Novel Data Analytics for Developing Sensitive and Reliable Damage Indicators in Structural Health Monitoring
Access Status
Open access
Date
2022Supervisor
Jun Li
Hong Hao
Type
Thesis
Award
PhD
Metadata
Show full item recordFaculty
Science and Engineering
School
School of Civil and Mechanical Engineering
Collection
Abstract
This thesis focuses on developing novel data analytics and damage detection methods that are applicable to the condition assessment of civil engineering structures subjected to operational and environmental condition changes, nonlinearity and/or measurement noise. Comprehensive numerical and experimental studies validate the effectiveness and performance of using the proposed approaches for practical structural health monitoring applications.