In this study, crack damage detection for a honeycomb sandwich plate is studied using the energy spectrum of dynamic response decomposed by wavelet transform and the artificial neural network (NN). The results show that taking the energy spectrum of the decomposed wavelet signals of dynamic responses as the inputs of the NN can simplify the NN design for structural damage detection and it possesses a high sensitivity to small damage. Experimental results also show that the NN designed in this study can accurately detect multiple damage parameters or give some significant reference range of the damage parameters.Department of Mechanical Engineerin
A sophisticated hierarchical neural network model for intelligent assessment of structural damage is...
Implementation of improved instruments is used to detect damage in an accurate manner and fully anal...
This work was conducted as part of the Aircraft Reliability Through Intelligent Materials Applicatio...
A procedure for damage detection in multilayer composites is described using model-based neural netw...
Abstract: A procedure for damage detection in multilayer composites is described using model-based n...
This study investigates the effectiveness of the combination of global (natural frequency) and local...
In this study, a neuro-wavelet technique was proposed for damage identification of cantilever struct...
A method based on entropy-based criteria is present to choose the optimal decomposition of Wavelet P...
Wavelet packet energies (WPEs) as the input to artificial neural networks for damage detection have ...
Aimed at the problem of intelligent classification of crack damage in different positions of the pla...
An inverse analysis based on the artificial neural network technique is introduced for effective ide...
Structural damage detection using measured dynamic data for pattern recognition is a promising appro...
Abstract In the previous study, the accuracy of damage detection for the sandwich structures with tr...
The paper presents a new neuro-wavelet damage detection technique for structural health monitoring. ...
In the field of structural health monitoring (SHM), with the mature development of artificial intell...
A sophisticated hierarchical neural network model for intelligent assessment of structural damage is...
Implementation of improved instruments is used to detect damage in an accurate manner and fully anal...
This work was conducted as part of the Aircraft Reliability Through Intelligent Materials Applicatio...
A procedure for damage detection in multilayer composites is described using model-based neural netw...
Abstract: A procedure for damage detection in multilayer composites is described using model-based n...
This study investigates the effectiveness of the combination of global (natural frequency) and local...
In this study, a neuro-wavelet technique was proposed for damage identification of cantilever struct...
A method based on entropy-based criteria is present to choose the optimal decomposition of Wavelet P...
Wavelet packet energies (WPEs) as the input to artificial neural networks for damage detection have ...
Aimed at the problem of intelligent classification of crack damage in different positions of the pla...
An inverse analysis based on the artificial neural network technique is introduced for effective ide...
Structural damage detection using measured dynamic data for pattern recognition is a promising appro...
Abstract In the previous study, the accuracy of damage detection for the sandwich structures with tr...
The paper presents a new neuro-wavelet damage detection technique for structural health monitoring. ...
In the field of structural health monitoring (SHM), with the mature development of artificial intell...
A sophisticated hierarchical neural network model for intelligent assessment of structural damage is...
Implementation of improved instruments is used to detect damage in an accurate manner and fully anal...
This work was conducted as part of the Aircraft Reliability Through Intelligent Materials Applicatio...