I have two functions and a set of data. Both functions have the same x data and the same parameters. I want to obtain the parameters by least squares method that makes the best fit of my data.
The parameters are: ex,ey,ez.
The X data are: RA,DE (like 3000 points).
The Y data are: dRA,dDE.
I tried this but I obtained a wrong solution:
def residuals(p, dRA, dDE, RA, DEC): ex,ey,ez = p f1 = dRA-(ex*sin(DEC)*cos(RA)+ey*sin(DEC)*sin(RA)-ez*cos(DEC)) f2 = dDE-(-ex*sin(RA)+ey*cos(RA)) err = np.concatenate((f1,f2)) return err from scipy.optimize import leastsq p0 = [0, 0., 0.] plsq_coord = leastsq(residuals, p0, args=(dRA, dDE, RA, DE)) print plsq_coord
Any kind of help would be very wellcome