Computer simulations are often used to replace physical experiments aimed at exploring the complex relationships between input and output variables. Undoubtedly, computer experiments have several advantages over real ones, however, when the response function is complex, simulation runs may be very expensive and/or time-consuming, and a possible solution consist of approximating the simulator by a suitable stochastic metamodel, simpler and much faster to run. Several metamodel techniques have been suggested in the literature and one of the most popular is the Kriging methodology. In this paper we study the optimal design problem for the Universal Kriging metamodel with respect to different approaches, related to prediction, information gain ...
Kriging provides metamodels for deterministic and random simulation models. Actually, there are seve...
Kriging metamodeling (also called Gaussian Process regression) is a popular approach to predict the ...
The use of kriging metamodels in simulation optimization has become increasingly popular during rece...
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...
Nowadays it is common to reproduce physical systems using mathematical simulation models and, despit...
This article reviews Kriging (also called spatial correlation modeling). It presents the basic Krigi...
This article reviews the design and analysis of simulation experiments. It focusses on analysis via ...
We extend the basic theory of kriging, as applied to the design and analysis of deterministic comput...
Many scientific disciplines use mathematical models to describe complicated real systems. Often, ana...
ABSTRACT This paper presents a lognormal ordinary kriging (LOK) metamodel algorithm and i...
Scientists and engineers commonly use simulation models to study real systems for which actual exper...
Stochastic kriging has been widely employed for simulation metamodeling to predict the response surf...
This chapter surveys two methods for the optimization of real-world systems that are modelled throug...
Kriging provides metamodels for deterministic and random simulation models. Actually, there are seve...
Kriging provides metamodels for deterministic and random simulation models. Actually, there are seve...
Kriging metamodeling (also called Gaussian Process regression) is a popular approach to predict the ...
The use of kriging metamodels in simulation optimization has become increasingly popular during rece...
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...
Nowadays it is common to reproduce physical systems using mathematical simulation models and, despit...
This article reviews Kriging (also called spatial correlation modeling). It presents the basic Krigi...
This article reviews the design and analysis of simulation experiments. It focusses on analysis via ...
We extend the basic theory of kriging, as applied to the design and analysis of deterministic comput...
Many scientific disciplines use mathematical models to describe complicated real systems. Often, ana...
ABSTRACT This paper presents a lognormal ordinary kriging (LOK) metamodel algorithm and i...
Scientists and engineers commonly use simulation models to study real systems for which actual exper...
Stochastic kriging has been widely employed for simulation metamodeling to predict the response surf...
This chapter surveys two methods for the optimization of real-world systems that are modelled throug...
Kriging provides metamodels for deterministic and random simulation models. Actually, there are seve...
Kriging provides metamodels for deterministic and random simulation models. Actually, there are seve...
Kriging metamodeling (also called Gaussian Process regression) is a popular approach to predict the ...
The use of kriging metamodels in simulation optimization has become increasingly popular during rece...