I have coded a program which is performing parameter identification for measured data. The formula is

f = k0*x+c1*(x-x1)^e1+c2*(x-x2)^e2.

(It's presented this way, because I am not yet allowed to put pictures here)

I have to find the correct parameters for the formula and the parameters are k0, x,1, e1, c2, x2, e2. The linear part is easy to find. So I get k0 and x1.My first questions is: Is this code correct for the formula

```
x = [0.4,0.5,0.513,1.02,1.5,2,2.25,2.75,3,3.3,3.51,3.75,4,4.3,4.5,4.7]
y = [65,115,135,150,170,300,400,600,700,800,1064,1401,1935,2616,3697,4693]
x_np = np.array(x)
y_np = np.array(y)
p0 =(0.1,10)
def advance(x,c2,e2):
k0 = 166.801522505
c1 =0.195545880867
x1 = 0.3
x2 = 4.7
print c1
return k0*x+c1*np.power((x-x1),e1)+c2*np.power((x-x2),e2)
standard_fitting = scipy.optimize.curve_fit(advance, x_np, y_np, p0)
```

The second is that, my code is failing to do curve_fitting for this curve. If I print variables during the fitting, the Python interpeter prints only `nan`

.

`advance`

doesn't return anything, and`x2`

is undefined. – Warren Weckesser Dec 8 '13 at 20:43`return`

and`x2`

– Petri Seppänen Dec 8 '13 at 20:56`x`

and`y`

. And still the optimization algorithm cannot converge. – Petri Seppänen Dec 9 '13 at 20:48