot(), using only the legend.
# There's an example for how to do so in its documentation
if (legend){
rect(1.2 * outer.radius, ylevs[1:(length(ylevs) - 1)], 1.3 * outer.radius, ylevs[2:length(ylevs)], col = col, border = NA, xpd = TRUE)
rect(1.2 * outer.radius, min(ylevs), 1.3 * outer.radius, max(ylevs), border = "#66666650", xpd = TRUE)
text(1.3 * outer.radius, ylevs,round(breaks, 1), pos = 4, xpd = TRUE)
}
}

# Example
set.seed(10)
x <- rnorm(20)
y <- rnorm(20)
z <- rnorm(20)
PolarImageInterpolate(x,y,z, breaks = seq(-2,8,by = 1))
``````

code available here: https://gist.github.com/2893780 I thought your question would be educational for myself, so I took up the challenge and came up with the following incomplete function. It works similar to `image()`, wants a matrix as its primary input, and spits back something similar to your example above, minus the contour lines. [[I edited the code June 6th after noticing that it didn't plot in the order I claimed. Fixed. Currently working on contour lines and legend.]]

``````    # arguments:

# Mat, a matrix of z values as follows:
# leftmost edge of first column = 0 degrees, rightmost edge of last column = 360 degrees
# columns are distributed in cells equally over the range 0 to 360 degrees, like a grid prior to transform
# first row is innermost circle, last row is outermost circle

# outer.radius, By default everything scaled to unit circle
# ppa: points per cell per arc. If your matrix is little, make it larger for a nice curve
# cols: color vector. default = rev(heat.colors(length(breaks)-1))
# breaks: manual breaks for colors. defaults to seq(min(Mat),max(Mat),length=nbreaks)
# nbreaks: how many color levels are desired?
# axes: should circular and radial axes be drawn? radial axes are drawn at 30 degree intervals only- this could be made more flexible.

# TODO: add color strip legend.

PolarImagePlot <- function(Mat, outer.radius = 1, ppa = 5, cols, breaks, nbreaks = 51, axes = TRUE, circle.rads){

# the image prep
Mat      <- Mat[, ncol(Mat):1]

# 5 points per arc will usually do
Npts     <- ppa
# all the angles for which a vertex is needed
radians  <- 2 * pi * (0:(nrow(Mat) * Npts)) / (nrow(Mat) * Npts) + pi / 2
# matrix where each row is the arc corresponding to a cell

# the x and y coords assuming radius of 1

# dimension markers
nc <- ncol(x0)
nr <- nrow(x0)

# make a copy for each radii, redimension in sick ways
x1 <- aperm( x0 %o% radii, c(1, 3, 2))
# the same, but coming back the other direction to close the polygon
x2 <- x1[, , nc:1]
#now stick together
x.array <- abind:::abind(x1[, 1:(nl - 1), ], x2[, 2:nl, ], matrix(NA, ncol = (nl - 1), nrow = nr), along = 3)
# final product, xcoords, is a single vector, in order,
# where all the x coordinates for a cell are arranged
# clockwise. cells are separated by NAs- allows a single call to polygon()
xcoords <- aperm(x.array, c(3, 1, 2))
dim(xcoords) <- c(NULL)
# repeat for y coordinates
y1 <- aperm( y0 %o% radii,c(1, 3, 2))
y2 <- y1[, , nc:1]
y.array <- abind:::abind(y1[, 1:(length(radii) - 1), ], y2[, 2:length(radii), ], matrix(NA, ncol = (length(radii) - 1), nrow = nr), along = 3)
ycoords <- aperm(y.array, c(3, 1, 2))
dim(ycoords) <- c(NULL)

# sort out colors and breaks:
if (!missing(breaks) & !missing(cols)){
if (length(breaks) - length(cols) != 1){
stop("breaks must be 1 element longer than cols")
}
}
if (missing(breaks) & !missing(cols)){
breaks <- seq(min(Mat,na.rm = TRUE), max(Mat, na.rm = TRUE), length = length(cols) + 1)
}
if (missing(cols) & !missing(breaks)){
cols <- rev(heat.colors(length(breaks) - 1))
}
if (missing(breaks) & missing(cols)){
breaks <- seq(min(Mat,na.rm = TRUE), max(Mat, na.rm = TRUE), length = nbreaks)
cols <- rev(heat.colors(length(breaks) - 1))
}

# get a color for each cell. Ugly, but it gets them in the right order
cell.cols <- as.character(cut(as.vector(Mat[nrow(Mat):1,ncol(Mat):1]), breaks = breaks, labels = cols))

