In this paper, we examine two widely-used approaches, the polynomial chaos expansion (PCE) and Gaussian process (GP) regression, for the development of surrogate models. The theoretical differences between the PCE and GP approximations are discussed. A state-of-the-art PCE approach is constructed based on high precision quadrature points; however, the need for truncation may result in potential precision loss; the GP approach performs well on small datasets and allows a fine and precise trade-off between fitting the data and smoothing, but its overall performance depends largely on the training dataset. The reproducing kernel Hilbert space (RKHS) and Mercer’s theorem are introduced to form a linkage between the two methods. The theorem has ...
Recently, the use of Polynomial Chaos Expansion (PCE) has been increasing to study the uncertainty i...
We generalise the Gaussian process (GP) framework for regression by learning a nonlinear transformat...
International audienceComputer simulation has become the standard tool in many engineering fields fo...
Complex computational models are used nowadays in all fields of applied sciences to predict the beha...
In this paper, we are interested in the numerical approximations of a transformation u of a set of i...
In surrogate modeling, polynomial chaos expansion (PCE) is popularly utilized to represent the rando...
Sparse polynomial chaos expansions (PCE) are a popular surrogate modelling method that takes advanta...
The polynomial chaos expansion (PCE) is an efficient numerical method for performing a reliability a...
Abstract. Metamodelling decreases the computational effort of time-consuming computer simulations by...
Performing uncertainty quantification for engineering systems typically requires a large number of e...
science and engineering in order to predict the behaviour of systems and, in case of engineering app...
In this article, multi-fidelity kriging and sparse polynomial chaos expansion (SPCE) surrogate model...
The role of simulation has kept increasing for the sensitivity analysis and the uncertainty quantifi...
This paper proposes a novel scheme for reduced-rank Gaussian process regression. The method is based...
This paper presents an algorithm for efficient uncertainty quantification (UQ) in the presence of ma...
Recently, the use of Polynomial Chaos Expansion (PCE) has been increasing to study the uncertainty i...
We generalise the Gaussian process (GP) framework for regression by learning a nonlinear transformat...
International audienceComputer simulation has become the standard tool in many engineering fields fo...
Complex computational models are used nowadays in all fields of applied sciences to predict the beha...
In this paper, we are interested in the numerical approximations of a transformation u of a set of i...
In surrogate modeling, polynomial chaos expansion (PCE) is popularly utilized to represent the rando...
Sparse polynomial chaos expansions (PCE) are a popular surrogate modelling method that takes advanta...
The polynomial chaos expansion (PCE) is an efficient numerical method for performing a reliability a...
Abstract. Metamodelling decreases the computational effort of time-consuming computer simulations by...
Performing uncertainty quantification for engineering systems typically requires a large number of e...
science and engineering in order to predict the behaviour of systems and, in case of engineering app...
In this article, multi-fidelity kriging and sparse polynomial chaos expansion (SPCE) surrogate model...
The role of simulation has kept increasing for the sensitivity analysis and the uncertainty quantifi...
This paper proposes a novel scheme for reduced-rank Gaussian process regression. The method is based...
This paper presents an algorithm for efficient uncertainty quantification (UQ) in the presence of ma...
Recently, the use of Polynomial Chaos Expansion (PCE) has been increasing to study the uncertainty i...
We generalise the Gaussian process (GP) framework for regression by learning a nonlinear transformat...
International audienceComputer simulation has become the standard tool in many engineering fields fo...