Engineering design optimization often gives rise to problems in which expensive objective functions are minimized by derivative-free methods. We propose a method for solving such problems that synthesizes ideas from the numerical optimization and computer experiment literatures. Our approach relies on kriging known function values to construct a sequence of surrogate models of the objective function that are used to guide a grid search for a minimizer. Results from numerical experiments on a standard test problem are presented
This research focuses on numerically solving a class of computationally expensive optimization probl...
Computational complexity is a serious bottleneck for the design process in virtually any engineering...
International audienceWorst-case design is important whenever robustness to adverse environmental co...
Engineering design optimization often gives rise to problems in which expensive objective functions ...
Engineering design optimization often gives rise to problems in which expensive objective functions ...
Engineering design optimization often gives rise to problems in which expensive objective functions ...
The goal of the research reported here is to develop rigorous optimization algorithms to apply to so...
A novel kriging-assisted algorithm is proposed for computationally expensive single-objective optimi...
Engineers have used numerical methods for optimizing simulations representing real world problems. M...
This paper presents a new sequential method for constrained non-linear optimization problems.The pri...
International audienceFor decades, numerical tool improvements enabled the optimization of complex p...
The modern engineering design optimization relies heavily on high- fidelity computer. Even though, ...
AbstractDirecting to the high cost of computer simulation optimization problem, Kriging surrogate mo...
The evaluation of aerospace designs is synonymous with the use of long running computationally inten...
The rapid development of artificial intelligence and computational sciences has attracted much more ...
This research focuses on numerically solving a class of computationally expensive optimization probl...
Computational complexity is a serious bottleneck for the design process in virtually any engineering...
International audienceWorst-case design is important whenever robustness to adverse environmental co...
Engineering design optimization often gives rise to problems in which expensive objective functions ...
Engineering design optimization often gives rise to problems in which expensive objective functions ...
Engineering design optimization often gives rise to problems in which expensive objective functions ...
The goal of the research reported here is to develop rigorous optimization algorithms to apply to so...
A novel kriging-assisted algorithm is proposed for computationally expensive single-objective optimi...
Engineers have used numerical methods for optimizing simulations representing real world problems. M...
This paper presents a new sequential method for constrained non-linear optimization problems.The pri...
International audienceFor decades, numerical tool improvements enabled the optimization of complex p...
The modern engineering design optimization relies heavily on high- fidelity computer. Even though, ...
AbstractDirecting to the high cost of computer simulation optimization problem, Kriging surrogate mo...
The evaluation of aerospace designs is synonymous with the use of long running computationally inten...
The rapid development of artificial intelligence and computational sciences has attracted much more ...
This research focuses on numerically solving a class of computationally expensive optimization probl...
Computational complexity is a serious bottleneck for the design process in virtually any engineering...
International audienceWorst-case design is important whenever robustness to adverse environmental co...