Deep learning methods have recently shown great success in numerous fields, including finance, healthcare, linguistics, robotics and even cybersports. Unsupervised learning methods identify the dominant patterns of variability that shape a data set. Such patterns may correspond to well-understood processes, previously unknown clusters or anomalies. This paper presents a case study where a state-of-the-art family of unsupervised deep learning models called variational autoencoder (VAE) is applied to data accrued from a network of fibre-optic sensors installed within a composite steel–concrete half-through railway bridge. The goals were (a) to characterise automatically the behaviour of the bridge based on sensor measurements and, (b) based on this characterisation, to determine when a train passes across a bridge. Based on the VAE model, an algorithm is presented to identify automatically the ‘train event’ points in an unsupervised setting. Two architectures for the VAE model are compared with commonly used baselines. The architecture tailored for modelling sequential data is shown to outperform other methods considered, on both seen and unseen data. No special hyperparameter optimisation is required. This study illustrates how state-of-the-art deep learning methods can be applied to a civil infrastructure engineering problem without directly modelling the physics of the objects or performing tedious hyperparameter optimisation.
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12 October 2020
Research Article|
October 12 2020
Unsupervised deep-learning-powered anomaly detection for instrumented infrastructure Available to Purchase
Aleksandra Mikhailova
;
Department of Mathematics, Imperial College of Science, Technology and Medicine, London, UK
(corresponding author: a.mikhailova18@imperial.ac.uk)
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Niall M Adams
;
Niall M Adams
Professor of Statistics, Co-Director
Department of Mathematics, Imperial College of Science, Technology and Medicine, London, UK
Data Science Institute, Imperial College of Science, Technology and Medicine, London, UK
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Christopher A Hallsworth;
Christopher A Hallsworth
Senior Teaching Fellow in Statistics
Department of Mathematics, Imperial College of Science, Technology and Medicine, London, UK
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F Din-Houn Lau
;
F Din-Houn Lau
Lecturer in Statistics, Research Fellow
Department of Mathematics, Imperial College of Science, Technology and Medicine, London, UK
Lloyd’s Register Foundation Programme on Data-Centric Engineering, The Alan Turing Institute, London, UK
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Daniel N Jones
Daniel N Jones
Visiting Research Fellow
Mathematical Institute, University of Oxford, Oxford, UK
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(corresponding author: a.mikhailova18@imperial.ac.uk)
Publisher: Emerald Publishing
Received:
December 15 2019
Accepted:
September 14 2020
ICE Publishing: All rights reserved
2019
Proceedings of the Institution of Civil Engineers - Smart Infrastructure and Construction (2020) 172 (4): 135–147.
Article history
Received:
December 15 2019
Accepted:
September 14 2020
Citation
Mikhailova A, Adams NM, Hallsworth CA, Lau FD, Jones DN (2020), "Unsupervised deep-learning-powered anomaly detection for instrumented infrastructure". Proceedings of the Institution of Civil Engineers - Smart Infrastructure and Construction, Vol. 172 No. 4 pp. 135–147, doi: https://doi.org/10.1680/jsmic.19.00022
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