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タイトル: Deep learning-based intelligent evaluation of freeze-thaw damage in tunnel lining using PZT-induced stress wave
著者: Liao, Xiaolong
Zhong, Haojia
Zhang, Yifeng
Zhang, Chuan
Yan, Qixiang
キーワード: Deep learning
F-t damage
Automatic evaluation
PZT transducer
Concrete structures
発行日: Jul-2024
出版者: Asian-Pacific Network of Centers for Research in Smart Structures Technology (ANCRiSST)
Infrastructure Innovation Engineering, Department of Civil and Earth Resources Engineering, Kyoto University
誌名: Proceedings of the 15th International Workshop on Advanced Smart Materials and Smart Structures Technology (ANCRiSST 2024)
開始ページ: 1
終了ページ: 11
論文番号: 18
抄録: Tunnel lining structures in cold regions are frequently damaged by freeze-thaw (f-t) cycles, which have emerged as one of the main factors to affect the service life of tunnels. Real-time and accurate evaluation of such damage is of great importance for the development of effective maintenance strategies. In this paper, we proposed a novel deep learning-based intelligent method to evaluate the f-t damage in tunnel lining using PZT-induced stress wave. First of all, f-t cycle durability experiments were conducted on the tunnel lining concrete, during which the stress wave signals were measured using PZT transducers. The waveform and energy change rule of the stress wave signals during the f-t cycle were analyzed. After that, the time-frequency diagrams were generated from the collected signals through the continuous wavelet transform (CWT). Meanwhile, a fine-scale numerical model was proposed to simulate concrete f-t damage process, and the damage stages were divided based on the simulated damage unit area. As a result, a CWT-based image dataset with damage stage labels was established. In addition, a convolutional neural network (CNN) model was developed for automatically extracting features from the CWT images and ultimately predicting the f-t damage stage. Finally, the performance of the CNN model was compared with two machine learning algorithms including support vector machine (SVM) and back-propagation neural network (BPNN). The results show that the CNN model can accurately predict the concrete f-t damage stage and has superior performances over other methods, indicating its great potential for real-time monitoring and rapid evaluation of concrete f-t damage in tunnel lining.
記述: 15th International Workshop on Advanced Smart Materials and Smart Structures Technology (ANCRiSST 2024) to be held in July 2024 at Kyoto University, Japan.
corresponding author: Chuan Zhang
DOI: 10.14989/ancrisst_2024_18
URI: http://hdl.handle.net/2433/291262
関連リンク: http://infra.kuciv.kyoto-u.ac.jp/ANCRISST2024/
出現コレクション:Proceedings of the 15th International Workshop on Advanced Smart Materials and Smart Structures Technology (ANCRiSST 2024)

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