Train Type Identification at S&C

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Authors

Floriánová, Martina
Podroužek, Jan
Apeltauer, Jiří
Vukušič, Ivan
Plášek, Otto

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Referee

Mark

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Hindawi
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Abstract

The presented paper concerns the development of condition monitoring system for railroad switches and crossings that utilizes vibration data. Successful utilization of such system requires a robust and efficient train type identification. Given the complex and unique dynamical response of any vehicle track interaction, the machine learning was chosen as a suitable tool. For design and validation of the system, real on-site acceleration data were used. The resulting theoretical and practical challenges are discussed.
The presented paper concerns the development of condition monitoring system for railroad switches and crossings that utilizes vibration data. Successful utilization of such system requires a robust and efficient train type identification. Given the complex and unique dynamical response of any vehicle track interaction, the machine learning was chosen as a suitable tool. For design and validation of the system, real on-site acceleration data were used. The resulting theoretical and practical challenges are discussed.

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JOURNAL OF ADVANCED TRANSPORTATION. 2020, vol. 2020, issue 1, p. 1-12.
https://www.hindawi.com/journals/jat/2020/8849734/

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Peer-reviewed

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en

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Except where otherwised noted, this item's license is described as Creative Commons Attribution 4.0 International
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