A hybrid genetic algorithm for multiresponse parameter optimization within desirability function framework

2009 
The desirability function method is widely used for simultaneous optimization of several independent or uncorrelated responses. In practical applications, a second-order polynomial is usually employed to represent each response based on RSM. Then a functional form for the overall desirability will be reached. The so-obtained overall desirability function is usually nondifferentiable, highly nonlinear and multimodal for practical problems, especially when there are quite a number of responses and design variables. This paper proposes a hybrid approach, which merges a global search procedure, the genetic algorithm, with a local search procedure, the pattern search method, to tackle this kind of problems. A numerical example from literature is discussed for illustrative purpose. Results reveal that the proposed approach has good convergence characteristics.
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