A new convolutional neural network-based framework and data construction method for structural damage identification considering sensor placement

被引:13
作者
Yang, Jianhui [1 ,2 ]
Peng, Zhenrui [1 ]
机构
[1] Lanzhou Jiaotong Univ, Sch Mech Engn, Lanzhou 730070, Peoples R China
[2] Lanzhou Jiaotong Univ, Sch Elect & Informat Engn, Lanzhou 730070, Peoples R China
基金
中国国家自然科学基金;
关键词
structural damage identification; sensor placement; noise contamination; 3D signal processing convolutional neural networks; 'major and subsidiary' data construction; intrinsic mode function; FAULT-DIAGNOSIS; CNN;
D O I
10.1088/1361-6501/acc755
中图分类号
T [工业技术];
学科分类号
08 ;
摘要
In the application of data driven structural damage identification (SDI) based on supervised deep learning technology, valid data demarcation is the foundation; a convolutional neural network model with learning ability and capability of processing rich signal information is the core. Based on this understanding, this work makes three contributions: Firstly, the structural damage location and severity are jointly demarcated, and the SDI problem is transformed into a multi-classification task. Secondly, a 3D signal processing convolutional neural networks (3DS-CNN) is designed with an attempt to identify the complex and slight damages using the most basic network structure. Thirdly, a 'major and subsidiary' data construction (MSDC) method integrating the key intrinsic mode function is proposed to construct 3D data. Then the proposed schemes are verified by two different structures. The results show that the 3DS-CNN has excellent damage identification ability for small-size data with noise pollution. MSDC method can enrich the feature information of the damage signals and help the network with deep feature excavation, even if the vibration signals are heavily polluted. Going one step further, the impact of sensor placement is discussed, and it is found that when external excitation is obvious, better SDI accuracy can be achieved even using a single sensor signal with slight noise. When the noise interference is obvious, the generalization ability and noise robustness of the network can be enhanced by optimizing sensor placement. In this case, the sensor placement criteria and the sensitive nodes of the structure should be comprehensively and carefully considered to avoid mutual 'coupling' interference of data between sensors.
引用
收藏
页数:29
相关论文
共 50 条
[1]  
Abdulkareem A., 2021, INT J ELECT COMPUT E, V11, P1796, DOI [10.19101/IJATEE.2021.874618, DOI 10.19101/IJATEE.2021.874618]
[2]   Influence of the construction process and nonstructural components on the modal properties of a five-story building [J].
Astroza, Rodrigo ;
Ebrahimian, Hamed ;
Conte, Joel P. ;
Restrepo, Jose I. ;
Hutchinson, Tara C. .
EARTHQUAKE ENGINEERING & STRUCTURAL DYNAMICS, 2016, 45 (07) :1063-1084
[3]   A review of vibration-based damage detection in civil structures: From traditional methods to Machine Learning and Deep Learning applications [J].
Avci, Onur ;
Abdeljaber, Osama ;
Kiranyaz, Serkan ;
Hussein, Mohammed ;
Gabbouj, Moncef ;
Inman, Daniel J. .
MECHANICAL SYSTEMS AND SIGNAL PROCESSING, 2021, 147
[4]   Structural Damage Detection in Real Time: Implementation of 1D Convolutional Neural Networks for SHM Applications [J].
Avci, Onur ;
Abdeljaber, Osama ;
Kiranyaz, Serkan ;
Inman, Daniel .
STRUCTURAL HEALTH MONITORING & DAMAGE DETECTION, VOL 7, 2017, :49-54
[5]   Hand Sign Recognition System Based on EIT Imaging and Robust CNN Classification [J].
Ben Atitallah, Bilel ;
Hu, Zheng ;
Bouchaala, Dhouha ;
Hussain, Mohammed Abrar ;
Ismail, Amir ;
Derbel, Nabil ;
Kanoun, Olfa .
IEEE SENSORS JOURNAL, 2022, 22 (02) :1729-1737
[6]   Improved VMD-FRFT based on initial center frequency for early fault diagnosis of rolling element bearing [J].
Chen, Guangyi ;
Yan, Changfeng ;
Meng, Jiadong ;
Wang, Huibin ;
Wu, Lixiao .
MEASUREMENT SCIENCE AND TECHNOLOGY, 2021, 32 (11)
[7]   Full-Scale Structural and Nonstructural Building System Performance during Earthquakes: Part I - Specimen Description, Test Protocol, and Structural Response [J].
Chen, Michelle C. ;
Pantoli, Elide ;
Wang, Xiang ;
Astroza, Rodrigo ;
Ebrahimian, Hamed ;
Hutchinson, Tara C. ;
Conte, Joel P. ;
Restrepo, Jose I. ;
Marin, Claudia ;
Walsh, Kenneth D. ;
Bachman, Robert E. ;
Hoehler, Matthew S. ;
Englekirk, Robert ;
Faghihi, Mahmoud .
EARTHQUAKE SPECTRA, 2016, 32 (02) :737-770
[8]   Structural damage detection by fuzzy clustering [J].
da Silva, Samuel ;
Dias Junior, Milton ;
Lopes Junior, Vicente ;
Brennan, Michael J. .
MECHANICAL SYSTEMS AND SIGNAL PROCESSING, 2008, 22 (07) :1636-1649
[9]   Deep learning-based detection of structural damage using time-series data [J].
Dang, Hung V. ;
Raza, Mohsin ;
Nguyen, Tung V. ;
Bui-Tien, T. ;
Nguyen, Huan X. .
STRUCTURE AND INFRASTRUCTURE ENGINEERING, 2021, 17 (11) :1474-1493
[10]   Supervised Deep Learning with Finite Element simulations for damage identification in bridges [J].
Fernandez-Navamuel, Ana ;
Zamora-Sanchez, Diego ;
Omella, Angel J. ;
Pardo, David ;
Garcia-Sanchez, David ;
Magalhaes, Filipe .
ENGINEERING STRUCTURES, 2022, 257