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System Analysis and Control
An algorithm for detecting abnormal dike state based on wavelet transform and one-class classification of one-dimensional signals
A. P. Kozionova, A. L. Pyayta, I. I. Mokhova, Yu. P. Ivanovb a Siemens
b Saint-Petersburg State University of Aerospace Instrumentation
Abstract:
Dike conditions monitoring is a challenging task. Algorithms for dike anomaly detection are one of the key components of a dike condition monitoring system. Algorithms for anomaly detection have to detect anomalies in dike behaviour (abnormal behaviour) in an on-line mode based on measurements collected from sensors installed in the dike. A machine-learning-based algorithm presented in this paper is trained on historical data on the normal dike state because data for abnormal dike behaviour is not available and simulation is time-consuming. Detection of abnormal dike behaviour is done by applying a ‘neural clouds’ one-class classification method. The ‘neural clouds’ one-class classifier is used for estimating the nonlinear fuzzy membership function of normal behavior for features from wavelet decomposition. The application of a wavelet transform can detect abnormal dike behaviour hidden in the time-frequency signal properties. Algorithms were tested on real data of a dike located in Boston, United Kingdom.
Keywords:
anomaly detection, dike conditions monitoring, intelligent signal processing, wavelets, neural clouds, one-class classification.
Citation:
A. P. Kozionov, A. L. Pyayt, I. I. Mokhov, Yu. P. Ivanov, “An algorithm for detecting abnormal dike state based on wavelet transform and one-class classification of one-dimensional signals”, St. Petersburg Polytechnical University Journal. Computer Science. Telecommunication and Control Sys, 2015, no. 4(224), 59–69
Linking options:
https://www.mathnet.ru/eng/ntitu116 https://www.mathnet.ru/eng/ntitu/y2015/i4/p59
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Statistics & downloads: |
Abstract page: | 134 | Full-text PDF : | 53 | First page: | 27 |
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