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I need to draw ternary/triangle plots representing mole fractions (x, y, z) of various substances/mixtures (x + y + z = 1). Each plot represents iso-valued substances, e.g. substances which have the same melting point. The plots need to be drawn on the same triangle with different colors/symbols and it would be nice if I could also connect the dots.

I have looked at matplotlib, R and gnuplot, but they don't seem to be able to draw this kind of plot. The 3rd party ade4 package for R seems to be able to draw it, but I'm not sure if I can draw multiple plots on the same triangle.

I need something that runs under Linux or Windows. I'm open to any suggestions, including libraries for other languages, e.g. Perl, PHP, Ruby, C# and Java.

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There are a few more R options than listed below; try library(sos); findFn("{ternary plot}") –  Ben Bolker Oct 14 '11 at 14:18
    
an R package I have just authored does what you require (and more) it is based off ggplot, website is www.ggtern.com –  Nicholas Hamilton Dec 18 '13 at 2:46
    
@CristianCiupitu done –  Nicholas Hamilton Dec 19 '13 at 1:23

9 Answers 9

up vote 7 down vote accepted

R has an external package called VCD which should do what you want.

The documentation is very good (122 page manual distributed w/ the package); there's also a book by the same name, Visual Display of Quantitative Information, by the package's author (Prof. Michael Friendly).

To create ternary plots using vcd, just call ternaryplot() and pass in an m x 3 matrix, i.e., a matrix with three columns.

The method signature is very simple; only a single parameter (the m x 3 data matrix) is required; and all of the keyword parameters relate to the plot's aesthetics, except for scale, which when set to 1, normalizes the data column-wise.

To plot data points on the ternary plot, the coordinates for a given point are calculated as the gravity center of mass points in which each feature value comprising the data matrix is a separate weight, hence the coordinates of a point V(a, b, c) are

V(b, c/2, c * (3^.5)/2

To generate the diagram below, i just created some fake data to represent four different chemical mixtures, each comprised of varying fractions of three substances (x, y, z). I scaled the input (so x + y + z = 1) but the function will do it for you if you pass in a value for its 'scale' parameter (in fact, the default is 1, which i believe is what your question requires). I used different colors & symbols to represent the four data points, but you can also just use a single color/symbol and label each point (via the 'id' argument).

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It definitely looks interesting, too bad it has so many dependencies which I don't have on my Fedora 12 machine :-( Anyway thank you for answering and +1 from me. –  Cristian Ciupitu Jan 10 '10 at 20:59
1  
that's too bad--i think you might have enjoyed using that library otherwise. (Quite a coincidence that when i was typing my answer above, i was sitting in the Bucharest airport on my way back to Spain from a climbing trip in the gorgeous Fagaras mountains.) I don't think i have the rep to add an 'r' tag to your Q, so if you agree, perhaps add that tag when you have a chance. –  doug Jan 12 '10 at 23:48
    
I managed to install it on Fedora 12 by running R and typing at the R prompt install.packages(c("vcd")). Also the examples from the ternaryplot manual page worked like a charm. Thank you again! As for the r tag, I haven't noticed your comment, otherwise I would have added it myself. P.S.: I'm glad that you enjoyed your climbing trip. –  Cristian Ciupitu Feb 16 '10 at 2:41

Created a very basic script for generating ternary (or more) plots. No gridlines or ticklines, but those wouldn't be too hard to add using the vectors in the "basis" array.

enter image description here

from pylab import *


def ternaryPlot(
            data,

            # Scale data for ternary plot (i.e. a + b + c = 1)
            scaling=True,

            # Direction of first vertex.
            start_angle=90,

            # Orient labels perpendicular to vertices.
            rotate_labels=True,

            # Labels for vertices.
            labels=('one','two','three'),

            # Can accomodate more than 3 dimensions if desired.
            sides=3,

            # Offset for label from vertex (percent of distance from origin).
            label_offset=0.10,

            # Any matplotlib keyword args for plots.
            edge_args={'color':'black','linewidth':2},

            # Any matplotlib keyword args for figures.
            fig_args = {'figsize':(8,8),'facecolor':'white','edgecolor':'white'},
        ):
    '''
    This will create a basic "ternary" plot (or quaternary, etc.)
    '''
    basis = array(
                    [
                        [
                            cos(2*_*pi/sides + start_angle*pi/180),
                            sin(2*_*pi/sides + start_angle*pi/180)
                        ] 
                        for _ in range(sides)
                    ]
                )

    # If data is Nxsides, newdata is Nx2.
    if scaling:
        # Scales data for you.
        newdata = dot((data.T / data.sum(-1)).T,basis)
    else:
        # Assumes data already sums to 1.
        newdata = dot(data,basis)

    fig = figure(**fig_args)
    ax = fig.add_subplot(111)

    for i,l in enumerate(labels):
        if i >= sides:
            break
        x = basis[i,0]
        y = basis[i,1]
        if rotate_labels:
            angle = 180*arctan(y/x)/pi + 90
            if angle > 90 and angle <= 270:
                angle = mod(angle + 180,360)
        else:
            angle = 0
        ax.text(
                x*(1 + label_offset),
                y*(1 + label_offset),
                l,
                horizontalalignment='center',
                verticalalignment='center',
                rotation=angle
            )

