How to use Genetic Algorithm (GA) for multi-objective function (Dynamic Optimization)?

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I need to optimize this multiobjective function using GA:
Z=min(2X+Y);
X= sum (a1+b1+c1-d1+(N1/S))
Y= sum (a2+b2+c2-d2+(N2/S))
All other variables are known (however, dynamically changed), excepted (b1,b2) which needed to optimized to get the optimal value of (Z)

Accepted Answer

Alan Weiss
Alan Weiss on 11 Jan 2018
This does not look like a multiobjective problem to me. You have a single scalar objective Z. Furthermore, it seems to be an unbounded problem, with no finite minimum (I mean it seems that b1 and b2 could take the values -Inf, and then Z would also have the value -Inf, which is the minimum).
If I misunderstand, feel free to clarify.
Alan Weiss
MATLAB mathematical toolbox documentation
  11 Comments
Sherif Shokry
Sherif Shokry on 25 Jan 2018
I think the function (fmincon) is not appropriate to my case. In my case I'm seeking (b) variables which achieve the optimal (y). However, if I understood correctly (fmincon) finds (y) variables that achieve optimal (b).
Walter Roberson
Walter Roberson on 25 Jan 2018
"However, if I understood correctly (fmincon) finds (y) variables that achieve optimal (b)."
No, fmincon seeks the inputs that give the lowest outputs.
However, fmincon is a local minimizer -- it gets stuck in local minima.
"this process aims to input the variable values into the fitness function since this variables is in a dynamic iteration and the fitness function is done iteratively"

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