Non-linear curve fitting

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Filip Jackowski
Filip Jackowski il 5 Giu 2019
Modificato: Matt J il 5 Giu 2019
I apologize in advance if there there are similar cases of this question already getting answered, I tried following along but had trouble applying the given solutions to my own issue and would really appreciate a step-by-step solution.
I have a case where I've gathered experimental data, x and y where both x and y are vectors and im trying to fit it to the equation y = c1 + (c2*x)/(1 + c3*x)
I need to find a way to solve for c1, c2, and c3. Any help would be tremendously appreciated
  1 Commento
Stephan
Stephan il 5 Giu 2019
please provide the code you have tried so far.

Accedi per commentare.

Risposta accettata

Star Strider
Star Strider il 5 Giu 2019
You need to define your model function as a function, then use some optimization function to fit the parameters.
Example:
yfcn = @(c1,c2,c3,x) c1 + (c2.*x)./(1 + c3.*x); % Model Function (Objective Function)
x = rand(10,1); % Create Data
y = rand(10,1); % Create Data
[B,fval] = fminsearch(@(b) norm(y - yfcn(b(1),b(2),b(3),x)), [1; 2; 1]); % Estimate Parameters
C1 = B(1)
C2 = B(2)
C3 = B(3)
There are many other functions you can use to estimate the parameters, including fmincon, fminunc, nlinfit, lsqcurvefit, and ga, as well as many others. See the documentation for the various functions (including norm here) to understand how to use them.

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Matt J
Matt J il 5 Giu 2019
Modificato: Matt J il 5 Giu 2019
fminspleas would be good for this (Download Here)
c3_guess = ____; %As good a guess as you know of c3
flist={1,@(c3,x)x./(1+c3.*x)};
[c3,c12]=fminspleas(flist,c3_guess);
c=[c12,c3];

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