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Mining high-frenquncy data and its application to structural health monitoring

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thesis
posted on 2018-11-08, 07:19 authored by DAWEI SUN
Structural health monitoring deploys various types of sensors on a structure to monitor the health status. The sensor data are high-frequency heterogeneous data, so a massive amount of data are generated each day. Our research aims to detect anomalies and to evaluate the health status of a structure online. This PhD project proposes four approaches to handle online anomaly detection and structural health evaluation, and these methods have been verified through empirical evaluations with public datasets and practical datasets. The proposed approaches help civil engineering field to identify risky circumstances early and to develop maintenance plans and recovery plans efficiently.

History

Campus location

Australia

Principal supervisor

Vincent Cheng-siong Lee

Additional supervisor 1

Ye Lu

Year of Award

2018

Department, School or Centre

Information Technology (Monash University Clayton)

Course

Doctor of Philosophy

Degree Type

DOCTORATE

Faculty

Faculty of Information Technology

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