Azzera filtri
Azzera filtri

how to use fitnlm with constraints

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I have a custom equation and want to fit its coeffients.
coefficients are k
x is data
Equation is as follows:
modelfun = @(k,x) k(1).*x(:,1)+k(2).*log10(x(:,2) +k(3).*x(:,3)^2)
Kinit is vector of initial variables that I give
tbl contains my data x
I fit like this:
mdl = fitnlm(tbl,modelfun,Kinit);
I want to impose certain contraints on coefficients,
i.e.,
k(1) should be between 20 and 40
k(2) should be positive
k(3) should be negative.
How can I do that?
Thanks a lot for helping me out.
  2 Commenti
Walter Roberson
Walter Roberson il 11 Mar 2023
log10*x(:,2)
could you confirm that you assigned a value to log10 such that you can multiply it by an input? Or did you miss some () ?
Haneya Qureshi
Haneya Qureshi il 11 Mar 2023
Modificato: Haneya Qureshi il 11 Mar 2023
@Walter Roberson sorry, i missed brackets..the function is definitely non-linear.
modelfun = @(k,x) k(1).*x(:,1)+k(2).*log10(x(:,2) +k(3).*x(:,3)^2)

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Walter Roberson
Walter Roberson il 11 Mar 2023
No, fitnlm does not provide any way to put in constraitns.
You might consider lsqcurvefit from the Optimization Toolbox. Or you could consider using the Curve Fitting Toolbox; https://www.mathworks.com/help/curvefit/linear-and-nonlinear-regression.html
  9 Commenti
Walter Roberson
Walter Roberson il 11 Mar 2023
Ah, yes. Curve Fitting Toolbox can support functions of two variables, creating a surface fit, but that is not enough for your purposes.
You could consider creating a residue function,
residue = @(k) sum((k(1) * x(:,1) + k(2) * log10(x(:,2)) + k(3)*x(:,3).^2) - Y).^2)
and minimizing that sum-of-squares using fmincon.
Haneya Qureshi
Haneya Qureshi il 12 Mar 2023
Got it, makes sense! Thanks so much!

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