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Robust optimization based on analytical evaluation of uncertainty propagation
Authors:Omid Nejadseyfi  Hubert Geijselaers  Ton van den Boogaard
Affiliation:1. Faculty of Engineering Technology, University of Twente, Enschede, The Netherlandso.nejadseyfi@utwente.nl;3. Faculty of Engineering Technology, University of Twente, Enschede, The Netherlands
Abstract:Optimization under uncertainty requires proper handling of those input parameters that contain scatter. Scatter in input parameters propagates through the process and causes scatter in the output. Stochastic methods (e.g. Monte Carlo) are very popular for assessing uncertainty propagation using black-box function metamodels. However, they are expensive. Therefore, in this article a direct method of calculating uncertainty propagation has been employed based on the analytical integration of a metamodel of a process. Analytical handling of noise variables not only improves the accuracy of the results but also provides the gradients of the output with respect to input variables. This is advantageous in the case of gradient-based optimization. Additionally, it is shown that the analytical approach can be applied during sequential improvement of the metamodel to obtain a more accurate representative model of the black-box function and to enhance the search for the robust optimum.
Keywords:Robustness and sensitivity analysis  uncertainty modeling  sequential optimization  metamodel-based optimization
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