A multi-fidelity global metamodel is presented for uncertainty quantification of computationally expensive simulations. The multi-fidelity approximation is built as the sum of a low-fidelity-trained metamodel and the metamodel of the difference (error) between high- and low-fidelity simulations. The metamodel is based on dynamic stochastic radial basis functions, which provide the prediction along with the associated uncertainty. New training points are added where the prediction uncertainty is largest, according to an adaptive sampling procedure. The prediction uncertainty of both the low-fidelity and the error metamodel are considered for the adaptive training of the low- and high-fidelity metamodels, respectively. The method is applied t...
International audienceComplex computer codes are often too time expensive to be directly used to per...
In this paper a Two-Step approach is presented for uncertainty quantification for expensive problems...
International audienceA multi-fidelity (MF) active learning method is presented for design optimizat...
International audienceThe paper presents a study on five adaptive sampling methods of a multi-fideli...
There is a need to automate stochastic uncertainty quantification codes in the digital age. Problems...
The cost and turnaround time of the load calculation cycle in the design process of aircraft can be ...
Problems in turbomachinery computational fluid dynamics (CFD) are often characterized by nonlinear a...
This thesis provides insight on Uncertainty Quantification (UQ) and Global Sensitivity Analysis (GSA...
Discrete-event stochastic simulation is a powerful tool for understanding and evaluating complex sys...
This paper describes how to estimate the uncertainty of manoeuvring sea trial results without perfor...
International audienceComplex computer codes, as the ones used in thermal-hydraulic accident scenari...
The size and complexity of mathematical models used in many areas of science and engineering is ever...
Problems in turbomachinery computational fluid dynamics (CFD) are often characterized by nonlinear a...
International audienceComplex computer codes are often too time expensive to be directly used to per...
International audienceComplex computer codes are often too time expensive to be directly used to per...
International audienceComplex computer codes are often too time expensive to be directly used to per...
In this paper a Two-Step approach is presented for uncertainty quantification for expensive problems...
International audienceA multi-fidelity (MF) active learning method is presented for design optimizat...
International audienceThe paper presents a study on five adaptive sampling methods of a multi-fideli...
There is a need to automate stochastic uncertainty quantification codes in the digital age. Problems...
The cost and turnaround time of the load calculation cycle in the design process of aircraft can be ...
Problems in turbomachinery computational fluid dynamics (CFD) are often characterized by nonlinear a...
This thesis provides insight on Uncertainty Quantification (UQ) and Global Sensitivity Analysis (GSA...
Discrete-event stochastic simulation is a powerful tool for understanding and evaluating complex sys...
This paper describes how to estimate the uncertainty of manoeuvring sea trial results without perfor...
International audienceComplex computer codes, as the ones used in thermal-hydraulic accident scenari...
The size and complexity of mathematical models used in many areas of science and engineering is ever...
Problems in turbomachinery computational fluid dynamics (CFD) are often characterized by nonlinear a...
International audienceComplex computer codes are often too time expensive to be directly used to per...
International audienceComplex computer codes are often too time expensive to be directly used to per...
International audienceComplex computer codes are often too time expensive to be directly used to per...
In this paper a Two-Step approach is presented for uncertainty quantification for expensive problems...
International audienceA multi-fidelity (MF) active learning method is presented for design optimizat...