Recently there has been a growing interest in using response surface techniques to expedite the global optimization of functions calculated by long running computer codes. The literature in this area commonly assumes that the objective function is a smooth, deterministic function of the inputs. Yet it is well known that many computer simulations -- especially those of computational fluid and structural dynamics codes -- often display what one might call 'numerical noise': rather than lying on a smooth curve, results appear to contain a random scatter about a smooth trend. This paper extends previous optimization methods based on the interpolating method of kriging to the case of such 'noisy' computer experiments. Firstly, we review how the ...
This article is motivated by a computer experiment conducted for optimizing residual stresses in the...
This article addresses the issue of kriging-based optimization of stochastic simulators. Many of the...
Engineering design optimization often gives rise to problems in which expensive objective functions ...
Many discrete simulation optimization techniques are unsuitable when the number of feasible solution...
In this poster, we evaluate the effectiveness of four kriging-based approaches for simulation optimi...
Responses of many real-world problems can only be evaluated perturbed by noise. In order to make an ...
International audienceOur goal in the present article to give an insight on some important questions...
In this paper, we compare and contrast the use of second-order response surface models and kriging m...
In this article we investigate the unconstrained optimization (minimization) of the performance of a...
In this paper, we compare and contrast the use of second-order response surface models and kriging m...
<p>Computer experiments based on mathematical models are powerful tools for understanding physical p...
Our goal in the present work is to give an insight on some important questions to be asked when choo...
In this paper, we evaluate the effectiveness of four kriging-based approaches for simulation optimiz...
Kriging-based optimization relying on noisy evaluations of complex systems has recently motivated co...
Response surfaces are being used to create meta-models of expensive computer experiments (such as CF...
This article is motivated by a computer experiment conducted for optimizing residual stresses in the...
This article addresses the issue of kriging-based optimization of stochastic simulators. Many of the...
Engineering design optimization often gives rise to problems in which expensive objective functions ...
Many discrete simulation optimization techniques are unsuitable when the number of feasible solution...
In this poster, we evaluate the effectiveness of four kriging-based approaches for simulation optimi...
Responses of many real-world problems can only be evaluated perturbed by noise. In order to make an ...
International audienceOur goal in the present article to give an insight on some important questions...
In this paper, we compare and contrast the use of second-order response surface models and kriging m...
In this article we investigate the unconstrained optimization (minimization) of the performance of a...
In this paper, we compare and contrast the use of second-order response surface models and kriging m...
<p>Computer experiments based on mathematical models are powerful tools for understanding physical p...
Our goal in the present work is to give an insight on some important questions to be asked when choo...
In this paper, we evaluate the effectiveness of four kriging-based approaches for simulation optimiz...
Kriging-based optimization relying on noisy evaluations of complex systems has recently motivated co...
Response surfaces are being used to create meta-models of expensive computer experiments (such as CF...
This article is motivated by a computer experiment conducted for optimizing residual stresses in the...
This article addresses the issue of kriging-based optimization of stochastic simulators. Many of the...
Engineering design optimization often gives rise to problems in which expensive objective functions ...