DOI QR코드

DOI QR Code

Detection of multi-type data anomaly for structural health monitoring using pattern recognition neural network

  • Gao, Ke (School of Civil and Hydraulic Engineering, Huazhong University of Science and Technology) ;
  • Chen, Zhi-Dan (School of Civil and Hydraulic Engineering, Huazhong University of Science and Technology) ;
  • Weng, Shun (School of Civil and Hydraulic Engineering, Huazhong University of Science and Technology) ;
  • Zhu, Hong-Ping (School of Civil and Hydraulic Engineering, Huazhong University of Science and Technology) ;
  • Wu, Li-Ying (School of Civil and Hydraulic Engineering, Huazhong University of Science and Technology)
  • 투고 : 2021.04.14
  • 심사 : 2021.08.12
  • 발행 : 2022.01.25

초록

The effectiveness of system identification, damage detection, condition assessment and other structural analyses relies heavily on the accuracy and reliability of the measured data in structural health monitoring (SHM) systems. However, data anomalies often occur in SHM systems, leading to inaccurate and untrustworthy analysis results. Therefore, anomalies in the raw data should be detected and cleansed before further analysis. Previous studies on data anomaly detection mainly focused on just single type of data anomaly for denoising or removing outliers, meanwhile, the existing methods of detecting multiple data anomalies are usually time consuming. For these reasons, recognising multiple anomaly patterns for real-time alarm and analysis in field monitoring remains a challenge. Aiming to achieve an efficient and accurate detection for multi-type data anomalies for field SHM, this study proposes a pattern-recognition-based data anomaly detection method that mainly consists of three steps: the feature extraction from the long time-series data samples, the training of a pattern recognition neural network (PRNN) using the features and finally the detection of data anomalies. The feature extraction step remarkably reduces the time cost of the network training, making the detection process very fast. The performance of the proposed method is verified on the basis of the SHM data of two practical long-span bridges. Results indicate that the proposed method recognises multiple data anomalies with very high accuracy and low calculation cost, demonstrating its applicability in field monitoring.

키워드

과제정보

This work was financially supported by the grants from the National Natural Science Foundation of China (NSFC, contract number: 51922046, 51778258 and 51838006), Research Grants Council of the Hong Kong Special Administrative Region, China (Project No. PolyU 152621/16E), and the Research Funds from China Railway Eryuan Engineering Group CO.LTD (KYY2019029), and the Research Fund of China Railway Siyuan Survey and Design Group CO.LTD (contract number: 2020K006).

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