Design of an automated and continuous framework is of paramount importance to structural health monitoring (SHM). This study proposes an innovative multi-task unsupervised learning method for early assessment of damage in large-scale bridge structures under long-term monitoring. This method entails three main tasks of data cleaning, data partitioning, and anomaly detection. The first task includes discarding missing data and providing outlier-free samples by developing an approach based on the well-known DBSCAN algorithm. Accordingly, this approach enforces the DBSCAN to generate two clusters, one of which contains outlier-free samples and the other one comprises outlier data. In the second task, the outlier-free samples are fed into spectr...
Monitoring of modal frequencies under an unsupervised learning framework is a practical strategy for...
The massive and autonomous structural health monitoring (SHM) of bridges is a problem that is of gro...
Continuous dynamic monitoring brings an important opportunity to evaluate the health and integrity o...
Design of an automated and continuous framework is of paramount importance to structural health moni...
Long-term monitoring brings an important benefit for health monitoring of civil structures due to co...
Environmental variability is a major challenging issue in bridge health monitoring because bridges a...
The most significant steps in vibration-based structural health monitoring (SHM) are to extract reli...
There is a need for reliable structural health monitoring (SHM) systems that can detect local and gl...
Distance-based anomaly detectors are among the most efficient unsupervised learning methods due to t...
This thesis aims to investigate the feasibility of developing a successful unsupervised Structural H...
Environmental variability is still a major challenge in structural health monitoring. Due to the sim...
Monitoring of modal frequencies under an unsupervised learning framework is a practical strategy for...
The massive and autonomous structural health monitoring (SHM) of bridges is a problem that is of gro...
Continuous dynamic monitoring brings an important opportunity to evaluate the health and integrity o...
Design of an automated and continuous framework is of paramount importance to structural health moni...
Long-term monitoring brings an important benefit for health monitoring of civil structures due to co...
Environmental variability is a major challenging issue in bridge health monitoring because bridges a...
The most significant steps in vibration-based structural health monitoring (SHM) are to extract reli...
There is a need for reliable structural health monitoring (SHM) systems that can detect local and gl...
Distance-based anomaly detectors are among the most efficient unsupervised learning methods due to t...
This thesis aims to investigate the feasibility of developing a successful unsupervised Structural H...
Environmental variability is still a major challenge in structural health monitoring. Due to the sim...
Monitoring of modal frequencies under an unsupervised learning framework is a practical strategy for...
The massive and autonomous structural health monitoring (SHM) of bridges is a problem that is of gro...
Continuous dynamic monitoring brings an important opportunity to evaluate the health and integrity o...