Augmented Ultrasonic Data for Machine Learning
Flaw detection in non-destructive testing, especially in complex signals like ultrasonic data, has thus far relied heavily on the expertise and judgement of trained human inspectors. While automated systems have been used for a long time, these have mostly been limited to using simple decision autom...
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Zusammenfassung: | Flaw detection in non-destructive testing, especially in complex signals like
ultrasonic data, has thus far relied heavily on the expertise and judgement of
trained human inspectors. While automated systems have been used for a long
time, these have mostly been limited to using simple decision automation, such
as signal amplitude threshold. The recent advances in various machine learning
algorithms have solved many similarly difficult classification problems, that
have previously been considered intractable. For non-destructive testing,
encouraging results have already been reported in the open literature, but the
use of machine learning is still very limited in NDT applications in the field.
Key issue hindering their use, is the limited availability of representative
flawed data-sets to be used for training. In the present paper, we develop
modern, very deep convolutional network to detect flaws from phased-array
ultrasonic data. We make extensive use of data augmentation to enhance the
initially limited raw data and to aid learning. The data augmentation utilizes
virtual flaws - a technique, that has successfully been used in training human
inspectors and is soon to be used in nuclear inspection qualification. The
results from the machine learning classifier are compared to human performance.
We show, that using sophisticated data augmentation, modern deep learning
networks can be trained to achieve superhuman performance by significant
margin. |
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DOI: | 10.48550/arxiv.1903.11399 |