How can I add constraint on variable in genetic algorithm which can take both discrete and continuous values.
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Himanshu Nagpal
on 25 Feb 2020
Commented: Himanshu Nagpal
on 26 Feb 2020
Hi everyone,
I am trying to solve an optimization problem using genetic algorithm. I am using the standard function "ga" for this. In the problem, the decision variable can take both discrete and continous values.
For example: Let a be the decision variable, it can take following values
a = {0, 1, 2, 6, 7,} and 45 <= a <= 85.
How can I represent this in [lb <= a <= ub]?
2 Comments
Sky Sartorius
on 25 Feb 2020
Can you tell us more about the application? Does this decision variable represent anything physical in the real world?
Accepted Answer
Alan Weiss
on 25 Feb 2020
You can represent this 0-or-in-a-range type of constraint by using an auxiliary variable. Suppose that your variable z can be in the continuous range [1,2] or else it can be zero (this is perfectly general by scaling the range). Set y = 0 means the variable is 0, or y = 1 means the variable is in its range. Then take y as an integer binary variable and x = y*z and minimize f(x).
Alan Weiss
MATLAB mathematical toolbox documentation
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