Application of machine learning methods for predicting hazardous failures of railway track assets
https://doi.org/10.21683/1729-2646-2020-20-2-43-53
Abstract
About the Authors
I. B. ShubinskyRussian Federation
Igor B. Shubinsky, Doctor of Engineering, Professor, Deputy Director of Integrated Research and Development Unit
Moscow
phone: +7 (495) 786 68 57
A. M. Zamyshliaev
Russian Federation
Alexey M. Zamyshliaev, Doctor of Engineering, Deputy Director General
Moscow
phone: +7 495 967 77 02
O. B. Pronevich
Russian Federation
Olga B. Pronevich, Head of Unit
Moscow
phone: +7 (985) 242 21 62
A. N. Ignatov
Russian Federation
Alexey N. Ignatov, Candidate of Physics and Mathematics, Senior Lecturer
Moscow
phone: +7 (906) 059 50
E. N. Platonov
Russian Federation
References
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Review
For citations:
Shubinsky I.B., Zamyshliaev A.M., Pronevich O.B., Ignatov A.N., Platonov E.N. Application of machine learning methods for predicting hazardous failures of railway track assets. Dependability. 2020;20(2):43-53. https://doi.org/10.21683/1729-2646-2020-20-2-43-53