# start empty plot
plot(NULL, type = "n", ylim = c(-1, 1) * outer.radius, xlim = c(-1, 1) * outer.radius, asp = 1, axes = FALSE, xlab = "", ylab = "")
# draw polygons with no borders:
polygon(xcoords, ycoords, col = cell.cols, border = NA)

if (axes){

# a couple internals for axis markup.

}

circle <- function(x, y, rad = 1, nvert = 500){
cbind(xcoords, ycoords)
}
# draw circles
}
lines(circle(0, 0, i), col = "#66666650")
}

# put on radial spoke axes:
axis.rads <- c(0, pi / 6, pi / 3, pi / 2, 2 * pi / 3, 5 * pi / 6)
r.labs <- c(90, 60, 30, 0, 330, 300)
l.labs <- c(270, 240, 210, 180, 150, 120)

endpoints <- zapsmall(c(RMat(axis.rads[i]) %*% matrix(c(1, 0, -1, 0) * outer.radius,ncol = 2)))
segments(endpoints, endpoints, endpoints, endpoints, col = "#66666650")
endpoints <- c(RMat(axis.rads[i]) %*% matrix(c(1.1, 0, -1.1, 0) * outer.radius, ncol = 2))
lab1 <- bquote(.(r.labs[i]) * degree)
lab2 <- bquote(.(l.labs[i]) * degree)
text(endpoints, endpoints, lab1, xpd = TRUE)
text(endpoints, endpoints, lab2, xpd = TRUE)
}
}
invisible(list(breaks = breaks, col = cols))
}
``````

I don't know how to interpolate properly over a polar surface, so assuming you can achieve that and get your data into a matrix, then this function will get it plotted for you. Each cell is drawn, as with `image()`, but the interior ones are teeny tiny. Here's an example:

``````    set.seed(1)
x <- runif(20, min = 0, max = 360)
y <- runif(20, min = 0, max = 40)
z <- rnorm(20)

Interp <- akima:::interp(x = x, y = y, z = z,
extrap = TRUE,
xo = seq(0, 360, length.out = 300),
yo = seq(0, 40, length.out = 100),
linear = FALSE)
Mat <- Interp[]

PolarImagePlot(Mat)
`````` By all means, feel free to modify this and do with it what you will. Code is available on Github here: https://gist.github.com/2877281

• I really like the edit (I am still working through this). I've played with interpolation, but still haven't settled on the appropriate routines. It will most likely be done in Cartesian, so the edited plot will probably be perfect. I'll update when I've gotten further with this one way or the other. – Nate Jun 11 '12 at 21:05
• Excellent, will be curious to see how it turns out – tim riffe Jun 12 '12 at 21:04
• Turned out well, see the examples edited into the bottom of my original question. Thanks, would have taken me a long to time figure out all the graphics options. – Nate Jun 26 '12 at 3:34

## Target Plot ## Example Code

``````library(akima)
library(ggplot2)

x = rnorm(20)
y = rnorm(20)
z = rnorm(20)

t. = interp(x,y,z)
t.df <- data.frame(t.)

gt <- data.frame( expand.grid(X1=t.\$x,
X2=t.\$y),
z=c(t.\$z),
value=cut(c(t.\$z),
breaks=seq(-1,1,0.25)))

p <- ggplot(gt) +
geom_tile(aes(X1,X2,fill=value)) +
geom_contour(aes(x=X1,y=X2,z=z), colour="black") +
coord_polar()
p <- p + scale_fill_brewer()
p
``````

`ggplot2` then has many options to explore re colour scales, annotations etc. but this should get you started.

Credit to this answer by Andrie de Vries that got me to this solution.

• I've spent quite a bit of time trying to make this approach work. I like the paradigm of ggplot, but it seems like polar plots are kind of an afterthought. From the ggplots2 help: "NOTE: Use these plots with caution - polar coordinates has major perceptual problems... Use with EXTREME caution." Which isn't exactly true for data natively in polar coord. A couple of questions I'll need to put in a separate comment for lack of space... – Nate Jun 12 '12 at 18:27
• @Nate: how about setting up a new question with some reproducible data and code? My interpretation of that comment on polar coordinates is more to do with how viewers interpret them, rather than any bug in the system itself. Others who use polar plots more frequently may want to weigh in on this. – gauden Jun 12 '12 at 19:24
• I haven't been able to get geom_tile to work in coord_polar. Please see edit to the original question for specifics and example. – Nate Jun 14 '12 at 21:02