The surrogate modelling technique known as Kriging, and its various derivatives, requires an optimization process to effectively determine the model’s defining parameters. This optimization typically involves the maximisation of a likelihood function which requires the construction and inversion of a correlation matrix dependent on the selected modelling parameters. The construction of such models in high dimensions and with a large numbers of sample points can, therefore, be considerably expensive. Similarly, once such a model has been constructed the evaluation of the predictor, error and other related design and model improvement criteria can also be costly. The following paper investigates the potential for graphical processing units to...
Kriging metamodeling (also called Gaussian Process regression) is a popular approach to predict the ...
Response surfaces have been extensively used as a method of building effective surrogate models of h...
Abstract: This paper investigates two related questions: (1) How to derive a confidence interval for...
The proliferation of surrogate modelling techniques have facilitated the application of expensive, h...
The use of surrogate models for approximating computationally expensive simulations has been on the ...
International audienceOur goal in the present article to give an insight on some important questions...
Surrogate models have become a popular choice to enable the inclusion of high-dimensional, physics-b...
The proliferation of surrogate modelling techniques have facilitated the application of expensive, h...
During the last years, kriging has become one of the most popular methods in computer simulation and...
Computer simulations are often used to replace physical experiments aimed at exploring the complex r...
Processes are so complex in many areas of science and technology that physical experimentation is of...
International audienceDuring the last years, kriging has become one of the most popular methods in c...
The use of Kriging surrogate models has become popular in approximating computation-intensive determ...
This paper investigates two related questions: (1) How to derive a confidence interval for the outpu...
Response surfaces are being used to create meta-models of expensive computer experiments (such as CF...
Kriging metamodeling (also called Gaussian Process regression) is a popular approach to predict the ...
Response surfaces have been extensively used as a method of building effective surrogate models of h...
Abstract: This paper investigates two related questions: (1) How to derive a confidence interval for...
The proliferation of surrogate modelling techniques have facilitated the application of expensive, h...
The use of surrogate models for approximating computationally expensive simulations has been on the ...
International audienceOur goal in the present article to give an insight on some important questions...
Surrogate models have become a popular choice to enable the inclusion of high-dimensional, physics-b...
The proliferation of surrogate modelling techniques have facilitated the application of expensive, h...
During the last years, kriging has become one of the most popular methods in computer simulation and...
Computer simulations are often used to replace physical experiments aimed at exploring the complex r...
Processes are so complex in many areas of science and technology that physical experimentation is of...
International audienceDuring the last years, kriging has become one of the most popular methods in c...
The use of Kriging surrogate models has become popular in approximating computation-intensive determ...
This paper investigates two related questions: (1) How to derive a confidence interval for the outpu...
Response surfaces are being used to create meta-models of expensive computer experiments (such as CF...
Kriging metamodeling (also called Gaussian Process regression) is a popular approach to predict the ...
Response surfaces have been extensively used as a method of building effective surrogate models of h...
Abstract: This paper investigates two related questions: (1) How to derive a confidence interval for...