Conceptual Model Creation for Automated Self-training System of Functional Control and Detection of Railway Transport

Journal title

International Journal of Electronics and Telecommunications




vol. 67


No 4


Oralbekova, Ayaulym : Kazakh University Ways of Communications, Almaty, Kazakhstan ; Amanova, Marzhana : Kazakh University Ways of Communications, Almaty, Kazakhstan ; Rustambekova, Kamila : Kazakh University Ways of Communications, Almaty, Kazakhstan ; Kaskatayev, Zhanat : Kazakh University Ways of Communications, Almaty, Kazakhstan ; Kisselyova, Olga : Kazakh Academy of Transport and Communications named after M. Tynyshpayev, Almaty, Kazakhstan ; Nurgaliyeva, Roza : Kazakh University Ways of Communications, Almaty, Kazakhstan



railway transport ; a system of components and assemblies ; decision support systems ; intelligent technology ; automatic detection systems ; an object used for training

Divisions of PAS

Nauki Techniczne




Polish Academy of Sciences Committee of Electronics and Telecommunications


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DOI: 10.24425/ijet.2021.137852