PlotBasics: Difference between revisions

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Notice that colors can be specified with a ''fmt'' a 'color' keyword.
Notice that colors can be specified with a '''fmt''' a '''color''' keyword.
They can be given via an RGB tuple, a name, or a single number between 0 and 1 for
They can be given via an RGB tuple, an RGB hex code, a name, or a single number between 0 and 1 for gray scale.
gray scale.
 
#  Now we can save it as a pdf, or most other formats, with:
#plt.savefig('Union2_plot1.pdf', format="pdf", transparent=True, bbox_inches='tight')


temp=raw_input("hit enter to show next plot")
temp=raw_input("hit enter to show next plot")

Revision as of 14:56, 31 October 2011

3 Ways to plot

There are three ways to go about plotting in matplotlib.

1. You can use the pylab environment

2. You can use the matplotlib.pyplot environment, with plotting commands and functions.

3. You can define plot objects, and then use the pyplot methods on those objects.

The last way gives you most control, but the other two are somewhat easier. We will give examples using the last two ways here.

Supernova Cosmology Example

  1. We will import the pyplot and numpy packages
import numpy as np
import matplotlib.pyplot as plt

Reading Data from the Web

We are going to download data from the internet so we will import the urllib package

import urllib

Begin by reading the Union2 SN cosmology data from LBL, because they are fun.

SN_list = ['']          
z_array = np.array([])
mod_array = np.array([])
moderr_array = np.array([])
f = urllib.urlopen('http://supernova.lbl.gov/Union/figures/SCPUnion2_mu_vs_z.txt')
for line in f:
    if line[0] == '#': continue    # Ignore anything that starts with a #
    SN, z, mod, moderr = line.split()
    SN_list.append(SN)
    z_array = np.append(z_array,np.float64(z))
    mod_array = np.append(mod_array,np.float64(mod))
    moderr_array = np.append(moderr_array,np.float64(moderr))   
f.close()

Simple Plots

Now to the plotting. First we close whatever windows we might have:

plt.close()

Now let us plot some points:

plt.plot(z_array, mod_array)

Notice it is a mess; by default it connects the lines. We will close it and start over.

plt.close()

We clearly need a title and axes labels

plt.title("Union2 SN Cosmology Data")
plt.xlabel('z', fontsize=20)

But we want a Greek Letter, so we can put some LaTeX syle code with the r command:

plt.ylabel(r'$\mu=m-M$', fontsize=20)

Now we add a format string to the plot command:

plt.plot(z_array, mod_array,'ro')

Now this looks better, we have red circles.

Now we start a new plot:

plt.close()

Plotting with Error Bars

Now let's plot with the error bars

plt.errorbar(z_array, mod_array, yerr=moderr_array, fmt='.')

And putting labels and colors we can do:

plt.xlabel(r'$z$', fontsize=20)
plt.ylabel(r'$\mu=m-M$', fontsize=20)
plt.title("Union2 SN Cosmology Data")
plt.errorbar(z_array, mod_array, yerr=moderr_array, fmt='.', capsize=0,
    elinewidth=1.0, ecolor=(0.6,0.0,1.0), color='green' )

Notice that colors can be specified with a fmt a color keyword. They can be given via an RGB tuple, an RGB hex code, a name, or a single number between 0 and 1 for gray scale.

temp=raw_input("hit enter to show next plot") plt.close()

  1. Now there are a lot of points, so let's figure our what our distribution is in z

plt.hist(z_array, 25)

  1. And slap a label on it

plt.xlabel(r'$z$', fontsize=20)

temp=raw_input("hit enter to show next plot") plt.close()

  1. Now, let's find the real distance from the distance modulus.
  2. To do this we will define a function and a constant

def distance_Mly(m,z):

   return 0.0000326 * (10**(m/5)) / (1.0 + z)

c = 299792.458 # km/s

  1. Now:

d_array = distance_Mly(mod_array,z_array)

  1. Now we will calculate the error bars in the distance, both ways:

d_error_plus = distance_Mly((mod_array+moderr_array),z_array) - d_array d_error_minus = d_array - distance_Mly((mod_array-moderr_array),z_array)

  1. And plot the graph with asymetrical horizontal error bars, and lables
  2. Notice the different color formats that can be used.

plt.errorbar(d_array, c*z_array, xerr=(d_error_minus,d_error_plus), fmt='s',

   capsize=5, elinewidth=1.0, color=(0.4,0.0,1.0), ecolor='aqua', barsabove=True)

plt.ylabel('cz (km/s)', fontsize=15, color='0.0') plt.xlabel('Distance (Mly)', fontsize=10, color='g') plt.title("Union2 SN Cosmology Data", color=(0.4,0.0,1.0))

temp=raw_input("hit enter to show next plot") plt.close()

  1. Now we will plot with a second vertical and horizontal axis

plt.errorbar(d_array/1000.0, c*z_array, xerr=(d_error_minus/1000.0,d_error_plus/1000.0), fmt='.',

   capsize=0, elinewidth=1.0, color=(0.4,0.0,1.0), ecolor='aqua', barsabove=True)
  1. Now we make room for each axis

plt.subplots_adjust(right=0.875, top=0.8)

plt.ylabel('cz (km/s)', fontsize=15, color='aqua') plt.xlabel('Distance (Gly)', fontsize=15, color='aqua') axes1_range = np.array( plt.axis() ) # get the default axes and convert to n array print(axes1_range)

axes2_range = 1.0*axes1_range # Don't forget, we need to make it copy it. axes2_range[0:2] = 1000*axes1_range[0:2]/3.26 # set second y-axis to z axes2_range[2:4] = axes1_range[2:4]/c # set second y-axis to z print(axes2_range)

  1. now we switch to the second axis

temp=raw_input("hit enter to show next plot") plt.twinx() # This swaps the Y axis plt.ylabel('z', fontsize=15, color='r') # I am not sure why this has to be before plt.twiny() plt.twiny() # This swaps the X axis plt.xlabel('Distance (Mpc)', fontsize=15, color='purple') plt.axis(axes2_range, axisbg='#d0,1f,ff') plt.title("Union2 SN Cosmology Data", color=(0.4,0.0,1.0), x=0.5, y=1.15)