Smart Structures and Materials 2005 : Sensors and Smart Structures Technologies for Civil, Mechanical, and Aerospace System, San Diego, California, USA, 7-10 March 2005Vibration-based damage detection methods use changes in modal parameters to diagnose structural degradation or damage. Structures in reality are subject to varying environmental effects which also cause changes in modal parameters. The well-defined nature of the environmental effects on modal properties is essential for reliable damage diagnosis based on vibration measurement. In this paper, the performance of artificial neural networks (ANNs) for simulation and prediction of temperature-caused variability of modal frequencies is investigated. Making use of one-year measureme...
In this paper, a continuous monitoring system which measures the vibration of a structure, identifie...
Damage detection by measurement of vibration signatures is highly attractive for monitoring bridges ...
A method that uses machine learning to detect and localize damage in railway bridges under various e...
The parametric approach to eliminating the temperature-caused modal variability in vibration-based s...
In this study, the construction of appropriate input to neural networks for modeling the temperature...
For reliable performance of vibration-based damage detection algorithms, it is impor-tant to disting...
Despite offering a great promise for continuous and automated monitoring of civil infrastructure sys...
Artificial Neural Network (ANN) has been widely applied to detect damages in structures based on str...
International audienceLarge-scale civil infrastructures play a vital role in society as they ensure ...
Damage diagnosis in the structural field (mechanical, civil, aerospace, etc.) is a topic of active d...
The effect of varying temperatures is one of the most important challenges of vibration-based damage...
Structural health monitoring is a challenging task that has recently received great attention from r...
Damage in structures often leads to failure. Thus it is very important to monitor structures for the...
For reliable performance of vibration-based damage detection algorithms, it is of paramount importan...
The idea of using measured dynamic characteristics for damage detection is attractive because it all...
In this paper, a continuous monitoring system which measures the vibration of a structure, identifie...
Damage detection by measurement of vibration signatures is highly attractive for monitoring bridges ...
A method that uses machine learning to detect and localize damage in railway bridges under various e...
The parametric approach to eliminating the temperature-caused modal variability in vibration-based s...
In this study, the construction of appropriate input to neural networks for modeling the temperature...
For reliable performance of vibration-based damage detection algorithms, it is impor-tant to disting...
Despite offering a great promise for continuous and automated monitoring of civil infrastructure sys...
Artificial Neural Network (ANN) has been widely applied to detect damages in structures based on str...
International audienceLarge-scale civil infrastructures play a vital role in society as they ensure ...
Damage diagnosis in the structural field (mechanical, civil, aerospace, etc.) is a topic of active d...
The effect of varying temperatures is one of the most important challenges of vibration-based damage...
Structural health monitoring is a challenging task that has recently received great attention from r...
Damage in structures often leads to failure. Thus it is very important to monitor structures for the...
For reliable performance of vibration-based damage detection algorithms, it is of paramount importan...
The idea of using measured dynamic characteristics for damage detection is attractive because it all...
In this paper, a continuous monitoring system which measures the vibration of a structure, identifie...
Damage detection by measurement of vibration signatures is highly attractive for monitoring bridges ...
A method that uses machine learning to detect and localize damage in railway bridges under various e...