Adaptive Learning Networks (ALNs) are algebraic, nonlinear multinomials whose structure and coefficients are learned from empirical data. Over the past several years, their application to quantitative NDE problems has become widespread. The major advantage of the ALN approach is that only a modest data base of experiments is needed, from which the ALN models can be trained. In this work, ALNs are used as a nonlinear, empirical inversion procedure for various defect geometries. Measurements from a sparselypopulated ultrasonic transducer array are input to the ALNs which estimate the defect characteristics. The defects considered are (1) elliptical cracks, (2) irregular-shaped voids, and (3) surface-breaking semielliptical cracks. The models ...
Ultrasonic inspection of riveted joints carried out by human operator is cumbersome and time consumi...
Machine learning for nondestructive evaluation (NDE) has the potential to bring significant improvem...
This thesis investigates the use of artificial neural networks (ANNs) as a means of processing signa...
Adaptive Learning Networks (ALNs) are algebraic, nonlinear multinomials whose structure and coeffici...
Adaptive Learning Networks (ALNs) are algebraic, nonlinear multinomials whose structure and coeffici...
The objective of the work was to develop an ultrasonic inversion procedure which (1) discriminates, ...
The objective of this work has been to demonstrate the feasibility of estimating automatically the s...
The overall objective of this work was to demonstrate feasibility of adaptive nonlinear signal proce...
Empirical solutions via the adaptive learning network methodology have been obtained to measure char...
The purpose of this presentation is to introduce to the NDE community an empirical modeling techniqu...
Broadband ultrasonic pulses reflected from adhesively bonded structures have been used to train adap...
An important aspect of non-destructive testing is the interpretation and classification of signal ob...
I would like to present some ideas regarding the current stat us of fatigue crack NOE, where the fie...
Flaw detection problems in ultrasonic NDE can be considered as two-class classification problems, i....
Deep learning is an effective method for ultrasonic crack characterization due to its high level of ...
Ultrasonic inspection of riveted joints carried out by human operator is cumbersome and time consumi...
Machine learning for nondestructive evaluation (NDE) has the potential to bring significant improvem...
This thesis investigates the use of artificial neural networks (ANNs) as a means of processing signa...
Adaptive Learning Networks (ALNs) are algebraic, nonlinear multinomials whose structure and coeffici...
Adaptive Learning Networks (ALNs) are algebraic, nonlinear multinomials whose structure and coeffici...
The objective of the work was to develop an ultrasonic inversion procedure which (1) discriminates, ...
The objective of this work has been to demonstrate the feasibility of estimating automatically the s...
The overall objective of this work was to demonstrate feasibility of adaptive nonlinear signal proce...
Empirical solutions via the adaptive learning network methodology have been obtained to measure char...
The purpose of this presentation is to introduce to the NDE community an empirical modeling techniqu...
Broadband ultrasonic pulses reflected from adhesively bonded structures have been used to train adap...
An important aspect of non-destructive testing is the interpretation and classification of signal ob...
I would like to present some ideas regarding the current stat us of fatigue crack NOE, where the fie...
Flaw detection problems in ultrasonic NDE can be considered as two-class classification problems, i....
Deep learning is an effective method for ultrasonic crack characterization due to its high level of ...
Ultrasonic inspection of riveted joints carried out by human operator is cumbersome and time consumi...
Machine learning for nondestructive evaluation (NDE) has the potential to bring significant improvem...
This thesis investigates the use of artificial neural networks (ANNs) as a means of processing signa...