Inequality constraints in genetic algorithm toolbox

I am working on an optimization problem using genetic algorithm toolbox. I would like to know if there is a difference in the way GA toolbox handles the equality and inequality constraints. The reason I ask this is that, when I provide the nonlinear equality constraints as inequalities (like it is done in mixed integer programming), I can see performance improvements. I am curious to know why there is a performance improvement by including the nonlinear constraints as inequalities instead of equalities.
Thanks, Bala

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Richiesto:

il 8 Set 2015

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