    # Clear normal matplotlib axes graphics.
    ax.set_xticks(())
    ax.set_yticks(())
    ax.set_frame_on(False)

    # Plot border
    ax.plot(
        [basis[_,0] for _ in range(sides) + [0,]],
        [basis[_,1] for _ in range(sides) + [0,]],
        **edge_args
    )

    return newdata,ax


if __name__ == '__main__':
    k = 0.5
    s = 1000

    data = vstack((
        array([k,0,0]) + rand(s,3), 
        array([0,k,0]) + rand(s,3), 
        array([0,0,k]) + rand(s,3)
    ))
    color = array([[1,0,0]]*s + [[0,1,0]]*s + [[0,0,1]]*s)

    newdata,ax = ternaryPlot(data)

    ax.scatter(
        newdata[:,0],
        newdata[:,1],
        s=2,
        alpha=0.5,
        color=color
        )
    show()
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Veusz supports ternary plots. Here is an example from the documentation: Example plot

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A package I have authored in R has just been accepted for CRAN, webpage is www.ggtern.com:

It is based off ggplot2, which I have used as a platform. The driving force for me, was a desire to have consistency in my work, and, since I use ggplot2 heavily, development of the package was a logical progression.

For those of you who use ggplot2, use of ggtern should be a breeze, and, here is a couple of demonstrations of what can be achieved.

Feldspar

Produced with the following code:

# Load data
data(Feldspar)

# Sort it by decreasing pressure 
# (so small grobs sit on top of large grobs
Feldspar <- Feldspar[with(Feldspar, order(-P.Gpa)), ]

# Build and Render the Plot
ggtern(data = Feldspar, aes(x = An, y = Ab, z = Or)) + 
#the layer
geom_point(aes(fill = T.C, 
               size = P.Gpa, 
               shape = Feldspar)) + 
#scales
scale_shape_manual(values = c(21, 24)) + 
scale_size_continuous(range = c(2.5, 7.5)) + 
scale_fill_gradient(low = "green", high = "red") + 

#theme tweaks
theme_tern_bw()  + 
theme(legend.position      = c(0, 1), 
      legend.justification = c(0, 1), 
      legend.box.just      = "left") + 

#tweak guides
guides(shape= guide_legend(order   =1,
                           override.aes=list(size=5)),
       size = guide_legend(order   =2),
       fill = guide_colourbar(order=3)) +

#labels and title
labs(size = "Pressure/GPa", 
     fill = "Temperature/C") + 
ggtitle("Feldspar - Elkins and Grove 1990")

Contour plots have also been patched for the ternary environment, and, an inclusion of a new geometry for representing confidence intervals via the Mahalanobis Distance.

Contour

Produced with the following code:

ggtern(data=Feldspar,aes(An,Ab,Or)) +
  geom_confidence(aes(group=Feldspar,
                      fill=..level..,
                      alpha=1-..level..),
                      n=2000,
                  breaks=c(0.01,0.02,0.03,0.04,
                           seq(0.05,0.95,by=0.1),
                           0.99,0.995,0.9995),
                  color=NA,linetype=1) +
  geom_density2d(aes(color=..level..)) + 
  geom_point(fill="white",aes(shape=Feldspar),size=5) +  
  theme_tern_bw() + 
  theme_tern_nogrid() + 
  theme(ternary.options=element_ternary(padding=0.2),
                        legend.position=c(0,1),
                        legend.justification=c(0,1),
                        legend.box.just="left") +
  labs(color="Density",fill="Confidence",
   title="Feldspar - Elkins and Grove 1990 + Confidence Levels + Density") +
  scale_color_gradient(low="gray",high="magenta") +
  scale_fill_gradient2(low="red",mid="orange",high="green",
                       midpoint=0.8) +
  scale_shape_manual(values=c(21,24)) + 
  guides(shape= guide_legend(order   =1,
                             override.aes=list(size=5)),
         size = guide_legend(order   =2),
         fill = guide_colourbar(order=3),
         color= guide_colourbar(order=4),
         alpha= "none")
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Chloë Lewis developed a triangle-plot general class, meant to support the soil texture triangle with Python and Matplotlib. It's available here http://nature.berkeley.edu/~chlewis/Sourcecode.html https://github.com/chlewissoil/TernaryPlotPy

Chloe editing to add: Moved it to a more reliable host! Also, it's a public repo, so if you want to request library-ization, you could add an issue. Hope it's useful to someone.

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Nice plots and +1 Too bad the code isn't generic enough to be used as a library. –  Cristian Ciupitu Jan 12 '11 at 6:18
    
link sends 404 :( –  oDDsKooL Jul 24 '12 at 11:47
    
@chplewis : thanks for your edit ! –  Frédéric Grosshans Sep 13 '12 at 13:38

Find a vector drawing library and draw it from scratch if you can't find an easier way to do it.

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I have thought of this, too, but it would be too much (grunt) work. There are many details that have to be figured out, e.g. the locations of the axes labels or tick marks. Btw, Phil's solution is basically drawing the plot from scratch. –  Cristian Ciupitu Mar 31 '09 at 22:54

There seems to be an implementation at work here in gnuplot: ternary plot

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It looks interesting, but I'm having problems with the last command. I had to modify (truncate) it. I'll investigate it further. Thank you. –  Cristian Ciupitu Mar 31 '09 at 16:23

I just discovered a tool which uses Python/Matplotlib to generate ternary plots called wxTernary. It's available via http://wxternary.sourceforge.net/ -- I was able to successfully generate a ternary plot on the first try.

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project seems not to have checked in the script in SCM :( –  oDDsKooL Jul 24 '12 at 11:48

There is a R package named soiltexture. It's aimed at soil texture triangle plot, but can be customized for some aspects.

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