International audienceThis paper presents a method for constructing optimal design of experiments (DoE) intended for building surrogate models using dimensionless (or non-dimensional) variables. In order to increase the fidelity of the model obtained by regression, the DoE needs to optimally cover the dimensionless space. However, in order to generate the data for the regression, one still needs a DoE for the physical variables, in order to carry out the simulations. Thus, there exist two spaces, each one needing a DoE. Since the dimensionless space is always smaller than the physical one, the challenge for building a DoE is that the relation between the two spaces is not bijective. Moreover, each space usually has its own domain constraint...
<p>Optimal designs depend upon a prespecified model form. A popular and effective model-robust alter...
Many complex real-world systems can be accurately modeled by simulations. However, high-fidelity sim...
In this paper, the authors compare a Monte Carlo method and an optimization-based approach using gen...
In many industrial applications, to cut down either the cost of natural experiments or the computati...
Optimization can be a time-consuming and demanding process when an analytical model of the system of...
A good experimental design in a non-parametric framework, such as Gaussian process modelling in comp...
In this paper we show that optimal design of experiments, a specific topic in statistics, constitute...
1noSurrogate modelling refers to statistical and numerical techniques to model the relationship betw...
In many industrial design applications, cutting down the cost of natural experiments or complex simu...
Abstract Optimal designs depend upon a prespecified model form. A popular and effective modelrobust ...
<p>Space-filling and noncollapsing are two important properties in designing computer experiments. W...
Estimation of surrogate models for computer experiments leads to nonparametric regression estimation...
The use of Surrogate Based Optimization (SBO) is widely spread in engineering design to find optimal...
A standard objective in computer experiments is to approximate the behaviour of an unknown function ...
Design of experiments (DoE) are used in various contexts such as optimization or uncertainty quantif...
<p>Optimal designs depend upon a prespecified model form. A popular and effective model-robust alter...
Many complex real-world systems can be accurately modeled by simulations. However, high-fidelity sim...
In this paper, the authors compare a Monte Carlo method and an optimization-based approach using gen...
In many industrial applications, to cut down either the cost of natural experiments or the computati...
Optimization can be a time-consuming and demanding process when an analytical model of the system of...
A good experimental design in a non-parametric framework, such as Gaussian process modelling in comp...
In this paper we show that optimal design of experiments, a specific topic in statistics, constitute...
1noSurrogate modelling refers to statistical and numerical techniques to model the relationship betw...
In many industrial design applications, cutting down the cost of natural experiments or complex simu...
Abstract Optimal designs depend upon a prespecified model form. A popular and effective modelrobust ...
<p>Space-filling and noncollapsing are two important properties in designing computer experiments. W...
Estimation of surrogate models for computer experiments leads to nonparametric regression estimation...
The use of Surrogate Based Optimization (SBO) is widely spread in engineering design to find optimal...
A standard objective in computer experiments is to approximate the behaviour of an unknown function ...
Design of experiments (DoE) are used in various contexts such as optimization or uncertainty quantif...
<p>Optimal designs depend upon a prespecified model form. A popular and effective model-robust alter...
Many complex real-world systems can be accurately modeled by simulations. However, high-fidelity sim...
In this paper, the authors compare a Monte Carlo method and an optimization-based approach using gen...