Best Curve-Fitting Function
33 Ansichten (letzte 30 Tage)
Ältere Kommentare anzeigen
Owen Cheevers
am 7 Jul. 2022
Kommentiert: Owen Cheevers
am 7 Jul. 2022
There seems to be a ton of options available on MATLAB for curve-fitting, and I was wondering if there was an easy way to determine what function/ approach was best if I'm trying to fit a non-linear function with multiple unknown parameters to a data-set.
If it helps, the non-linear functional form I'm looking at for the moment is
where a and b are the varying parameters, x is the input data and y is the response data.
0 Kommentare
Akzeptierte Antwort
John D'Errico
am 7 Jul. 2022
Bearbeitet: John D'Errico
am 7 Jul. 2022
The "best" solver? Ii is the one you have access to, and the one you know how to use.
Fit is easy to use.
mdl = fittype('1/(a + b*x)','indep','x');
ab0 = [ ... ];
fittedmdl = fit(x,y,mdl,'start',ab0)
I've not supplied anything for ab0, since I don't have your data, or even a picture of it. But expect possibly bad results if you supply nothing, even though fit does not technically require starting estimates.
Oh, and fit needs the data to be in the form of COLUMN vectors, so x and y must both be column vectors.
Finally, you could probably obtain good starting values for the model:
1./y = a + b*x
using one line of code as:
ab0 = flip(polyfit(x(:),1./y(:),1));
While this would produce estimates of the parameters, I would point out that it does not properly deal with the error structure in the problem. But to then use those pre-estimates as starting values for fit, would probably be entirely reasonable. The flip in there is important, becausse polyfit will return the parameters in the wrong order for what fit will be expecting.
Weitere Antworten (0)
Siehe auch
Kategorien
Mehr zu Get Started with Curve Fitting Toolbox finden Sie in Help Center und File Exchange
Community Treasure Hunt
Find the treasures in MATLAB Central and discover how the community can help you!
Start Hunting!