Modeling periodic phenomena with accuracy is a key aspect to detect abnormal behavior in time series for the context of Structural Health Monitoring. Modeling complex non-harmonic periodic pattern currently requires sophisticated techniques and significant computational resources. To overcome these limitations, this paper proposes a novel approach that combines the existing Bayesian Dynamic Linear Models with a kernel-based method for handling periodic patterns in time series. The approach is applied to model the traffic load on the Tamar Bridge and the piezometric pressure under a dam. The results show that the proposed method succeeds in modeling the stationary and non-stationary periodic patterns for both case studies. Also, it is comput...
Considering the uncertainties and randomness of the mass structural health monitored data, the objec...
Structural health monitoring relies on the repeated observation of damage-sensitive features such as...
We propose a novel Bayesian methodology for analyzing nonstationary time series that exhibit oscilla...
ABSTRACT: Modeling periodic phenomena with accuracy is a key aspect to detect abnormal behavior in t...
ABSTRACT: In Structural Health Monitoring, non-harmonic periodic hidden covariate typically arises w...
ABSTRACT: In several countries, infrastructure is in poor condition, and this situation is bound to ...
ABSTRACT: Detecting changes in structural behaviour, i.e. anomalies over time is an important aspect...
A time series is a sequence of data assigned to specifi c moments in time. Most statistical models a...
ABSTRACT: Bayesian Dynamic Linear Models (BDLM) are traditionally employed in the fields of applied ...
xix, 198 pages : color illustrationsPolyU Library Call No.: [THS] LG51 .H577P CEE 2017 WangDespite t...
Bridge health monitoring system has produced a huge amount of monitored data (extreme stress data, e...
International audienceWe consider the problem of detecting and quantifying the periodic component of...
Earthquakes, floods, rainfall represent a class of nonlinear systems termed chaotic, in which the re...
issue: 2articleAuthor's post-print subject to a Creative Commons Attribution Non-Commercial No Deriv...
Earthquakes, floods, rainfall represent a class of nonlinear systems termed chaotic, in which the re...
Considering the uncertainties and randomness of the mass structural health monitored data, the objec...
Structural health monitoring relies on the repeated observation of damage-sensitive features such as...
We propose a novel Bayesian methodology for analyzing nonstationary time series that exhibit oscilla...
ABSTRACT: Modeling periodic phenomena with accuracy is a key aspect to detect abnormal behavior in t...
ABSTRACT: In Structural Health Monitoring, non-harmonic periodic hidden covariate typically arises w...
ABSTRACT: In several countries, infrastructure is in poor condition, and this situation is bound to ...
ABSTRACT: Detecting changes in structural behaviour, i.e. anomalies over time is an important aspect...
A time series is a sequence of data assigned to specifi c moments in time. Most statistical models a...
ABSTRACT: Bayesian Dynamic Linear Models (BDLM) are traditionally employed in the fields of applied ...
xix, 198 pages : color illustrationsPolyU Library Call No.: [THS] LG51 .H577P CEE 2017 WangDespite t...
Bridge health monitoring system has produced a huge amount of monitored data (extreme stress data, e...
International audienceWe consider the problem of detecting and quantifying the periodic component of...
Earthquakes, floods, rainfall represent a class of nonlinear systems termed chaotic, in which the re...
issue: 2articleAuthor's post-print subject to a Creative Commons Attribution Non-Commercial No Deriv...
Earthquakes, floods, rainfall represent a class of nonlinear systems termed chaotic, in which the re...
Considering the uncertainties and randomness of the mass structural health monitored data, the objec...
Structural health monitoring relies on the repeated observation of damage-sensitive features such as...
We propose a novel Bayesian methodology for analyzing nonstationary time series that exhibit oscilla...