A neural network with an analog output is presented to determine the angle of inclination of a surface-breaking crack from ultrasonic backscattering data. A neural network which was trained by the use of synthetic data set to estimate the depth of a crack, assuming that the inclined crack angle is known, was presented earlier[1,2]. In this study, a neural network estimates the angle of inclination of the surface-breaking crack, assuming that the depth of the crack is 2.0mm, by utilizing the waveforms of backscattered signals from the crack. The plate with a surface-breaking crack is immersed in water and the crack is insonified from the opposite side of the plate. The angle of incidence with the normal to the insonified face of the plate is...
A crack characterization problem must involve analysis of a signal received by appropriate transduce...
The objective of this work has been to demonstrate the feasibility of estimating automatically the s...
Adaptive Learning Networks (ALNs) are algebraic, nonlinear multinomials whose structure and coeffici...
A neural network with an analog output is presented to determine the angle of inclination of a surfa...
A neural network with an analog output is presented for crack-depth estimation from ultrasonic signa...
Ultrasonic inspection of riveted joints carried out by human operator is cumbersome and time consumi...
In these years, a lot of numerical analyses based on elastic wave propagation theory have been carri...
Neural networks have proven to provide a powerful technique to determine the crack size and orientat...
The objective of the work was to develop an ultrasonic inversion procedure which (1) discriminates, ...
An inverse analysis based on the artificial neural network technique is introduced for effective ide...
Machine learning for nondestructive evaluation (NDE) has the potential to bring significant improvem...
Deep learning is an effective method for ultrasonic crack characterization due to its high level of ...
Aerospace systems are expected to remain in service well beyond their designed life. Consequently, m...
Copyright © 2013 Zachary Kral et al. This is an open access article distributed under the Creative C...
Automatic crack inspection techniques that limit the necessity of human have the potential to lower ...
A crack characterization problem must involve analysis of a signal received by appropriate transduce...
The objective of this work has been to demonstrate the feasibility of estimating automatically the s...
Adaptive Learning Networks (ALNs) are algebraic, nonlinear multinomials whose structure and coeffici...
A neural network with an analog output is presented to determine the angle of inclination of a surfa...
A neural network with an analog output is presented for crack-depth estimation from ultrasonic signa...
Ultrasonic inspection of riveted joints carried out by human operator is cumbersome and time consumi...
In these years, a lot of numerical analyses based on elastic wave propagation theory have been carri...
Neural networks have proven to provide a powerful technique to determine the crack size and orientat...
The objective of the work was to develop an ultrasonic inversion procedure which (1) discriminates, ...
An inverse analysis based on the artificial neural network technique is introduced for effective ide...
Machine learning for nondestructive evaluation (NDE) has the potential to bring significant improvem...
Deep learning is an effective method for ultrasonic crack characterization due to its high level of ...
Aerospace systems are expected to remain in service well beyond their designed life. Consequently, m...
Copyright © 2013 Zachary Kral et al. This is an open access article distributed under the Creative C...
Automatic crack inspection techniques that limit the necessity of human have the potential to lower ...
A crack characterization problem must involve analysis of a signal received by appropriate transduce...
The objective of this work has been to demonstrate the feasibility of estimating automatically the s...
Adaptive Learning Networks (ALNs) are algebraic, nonlinear multinomials whose structure and coeffici...