International audienceIn design of experiments for nonlinear regression model identification, the design criterion depends on the unknown parameters to be identified. Classical strategies consist in designing sequentially the experiments by alternating the estimation and design stages. These strategies consider previous observations (collected data) only while estimating the unknown parameters during the estimation stages. This paper proposes to consider the previous observations not only during the estimation stages, but also by the criterion used during the design stages. Furthermore, the proposed criterion considers the robustness requirement: an unknown model error (misspecification) is supposed to exist and is modeled by a kernel-based...
Classical regression analysis is usually performed in two steps. In a first step an appropriate mode...
Classical regression analysis is usually performed in two steps. In a first step an appropriate mode...
The aim of this thesis is to review and augment the theory and methods of optimal nonlinear experime...
International audienceIn design of experiments for nonlinear regression model identification, the de...
In design of experiments for nonlinear regression model identifica-tion, the design criterion depend...
International audienceIn design of experiments for nonlinear regression model identification, the de...
International audienceA new criterion for sequential design of experiments for linear regression mod...
International audienceA new criterion for sequential design of experiments for linear regression mod...
International audienceA new criterion for sequential design of experiments for linear regression mod...
International audienceThis paper presents the idea of sequential model-robust Design of Experiments ...
International audienceThis paper presents the idea of sequential model-robust Design of Experiments ...
Experimental designs for nonlinear problems have to a large extent relied on optimality criteria ori...
Experimental designs for nonlinear problems have to a large extent relied on optimality criteria ori...
Classical regression analysis is usually performed in two steps. In a first step an appropriate mode...
The aim of this thesis is to review and augment the theory and methods of optimal nonlinear experime...
Classical regression analysis is usually performed in two steps. In a first step an appropriate mode...
Classical regression analysis is usually performed in two steps. In a first step an appropriate mode...
The aim of this thesis is to review and augment the theory and methods of optimal nonlinear experime...
International audienceIn design of experiments for nonlinear regression model identification, the de...
In design of experiments for nonlinear regression model identifica-tion, the design criterion depend...
International audienceIn design of experiments for nonlinear regression model identification, the de...
International audienceA new criterion for sequential design of experiments for linear regression mod...
International audienceA new criterion for sequential design of experiments for linear regression mod...
International audienceA new criterion for sequential design of experiments for linear regression mod...
International audienceThis paper presents the idea of sequential model-robust Design of Experiments ...
International audienceThis paper presents the idea of sequential model-robust Design of Experiments ...
Experimental designs for nonlinear problems have to a large extent relied on optimality criteria ori...
Experimental designs for nonlinear problems have to a large extent relied on optimality criteria ori...
Classical regression analysis is usually performed in two steps. In a first step an appropriate mode...
The aim of this thesis is to review and augment the theory and methods of optimal nonlinear experime...
Classical regression analysis is usually performed in two steps. In a first step an appropriate mode...
Classical regression analysis is usually performed in two steps. In a first step an appropriate mode...
The aim of this thesis is to review and augment the theory and methods of optimal nonlinear experime...