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Deep learning-based recovery method for missing structural temperature data using LSTM network

机译:基于深度学习的恢复方法,用于使用LSTM网络缺少结构温度数据

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摘要

Benefiting from the massive monitoring data collected by the Structural health monitoring (SHM) system, scholars can grasp the complex environmental effects and structural state during structure operation. However, the monitoring data is often missing due to sensor faults and other reasons. It is necessary to study the recovery method of missing monitoring data. Taking the structural temperature monitoring data of Nanjing Dashengguan Yangtze River Bridge as an example, the long short-term memory (LSTM) network-based recovery method for missing structural temperature data is proposed in this paper. Firstly, the prediction results of temperature data using LSTM network, support vector machine (SVM), and wavelet neural network (WNN) are compared to verify the accuracy advantage of LSTM network in predicting time series data (such as structural temperature). Secondly, the application of LSTM network in the recovery of missing structural temperature data is discussed in detail. The results show that: the LSTM network can effectively recover the missing structural temperature data; incorporating more intact sensor data as input will further improve the recovery effect of missing data; selecting the sensor data which has a higher correlation coefficient with the data we want to recover as the input can achieve higher accuracy.
机译:受益于由结构健康监测(SHM)系统收集的大规模监测数据,学者可以在结构运行过程中掌握复杂的环境效应和结构状态。但是,由于传感器故障和其他原因,监控数据通常缺失。有必要研究缺少监控数据的恢复方法。采用南京大城园长江桥的结构温度监测数据作为示例,本文提出了用于缺少结构温度数据的长短期记忆(LSTM)基于网络的恢复方法。首先,比较使用LSTM网络,支持向量机(SVM)和小波神经网络(WNN)的温度数据的预测结果,以验证LSTM网络在预测时间序列数据(例如结构温度)中的精度优势。其次,详细讨论了LSTM网络在缺少结构温度数据中的应用。结果表明:LSTM网络可以有效地恢复缺失的结构温度数据;作为输入的更完整的传感器数据将进一步提高缺失数据的恢复效果;选择具有较高相关系数的传感器数据与我们要恢复的数据,因为输入可以实现更高的准确性。

著录项

  • 来源
    《Structural Monitoring and Maintenance》 |2020年第2期|109-124|共16页
  • 作者单位

    School of Civil Engineering Southeast University Nanjing 210096 China Key Laboratory of C&PC Stuctures of the Ministry of Education Southeast University Nanjing 210096 China;

    School of Civil Engineering Southeast University Nanjing 210096 China Key Laboratory of C&PC Stuctures of the Ministry of Education Southeast University Nanjing 210096 China;

    School of Civil Engineering Southeast University Nanjing 210096 China Key Laboratory of C&PC Stuctures of the Ministry of Education Southeast University Nanjing 210096 China;

    School of Civil Engineering Southeast University Nanjing 210096 China Key Laboratory of C&PC Stuctures of the Ministry of Education Southeast University Nanjing 210096 China;

    School of Architecture Engineering Nanjing Institute of Technology Nanjing 211167 China;

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  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

    structural health monitoring (SHM); structural temperature; deep learning; LSTM network; missing data recovery;

    机译:结构健康监测(SHM);结构温度;深度学习;LSTM网络;缺少数据恢复;

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