Instrumentation of infrastructure is changing the way engineers design, construct, monitor and maintain structures such as roads, bridges and underground structures. Data gathered from these instruments have changed the hands-on assessment of infrastructure behaviour to include data processing and statistical analysis procedures. Engineers wish to understand the behaviour of the infrastructure and detect changes – for example, degradation – but are now using high-frequency data acquired from a sensor network. Presented in this paper is a case study that models and analyses in real time the dynamic strain data gathered from a railway bridge which has been instrumented with fibre-optic sensor networks. The high frequency of the data combined with the large number of sensors requires methods that efficiently analyse the data. First, automated methods are developed to extract train passage events from the background signal and underlying trends due to environmental effects. Second, a streaming statistical model which can be updated efficiently is introduced that predicts strain measurements forward in time. This tool is enhanced to provide anomaly detection capabilities in individual sensors and the entire sensor network. These methods allow for the practical processing and analysis of large data sets. The implementation of these contributions will be essential for demonstrating the value of self-sensing structures.
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29 June 2018
Research Article|
June 29 2018
Real-time statistical modelling of data generated from self-sensing bridges Available to Purchase
F Din-Houn Lau, MSci (Hon), PhD
;
Department of Mathematics, Imperial College London, London, UK
The Lloyd’s Register Foundation Programme on Data-centric Engineering, The Alan Turing Institute, London, UK
(corresponding author: dhl@imperial.ac.uk)
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Liam J Butler, BASc, PhD, PEng;
Liam J Butler, BASc, PhD, PEng
Research Associate, Group Leader
The Lloyd’s Register Foundation Programme on Data-centric Engineering
The Alan Turing Institute, London, UK; Cambridge Centre for Smart Infrastructure and Construction, Department of Engineering, University of Cambridge, Cambridge, UK
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Niall M Adams, BSc (Hon), PhD, CStat;
Niall M Adams, BSc (Hon), PhD, CStat
Professor
Department of Mathematics, Imperial College London, London, UK; Data Science Institute, Imperial College London, London, UK
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Mohammed Z E B Elshafie, BSc (Hon), MPhil (Cantab), PhD (Cantab);
Mohammed Z E B Elshafie, BSc (Hon), MPhil (Cantab), PhD (Cantab)
Senior Lecturer, Visiting Professor
Cambridge Centre for Smart Infrastructure and Construction, Department of Engineering, University of Cambridge, Cambridge, UK
Department of Civil and Architectural Engineering, Qatar University, Doha, Qatar
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Mark A Girolami, BSc (Hon), PhD, FRSE
Mark A Girolami, BSc (Hon), PhD, FRSE
Chair in Statistics
Department of Mathematics, Imperial College London, London, UK; The Lloyd’s Register Foundation Programme on Data-centric Engineering, The Alan Turing Institute, London, UK
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(corresponding author: dhl@imperial.ac.uk)
Publisher: Emerald Publishing
Received:
October 30 2017
Accepted:
May 14 2018
ICE Publishing: All rights reserved
2018
Proceedings of the Institution of Civil Engineers - Smart Infrastructure and Construction (2018) 171 (1): 3–13.
Article history
Received:
October 30 2017
Accepted:
May 14 2018
Citation
Din-Houn Lau F, Butler LJ, Adams NM, Elshafie MZEB, Girolami MA (2018), "Real-time statistical modelling of data generated from self-sensing bridges". Proceedings of the Institution of Civil Engineers - Smart Infrastructure and Construction, Vol. 171 No. 1 pp. 3–13, doi: https://doi.org/10.1680/jsmic.17.00023
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