This paper presents a new structural health monitoring strategy based on a deep learning architecture that uses nonlinear ultrasonic signals for the automatic assessment of breathing-like debonds in lightweight stiffened composite panels (SCPs). Towards this, nonlinear finite element simulations of ultrasonic guided wave (GW) response of SCPs and laboratory-based experiments have been undertaken on multiple composite panels with and without baseplate-stiffener debonds using fixed a network of piezoelectric transducers (actuators/sensors). GW signals in the time domain are collected from the network of sensors onboard the SCPs and these signals in the frequency domain represent nonlinear signatures as the existence of higher harmonics. These...
Neural networks have proved to be very powerful tools in pattern recognition and machine learning an...
Fleet maintenance and safety aspects represent a strategic aspect in the managing of the modern airc...
This paper reports the development of a Structural Health Monitoring (SHM) system for a 2-D polymeri...
This paper presents a new structural health monitoring strategy based on a deep learning architectur...
This paper addresses a problem on geometric-nonlinearity, due to the occurrence of breathing debond ...
Carbon-fibre reinforced composite laminates are extensively used in aerospace, automotive, wind ener...
Structural health monitoring for lightweight complex composite structures is being investigated in t...
Carbon-fibre reinforced composite structures are extensively used as a specialized lightweight const...
This paper presents a deep learning network that performs automatic detection of defects by inspecti...
This paper aims to investigate the use of ultrasonic guided wave (GW) propagation mechanism and the ...
Detection and characterization of delamination damage are of great importance to the assurance of st...
In our previous work, we demonstrated how to use inductive bias to infuse a convolutional neural net...
This paper presents a nondestructive analysis of debonds in an adhesively-bonded carbon-fibre reinfo...
Modern aerospace structures demand lightweight design procedures and require scheduled maintenance i...
Structural Health Monitoring (SHM) deals mainly with structures instrumented by secondary bonded or ...
Neural networks have proved to be very powerful tools in pattern recognition and machine learning an...
Fleet maintenance and safety aspects represent a strategic aspect in the managing of the modern airc...
This paper reports the development of a Structural Health Monitoring (SHM) system for a 2-D polymeri...
This paper presents a new structural health monitoring strategy based on a deep learning architectur...
This paper addresses a problem on geometric-nonlinearity, due to the occurrence of breathing debond ...
Carbon-fibre reinforced composite laminates are extensively used in aerospace, automotive, wind ener...
Structural health monitoring for lightweight complex composite structures is being investigated in t...
Carbon-fibre reinforced composite structures are extensively used as a specialized lightweight const...
This paper presents a deep learning network that performs automatic detection of defects by inspecti...
This paper aims to investigate the use of ultrasonic guided wave (GW) propagation mechanism and the ...
Detection and characterization of delamination damage are of great importance to the assurance of st...
In our previous work, we demonstrated how to use inductive bias to infuse a convolutional neural net...
This paper presents a nondestructive analysis of debonds in an adhesively-bonded carbon-fibre reinfo...
Modern aerospace structures demand lightweight design procedures and require scheduled maintenance i...
Structural Health Monitoring (SHM) deals mainly with structures instrumented by secondary bonded or ...
Neural networks have proved to be very powerful tools in pattern recognition and machine learning an...
Fleet maintenance and safety aspects represent a strategic aspect in the managing of the modern airc...
This paper reports the development of a Structural Health Monitoring (SHM) system for a 2-D polymeri...