I read some x and y data from a file, convert to a float and put in separate arrays, then call a curve-fitting function from
It gives me different error messages depending on which equation I use (in the defined function). I have commented on the code after the equation I want to use, it is the top, uncommented equation (line 9).
I can understand why it might want a float rather than a string, yet my attempts at type-casting don't seem to have worked. My most common error is
TypeError: a float is required
If I try to pass it values not from reading in my file, but using
np.linspace as in an example I found on the scipy website, it gives me a different error.
I have commented errors on the code, I hope you find it unambiguous. I have also pasted the input text file I am using.
import sys import numpy as np import math as m from scipy.optimize import curve_fit def func( x, a, b ): return a*m.pow( x, 2 )*np.exp( -b*x ); #the function I want!: line 9 in funcTypeError: a float is required #return a*m.exp(-b*x) #line 10 in func TypeError: a float is required #return a*np.exp(-b*x) #Example equation. line 444 in _general_function #ValueError:operands could not be broadcast together with shapes #return a*b*m.pow( x, 2 ); #line 10 in func TypeError: a float is required #end def file = sys.argv; f = open( file ); y_array = ; x_array = ; for line in f: words = line.split(); x = words.rstrip('\r\n'); y = words.rstrip('\r\n'); x_array.append( float( x ) ); y_array.append( float( y ) ); #end for #data = f.read(); popt, pcov = curve_fit( func, x_array, y_array );
OR I try this from the example they give on the scipy website, with my above, uncommented, desired equation
x = np.linspace(0,4,50) y = func(x, 2.5, 1.3 ) yn = y + 0.2*np.random.normal(size=len(x)) popt, pcov = curve_fit(func, x, yn) #TypeError: only length-1 arrays can be converted to Python scalars.
input file (just a few lines, there is more). Two columns of numbers
352 28 423 30 494 32 565 3 636 0 707 0