Application of Convolutional Neural Networks for Recognizing Long Structural Elements of Rails in Eddy-Current Defectograms
https://doi.org/10.18255/1818-1015-2020-3-316-329
Abstract
To ensure traffic safety of railway transport, non-destructive test of rails is regularly carried out by using various approaches and methods, including eddy-current flaw detection methods. An automatic analysis of large data sets (defectograms) that come from the corresponding equipment is an actual problem. The analysis means a process of determining the presence of defective sections along with identifying structural elements of railway tracks in defectograms. This article is devoted to the problem of recognizing images of long structural elements of rails in eddy-current defectograms. Two classes of rail track structural elements are considered: 1) rolling stock axle counters, 2) rail crossings. Long marks that cannot be assigned to these two classes are conditionally considered as defects and are placed in a separate third class. For image recognition of structural elements in defectograms a convolutional neural network is applied. The neural network is implemented by using the open library TensorFlow. To this purpose each selected (picked out) area of a defectogram is converted into a graphic image in a grayscale with size of 30 x 140 points.
About the Authors
Egor V. KuzminRussian Federation
Professor, Doctor of Science.
14 Sovetskaya str., Yaroslavl 150003
Oleg E. Gorbunov
Russian Federation
General Director, PhD.
144 Soyuznaya str., Yaroslavl, 150008
Petr O. Plotnikov
Russian Federation
Production Engineer.
144 Soyuznaya str., Yaroslavl, 150008
Vadim A. Tyukin
Russian Federation
Head of Software Development.
144 Soyuznaya str., Yaroslavl, 150008
Vladimir A. Bashkin
Russian Federation
Professor, Doctor of Science.
14 Sovetskaya str., Yaroslavl 150003
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Review
For citations:
Kuzmin E.V., Gorbunov O.E., Plotnikov P.O., Tyukin V.A., Bashkin V.A. Application of Convolutional Neural Networks for Recognizing Long Structural Elements of Rails in Eddy-Current Defectograms. Modeling and Analysis of Information Systems. 2020;27(3):316-329. (In Russ.) https://doi.org/10.18255/1818-1015-2020-3-316-329