An efficient algorithm is proposed for Bayesian model calibration, which is commonly used to estimate the model parameters of non-linear, computationally expensive models using measurement data. The approach is based on Bayesian statistics: using a prior distribution and a likelihood, the posterior distribution is obtained through application of Bayes' law. Our novel algorithm to accurately determine this posterior requires significantly fewer discrete model evaluations than traditional Monte Carlo methods. The key idea is to replace the expensive model by an interpolating surrogate model and to construct the interpolating nodal set maximizing the accuracy of the posterior. To determine such a nodal set an extension to weighted Leja nodes i...
Computer models, aiming at simulating a complex real system, are often calibrated in the light of da...
The Bayesian framework for machine learning allows for the incorporation of prior knowledge in a coh...
The need for surrogate models and adaptive methods can be best appreciated if one is interested in p...
An efficient algorithm is proposed for Bayesian model calibration, which is commonly used to estimat...
An efficient algorithm is proposed for Bayesian model calibration, which is commonly used to estimat...
We present a Bayesian approach to model calibration when evaluation of the model is computationally ...
We present a Bayesian approach to model calibration when evaluation of the model is computationally ...
This work was supported by the SINDE (Research and Development System of the Catholic University of ...
We investigate a computer model calibration technique inspired by the wellknown Bayesian framework o...
We often want to learn about physical processes that are described by complex nonlinear mathematical...
International audienceWe investigate a computer model calibration technique inspired by the well-kno...
Abstract This paper proposes a novel fixed inducing points online Bayesian calibration (FIPO-BC)...
<p>Bayesian calibration is used to study computer models in the presence of both a calibration param...
International audienceModern science makes use of computer models to reproduce and predict complex p...
Approximation and uncertainty quantification methods based on Lagrange interpolation are typically a...
Computer models, aiming at simulating a complex real system, are often calibrated in the light of da...
The Bayesian framework for machine learning allows for the incorporation of prior knowledge in a coh...
The need for surrogate models and adaptive methods can be best appreciated if one is interested in p...
An efficient algorithm is proposed for Bayesian model calibration, which is commonly used to estimat...
An efficient algorithm is proposed for Bayesian model calibration, which is commonly used to estimat...
We present a Bayesian approach to model calibration when evaluation of the model is computationally ...
We present a Bayesian approach to model calibration when evaluation of the model is computationally ...
This work was supported by the SINDE (Research and Development System of the Catholic University of ...
We investigate a computer model calibration technique inspired by the wellknown Bayesian framework o...
We often want to learn about physical processes that are described by complex nonlinear mathematical...
International audienceWe investigate a computer model calibration technique inspired by the well-kno...
Abstract This paper proposes a novel fixed inducing points online Bayesian calibration (FIPO-BC)...
<p>Bayesian calibration is used to study computer models in the presence of both a calibration param...
International audienceModern science makes use of computer models to reproduce and predict complex p...
Approximation and uncertainty quantification methods based on Lagrange interpolation are typically a...
Computer models, aiming at simulating a complex real system, are often calibrated in the light of da...
The Bayesian framework for machine learning allows for the incorporation of prior knowledge in a coh...
The need for surrogate models and adaptive methods can be best appreciated if one is interested in p...