Computer vision and deep learning-based data anomaly detection method for structural health monitoring

被引:393
作者
Bao, Yuequan [1 ,2 ,3 ]
Tang, Zhiyi [1 ,2 ,3 ]
Li, Hui [1 ,2 ,3 ]
Zhang, Yufeng [4 ,5 ]
机构
[1] Harbin Inst Technol, Key Lab Struct Dynam Behav & Control, Minist Educ, Harbin, Heilongjiang, Peoples R China
[2] Harbin Inst Technol, Key Lab Intelligent Disaster Mitigat, Minist Ind & Informat Technol, Harbin, Heilongjiang, Peoples R China
[3] Harbin Inst Technol, Sch Civil Engn, Harbin 150090, Heilongjiang, Peoples R China
[4] State Key Lab Safety & Hlth In Serv Long Span Bri, Nanjing, Jiangsu, Peoples R China
[5] JSTI Grp, Nanjing, Jiangsu, Peoples R China
来源
STRUCTURAL HEALTH MONITORING-AN INTERNATIONAL JOURNAL | 2019年 / 18卷 / 02期
基金
国家重点研发计划; 中国国家自然科学基金;
关键词
Structural heath monitoring; data anomaly detection; computer vision; deep learning; stacked autoencoder deep neural network; ALGORITHM; BRIDGES;
D O I
10.1177/1475921718757405
中图分类号
T [工业技术];
学科分类号
08 ;
摘要
The widespread application of sophisticated structural health monitoring systems in civil infrastructures produces a large volume of data. As a result, the analysis and mining of structural health monitoring data have become hot research topics in the field of civil engineering. However, the harsh environment of civil structures causes the data measured by structural health monitoring systems to be contaminated by multiple anomalies, which seriously affect the data analysis results. This is one of the main barriers to automatic real-time warning, because it is difficult to distinguish the anomalies caused by structural damage from those related to incorrect data. Existing methods for data cleansing mainly focus on noise filtering, whereas the detection of incorrect data requires expertise and is very time-consuming. Inspired by the real-world manual inspection process, this article proposes a computer vision and deep learning-based data anomaly detection method. In particular, the framework of the proposed method includes two steps: data conversion by data visualization, and the construction and training of deep neural networks for anomaly classification. This process imitates human biological vision and logical thinking. In the data visualization step, the time series signals are transformed into image vectors that are plotted piecewise in grayscale images. In the second step, a training dataset consisting of randomly selected and manually labeled image vectors is input into a deep neural network or a cluster of deep neural networks, which are trained via techniques termed stacked autoencoders and greedy layer-wise training. The trained deep neural networks can be used to detect potential anomalies in large amounts of unchecked structural health monitoring data. To illustrate the training procedure and validate the performance of the proposed method, acceleration data from the structural health monitoring system of a real long-span bridge in China are employed. The results show that the multi-pattern anomalies of the data can be automatically detected with high accuracy.
引用
收藏
页码:401 / 421
页数:21
相关论文
共 38 条
[1]  
[Anonymous], 1978, Outliers in statistical data
[2]  
Bengio P., 2006, Advances in Neural Information Processing Systems 19 (NIPS06), P153, DOI DOI 10.5555/2976456.2976476
[3]   Noise removal by cluster analysis after long time AE corrosion monitoring of steel reinforcement in concrete [J].
Calabrese, L. ;
Campanella, G. ;
Proverbio, E. .
CONSTRUCTION AND BUILDING MATERIALS, 2012, 34 :362-371
[4]   Deep Learning-Based Crack Damage Detection Using Convolutional Neural Networks [J].
Cha, Young-Jin ;
Choi, Wooram ;
Buyukozturk, Oral .
COMPUTER-AIDED CIVIL AND INFRASTRUCTURE ENGINEERING, 2017, 32 (05) :361-378
[5]  
Dalvi A, 2016, P SMART STRUCT MAT M
[6]   A review of self-validating sensor technology [J].
Feng, Zhigang ;
Wang, Qi ;
Shida, Katsunori .
SENSOR REVIEW, 2007, 27 (01) :48-56
[7]  
Henry M. P., 1993, Control Engineering Practice, V1, P585, DOI 10.1016/0967-0661(93)91382-7
[8]   A fast learning algorithm for deep belief nets [J].
Hinton, Geoffrey E. ;
Osindero, Simon ;
Teh, Yee-Whye .
NEURAL COMPUTATION, 2006, 18 (07) :1527-1554
[9]  
Inman DJ, 2005, DAMAGE PROGNOSIS: FOR AEROSPACE, CIVIL AND MECHANICAL SYSTEMS, P1, DOI 10.1002/0470869097
[10]   Bayesian wavelet packet denoising for structural system identification [J].
Jiang, Xiaomo ;
Mahadevan, Sankaran ;
Adeli, Hojjat .
STRUCTURAL CONTROL & HEALTH MONITORING, 2007, 14 (02) :333-356