Predictive Maintenance of Civil Infrastructure with Multimodal Sensing, Machine Learning, and Numerical Modelling
thesis
posted on 2024-08-08, 06:35authored byHUAMEI ZHU
This body of work consists of four major areas following the hierarchical framework of Data, Information, Knowledge, and Wisdom: (1) Data acquisition: applications of multimodal sensors for the digitalisation and condition assessment in multiple environments; (2) Material level defect detection: machine learning-assisted detection of damages in steel and concrete infrastructure; (3) Asset-level condition assessment: holistic condition assessment and risk rating of infrastructure with Convolutional Neural Networks (CNNs); (4) Scenario-based performance prediction: long-term prediction of infrastructure responses with multi-physics modelling.