A Bayesian probabilistic approach is presented for selecting the most plausible class of models for a structural or mechanical system within some specified set of model classes, based on system response data. The crux of the approach is to rank the classes of models based on their probabilities conditional on the response data which can be calculated based on Bayes’ theorem and an asymptotic expansion for the evidence for each model class. The approach provides a quantitative expression of a principle of model parsimony or of Ockham’s razor which in this context can be stated as "simpler models are to be preferred over unnecessarily complicated ones." Examples are presented to illustrate the method using a single-degree-of-freedom bili...
AbstractThis paper presents a general probabilistic framework for handling both modeling and excitat...
A pragmatic and versatile statistical system identification framework is presented and applied to se...
This paper will introduce the use of the approximate Bayesian computation (ABC) algorithm for model ...
A Bayesian probabilistic approach is presented for selecting the most plausible class of models for ...
A general unifying approach to system identification is presented within a Bayesian statistical fra...
Identification of structural models from measured earthquake response can play a key role in structu...
n recent years, Bayesian model updating techniques based on measured data have been applied in struc...
A unified Bayesian statistical framework is described for system identification which can be used to...
System identification of structures using their measured earthquake response can play a key role in...
A Bayesian framework is presented for structural model selection and damage identification utilizing...
A Bayesian framework is presented for structural model selection and damage identification utilizing...
ABSTRACT: A Bayesian framework is presented for structural model selection and damage identification...
A fundamental issue when predicting structural response by using mathematical models is how to treat...
In recent years, Bayesian model updating techniques based on measured response data have been appli...
In recent years, Bayesian model updating techniques based on dynamic data have been applied in syste...
AbstractThis paper presents a general probabilistic framework for handling both modeling and excitat...
A pragmatic and versatile statistical system identification framework is presented and applied to se...
This paper will introduce the use of the approximate Bayesian computation (ABC) algorithm for model ...
A Bayesian probabilistic approach is presented for selecting the most plausible class of models for ...
A general unifying approach to system identification is presented within a Bayesian statistical fra...
Identification of structural models from measured earthquake response can play a key role in structu...
n recent years, Bayesian model updating techniques based on measured data have been applied in struc...
A unified Bayesian statistical framework is described for system identification which can be used to...
System identification of structures using their measured earthquake response can play a key role in...
A Bayesian framework is presented for structural model selection and damage identification utilizing...
A Bayesian framework is presented for structural model selection and damage identification utilizing...
ABSTRACT: A Bayesian framework is presented for structural model selection and damage identification...
A fundamental issue when predicting structural response by using mathematical models is how to treat...
In recent years, Bayesian model updating techniques based on measured response data have been appli...
In recent years, Bayesian model updating techniques based on dynamic data have been applied in syste...
AbstractThis paper presents a general probabilistic framework for handling both modeling and excitat...
A pragmatic and versatile statistical system identification framework is presented and applied to se...
This paper will introduce the use of the approximate Bayesian computation (ABC) algorithm for model ...