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New Signal Processing Technique on Multiple Piezoelectric Sensor/Actuator for Structural Health Monitoring of Steel Structure Joints
In this paper a new signal processing technique on multiple piezoelectric sensor/actuator for structural health monitoring of steel structure joints is presented.This technique coupled the fast fourier transformer with wavelet MATLAB simulink...
new application of random decerement technique
identification. Based on these data and mentioned procedures, it is possible to demonstrate the superior performance of random decrement technique in the statistical pro-cess control as an applicable and useful method for structural health monitoring. Results...
An iterative order determination method for time-series modeling in structural health monitoring
Statistical time-series modeling has recently emerged as a promising and applicable methodology to structural health monitoring. In this methodology, an important step is to choose robust and optimal orders of time-series models for extracting...
An unsupervised learning approach by novel damage indices in structural health monitoring for damage localization and quantification
Feature extraction by time-series analysis and decision making through distance-based methods are powerful and efficient statistical pattern recognition techniques for data-driven structural health monitoring. The motivation of this article...
Data-driven damage diagnosis under environmental and operational variability by novel statistical pattern recognition methods
Feature extraction by time-series analysis and decision making through distance-based methods are powerful and efficient
statistical pattern recognition techniques for data-driven structural health monitoring. The motivation of this article...
A New Similarity Measure Method based on Statistical Pattern Recognition for Structural Health Monitoring
This study presents a new similarity measure method in order to detect and locate structural
damage based on statistical pattern recognition paradigm. The similarity method is
Bhattacharyya distance (BD) ...
Application of Hopfield neural network to structural health monitoring
Structural health monitoring (SHM) using artificial neural networks has received increasing
attention due to robustness of neural networks, better performance compared to conventional
damage detection methods, and influential pattern...
A novel anomaly detection method based on adaptive Mahalanobis-squared distance and one-class kNN rule for structural health monitoring under environmental effects
Anomaly detection by Mahalanobis-squared distance (MSD) is a popular unsupervised learning approach to structural health monitoring (SHM). Despite the popularity and high applicability of the MSD-based anomaly detection method, some major...