UPDATE
To summarize my initial post below, I have difficulties plotting level sets of functions involving 'min' such as the following function :
def f(x,y):
return min(x,x-y,x**2,y+1)
Code I'm using to plot level sets is :
import matplotlib.pyplot as plt
import numpy as np
plt.ion()
x_ = np.linspace(-180,180,num=40)
y_ = np.linspace(-180,180,num=40)
x,y = np.meshgrid(x_,y_)
levels = f(x,y)
c = plt.contour(x,y,levels,50)
plt.colorbar()
plt.show()
which works fine for a function involving regular arithmetic operations (+,-,**,*,/). Using function f, I have this error :
ValueError: The truth value of an array with more than one element is ambiguous. Use a.any() or a.all()
pointing at the return line of f.
How can I plot the level sets of my function f ?
INITIAL POST
I'm trying to plot level sets of two functions f1 and f2 defined as follows :
A = -73.95, 48.73
L=180
######## f1
def distance(a,b):
""" a and b tuples """
return np.sqrt((a[0]-b[0])**2+(a[1]-b[1])**2)
def f1(x,y):
""" simple distance """
p = x,y
#print p
return distance(p,A)
######## f2
def images(p):
""" p tuple """
#print "len(p) in images : "+str(len(p))+"\n"
#print p
pHC = (p[0],p[1]+L)
pHR = (p[0]+L,p[1]+L)
pHL = (p[0]-L,p[1]+L)
pCR = (p[0]+L,p[1])
pCL = (p[0]-L,p[1])
pDC = (p[0],p[1]-L)
pDR = (p[0]+L,p[1]-L)
pDL = (p[0]-L,p[1]-L)
return pHC,pHR,pHL,pCR,pCL,pDC,pDR,pDL
def minD(p,focal):
"""
distance with images (p and focal are tuples)
"""
#print p
pHC,pHR,pHL,pCR,pCL,pDC,pDR,pDL = images(p)
dHC = distance(focal,pHC)
dHR = distance(focal,pHR)
dHL = distance(focal,pHL)
dCR = distance(focal,pCR)
dCL = distance(focal,pCL)
dDC = distance(focal,pDC)
dDR = distance(focal,pDR)
#print "len(dHC) : "+str(len(dHC))
#print "len(dHC[0]) : "+str(len(dHC[0]))
#print dHC
d = min([dHC,dHR,dHL,dCR,dCL,dDC,dDR,dDL,distance(p,focal)])
return d
def f2(phi,psi):
p = phi,psi
return minD(p,A)
Here's my code for plotting level sets :
import matplotlib.pyplot as plt
import numpy as np
plt.ion()
x_ = np.linspace(-180,180,num=40)
y_ = np.linspace(-180,180,num=40)
x,y = np.meshgrid(x_,y_)
levels1 = f1(x,y)
#levels2 = f2(x,y)
c = plt.contour(x,y,levels,50)
#c = plt.contour(x,y,levels2,50)
plt.colorbar()
plt.show()
My plot seems to be correct with the function f1 (at least there's no code errors). However, with function f2, I have an error at the line before the last of minD :
d = min([dHC,dHR,dHL,dCR,dCL,dDC,dDR,dDL,distance(p,focal)])
ValueError: The truth value of an array with more than one element is ambiguous. Use a.any() or a.all()
With some prints, I could find that the elements of the list on which I perform the min (in minD function) are arrays in the case of f2 and not single elements as for f1.
How can I plot level sets of function f2 ?
You want to call the numpy version of min, not python's version which is expecting numbers as an input and gives you the minimum of them--this is where the ValueError comes from. There are two version in numpy; np.min and np.minimum. np.min will give you the minimum value of an array (so a number) and np.minimum will do a point-wise minimum of the array (so another array). You want the latter.
Unfortunately, I don't think you can simply do np.minimum(array1, array2, array3) like to have above, so I think you need to nest the np.minimum calls. Though if will do this often, I think you can create a function that will nest these calls for you to make it easier to read. This is what I got and it seems to work:
def f(x,y):
return np.minimum(np.minimum(np.minimum(x,x-y),x**2),y+1)
plt.figure()
x_ = np.linspace(-180, 180, num=200)
y_ = np.linspace(-180, 180, num=200)
x,y = np.meshgrid(x_, y_)
levels = f(x, y)
c = plt.contour(x, y, levels, 50)
plt.colorbar()
This yields:

(note, I increased num from 40 to 200 to help matplotlib with the non-smooth parts)
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