Combining fsolve and lsqcurvefit
2 views (last 30 days)
Show older comments
Good evening,
I have a collection of experimental data (xi, yi) called (texp, rexp). I know that 'texp' must be derived from 'rexp' following:
t(i)=k(1)*integral(@(x) exp(-k(2)./(x.*log(x))), 1, r(i))
, being k(1) and k(2) parameters. So 'r(i)' is the upper integration limit. I need to find the values of k(1) and k(2) that best fits my model. My strategy is solving the equations 't(i)-texp=0' in 'r' with fsolve and fitting k(1) and k(2) with lsqcurvefit. I am trying this:
rteor=@(k,r) fsolve(@(r) arrayfun(@(T) k(1).*integral(@(x) exp(-k(2)./(x.*log(x))), 1, r)-T, texp), 1.0001);
x0=[2,6.12750];
k = lsqcurvefit(rteor, x0, texp, rexp)
which results on the following errors:
Error using lsqcurvefit (line 251)
Function value and YDATA sizes are not equal.
Thank you for your help!
6 Comments
Walter Roberson
on 6 Jun 2018
You can get rid of the warning by passing an options structure to fsolve to tell it to use Levenberg-Marquardt
However, that suggests that multiple equations are attempted to be solved simultaneously, which is likely an error at some point.
Hmmm... notice that lsqcurvefit is going to be passing vectors to the function, so you need to expect that r will be a vector. When I answered you in https://www.mathworks.com/matlabcentral/answers/403892-fitting-data-to-integral-function#comment_574988 I was careful to use different variable names, R vs r, to make it clear whether one was receiving a vector or scalar at that point.
Answers (0)
See Also
Community Treasure Hunt
Find the treasures in MATLAB Central and discover how the community can help you!
Start Hunting!