In Bayesian model updating, probability density functions of model parameters are updated accounting both for the information contained in the data and for uncertainties present in the measurements and model predictions, requiring a probabilistic model for the error between predictions and observations. Most often, a zero-mean uncorrelated Gaussian prediction error is assumed, although in many engineering applications prediction errors will show non-negligible spatial and/or temporal correlation (e.g. when densely populated sensor grids are used). In this paper, the effect of prediction error correlation on the results of the Bayesian model updating scheme is studied, and it is investigated how the challenging task of selecting a suitable p...
n recent years, Bayesian model updating techniques based on measured data have been applied in struc...
Whenever parameter estimates are uncertain or observations are contaminated by measurement error, th...
Modern statistical software and machine learning libraries are enabling semi-automated statistical i...
In Bayesian model updating, probability density functions of model parameters are updated accounting...
In Bayesian model updating, probability density functions of model parameters are updated accounting...
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...
The problem of updating a structural model and its associated uncertainties by utilizing dynamic res...
Measurement error is non-negligible and crucial in SHM data analysis. In many applications of SHM, m...
A stochastic system-based framework for Bayesian model updating of dynamic systems was presented i...
A stochastic system-based framework for Bayesian model updating of dynamic systems was presented i...
The problem of updating a structural model and its associated uncertamt1es by utilizing structural ...
The problem of updating a structural model and its associated uncertamt1es by utilizing structural ...
The problem of updating a structural model and its associated uncertamt1es by utilizing structural ...
n recent years, Bayesian model updating techniques based on measured data have been applied in struc...
n recent years, Bayesian model updating techniques based on measured data have been applied in struc...
Whenever parameter estimates are uncertain or observations are contaminated by measurement error, th...
Modern statistical software and machine learning libraries are enabling semi-automated statistical i...
In Bayesian model updating, probability density functions of model parameters are updated accounting...
In Bayesian model updating, probability density functions of model parameters are updated accounting...
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...
The problem of updating a structural model and its associated uncertainties by utilizing dynamic res...
Measurement error is non-negligible and crucial in SHM data analysis. In many applications of SHM, m...
A stochastic system-based framework for Bayesian model updating of dynamic systems was presented i...
A stochastic system-based framework for Bayesian model updating of dynamic systems was presented i...
The problem of updating a structural model and its associated uncertamt1es by utilizing structural ...
The problem of updating a structural model and its associated uncertamt1es by utilizing structural ...
The problem of updating a structural model and its associated uncertamt1es by utilizing structural ...
n recent years, Bayesian model updating techniques based on measured data have been applied in struc...
n recent years, Bayesian model updating techniques based on measured data have been applied in struc...
Whenever parameter estimates are uncertain or observations are contaminated by measurement error, th...
Modern statistical software and machine learning libraries are enabling semi-automated statistical i...