Feature extraction and classification are crucial steps of a data-driven structural health monitoring strategy. One of the major issues in feature extraction is to extract damage-sensitive features from non-stationary signals under unknown ambient vibration. Furthermore, the use of high-dimensional features in damage detection is the other challenging issue, which may make a difficult and time-consuming process. This article is initially intended to propose a hybrid algorithm as a combination of EEMD technique and ARARX model for feature extraction. Subsequently, correlation-based dynamic time warping method is proposed to detect damage by using randomly high-dimensional multivariate features. Due to the importance of damage localization, d...
Vibration-based damage detection in civil structures using data-driven methods requires sufficient v...
Structural Health Monitoring is an important field that involves the continuous measuring of the str...
This paper investigates the time series representation methods and similarity measures for sensor da...
Feature extraction and classification are crucial steps of a data-driven structural health monitorin...
Ambient excitations applied to structures may lead to non-stationary vibration responses. In such ci...
Feature extraction by time-series analysis and decision making through distance-based methods are po...
Recently, advances in sensing and sensing methodologies have led to the deployment of multiple senso...
Structural health monitoring is usually implemented by model-driven or data-driven methods. Both of ...
One of the crucial steps in structural health monitoring (SHM) is damage diagnosis based on features...
Vibration-based Structural Health Monitoring (SHM) methods often rely upon vibration responses meas...
This paper investigates the time series representation methods and similarity measures for sensor da...
In this study, a novel approach using a modified time series analysis methodology is used to detect,...
Vibration-based damage detection in civil structures using data-driven methods requires sufficient v...
Structural Health Monitoring is an important field that involves the continuous measuring of the str...
This paper investigates the time series representation methods and similarity measures for sensor da...
Feature extraction and classification are crucial steps of a data-driven structural health monitorin...
Ambient excitations applied to structures may lead to non-stationary vibration responses. In such ci...
Feature extraction by time-series analysis and decision making through distance-based methods are po...
Recently, advances in sensing and sensing methodologies have led to the deployment of multiple senso...
Structural health monitoring is usually implemented by model-driven or data-driven methods. Both of ...
One of the crucial steps in structural health monitoring (SHM) is damage diagnosis based on features...
Vibration-based Structural Health Monitoring (SHM) methods often rely upon vibration responses meas...
This paper investigates the time series representation methods and similarity measures for sensor da...
In this study, a novel approach using a modified time series analysis methodology is used to detect,...
Vibration-based damage detection in civil structures using data-driven methods requires sufficient v...
Structural Health Monitoring is an important field that involves the continuous measuring of the str...
This paper investigates the time series representation methods and similarity measures for sensor da...