In a full Bayesian probabilistic framework for "robust" system identification, structural response predictions and performance reliability are updated using structural test data D by considering the predictions of a whole set of possible structural models that are weighted by their updated probability. This involves integrating h(θ)p(θ|D) over the whole parameter space, where θ is a parameter vector defining each model within the set of possible models of the structure, h(θ) is a model prediction of a response quantity of interest, and p(θ|D) is the updated probability density for θ, which provides a measure of how plausible each model is given the data D. The evaluation of this integral is difficult because the dimension of the parameter...
Probability logic with Bayesian updating provides a rigorous framework to quantify modeling uncertai...
A fundamental issue when predicting structural response by using mathematical models is how to treat...
The work here explores new numerical methods for supporting a Bayesian approach to parameter estimat...
In recent years, Bayesian model updating techniques based on measured data have been applied to syst...
The usual practice in system identification is to use system data to identify one model from a set ...
In a Bayesian probabilistic framework for system identification, the performance reliability for a ...
Bayesian updating is a powerful method to learn and calibrate models with data and observations. Bec...
A Markov chain simulation method based on the Metropolis-Hastings algorithm and simulated annealing...
The implementation of reliability methods in the framework of Bayesian model updating of structural ...
The problem of updating a structural model and its associated uncertamt1es by utilizing structural ...
This paper uses Bayesian updating of dynamic models of structures to perform all four levels of stru...
The problem of updating a structural model and its associated uncertainties by utilizing dynamic res...
The problem of updating a structural model and its associated uncertainties by utilizing dynamic res...
ABSTRACT: The objective of this work is to develop a general framework for updating predictive model...
Identification of structural models from measured earthquake response can play a key role in structu...
Probability logic with Bayesian updating provides a rigorous framework to quantify modeling uncertai...
A fundamental issue when predicting structural response by using mathematical models is how to treat...
The work here explores new numerical methods for supporting a Bayesian approach to parameter estimat...
In recent years, Bayesian model updating techniques based on measured data have been applied to syst...
The usual practice in system identification is to use system data to identify one model from a set ...
In a Bayesian probabilistic framework for system identification, the performance reliability for a ...
Bayesian updating is a powerful method to learn and calibrate models with data and observations. Bec...
A Markov chain simulation method based on the Metropolis-Hastings algorithm and simulated annealing...
The implementation of reliability methods in the framework of Bayesian model updating of structural ...
The problem of updating a structural model and its associated uncertamt1es by utilizing structural ...
This paper uses Bayesian updating of dynamic models of structures to perform all four levels of stru...
The problem of updating a structural model and its associated uncertainties by utilizing dynamic res...
The problem of updating a structural model and its associated uncertainties by utilizing dynamic res...
ABSTRACT: The objective of this work is to develop a general framework for updating predictive model...
Identification of structural models from measured earthquake response can play a key role in structu...
Probability logic with Bayesian updating provides a rigorous framework to quantify modeling uncertai...
A fundamental issue when predicting structural response by using mathematical models is how to treat...
The work here explores new numerical methods for supporting a Bayesian approach to parameter estimat...