Development of a method for assessing the efficiency of technical systems’ computer dynamic simulators

Authors

DOI:

https://doi.org/10.15587/1729-4061.2025.327558

Keywords:

simulation model, efficiency criteria, training, operator, practical training, technical system

Abstract

The object of the study is the process of assessing the effectiveness of technical systems’ computer dynamic simulators. The subject of the study is methods for assessing the effectiveness of dynamic simulators taking into account the criteria of economic efficiency of training of those who study. The assessment of the effectiveness of technical systems’ simulators is associated with the audit of the skills of making correct management decisions in the conditions of a complex information environment.

The advantage of this study is to assess the effectiveness of technical systems’ computer dynamic simulators that use artificial intelligence to improve training in the necessary skills in a short time, taking into account the economic component. The essence of the method is to use the proposed criteria to adequately assess the effectiveness of simulator training. The method allows to compare simulators with each other and justify ways of their development and improvement. A feature of the developed method is the proposed procedure for building and studying a simulation model that reproduces the real processes of the functioning of a technical system in a simulator. A simulation model of a real technical system through the use of the artificial intelligence function allows to improve the realism of the simulator and reduce the training time by up to 30 %. This is explained by the fact that the use of simulators with artificial intelligence will allow to more realistically simulate the processes of the functioning of a real technical system. The proposed method allows to substantiate the potential possibilities of using the simulator system in the process of practical training. The results of the study allow to evaluate the simulators to improve the quality of practical training of operators and to substantiate the directions of development and modernization of simulators

Author Biographies

Olexander Shmatko, National Technical University “Kharkiv Polytechnic Institute”

PhD, Associate Professor

Department of Software Engineering and Management Intelligent Technologies

Serhii Herasymov, National Technical University “Kharkiv Polytechnic Institute”

Doctor of Technical Sciences, Professor

Department of Cybersecurity

Stanislav Milevskyi, National Technical University “Kharkiv Polytechnic Institute”

Doctor of Technical Sciences, Associate Professor

Department of Cybersecurity

Nazar Balitskyi, National Ground Forces Academy

PhD, Head of Scientific and Organizational Department

Scientific and Organizational Department

Serhii Pohasii, National Technical University “Kharkiv Polytechnic Institute”

Doctor of Technical Sciences, Associate Professor

Department of Cybersecurity

Mykhailo Aleksieiev, National Defense University of Ukraine

PhD, Leading Researcher

Department of Problems of Military Education Development

Ihor Vlasov, National Defense University of Ukraine

PhD, Senior Researcher, Head of Department

Department of Logistic

Yevhen Melenti, National Academy of the Security Service of Ukraine

PhD, Associate Professor

First Vice-Rector

Yuliia Kovalenko, National Aviation University

PhD, Associate Professor

Department of Cybersecurity

Yevhen Peleshok, Research Institute of Military Intelligence

PhD, Senior Researcher

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Development of a method for assessing the efficiency of technical systems’ computer dynamic simulators

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Published

2025-04-29

How to Cite

Shmatko, O., Herasymov, S., Milevskyi, S., Balitskyi, N., Pohasii, S., Aleksieiev, M., Vlasov, I., Melenti, Y., Kovalenko, Y., & Peleshok, Y. (2025). Development of a method for assessing the efficiency of technical systems’ computer dynamic simulators. Eastern-European Journal of Enterprise Technologies, 2(9 (134), 50–61. https://doi.org/10.15587/1729-4061.2025.327558

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Section

Information and controlling system