Mixed integer optimisation with genetic algorithm problem
1 visualizzazione (ultimi 30 giorni)
Mostra commenti meno recenti
Hi,
I'm trying to run setup an optimisation problem using a genetic algorithm with the following specification.
options = gaoptimset(@ga)
[x,fval,exitflag,output,population,scores] = ga(@alpha3_0,6,[0,0,0,1,-1,0],[0],[],[],[25,15,80,45,45,15],[80,15,150,200,200,100],[],[1, 2],options)
The aim is to have integer constraints on parameters 1 and 2 as well as the specified linear inequality.
According to the documentation this should be possible as it states that while equality constraints are not enforced but that the solver shouldn't have a problem with mixed integer problems and inequality constraints.
The results of this so far has been that the optimisation runs without any problems other than that the inequality constraint is completely ignored.
Any help would be greatly appreciated.
Cheers,
Calen
3 Commenti
Bob Hickish
il 17 Gen 2017
I am having a very similar problem 5 years on. http://uk.mathworks.com/matlabcentral/answers/320749-using-genetic-algorithm-ga-function-for-integer-and-linear-inequality-constrained-optimization-ca
Will update the above question if I find an answer (for other people looking into this).
Risposte (1)
Seth DeLand
il 4 Apr 2012
Hi Calen, The GA solver uses a penalty function when optimizing mixed-integer problems. The penalty function takes into account both the fitness function and the constraint violation. There's some more info here.
So it is possible for infeasible points to get evaluated, and they return a high value for the penalty function. You could try adjusting the PenaltyFactor and InitialPenalty values to increase the penalty applied to points that violate the constraint. This won't stop all infeasible points from being evaluated, but it will make their penalty value worse which hopefully results in the solver moving away from those points faster.
3 Commenti
suvrat
il 26 Gen 2014
i am facing the same problem could you please tell me how you work on this problem.
Vedere anche
Categorie
Scopri di più su Genetic Algorithm in Help Center e File Exchange
Prodotti
Community Treasure Hunt
Find the treasures in MATLAB Central and discover how the community can help you!
Start Hunting!