Publication | Closed Access
Electro-Mechanical Impedance-Based Wireless Structural Health Monitoring Using PCA-Data Compression and <i>k</i>-means Clustering Algorithms
177
Citations
13
References
2007
Year
EngineeringMechanical EngineeringWearable TechnologyVibration AnalysisStructural IdentificationCondition MonitoringStructural IntegrityPca AlgorithmPrincipal Component AnalysisSmart StructureStructural VibrationStructural Health MonitoringComputer EngineeringData CompressionSignal ProcessingSensorsStructural AnalysisSensor HealthStructural Mechanics
This article presents a practical method for an electro-mechanical impedance-based wireless structural health monitoring (SHM), which incorporates the principal component analysis (PCA)-based data compression and k-means clustering-based pattern recognition. An on-board active sensor system, which consists of a miniaturized impedance measuring chip (AD5933) and a self-sensing macro-fiber composite (MFC) patch, is utilized as a next-generation toolkit of the electromechanical impedance-based SHM system. The PCA algorithm is applied to the raw impedance data obtained from the MFC patch to enhance a local data analysis-capability of the on-board active sensor system, maintaining the essential vibration characteristics and eliminating the unwanted noises through the data compression. Then, the root-mean square-deviation (RMSD)-based damage detection result using the PCA-compressed impedances is compared with the result obtained from the raw impedance data without the PCA preprocessing. Furthermore, the k-means clustering-based unsupervised pattern recognition, employing only two principal components, is implemented. The effectiveness of the proposed methods for a practical use of the electromechanical impedance-based wireless SHM is verified through an experimental study consisting of inspecting loose bolts in a bolt-jointed aluminum structure.
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