Previous research (Li et al., Understanding the disharmony between dropout and batch normalization by variance shift. CoRR abs/1801.05134 (2018). http://arxiv.org/abs/1801.05134arXiv:1801.05134) has shown the plausibility of using a modern deep convolutional neural network to detect flaws from phased-array ultrasonic data. This brings the repeatability and effectiveness of automated systems to complex ultrasonic signal evaluation, previously done exclusively by human inspectors. The major breakthrough was to use virtual flaws to generate ample flaw data for the teaching of the algorithm. This enabled the use of raw ultrasonic scan data for detection and to leverage some of the approaches used in machine learning for image recognition. Unlik...
The objective of this work is to develop an advanced automatic ultrasonic inspection system via adap...
There are a number of modern approaches that can be used to characterize flaws in materials. For exa...
Ultrasonic nondestructive evaluation (UNDE) of material aims at the detection of hidden flaws in mat...
Flaw detection in non-destructive testing, especially for complex signals like ultrasonic data, has ...
Modern ultrasonic inspections utilize ever-richer data-sets made possible by phased array equipment....
Despite its popularity in literature, there are few examples of machine learning (ML) being used for...
The Industrial Revolution-4.0 promises to integrate multiple technologies including but not limited ...
Deep learning is an effective method for ultrasonic crack characterization due to its high level of ...
The complete characterization of a flaw requires information about the flaw type (crack, void, inclu...
Machine learning for nondestructive evaluation (NDE) has the potential to bring significant improvem...
Machine learning (ML) techniques have the potential to provide automated data analysis for nondestru...
Flaw detection problems in ultrasonic NDE can be considered as two-class classification problems, i....
Abstract Ultrasonic testing (UT) is increasingly combined with machine learning (ML) techniques for ...
In the ultrasonic testing of materials for flaws, it is important to be able both to identify the fl...
The industrial use of ultrasonic flaw classification using neural networks in weldments must overcom...
The objective of this work is to develop an advanced automatic ultrasonic inspection system via adap...
There are a number of modern approaches that can be used to characterize flaws in materials. For exa...
Ultrasonic nondestructive evaluation (UNDE) of material aims at the detection of hidden flaws in mat...
Flaw detection in non-destructive testing, especially for complex signals like ultrasonic data, has ...
Modern ultrasonic inspections utilize ever-richer data-sets made possible by phased array equipment....
Despite its popularity in literature, there are few examples of machine learning (ML) being used for...
The Industrial Revolution-4.0 promises to integrate multiple technologies including but not limited ...
Deep learning is an effective method for ultrasonic crack characterization due to its high level of ...
The complete characterization of a flaw requires information about the flaw type (crack, void, inclu...
Machine learning for nondestructive evaluation (NDE) has the potential to bring significant improvem...
Machine learning (ML) techniques have the potential to provide automated data analysis for nondestru...
Flaw detection problems in ultrasonic NDE can be considered as two-class classification problems, i....
Abstract Ultrasonic testing (UT) is increasingly combined with machine learning (ML) techniques for ...
In the ultrasonic testing of materials for flaws, it is important to be able both to identify the fl...
The industrial use of ultrasonic flaw classification using neural networks in weldments must overcom...
The objective of this work is to develop an advanced automatic ultrasonic inspection system via adap...
There are a number of modern approaches that can be used to characterize flaws in materials. For exa...
Ultrasonic nondestructive evaluation (UNDE) of material aims at the detection of hidden flaws in mat...