This paper deals with parameter identification for expensive-to-simulate models, and presents a new strategy to address the resulting optimization problem in a context where the budget for simulations is severely limited. Based on Kriging, this approach computes an approximation of the probability distribution of the optimal parameter vector, and selects the next simulation to be conducted so as to optimally reduce the entropy of this distribution. A continuous-time state-space model is used to illustrate the method
This survey considers the optimization of simulated systems. The simulation may be either determinis...
A flexible non-intrusive approach to parametric uncertainty quantification problems is developed, ai...
http://uma.ensta-paristech.fr/files/diam/docro/roadef_2011/VERSION-ELECTRONIQUE/roadef2011_submissio...
This paper deals with parameter identification for expensive-to-simulate models, and presents a new ...
This article presents a novel heuristic for constrained optimization of computationally expensive ra...
International audienceRobust optimization is typically based on repeated calls to a deterministic si...
This article presents a novel heuristic for constrained optimization of computationally expensive ra...
Robust optimization is typically based on repeated calls to a deterministic simulation program that ...
This paper investigates two related questions: (1) How to derive a confidence interval for the outpu...
Robust analysis and optimization is typically based on repeated calls to a deterministic simulator t...
Kriging (or Gaussian Process) metamodels may be analyzed through bootstrapping, which is a versatile...
Abstract: This paper investigates two related questions: (1) How to derive a confidence interval for...
Kriging (Gaussian process, spatial correlation) metamodels approximate the Input/Output (I/O) functi...
Abstract: This article surveys optimization of simulated systems. The simulation may be either deter...
International audienceBayesian optimization uses a probabilistic model of the objective function to ...
This survey considers the optimization of simulated systems. The simulation may be either determinis...
A flexible non-intrusive approach to parametric uncertainty quantification problems is developed, ai...
http://uma.ensta-paristech.fr/files/diam/docro/roadef_2011/VERSION-ELECTRONIQUE/roadef2011_submissio...
This paper deals with parameter identification for expensive-to-simulate models, and presents a new ...
This article presents a novel heuristic for constrained optimization of computationally expensive ra...
International audienceRobust optimization is typically based on repeated calls to a deterministic si...
This article presents a novel heuristic for constrained optimization of computationally expensive ra...
Robust optimization is typically based on repeated calls to a deterministic simulation program that ...
This paper investigates two related questions: (1) How to derive a confidence interval for the outpu...
Robust analysis and optimization is typically based on repeated calls to a deterministic simulator t...
Kriging (or Gaussian Process) metamodels may be analyzed through bootstrapping, which is a versatile...
Abstract: This paper investigates two related questions: (1) How to derive a confidence interval for...
Kriging (Gaussian process, spatial correlation) metamodels approximate the Input/Output (I/O) functi...
Abstract: This article surveys optimization of simulated systems. The simulation may be either deter...
International audienceBayesian optimization uses a probabilistic model of the objective function to ...
This survey considers the optimization of simulated systems. The simulation may be either determinis...
A flexible non-intrusive approach to parametric uncertainty quantification problems is developed, ai...
http://uma.ensta-paristech.fr/files/diam/docro/roadef_2011/VERSION-ELECTRONIQUE/roadef2011_submissio...