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I've got the following code in lti transient response analysis using Python(numpy, scipy, matplotlib). I am new in python. I have a transfer matrix which I have to plot.

I came across mathwork: tf. I am trying as follows:

from numpy import min, max
from scipy import linspace
from scipy.signal import lti, step, impulse

num00 = [0.0]
den00 = [0.0]

num01 = [-2383.3]
den01 = [1.0,160.3460,-1962.0,-314598.852]

num10 = [1.0]
den10 = [1.0]

num11 = [31.9361,0,111320.0]
den11 = [1.0,160.3460,-1962.0,-314598.852]

num = [[num00,num01],[num10,num11]]
den = [[den00,den01],[den10,den11]]

tf = lti(num,den)

t = 0    
s = 0

# get t = time, s = unit-step response
t , s = step(tf)

t , s = step(tf, T = linspace(min(t), t[-1], 1000))

t , i = impulse(tf, T = linspace(min(t), t[-1], 1000))

from matplotlib import pyplot as plt

plt.plot(t, s, t, i)

plt.title('Transient-Response Analysis')
plt.xlabel('Time(sec)')
plt.ylabel('Amplitude')
plt.hlines(1, min(t), max(t), colors='r')
plt.hlines(0, min(t), max(t))
plt.xlim(xmax=max(t))
plt.legend(('Unit-Step Response', 'Unit-Impulse Response'), loc=0)
plt.grid()
plt.show()

I am getting following error:

>>> tf = lti(num,den)
Traceback (most recent call last):
  File "<stdin>", line 1, in <module>
  File "C:\Python26\lib\site-packages\scipy\signal\ltisys.py", line 236, in __init__self.__dict__['num'], self.__dict__['den'] = normalize(*args)
  File "C:\Python26\lib\site-packages\scipy\signal\filter_design.py", line 276, in normalize raise ValueError("Denominator polynomial must be rank-1 array.") ValueError: Denominator polynomial must be rank-1 array.
share|improve this question
    
As the response to your comment on the linked blog says, you need a numpy.array, not a list. Have you gone through the numpy tutorial? –  Wooble Feb 21 '12 at 11:21
    
num00 = np.array(0.0) den00 = np.array(0.0) num01 = np.array(-2383.3) den01 = np.array([1.0,160.3460,-1962.0,-314598.852]) num10 = np.array([1.0]) den10 = np.array([1.0]) num11 = np.array([31.9361,0,111320.0]) den11 = np.array([1.0,160.3460,-1962.0,-314598.852]) num0010 = np.array([num00,num10]) num0011 = np.array([num01,num11]) From here its list only. Seems variables can't be changed to array. –  Rick2047 Feb 21 '12 at 13:33
    
Now I did as follows : num = np.array([[[0.0], [1.0]],[[-2383.3 ],[31.9361,0,111320.0 ]]]) den = np.array([[[0.0], [1.0]],[[1.0,160.3460,-1962.0,-314598.852],[1.0,160.3460,-1962.0,-314598.852]]]) tf = lti(num,den) still its the same. :| –  Rick2047 Feb 21 '12 at 14:24

1 Answer 1

Part of the problem is that the num/den you are passing is not a well formed matrix. In your code you have:

num01 = [-2383.3]
den01 = [1.0,160.3460,-1962.0,-314598.852]

This will not work very well because as far as numpy is concerned you're trying to create a matrix, I realize it's only one component of the transfer function matrix, with only 1 element in the numerator and four in the denominator. So you would need something like:

num01 = [  0,       0,      0,-2383.3]

Either that or you meant to have an extremely high order numerator. When I try to step that I get: Step Which is probably not what you expect. I would also recommend looking into the python-control package. Of course you'll need to get all the prerequists for that package like the SLICOT python package. I do believe that it will ultimately serve you well.

share|improve this answer
    
I tried as, as u mentioned. Same. I am trying from ss(a,b,c,d). Now m stuck with ImportError: No module named slycot. my system is MIMO. –  Rick2047 Feb 23 '12 at 14:27
    
@Rahul2047 See my edit. –  macduff Feb 23 '12 at 14:49

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