MATHEMATICAL MODEL OF THE FUNCTIONING OF AN AUTOMATED MILITARY RADIO COMMUNICATION SYSTEM IN THE PROCESS OF ITS PROTECTION AGAINST RADIO RECONNAISSANCE BY RADIO EXCHANGE BY RATIONAL ROUTES

Authors

  • Maksym Yakovlev
  • Anatolii Volobuiev
  • Yurii Pribyliev

DOI:

https://doi.org/10.33405/2078-7480/2024/2/89/309282

Keywords:

model, mathematical modeling, automated systems, military radio communication, signal, information exchange, , radio reconnaissance, intelligence availability, training material and technical base, training of troops, training base, training complex, artificial intelligence, functioning algorithms

Abstract

The article presents the general provisions and essence of the approach to building a mathematical model of the functioning of an automated military radio communication system in the process of its protection against radio reconnaissance by radio exchange along rational routes. The main components of the mathematical model of the functioning of an automated military radio communication system in the process of its protection against radio reconnaissance by radio exchange along rational routes with low intelligence availability are considered. The general structure of a mathematical model of the functioning of an automated military radio communication system in the process of its protection against radio reconnaissance by radio exchange along rational routes is proposed. It is shown that in the basic modeling unit of the subprocess of determining the rational routes of radio exchange among the set of possible ones, an optimization problem is solved. The result of solving this optimization problem is presented in tabular form for convenience. The analytical expressions for the third-rank tensor of the intelligence accessibility of individual branches of the radio communication system structure are obtained.

References

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Published

2024-07-29

Issue

Section

Articles