A Sensor Data Fusion System Based on k-Nearest Neighbor Pattern Classification for Structural Health Monitoring Applications

被引:101
作者
Vitola, Jaime [1 ,4 ]
Pozo, Francesc [1 ]
Tibaduiza, Diego A. [2 ]
Anaya, Maribel [3 ]
机构
[1] Univ Politecn Cataluna, Control Dynam & Applicat CoDAlab, Dept Matemat, EEBE, Campus Diagonal Besos,,Eduard Maristany 6-12, Barcelona 08930, Spain
[2] Univ Nacl Colombia, Dept Ingn Elect & Elect, Cra 45 26-85, Bogota 111321, Colombia
[3] Fdn Univ Libertadores, Fac Engn, Cra 16 63A-68, Bogota 111221, Colombia
[4] Univ Santo Tomas, MEM Mat Elect & Modelling Res Grp, Fac Elect Engn, Cra 9 51-11, Bogota 110231, Colombia
关键词
piezoelectric; sensors; active system; data fusion; machine learning; damage classification; RULE;
D O I
10.3390/s17020417
中图分类号
O65 [分析化学];
学科分类号
070302 ; 081704 ;
摘要
Civil and military structures are susceptible and vulnerable to damage due to the environmental and operational conditions. Therefore, the implementation of technology to provide robust solutions in damage identification (by using signals acquired directly from the structure) is a requirement to reduce operational and maintenance costs. In this sense, the use of sensors permanently attached to the structures has demonstrated a great versatility and benefit since the inspection system can be automated. This automation is carried out with signal processing tasks with the aim of a pattern recognition analysis. This work presents the detailed description of a structural health monitoring (SHM) system based on the use of a piezoelectric (PZT) active system. The SHM system includes: (i) the use of a piezoelectric sensor network to excite the structure and collect the measured dynamic response, in several actuation phases; (ii) data organization; (iii) advanced signal processing techniques to define the feature vectors; and finally; (iv) the nearest neighbor algorithm as a machine learning approach to classify different kinds of damage. A description of the experimental setup, the experimental validation and a discussion of the results from two different structures are included and analyzed.
引用
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页数:26
相关论文
共 32 条
[11]  
Dhanabal S., 2011, INT J COMPUTER APPL, V31, P14, DOI 10.5120/38365332
[12]  
Farrar Charles R, 2012, Structural health monitoring: a machine learning perspective
[13]  
Gautschi G., 2002, PIEZOELECTRIC SENSOR, DOI 10.1007/978-3-662-04732-3_2
[14]  
Gui GQ, 2017, KSCE J CIV ENG, V21, P523
[15]   Fault detection using the k-nearest neighbor rule for semiconductor manufacturing processes [J].
He, Q. Peter ;
Wang, Jin .
IEEE TRANSACTIONS ON SEMICONDUCTOR MANUFACTURING, 2007, 20 (04) :345-354
[16]   iPCA: An Interactive System for PCA-based Visual Analytics [J].
Jeong, Dong Hyun ;
Ziemkiewicz, Caroline ;
Fisher, Brian ;
Ribarsky, William ;
Chang, Remco .
COMPUTER GRAPHICS FORUM, 2009, 28 (03) :767-774
[17]  
Johnson J., 2016, P INT C ICT SUST DEV
[18]  
Jollife Ian T, 2002, Principal Component Analysis
[19]   Automated structural health monitoring based on adaptive kernel spectral clustering [J].
Langone, Rocco ;
Reynders, Edwin ;
Mehrkanoon, Siamak ;
Suykens, Johan A. K. .
MECHANICAL SYSTEMS AND SIGNAL PROCESSING, 2017, 90 :64-78
[20]   A structural damage detection indicator based on principal component analysis and statistical hypothesis testing [J].
Mujica, L. E. ;
Ruiz, M. ;
Pozo, F. ;
Rodellar, J. ;
Gueemes, A. .
SMART MATERIALS AND STRUCTURES, 2014, 23 (02)