how to put a vector in function
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hello all;
I want to write a function like below, and minimum it with "fminsearch" but I cant!
function F_m_p_cmp=fmp_cmp(cc)
mm=3
for ii=1:mm
for t=1:24
ex(ii,t)=cc(t)*(Uu(1,t,ii)+Uu(2,t,ii)+Uu(3,t,ii))+sum(Cc(:,t,ii))
end
end
expp=p*ex;
eexp=exp(expp);
F_m_p_cp=(1/p)*log10(sum(ex));
end
" cc" should be a 1 by 24 vector. could you please help me?
1 Kommentar
John D'Errico
am 15 Aug. 2014
Note that you will never be happy with trying to solve a 24 variable problem with fminsearch. It simply is NOT designed for that many unknowns. Use a better optimizer, such as fmincon or fminunc.
Antworten (1)
Star Strider
am 15 Aug. 2014
You have to define ‘cc’ as a (1x24) vector as your initial parameter estimate vector ( x0 in the documentation ) to fminsearch.
You also have to pass Uu, Cc and p to your ‘fmp_cpm’ function. If Uu, Cc and p are already in your workspace, I would create an anonymous objective function to do that.
First, rewrite your function statement as:
function F_m_p_cmp=fmp_cmp(cc, Uu, Cc, p)
then create your objective function as:
objfcn = @(cc) fmp_cmp(cc, Uu, Cc, p);
so your call to fminsearch becomes:
cc0 = rand(1,24); % Choose whatever (1x24) vector for ‘cc’ you want
cc_est = fminsearch(objfcn, cc0);
No promises because I can’t run your code, but this should get you started.
6 Kommentare
Star Strider
am 15 Aug. 2014
My pleasure!
You cannot set constraints with fminsearch. You can normalise them inside your fmp_cmp function with:
cc = cc/sum(cc);
as the first statement in the function, but this is not actually constraining them. I can’t help you with delta. I have no idea what you are doing.
If you want to optimise with constraints, you will have to use one of the Optimization Toolbox solvers such as fmincon.
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