Vibration-based building health monitoring using spatio-temporal learning model

被引:8
作者
Dang, Viet-Hung [1 ,2 ]
Pham, Hoang-Anh [1 ]
机构
[1] Hanoi Univ Civil Engn, Fac Bldg & Ind Construction, Hanoi, Vietnam
[2] Hanoi Univ Civil Engn, Res Grp Dev & Applicat Adv Mat & Modern Technol Co, Hanoi, Vietnam
关键词
Building health monitoring; Deep learning; Vibration; Structural analysis; Numerical simulation; STRUCTURAL DAMAGE DETECTION; IDENTIFICATION; WIRELESS;
D O I
10.1016/j.engappai.2023.106858
中图分类号
TP [自动化技术、计算机技术];
学科分类号
0812 ;
摘要
Vibration-based building health monitoring is a promising and feasible approach to assess the operational state of building structures in a remote, automated, and continuous fashion; however, efficiently handling high-dimensional vibration signals from multiple sensors and effectively coping with missing/noisy data represent two main technical challenges. In order to overcome these issues, this study proposes a novel, reliable and robust framework, abbreviated CLG-BHM, based on a hybrid deep learning architecture. First, the framework uses a 1D convolutional neural network layer to learn low-dimensional representation vectors of long sensor signals, which preserve underlying structures' dynamic characteristics. Second, temporal relationships within data are distilled via a Long-Short Term Memory layer. Third, the representation vectors of sensors are aggregated with those of their neighbors in a principled way via a graph attention network layer, resulting in a new latent representation rich in both temporal and spatial information. Finally, the latter is gone through a fully-connected layer to provide damage detection results. The performance and viability of the present method are evidenced via various examples involving a simple lumped mass structure, a semi-rigid steel frame, and an experimental 4-story structure from the literature. Moreover, a robustness study is performed, showing that the method can provide reasonable results with the presence of noisy and missing data.
引用
收藏
页数:17
相关论文
共 48 条
[21]   Multivariate LSTM-FCNs for time series classification [J].
Karim, Fazle ;
Majumdar, Somshubra ;
Darabi, Houshang ;
Harford, Samuel .
NEURAL NETWORKS, 2019, 116 :237-245
[22]   An improved CSS for damage detection of truss structures using changes in natural frequencies and mode shapes [J].
Kaveh, A. ;
Zolghadr, A. .
ADVANCES IN ENGINEERING SOFTWARE, 2015, 80 :93-100
[23]   Distributed energy-efficient estimation in spatially correlated wireless sensor networks [J].
Koutsopoulos, Iordanis ;
Halkidi, Maria .
COMPUTER COMMUNICATIONS, 2014, 45 :47-58
[24]   Data-driven modeling of bridge buffeting in the time domain using long short-term memory network based on structural health monitoring [J].
Li, Shanwu ;
Li, Suchao ;
Laima, Shujin ;
Li, Hui .
STRUCTURAL CONTROL & HEALTH MONITORING, 2021, 28 (08)
[25]   OpenSees: A Framework for Earthquake Engineering Simulation [J].
McKenna, Frank .
COMPUTING IN SCIENCE & ENGINEERING, 2011, 13 (04) :58-66
[26]   Structural health monitoring under environmental and operational variations using MCD prediction error [J].
Mousavi, Mohsen ;
Gandomi, Amir H. .
JOURNAL OF SOUND AND VIBRATION, 2021, 512
[27]  
Murphy KP, 2012, MACHINE LEARNING: A PROBABILISTIC PERSPECTIVE, P1
[28]   Restoration of missing structural health monitoring data using spatiotemporal graph attention networks [J].
Niu, Jin ;
Li, Shunlong ;
Li, Zhonglong .
STRUCTURAL HEALTH MONITORING-AN INTERNATIONAL JOURNAL, 2022, 21 (05) :2408-2419
[29]   Intelligent damage diagnosis in bridges using vibration-based monitoring approaches and machine learning: A systematic review [J].
Niyirora, Rosette ;
Ji, Wei ;
Masengesho, Elyse ;
Munyaneza, Jean ;
Niyonyungu, Ferdinand ;
Nyirandayisabye, Ritha .
RESULTS IN ENGINEERING, 2022, 16
[30]   Non-probabilistic method to consider uncertainties in frequency response function for vibration-based damage detection using Artificial Neural Network [J].
Padil, Khairul H. ;
Bakhary, Norhisham ;
Abdulkareem, Muyideen ;
Li, Jun ;
Hao, Hong .
JOURNAL OF SOUND AND VIBRATION, 2020, 467