Statistical optimization of expensive multi-response black-box functions
Abstract
Assume that a set of P process parameters pi, i=1,…,P, determines the outcome of a set of D descriptor variables dj, j=1,…,D, via an unknown functional relationship φ: p d, \, RP RD, where p=(p1,…,pP), d=(d1,…,dD). It is desired to find appropriate values p = ( p1,…, pP) for the process parameters such that the corresponding values of the descriptor variables φ ( p) are close to a given target d*=(d*1,…,d*D), assuming that at least one exact solution exists. A sequential approach using dimension reduction techniques has been developed to achieve this. In a simulation study, results of the suggested approach and the algorithms NSGA-II, SMS-EMOA and MOEA/D are compared.
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