How to optimize two optimization variables within the same objective function?

16 vues (au cours des 30 derniers jours)
Sherif Shokry
Sherif Shokry le 8 Fév 2018
Commenté : Walter Roberson le 9 Fév 2018
I need to optimize (two optimization variables) as follow
f(x) min (X+Y) s.t (n,m)
y1 = sum(a1+n+c1-d1+(n1/S));
y2 = sum(a1+n+c1-d2+(n2/S));
y3 = sum(a1+n+c1-d3+(n3/S));
y4 = sum(a1+n+c1-d4+(n4/S));
y5 = sum(a1+n+c1-d5+(n5/S));
X = 0.125 * (y1 + y2+ y3+ y4+ y5);
y6 = sum(a2+m+c2-d6+(n6/S));
y7 = sum(a2+m+c2-d7+(n7/S));
y8 = sum(a2+m+c2-d8+(n8/S));
y9 = sum(a2+m+c2-d9+(n9/S));
Y= 0.25 * (y6 + y7+ y8+ y9);
fun = @(n,m)extension(n,m,a1,a2,c1,c2,d1,d2,d3,d4,d5,d6,d7,d8,d9,n1,n2,n3,n4,n5,n6,n7,n8,n9,S);
A = []; B = []; %linear inequality constrains
Aeq = []; beq = []; %linear equality constraints
lb = [0 0]; ub = [10 10];
  3 commentaires
Sherif Shokry
Sherif Shokry le 8 Fév 2018
Thanks a lot Mr. Torsten for your quick response.
To avoid Zeros solutions what is the apporpirate way to develop this objective fun??
John D'Errico
John D'Errico le 9 Fév 2018
How can you avoid a zero solution? You said you wanted a minimum. That is where the function is at its minimum value. "Developing the objective function" has no meaning. It is what it is.

Connectez-vous pour commenter.

Réponses (1)

John D'Errico
John D'Errico le 8 Fév 2018
Yes. I agree with Torsten. And just think! You saved the time of trying to figure that out with an optimizer.
Were you to try to use one, you need to create a VECTOR of length 2, containing the values of n and m. The optimizer will vary those values. But don't bother, since it is [0,0].
  5 commentaires
John D'Errico
John D'Errico le 9 Fév 2018
Yes, but you did not think about what I wrote. The minimum value of that objective function occurs at
b(1)=0, b(2)=0
There is no need to even use an optimizer to find that point.
You could use fmincon however. It should give you approximately [0,0] (though not exactly so. This is a numerical solver.) Why not try it? Use the code that you wrote.
Walter Roberson
Walter Roberson le 9 Fév 2018
"So these to values of X is the upper and lower limits??"
No, x(1) of the output of fmincon is the first variable and x(2) of the output of fmincon is your second variable. Those are not ranges for variables and they are not ranges of function values: they are the location that minimized the function.
If you were to modify to
[x, fval] = fmincon(fun,x0,A,b)
then the function value at that optimal location would also be output.

Connectez-vous pour commenter.

Tags

Aucun tag saisi pour le moment.

Community Treasure Hunt

Find the treasures in MATLAB Central and discover how the community can help you!

Start Hunting!

Translated by