Measurement error is non-negligible and crucial in SHM data analysis. In many applications of SHM, measurement errors are statistically correlated in space and/or in time for data from sensor networks. Existing works solely consider spatial correlation for measurement error. When both spatial and temporal correlation are considered simultaneously, the existing works collapse, as they do not possess a suitable form describing spatially and temporally correlated measurement error. In order to tackle this burden, this paper generalizes the form of correlated measurement error from spatial correlation only or temporal correlation only to spatial-temporal correlation. A new form of spatial-temporal correlation and the corresponding likelihood fu...
Although great advancements have been made in structural health monitoring (SHM) for civil structure...
Forward model-driven structural health monitoring (SHM) is an alternative approach to the two main c...
Statistical pattern recognition methodologies have gained considerable attention for Structural Heal...
Bayesian system identification, including parameter estimation and model selection, is widely used t...
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 paper investigates the role of model errors and parametric uncertainties in optimal or near opti...
Global health monitoring of a structure is approached by detecting any significant changes in its s...
A sensor failure will lead to sensor measurement distortion, and may reduce the reliability of the w...
Whenever parameter estimates are uncertain or observations are contaminated by measurement error, th...
Some general issues associated with on-line structural health monitoring are discussed. In order to...
In structural health monitoring (SHM), ‘data driven models’ are often applied to investigate the rel...
The presence of information redundancy allows to obtain an overall estimate by various relatively si...
This article deals with the effect of correlation on the estimates of measurement uncertainty, with ...
A Bayesian probabilistic methodology for on-line structural health monitoring which addresses the is...
Although great advancements have been made in structural health monitoring (SHM) for civil structure...
Forward model-driven structural health monitoring (SHM) is an alternative approach to the two main c...
Statistical pattern recognition methodologies have gained considerable attention for Structural Heal...
Bayesian system identification, including parameter estimation and model selection, is widely used t...
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 paper investigates the role of model errors and parametric uncertainties in optimal or near opti...
Global health monitoring of a structure is approached by detecting any significant changes in its s...
A sensor failure will lead to sensor measurement distortion, and may reduce the reliability of the w...
Whenever parameter estimates are uncertain or observations are contaminated by measurement error, th...
Some general issues associated with on-line structural health monitoring are discussed. In order to...
In structural health monitoring (SHM), ‘data driven models’ are often applied to investigate the rel...
The presence of information redundancy allows to obtain an overall estimate by various relatively si...
This article deals with the effect of correlation on the estimates of measurement uncertainty, with ...
A Bayesian probabilistic methodology for on-line structural health monitoring which addresses the is...
Although great advancements have been made in structural health monitoring (SHM) for civil structure...
Forward model-driven structural health monitoring (SHM) is an alternative approach to the two main c...
Statistical pattern recognition methodologies have gained considerable attention for Structural Heal...