Data Loss Reconstruction Method for a Bridge Weigh-in-Motion System Using Generative Adversarial Networks

被引:12
|
作者
Zhuang, Yizhou [1 ]
Qin, Jiacheng [1 ]
Chen, Bin [2 ,3 ]
Dong, Chuanzhi [4 ]
Xue, Chenbo [1 ]
Easa, Said M. [5 ]
机构
[1] Zhejiang Univ Technol, Coll Civil Engn, Hangzhou 310014, Peoples R China
[2] Zhejiang Univ City Coll, Dept Civil Engn, Hangzhou 310015, Peoples R China
[3] Yangtze Delta Inst Urban Infrastruct, Hangzhou 310005, Peoples R China
[4] Univ Cent Florida, Dept Civil Environm & Construct Engn, Orlando, FL 32816 USA
[5] Ryerson Univ, Dept Civil Engn, Toronto, ON M5B 2K3, Canada
基金
中国国家自然科学基金;
关键词
bridge weigh-in-motion system; data loss; data reconstruction; generative adversarial network; convolutional neural network; deep learning;
D O I
10.3390/s22030858
中图分类号
O65 [分析化学];
学科分类号
070302 ; 081704 ;
摘要
In the application of a bridge weigh-in-motion (WIM) system, the collected data may be temporarily or permanently lost due to sensor failure or system transmission failure. The high data loss rate weakens the distribution characteristics of the collected data and the ability of the monitoring system to conduct assessments on bridge condition. A deep learning-based model, or generative adversarial network (GAN), is proposed to reconstruct the missing data in the bridge WIM systems. The proposed GAN in this study can model the collected dataset and predict the missing data. Firstly, the data from stable measurements before the data loss are provided, and then the generator is trained to extract the retained features from the dataset and the data lost in the process are collected by using only the responses of the remaining functional sensors. The discriminator feeds back the recognition results to the generator in order to improve its reconstruction accuracy. In the model training, two loss functions, generation loss and confrontation loss, are used, and the general outline and potential distribution characteristics of the signal are well processed by the model. Finally, by applying the engineering data of the Hangzhou Jiangdong Bridge to the GAN model, this paper verifies the effectiveness of the proposed method. The results show that the final reconstructed dataset is in good agreement with the actual dataset in terms of total vehicle weight and axle weight. Furthermore, the approximate contour and potential distribution characteristics of the original dataset are reproduced. It is suggested that the proposed method can be used in real-life applications. This research can provide a promising method for the data reconstruction of bridge monitoring systems.
引用
收藏
页数:16
相关论文
共 50 条
  • [21] Using Generative Adversarial Networks for Data Augmentation in Android Malware Detection
    Chen, Yi-Ming
    Yang, Chun-Hsien
    Chen, Guo-Chung
    2021 IEEE CONFERENCE ON DEPENDABLE AND SECURE COMPUTING (DSC), 2021,
  • [22] Generating Synthetic Vehicle Data Using Decentralized Generative Adversarial Networks
    Shaker, Basem
    Papini, Gastone Pietro Rosati
    Saveriano, Matteo
    Liang, Kuo-Yun
    IEEE ACCESS, 2024, 12 : 138076 - 138085
  • [23] Label Distribution Learning with Data Augmentation using Generative Adversarial Networks
    Rong, Bin-Yuan
    Zhang, Heng-Ru
    Li, Gui-Lin
    Min, Fan
    2022 IEEE 9TH INTERNATIONAL CONFERENCE ON DATA SCIENCE AND ADVANCED ANALYTICS (DSAA), 2022, : 21 - 30
  • [24] Super-Resolution Reconstruction of Porous Media Using Concurrent Generative Adversarial Networks and Residual Blocks
    Ting Zhang
    Qingyang Liu
    Yi Du
    Transport in Porous Media, 2023, 149 : 299 - 343
  • [25] Super-Resolution Reconstruction of Porous Media Using Concurrent Generative Adversarial Networks and Residual Blocks
    Zhang, Ting
    Liu, Qingyang
    Du, Yi
    TRANSPORT IN POROUS MEDIA, 2023, 149 (01) : 299 - 343
  • [26] Mixed-type data generation method based on generative adversarial networks
    Wei, Ning
    Wang, Longzhi
    Chen, Guanhua
    Wu, Yirong
    Sun, Shunfa
    Chen, Peng
    EURASIP JOURNAL ON WIRELESS COMMUNICATIONS AND NETWORKING, 2022, 2022 (01)
  • [27] Mixed-type data generation method based on generative adversarial networks
    Ning Wei
    Longzhi Wang
    Guanhua Chen
    Yirong Wu
    Shunfa Sun
    Peng Chen
    EURASIP Journal on Wireless Communications and Networking, 2022
  • [28] Ultrasound image denoising using generative adversarial networks with residual dense connectivity and weighted joint loss
    Zhang, Lun
    Zhang, Junhua
    PEERJ COMPUTER SCIENCE, 2022, 8
  • [29] Lung CT harmonization of paired reconstruction kernel images using generative adversarial networks
    Krishnan, Aravind R.
    Xu, Kaiwen
    Li, Thomas Z.
    Remedios, Lucas W.
    Sandler, Kim L.
    Maldonado, Fabien
    Landman, Bennett A.
    MEDICAL PHYSICS, 2024, 51 (08) : 5510 - 5523
  • [30] Heightmap Reconstruction of Macula on Color Fundus Images Using Conditional Generative Adversarial Networks
    Tahghighi, Peyman
    Zoroofi, Reza A.
    Safi, Sare
    Ramezani, Alireza
    Ahmadieh, Hamid
    2021 26TH INTERNATIONAL COMPUTER CONFERENCE, COMPUTER SOCIETY OF IRAN (CSICC), 2021,