Smart Structures and Systems

Volume 29, Number 1, 2022, pages 105-116

DOI: 10.12989/sss.2022.29.1.105

Condition assessment of stay cables through enhanced time series classification using a deep learning approach

Zhiming Zhang, Jin Yan, Liangding Li, Hong Pan and Chuanzhi Dong

Abstract

Stay cables play an essential role in cable-stayed bridges. Severe vibrations and/or harsh environment may result in cable failures. Therefore, an efficient structural health monitoring (SHM) solution for cable damage detection is necessary. This study proposes a data-driven method for immediately detecting cable damage from measured cable forces by recognizing pattern transition from the intact condition when damage occurs. In the proposed method, pattern recognition for cable damage detection is realized by time series classification (TSC) using a deep learning (DL) model, namely, the long short term memory fully convolutional network (LSTM-FCN). First, a TSC classifier is trained and validated using the cable forces (or cable force ratios) collected from intact stay cables, setting the segmented data series as input and the cable (or cable pair) ID as class labels. Subsequently, the classifier is tested using the data collected under possible damaged conditions. Finally, the cable or cable pair corresponding to the least classification accuracy is recommended as the most probable damaged cable or cable pair. A case study using measured cable forces from an in-service cable-stayed bridge shows that the cable with damage can be correctly identified using the proposed DL-TSC method. Compared with existing cable damage detection methods in the literature, the DL-TSC method requires minor data preprocessing and feature engineering and thus enables fast and convenient early detection in real applications.

Key Words

bridge cable; damage detection; deep learning; time series classification

Address

(1) Zhiming Zhang: School for Engineering of Matter, Transport and Energy, Arizona State University, Tempe, AZ, USA; (2) Jin Yan: Palo Alto Research Center, Palo Alto, CA, USA; (3) Liangding Li: Department of Computer Science, University of Central Florida, Orlando, FL, USA; (4) Hong Pan: Department of Civil and Environmental Engineering, North Dakota State University, Fargo, ND, USA; (5) Chuanzhi Dong: Department of Civil, Environmental, and Construction Engineering, University of Central Florida, Orlando, FL, USA.