How to operate genetic algorithm optimization for output values in given range?

Hello!
I've got a problem when I want to optimize a fitted function with three variables. The output after the first iteration is already in a non-feasible range. A realistic output for my problem would be anywere above 0.5 but after the first iteration step it already gives me somewhat -4e14.
I now don't really now how to fix this problem as the FitnessLimit I set at 0.5 will never be able to work. How do I fix such a problem? I thought of adding an option which allows to operate the optimization in much smaller steps of output values to be able to reach the limit...
Thanks in advance!
opts = optimoptions('ga', 'PlotFcn',{@gaplotbestf,@gaplotstopping}, 'FitnessLimit', 0.5)
[k,fval, exitflag, output] = ga(fh,3,[],[],[],[],[LB(1) LB(2) LB(3)], [UB(1) UB(2) UB(3)],[], opts)

1 comentario

Matt J
Matt J el 30 de Ag. de 2018
Editada: Matt J el 30 de Ag. de 2018
Which "output" is violating desired bounds, k or fval? If it's fval, why shouldn't a FitnessLimit of 0.5 work?

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 Respuesta aceptada

I have two different but related comments:
1. If you have a feasibility constraint such as certain outputs have to be in a certain range, then include those constraints as nonlinear inequalities.
2. I think that you would have better luck if you would change your solver from ga to either fmincon (supposing that you have a smooth objective function) or pattersearch (supposing that your objective function is not smooth). See Table for Choosing a Solver.
Alan Weiss
MATLAB mathematical toolbox documentation

1 comentario

Thank you very much!
I tried fmincon and patternsearch and got the same results. Then I ploted my fitness function and realised that the function itself is wrong, I set one parameter wrong in polyfitn.
It wasn't the solution for my problem but helped me to solve it, thank you! From now on I'll plot every function to check it...

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el 30 de Ag. de 2018

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el 31 de Ag. de 2018

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