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

TL;DR
This paper introduces a deep learning-based time series classification method using LSTM-FCN to detect damage in stay cables of bridges by analyzing cable force data, enabling early and accurate damage detection.
Contribution
It presents a novel application of LSTM-FCN for cable damage detection, reducing data preprocessing and improving detection speed and accuracy.
Findings
Successfully identified damaged cables in a real bridge case
Effective in both raw force data and force ratio scenarios
Demonstrated potential for real-time early damage detection
Abstract
This study proposes a data-driven method that detects cable damage from measured cable forces by recognizing biased patterns from the intact conditions. The proposed method solves the pattern recognition problem for cable damage detection through time series classification (TSC) in deep learning, considering that the cable's behavior can be implicitly represented by the measured cable force series. A deep learning model, long short term memory fully convolutional network (LSTM-FCN), is leveraged by assigning appropriate inputs and representative class labels for the TSC problem, First, a TSC classifier is trained and validated using the data collected under intact conditions of 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.…
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Taxonomy
TopicsStructural Health Monitoring Techniques · Infrastructure Maintenance and Monitoring · Machine Fault Diagnosis Techniques
