I wanted to fit a geometric mapping parameter with some input/output (x,y) points. The model is very simple:
xp = x .+ k.*x.*(x.^2+y.^2)
yp = y .+ k.*y.*(x.^2+y.^2)
k is the only parameter, (x,y) is an input point and (xp,yp) is an output point. I formulated the input/output data array as:
x = [x for x=-2.:2. for y=-2.:2.]
y = [y for x=-2.:2. for y=-2.:2.]
in_data = [x y]
out_data = [xp yp]
However I'm confused about how to turn this into the LsqFit model, I tried:
k0=[0.]
@. model(x,p) = [x[:,1]+p[1]*x[:,1]*(x[:,1]^2+x[:,2]^2) x[:,2]+p[1]*x[:,2]*(x[:,1]^2+x[:,2]^2)]
ret = curve_fit(model, in_data, out_data, k0)
but got an error:
DimensionMismatch("dimensions must match: a has dims (Base.OneTo(25), Base.OneTo(2)), must have singleton at dim 2")
So the question is: is it possible to use LsqFit for multi-variate output? (even though this particular problem can be solved analytically)