# Changing line color

I'm trying to change the colour of a line on matplotlib subject to a condition.

Basically I take a rolling average and a rolling standard deviation. I plot the rolling average, but I would like to change the line colour if the standard deviation corresponding to that average is over the threshold I set. This is not the color of the whole line, just the bits that are over the threshol. Mostly my data is set using pandas

This link is useful, although I cannot figure out how to apply it to my situation.

http://nbviewer.ipython.org/urls/raw.github.com/dpsanders/matplotlib-examples/master/colorline.ipynb

EDIT COde: although, overly complicated for the question,

(I know the functions are too long at the moment)

``````def av_rel_track(rel_values):
avg_rel_track=[]
for i in range(0, int(nb)):
av_values=Series([])
av_values=[]
for num in range(0, int (navg)):
av_values.append( np.nan)

#loops over each revolution(row)
#select section to be number of averages long
N=rev-int(navg)+1

#check section for five consecutive zeros
checker=check5(section)
#if there is five con zeros, av_value is zero
if checker==True:
av_value=0
else:
#finds the number of zeros in the section
nz=len (section)-len(section.nonzero()[0])
while nz>0:
#whilst there is a zero, extend average by one
N=N-1
if N<0:

break
#checks if new value is zero
if new_val!=0:
nz=nz-1
#checks extended section does not contain 5 consec zeros
checker=check5(section)
if checker==True:
av_value=0
else:
#sets av_value to 0if the range extends beyond the first value of rel_values
if N<0:
av_value=0
else:
#calculates the mean of the sctinon(not including nans)
section=zero_to_nan(section)
av_value=stats.nanmean(section)

av_values.append(av_value)
av_values=zero_to_nan(av_values)

rel_values["a%s" % i]=av_values
av_track=DataFrame({1:rel_values['a0'], 2:rel_values['a1'],3:rel_values['a2'],4:rel_values['a3'],5:rel_values['a4']})

return av_track

def sd_rel_track(rel_values):

for i in range(0, int(nb)):
sd_values=Series([])
sd_values=[]
for num in range(0, int (navg)):
sd_values.append( np.nan)

#loops over each revolution(row)
#select section to be number of averages long
N=rev-int(navg)+1

#check section for five consecutive zeros
checker=check5(section)
#if there is five con zeros, av_value is zero
if checker==True:
sd_value=0
else:
#finds the number of zeros in the section
nz=len (section)-len(section.nonzero()[0])
while nz>0:
#whilst there is a zero, extend average by one
N=N-1
if N<0:
break
#checks if new value is zero
if new_val!=0:
nz=nz-1
#checks extended section does not contain 5 consec zeros
checker=check5(section)
if checker==True:
sd_value=0
else:
#sets av_value to 0if the range extends beyond the first value of rel_values
if N<0:
sd_value=0
else:
#calculates the mean of the sctinon(not including nans)
section=zero_to_nan(section)
sd_value=stats.nanstd(section)

sd_values.append(sd_value)
sd_values=zero_to_nan(sd_values)
rel_values["sd%s" % i]=sd_values
sd_track=DataFrame({1:rel_values['sd0'], 2:rel_values['sd1'],3:rel_values['sd2'],4:rel_values['sd3'],5:rel_values['sd4']})
sumsd= sd_track.sum(axis=1)

return sumsd

def plot():
plt.figure()
plt.plot(av_values)
plt.show()
plt.figure()
plt.plot(sd_values)
plt.show()
``````
-
possible duplicate of python: how to plot one line in different colors –  tcaswell Oct 1 '13 at 14:59
what did you try? –  bmu Oct 1 '13 at 15:58
sorry, I didn't put my code in, as I thought it was overly complicated for the question, but I shall add it... –  Ashleigh Clayton Oct 2 '13 at 6:42

Using http://nbviewer.ipython.org/urls/raw.github.com/dpsanders/matplotlib-examples/master/colorline.ipynb , In[4], you can add something like:

``````x = np.linspace(0, 4.*np.pi, 1000)
y = np.sin(x)
z = np.zeros(1000)
for i in range(1000):
if math.cos(x[i])>0.7:
z[i]=1

fig, axes = plt.subplots()

colorline(x, y, z)

plt.xlim(x.min(), x.max())
plt.ylim(-1.0, 1.0)
plt.show()
``````
-