During the last years, kriging has become one of the most popular methods in computer simulation and machine learning. Kriging models have been successfully used in many engineering applications, to approximate expensive simulation models. When many input variables are used, kriging is inefficient mainly due to an exorbitant computational time required during its construction. To handle high-dimensional problems (100+), one method is recently proposed that combines kriging with the Partial Least Squares technique, the so-called KPLS model. This method has shown interesting results in terms of saving CPU time required to build model while maintaining sufficient accuracy, on both academic and industrial problems. However, KPLS has provided a ...
International audienceKriging metamodeling (also called Gaussian Process regression) is a popular ap...
This article reviews Kriging (also called spatial correlation modeling). It presents the basic Krigi...
Response surfaces have been extensively used as a method of building effective surrogate models of h...
International audienceDuring the last years, kriging has become one of the most popular methods in c...
The Kriging surrogate model in complex simulation problems uses as few expensive objectives as possi...
International audienceEngineering computer codes are often compu- tationally expensive. To lighten t...
Kriging metamodeling (also called Gaussian Process regression) is a popular approach to predict the ...
Kriging metamodeling (also called Gaussian Process regression) is a popular approach to predict the ...
International audienceOur goal in the present article to give an insight on some important questions...
Kriging is one of the most widely used emulation methods in simulation. However, memory and time req...
The surrogate modelling technique known as Kriging, and its various derivatives, requires an optimiz...
Abstract: To analyze the input/output behavior of simulation models with multiple responses, we may ...
Many scientific disciplines use mathematical models to describe complicated real systems. Often, ana...
Abstract. Metamodelling decreases the computational effort of time-consuming computer simulations by...
Kriging metamodeling (also called Gaussian Process regression) is a popular approach to predict the ...
International audienceKriging metamodeling (also called Gaussian Process regression) is a popular ap...
This article reviews Kriging (also called spatial correlation modeling). It presents the basic Krigi...
Response surfaces have been extensively used as a method of building effective surrogate models of h...
International audienceDuring the last years, kriging has become one of the most popular methods in c...
The Kriging surrogate model in complex simulation problems uses as few expensive objectives as possi...
International audienceEngineering computer codes are often compu- tationally expensive. To lighten t...
Kriging metamodeling (also called Gaussian Process regression) is a popular approach to predict the ...
Kriging metamodeling (also called Gaussian Process regression) is a popular approach to predict the ...
International audienceOur goal in the present article to give an insight on some important questions...
Kriging is one of the most widely used emulation methods in simulation. However, memory and time req...
The surrogate modelling technique known as Kriging, and its various derivatives, requires an optimiz...
Abstract: To analyze the input/output behavior of simulation models with multiple responses, we may ...
Many scientific disciplines use mathematical models to describe complicated real systems. Often, ana...
Abstract. Metamodelling decreases the computational effort of time-consuming computer simulations by...
Kriging metamodeling (also called Gaussian Process regression) is a popular approach to predict the ...
International audienceKriging metamodeling (also called Gaussian Process regression) is a popular ap...
This article reviews Kriging (also called spatial correlation modeling). It presents the basic Krigi...
Response surfaces have been extensively used as a method of building effective surrogate models of h...