A method of modeling temperature-strain mapping relationship for long-span cable-stayed bridges using transfer learning and bi-directional long short-term memory neural network

被引:0
作者
Fang J. [1 ]
Huang T. [1 ]
Li M. [2 ]
Wang Y. [3 ]
机构
[1] School of Civil Engineering, Central South University, Changsha
[2] School of Civil Engineering, Hunan City University, Yiyang
[3] State Key Laboratory for Health and Safety of Bridge Structures, Wuhan
来源
Zhendong yu Chongji/Journal of Vibration and Shock | 2023年 / 42卷 / 12期
关键词
bi-directional long short-term memory (Bi-LSTM) neural network; long-span cable-stayed bridge; structural health monitoring; temperature-strain mapping model; transfer learning;
D O I
10.13465/j.cnki.jvs.2023.012.014
中图分类号
学科分类号
摘要
To rapidly construct and accurately predict the strain responses of amain girder induced by temperature in along-span cable-stayed bridge for structural condition assessment, based on the measured temperature and strain data on the main girder of a long-span cable-stayed bridge over 1 year, a method of constructing the temperature-strain mapping model by using the transfer learning technique and the bidirectional long short-term memory (Bi-LSTM) neural networks was proposed in this study. Firstly, the analytical mode decomposition (AMD) was adopted to denoise the strain data to obtain the temperature-induced strain. Secondly, the temperature and the strain data at a particular measurement point were selected to form a dataset, and were fed to a Bi-LSTM neural network. Then a well-fitting neural network baseline model was constructed by optimizing the network structure and hyperparameters. Finally, using the transfer learning method, some parameters from the trained Bi-LSTM neural network model were transferred to other temperature-strain datasets to construct the transferred temperature-strain mapping models. Compared with the temperature-strain Bi-LSTM neural network models constructed directly from the datasets, the transferred temperature-strain Bi-LSTM neural network models built by using the transfer learning technique have higher fitting accuracy, shorter training time, and smaller prediction error. © 2023 Chinese Vibration Engineering Society. All rights reserved.
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页码:126 / 134+186
相关论文
共 19 条
  • [1] SUN Yaqiong, ZHAO Zuozhou, Real-time separation of temperature effeet on dynamic strain monitoring and moving load identification of bridge structure, Engineering Mechanics, 36, 2, pp. 186-194, (2019)
  • [2] FAN Z Y, HUANG Q, REN Y, Et al., Real-time dynamic warning on deflection abnormity of cable-stayed bridges considering operational environment variations [J], Journal of Performance of Constructed Facilities, 35, 1, (2021)
  • [3] CATBAS F N, SUSOY M, FRANGOPOL D M., Structural health monitoring and reliability estimation: long span truss bridge application with environmental monitoring data, Engineering Structures, 30, 9, pp. 2347-2359, (2008)
  • [4] WU Baijian, LI Zhaoxia, WANG Ying, Separation and extraction of bridge dynamic strain data [J], Journal of Southeast University (Natural Science Edition), 38, 5, pp. 767-773, (2008)
  • [5] ZHOU Yi, SUN Limin, MIN Zhihua, Girder strain analysis of a cable-stayed bridge, Journal of Vibration and Shock, 30, 4, pp. 230-235, (2011)
  • [6] LI Miao, REN Weixin, HU Yiding, Et al., Separating temperature effect from dynamic strain measurements of a bridge based on analytical mode decomposition method, Journal of Vibration and Shock, 31, 21, pp. 6-10, (2012)
  • [7] XIA Y, CHEN B, ZHOU X Q, Et al., Field monitoring and numerical analysis of Tsing Ma Suspension Bridge temperature behavior, Structural Control and Health Monitoring, 20, 4, pp. 560-575, (2013)
  • [8] KROMANIS R, KRIPAKARAN P., Predicting thermal response of bridges using regression models derived from measurement histories, Computers & Structures, 136, 3, pp. 64-77, (2014)
  • [9] LIU Zejia, CHEN Yitao, ZHOU Licheng, Et al., Analysis of characteristics and correlation for temperature and strain based on long-term bridge health monitoring big data [J], Science Technology and Engineering, 18, 35, pp. 72-79, (2018)
  • [10] ZHENG Qiuyi, ZHOU Guangdong, LIU Dingkun, Method of modeling temperature-displacement correlation for long-span arch bridges based on long short-term memory neural networks, Engineering Mechanics, 38, 4, pp. 68-79, (2021)