ABSTRACT: Stated in its most basic form, the objective of damage diagnosis is to ascertain simply if damage is present or not based on measured dynamic characteristics of a system to be monitored. In reality, structures are subject to changing environmental and operational conditions that affect measured signals, and environmental and operational variations of the system can often mask subtle changes in the system’s vibration signal caused by damage. In this paper, a unique combination of time series analysis, neural networks, and statistical inference techniques is developed for damage classification explicitly taking into account these ambient variations of the system. First, a time prediction model called an autoregressive and autoregres...
The effect of varying temperatures is one of the most important challenges of vibration-based damage...
Structural health monitoring is an economical and reliable strategy for infrastructure condition ass...
Recently, advances in sensing and sensing methodologies have led to the deployment of multiple senso...
Damage diagnosis is a problem that can be addressed at many levels. Stated in its most basic form, t...
Efforts to optimize the design of mechanical systems for preestablished use environments and to exte...
The primary objective of damage detection is to ascertain with confidence if damage is present or no...
Abstract The primary objective of damage detection is to ascertain with confidence if damage is pres...
This paper investigates the use of artificial neural networks (ANNs) to identify damage in mechanica...
In this study, a novel approach using a modified time series analysis methodology is used to detect,...
A novel time series analysis is presented to locate damage sources in a mechanical system, which is ...
Structural health monitoring can be viewed as a problem in statistical pattern recognition involving...
In this study, a novel approach using a modified time series analysis methodology is used to detect ...
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...
Time-series methods have become of interest in damage detection, particularly for automated and cont...
The effect of varying temperatures is one of the most important challenges of vibration-based damage...
Structural health monitoring is an economical and reliable strategy for infrastructure condition ass...
Recently, advances in sensing and sensing methodologies have led to the deployment of multiple senso...
Damage diagnosis is a problem that can be addressed at many levels. Stated in its most basic form, t...
Efforts to optimize the design of mechanical systems for preestablished use environments and to exte...
The primary objective of damage detection is to ascertain with confidence if damage is present or no...
Abstract The primary objective of damage detection is to ascertain with confidence if damage is pres...
This paper investigates the use of artificial neural networks (ANNs) to identify damage in mechanica...
In this study, a novel approach using a modified time series analysis methodology is used to detect,...
A novel time series analysis is presented to locate damage sources in a mechanical system, which is ...
Structural health monitoring can be viewed as a problem in statistical pattern recognition involving...
In this study, a novel approach using a modified time series analysis methodology is used to detect ...
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...
Time-series methods have become of interest in damage detection, particularly for automated and cont...
The effect of varying temperatures is one of the most important challenges of vibration-based damage...
Structural health monitoring is an economical and reliable strategy for infrastructure condition ass...
Recently, advances in sensing and sensing methodologies have led to the deployment of multiple senso...