Gradient-enhanced Kriging (GE-Kriging) is a well-established surrogate modelling technique for approximating expensive computational models. However, it tends to get impractical for high-dimensional problems due to the large inherent correlation matrix and the associated high-dimensional hyper-parameter tuning problem. To address these issues, we propose a new method in this paper, called sliced GE-Kriging (SGE-Kriging) for reducing both the size of the correlation matrix and the number of hyper-parameters. Firstly, we perform a derivative-based global sensitivity analysis to detect the relative importance of each input variable with respect to model response. Then, we propose to split the training sample set into multiple slices, and invok...
Kriging metamodeling (also called Gaussian Process regression) is a popular approach to predict the ...
Adjoint-based gradient information has been successfully incorporated to create surrogate models of ...
AbstractConstructing high approximation accuracy surrogate model with lower computational cost has g...
The use of surrogate models for approximating computationally expensive simulations has been on the ...
Surrogate models have become a popular choice to enable the inclusion of high-dimensional, physics-b...
Multi-fidelity surrogate modelling offers an efficient way to approximate computationally expensive ...
The use of Kriging surrogate models has become popular in approximating computation-intensive determ...
The construction of a surrogate model for the purposes of design optimisation often involves some fo...
Kriging metamodeling (also called Gaussian Process regression) is a popular approach to predict the ...
This article uses a sequentialized experimental design to select simulation input combinations for g...
Optimizations involving high-fidelity simulations can become prohibitively expensive when an exhaust...
The Efficient Global Optimization (EGO) algorithm uses a conditional Gaus-sian Process (GP) to appro...
This paper uses a sequentialized experimental design to select simulation input com- binations for g...
Cokriging is a statistical interpolation method for the enhanced prediction of a less intensively sa...
Uncertainty Quantification and global Sensitivity Analysis problems are made more difficult in the c...
Kriging metamodeling (also called Gaussian Process regression) is a popular approach to predict the ...
Adjoint-based gradient information has been successfully incorporated to create surrogate models of ...
AbstractConstructing high approximation accuracy surrogate model with lower computational cost has g...
The use of surrogate models for approximating computationally expensive simulations has been on the ...
Surrogate models have become a popular choice to enable the inclusion of high-dimensional, physics-b...
Multi-fidelity surrogate modelling offers an efficient way to approximate computationally expensive ...
The use of Kriging surrogate models has become popular in approximating computation-intensive determ...
The construction of a surrogate model for the purposes of design optimisation often involves some fo...
Kriging metamodeling (also called Gaussian Process regression) is a popular approach to predict the ...
This article uses a sequentialized experimental design to select simulation input combinations for g...
Optimizations involving high-fidelity simulations can become prohibitively expensive when an exhaust...
The Efficient Global Optimization (EGO) algorithm uses a conditional Gaus-sian Process (GP) to appro...
This paper uses a sequentialized experimental design to select simulation input com- binations for g...
Cokriging is a statistical interpolation method for the enhanced prediction of a less intensively sa...
Uncertainty Quantification and global Sensitivity Analysis problems are made more difficult in the c...
Kriging metamodeling (also called Gaussian Process regression) is a popular approach to predict the ...
Adjoint-based gradient information has been successfully incorporated to create surrogate models of ...
AbstractConstructing high approximation accuracy surrogate model with lower computational cost has g...