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http://dx.doi.org/10.12989/sss.2022.29.1.117

Data abnormal detection using bidirectional long-short neural network combined with artificial experience  

Yang, Kang (School of Civil Engineering, Key Laboratory of C&PC Structures of the Ministry of Education, Southeast University)
Jiang, Huachen (School of Civil Engineering, Key Laboratory of C&PC Structures of the Ministry of Education, Southeast University)
Ding, Youliang (School of Civil Engineering, Key Laboratory of C&PC Structures of the Ministry of Education, Southeast University)
Wang, Manya (School of Civil Engineering, Key Laboratory of C&PC Structures of the Ministry of Education, Southeast University)
Wan, Chunfeng (School of Civil Engineering, Key Laboratory of C&PC Structures of the Ministry of Education, Southeast University)
Publication Information
Smart Structures and Systems / v.29, no.1, 2022 , pp. 117-127 More about this Journal
Abstract
Data anomalies seriously threaten the reliability of the bridge structural health monitoring system and may trigger system misjudgment. To overcome the above problem, an efficient and accurate data anomaly detection method is desiderated. Traditional anomaly detection methods extract various abnormal features as the key indicators to identify data anomalies. Then set thresholds artificially for various features to identify specific anomalies, which is the artificial experience method. However, limited by the poor generalization ability among sensors, this method often leads to high labor costs. Another approach to anomaly detection is a data-driven approach based on machine learning methods. Among these, the bidirectional long-short memory neural network (BiLSTM), as an effective classification method, excels at finding complex relationships in multivariate time series data. However, training unprocessed original signals often leads to low computation efficiency and poor convergence, for lacking appropriate feature selection. Therefore, this article combines the advantages of the two methods by proposing a deep learning method with manual experience statistical features fed into it. Experimental comparative studies illustrate that the BiLSTM model with appropriate feature input has an accuracy rate of over 87-94%. Meanwhile, this paper provides basic principles of data cleaning and discusses the typical features of various anomalies. Furthermore, the optimization strategies of the feature space selection based on artificial experience are also highlighted.
Keywords
BiLSTM; data anomaly detection; feature extraction; long-span bridge; structural health monitoring;
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