Abstract
Abstract
In this paper, an application of computer vision and machine learning algorithms for common crossing frog diagnostics is presented. The rolling surface fatigue of frogs along the crossing lifecycle is analysed. The research is based on information from high-resolution optical images of the frog rolling surface and images from magnetic particle inspection. Image processing methods are used to pre-process the images and to detect the feature set that corresponds to objects similar to surface cracks. Machine learning methods are used for the analysis of crack images from the beginning to the end of the crossing lifecycle. Statistically significant crack features and their combinations that depict the surface fatigue state are found. The research result consists of the early prediction of rail contact fatigue.
Publisher
Springer Science and Business Media LLC
Subject
Electrical and Electronic Engineering,Urban Studies,Transportation,Automotive Engineering,Geography, Planning and Development,Civil and Structural Engineering
Reference25 articles.
1. Fendrich L, Fengler W (2013) Handbuch Eisenbahninfrastruktur (Field manual Railway Infrastructure). Springer, Berlin. https://doi.org/10.1007/978-3-642-30021-9
2. Zoll A, Gerber U, Fengler W (2016) Das Messsystem ESAH-M (The measuring system ESAH-M). EI-Eisenbahningenieur Kalender 1:49–62. ISSN: 0934-5930
3. Gerber U, Zoll A, Fengler W (2013) Fahrzeugbasierte Beurteilung des Herzstückverschleißes (Vehicle-based assessment of wear on common crossings). EI-Eisenbahningenieur 05:26–30. ISSN: 0013-2810
4. Sysyn M, Kovalchuk V, Jiang D (2019) Performance study of the inertial monitoring method for railway turnouts. Int J Rail Transp 7(2):103–116. https://doi.org/10.1080/23248378.2018.1514282
5. Gerber U, Zoll A, Fengler W (2015) Verschleiß und Fahrflächenermüdung an Weichen mit starrer Herzstückspitze (Wear and Rolling Contact Fatigue on common crossings of railway turnouts). ETR Eisenbahntechnische Rundschau 01:36–41. ISSN: 0013-2845
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