Smart Structures and Systems

Volume 29, Number 1, 2022, pages 53-62

DOI: 10.12989/sss.2022.29.1.053

Data anomaly detection for structural health monitoring using a combination network of GANomaly and CNN

Gaoyang Liu, Yanbo Niu, Weijian Zhao, Yuanfeng Duan and Jiangpeng Shu

Abstract

The deployment of advanced structural health monitoring (SHM) systems in large-scale civil structures collects large amounts of data. Note that these data may contain multiple types of anomalies (e.g., missing, minor, outlier, etc.) caused by harsh environment, sensor faults, transfer omission and other factors. These anomalies seriously affect the evaluation of structural performance. Therefore, the effective analysis and mining of SHM data is an extremely important task. Inspired by the deep learning paradigm, this study develops a novel generative adversarial network (GAN) and convolutional neural network (CNN)-based data anomaly detection approach for SHM. The framework of the proposed approach includes three modules : (a) A three-channel input is established based on fast Fourier transform (FFT) and Gramian angular field (GAF) method; (b) A GANomaly is introduced and trained to extract features from normal samples alone for class-imbalanced problems; (c) Based on the output of GANomaly, a CNN is employed to distinguish the types of anomalies. In addition, a dataset-oriented method (i.e., multistage sampling) is adopted to obtain the optimal sampling ratios between all different samples. The proposed approach is tested with acceleration data from an SHM system of a long-span bridge. The results show that the proposed approach has a higher accuracy in detecting the multi-pattern anomalies of SHM data.

Key Words

convolutional neural network; data anomaly detection; generative adversarial network; Gramian angular field; long-span bridge; structural health monitoring

Address

(1) Gaoyang Liu, Yanbo Niu, Weijian Zhao, Yuanfeng Duan, Jiangpeng Shu: College of Civil Engineering and Architecture, Zhejiang University, Hangzhou 310058, P.R. China; (2) Gaoyang Liu: Center for Balance Architecture, Zhejiang University, Hangzhou 310058, P.R. China; (3) Yanbo Niu: The Architectural Design & Research Institute of Zhejiang University Co. Ltd., Hangzhou 310058, P.R. China.