Structural health monitoring for lightweight complex composite structures is being investigated in this paper with a data-driven deep learning approach to facilitate automated learning of the map of transformed signal features to damage classes. Towards this, a series of acoustic emission (AE) based laboratory experiments have been carried out on a composite sample using a piezoelectric AE sensor network. The registered time-domain AE signals from the assigned sensor networks on the composite panel are processed with the continuous wavelet transform to extract time-frequency scalograms. A convolutional neural network based deep learning architecture is proposed to automatically extract the discrete damage features from the scalogram images ...
The vibrational behavior of composite structures has been demonstrated as a useful feature for ident...
This study proposes the exploitation of deep learning for quantitative assessment of visual detectab...
This thesis considers two basic aspects of impact damage in composite materials, namely damage sever...
Structural health monitoring for lightweight complex composite structures is being investigated in t...
Damage detection and the classification of carbon fiber-reinforced composites using non-destructive ...
Advanced non-destructive monitoring scheme is necessary for modern-day lightweight composite structu...
In this paper, a Deep Learning approach is proposed to classify impact data based on the type of imp...
Advanced non-destructive monitoring scheme is necessary for modern-day lightweight composite structu...
Modern aerospace structures demand lightweight design procedures and require scheduled maintenance i...
Classifying the type of damage occurring within a structure using a structural health monitoring sys...
This paper reports on a novel metamodel for impact detection, localization and characterization of c...
A lot of studies have been done on Acoustic Emission (AE) covering a wide range of materials and app...
AbstractClassifying the type of damage occurring within a structure using a structural health monito...
Background The use of Acoustic Emission (AE) as a Structural Health Monitoring (SHM) technique is ve...
The vibrational behavior of composite structures has been demonstrated as a useful feature for ident...
This study proposes the exploitation of deep learning for quantitative assessment of visual detectab...
This thesis considers two basic aspects of impact damage in composite materials, namely damage sever...
Structural health monitoring for lightweight complex composite structures is being investigated in t...
Damage detection and the classification of carbon fiber-reinforced composites using non-destructive ...
Advanced non-destructive monitoring scheme is necessary for modern-day lightweight composite structu...
In this paper, a Deep Learning approach is proposed to classify impact data based on the type of imp...
Advanced non-destructive monitoring scheme is necessary for modern-day lightweight composite structu...
Modern aerospace structures demand lightweight design procedures and require scheduled maintenance i...
Classifying the type of damage occurring within a structure using a structural health monitoring sys...
This paper reports on a novel metamodel for impact detection, localization and characterization of c...
A lot of studies have been done on Acoustic Emission (AE) covering a wide range of materials and app...
AbstractClassifying the type of damage occurring within a structure using a structural health monito...
Background The use of Acoustic Emission (AE) as a Structural Health Monitoring (SHM) technique is ve...
The vibrational behavior of composite structures has been demonstrated as a useful feature for ident...
This study proposes the exploitation of deep learning for quantitative assessment of visual detectab...
This thesis considers two basic aspects of impact damage in composite materials, namely damage sever...