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. ...
Virtually any performance analysis in stochastic modeling relies on input model assumptions that, to...
Metamodels are often used in simulation-optimization for the design and management of complex system...
In this work, metamodel-based robust optimization is performed using measured scatter of noise varia...
Robust optimization is being used in metal forming processes to select the design which is least sen...
In the real world of engineering problems, in order to reduce optimization costs in physical process...
One of the main stages of robust Engineering Design is the propagation of uncertainty in the compute...
Metamodeling techniques have been widely used in engineering design to improve efficiency in the sim...
In particular in the last decade, optimization under uncertainty has engaged attention in the mathem...
© 2015 Elsevier Ltd. All rights reserved. Dynamic optimization techniques for complex nonlinear syst...
Optimization of simulated systems is the goal of many techniques, but most of them assume known envi...
Computer simulations can help a rapid investigation of various alternative designs to decrease the ...
International audienceOptimization under uncertainty is a key problem in order to solve complex syst...
This research investigates the potential of using meta-modeling techniques in the context of robust ...
In the real world of engineering problems, in order to reduce optimization costs in ph...
Engineers agree with the fact that uncertainty is an important issue to get a better model of real b...
Virtually any performance analysis in stochastic modeling relies on input model assumptions that, to...
Metamodels are often used in simulation-optimization for the design and management of complex system...
In this work, metamodel-based robust optimization is performed using measured scatter of noise varia...
Robust optimization is being used in metal forming processes to select the design which is least sen...
In the real world of engineering problems, in order to reduce optimization costs in physical process...
One of the main stages of robust Engineering Design is the propagation of uncertainty in the compute...
Metamodeling techniques have been widely used in engineering design to improve efficiency in the sim...
In particular in the last decade, optimization under uncertainty has engaged attention in the mathem...
© 2015 Elsevier Ltd. All rights reserved. Dynamic optimization techniques for complex nonlinear syst...
Optimization of simulated systems is the goal of many techniques, but most of them assume known envi...
Computer simulations can help a rapid investigation of various alternative designs to decrease the ...
International audienceOptimization under uncertainty is a key problem in order to solve complex syst...
This research investigates the potential of using meta-modeling techniques in the context of robust ...
In the real world of engineering problems, in order to reduce optimization costs in ph...
Engineers agree with the fact that uncertainty is an important issue to get a better model of real b...
Virtually any performance analysis in stochastic modeling relies on input model assumptions that, to...
Metamodels are often used in simulation-optimization for the design and management of complex system...
In this work, metamodel-based robust optimization is performed using measured scatter of noise varia...