Data-driven modelling for flood defence structure analysisPyayt, A.; Mokhov, I.I.; Kozionov, A.P.; Kusherbaeva, V.T.; Lang, B.; Krzhizhanovskaya, V.; Meijer, R.J.
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Download date: 10 May 2018
301Comprehensive Flood Risk Management -Klijn & Schweckendiek (eds) © 2013 Taylor & Francis Group, London, ISBN 978-0-415-62144-1 Data-driven modelling for flood defence structure analysis ABSTRACT: We present a data-driven modelling approach for detection of anomalies in flood defences (levees, dykes, dams, embankments) equipped with sensors. An auto-regressive linear model and feed-forward neural network were applied for modelling a transfer function between the sensors. This approach has been validated on a dike in Boston, UK-one of the pilot sites of the UrbanFlood projectthat showed both normal and abnormal sensor behaviour. Comparison of the linear and non-linear models is presented. The suggested model-based anomaly detection approach will extend functionality of the developed Artificial Intelligence component of the UrbanFlood Early Warning System.