I'm trying to find optimized parameters for a model defined by an implicit function to fit a dataset using fsolve and lsqcurvefit. I have defined 3 functions in separate m-files: first one is a definition for the implicit function in 4 parameters to be defined, second one uses fsolve to find the roots of the implicit function defined and the third one uses lsqcurvefit to find optimized values for the four parameters. I naturally need to define good enough initial values for the parameters, but having tried various reasonable combinations, lsqcurvefit always runs for some 20-30 iterations (matlab prints out the vector values calculated with the solution found by fsolve after each iteration) and then prints
No solution found. fsolve stopped because the problem appears regular as measured by the gradient, but the vector of function values is not near zero as measured by the default value of the function tolerance. <stopping criteria details> ??? Error using ==> lsqcurvefit at 253 Function value and YDATA sizes are incommensurate. Error in ==> optimointi at 5 z = lsqcurvefit('laske_i',parametrit,V_vektori,I_vektori_mitattu,,,options);
I can't see how "Function value and YDATA sizes are incommensurate." suddenly, as the iteration first runs for 20-30 times. The values printed after each iteration are pretty much full of zeros (good fit), but the last few 'explode' from 0 to 1 (with a coefficient of several powers of ten). Any help on the error appreciated!