Bayesian system identification, including parameter estimation and model selection, is widely used to infer partially known, unobservable parameters of the models of physical systems when measurement data is available. A common assumption in the Bayesian system identification literature is that the discrepancy between model predictions and measurements can be described as independent, identically distributed realizations from a univariate Gaussian distribution. However, the decreasing cost of sensors and monitoring systems leads to more frequent structural measurements in close proximity to each other (e.g. fiber optics and strain gauges). In such cases, dependency in modeling uncertainty could be significant, both in space and time, and th...
When performing structural health monitoring, the design of an optimal sensor configuration aims at ...
We focus on a Bayesian inference framework for finite element (FE) model updating of a long-span cab...
Bayesian system identification has attracted substantial interest in recent years for inferring stru...
Bayesian system identification, including parameter estimation and model selection, is widely used t...
Bayesian system identification has been extensively adopted in Structural Health Monitoring as a way...
The ability to rapidly assess the condition of a structure in a manner which enables the accurate pr...
A new probabilistic finite element (FE) model updating technique based on Hierarchical Bayesian mode...
System identification aims at updating the model parameters (e.g. mass and stiffness) associated wi...
Large civil infrastructure such as long suspension bridges are critical connecting elements, whose b...
A new probabilistic finite element (FE) model updating technique based on Hierarchical Bayesian mode...
Measurement error is non-negligible and crucial in SHM data analysis. In many applications of SHM, m...
Predicting the behaviour of various engineering systems is commonly performed using mathematical mod...
A general unifying approach to system identification is presented within a Bayesian statistical fra...
A unified Bayesian statistical framework is described for system identification which can be used to...
Bayesian inference provides a powerful approach to system identification and damage assessment for s...
When performing structural health monitoring, the design of an optimal sensor configuration aims at ...
We focus on a Bayesian inference framework for finite element (FE) model updating of a long-span cab...
Bayesian system identification has attracted substantial interest in recent years for inferring stru...
Bayesian system identification, including parameter estimation and model selection, is widely used t...
Bayesian system identification has been extensively adopted in Structural Health Monitoring as a way...
The ability to rapidly assess the condition of a structure in a manner which enables the accurate pr...
A new probabilistic finite element (FE) model updating technique based on Hierarchical Bayesian mode...
System identification aims at updating the model parameters (e.g. mass and stiffness) associated wi...
Large civil infrastructure such as long suspension bridges are critical connecting elements, whose b...
A new probabilistic finite element (FE) model updating technique based on Hierarchical Bayesian mode...
Measurement error is non-negligible and crucial in SHM data analysis. In many applications of SHM, m...
Predicting the behaviour of various engineering systems is commonly performed using mathematical mod...
A general unifying approach to system identification is presented within a Bayesian statistical fra...
A unified Bayesian statistical framework is described for system identification which can be used to...
Bayesian inference provides a powerful approach to system identification and damage assessment for s...
When performing structural health monitoring, the design of an optimal sensor configuration aims at ...
We focus on a Bayesian inference framework for finite element (FE) model updating of a long-span cab...
Bayesian system identification has attracted substantial interest in recent years for inferring stru...