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T-Comm_Article 8_12_2020

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USE OF ELEMENTS OF ARTIFICIAL INTELLIGENCE IN THE ANALYSIS OF INFOCOMMUNICATION TRAFFIC

DOI: 10.36724/2072-8735-2020-14-12-66-71

Shakhmaran Zh. Seilov, L. N. Gumilyov ENU, Nur-Sultan, Kazakhstan, seilov_shzh@enu.kz
Vadim Yu. Goikhman, LLC «NTC «SOTSBI», Saint-Petersburg, Russia, vadgogo@gmail.com
Yerden Zhursinbek, L. N. Gumilyov ENU, Nur-Sultan, Kazakhstan, zhursinbek@gmail.com
Mereilim N. Kassenova, L. N. Gumilyov ENU, Nur-Sultan, Kazakhstan, mikassen@gmail.com
Daniyar S. Shingissov, L. N. Gumilyov ENU, Nur-Sultan, Kazakhstan, shingissov@gmail.com
Akhmet T. Kuzbayev, L. N. Gumilyov ENU, Nur-Sultan, Kazakhstan,
akuzbaev@mail.ru

This work was partially supported by the Ministry of education and science
of the Republic of Kazakhstan under Grant AP05134349

Abstract
Modern communication networks are based on multi-service networks, which are a single telecommunications structure that can transmit large volumes of multi-format information (voice, video, data) and provide users with a variety of information and communication services. Traffic transmitted in multiservice networks differs significantly from traditional traffic of telephone or other homogeneous networks. Knowledge of the nature of modern traffic is necessary for the successful construction, operation and development of multi-service communication networks, providing users with high-quality services, and efficient use of funds allocated for network development. To learn the properties of infocommunication traffic, new methodological techniques are currently used, as well as promising information technologies such as Big Data and data mining. The article is devoted to the use of such elements of artificial intelligence as expert systems and neural network technologies in relation to the analysis of infocommunication traffic. The article examines the structure of expert systems, analyzes the applied search strategies and decision-making methods. The article also provides an overview of the architecture of neural networks in relation to traffic analysis tasks. The traffic analysis task is a classification task. The feasibility of using multi-layer neural networks with direct signal propagation for traffic analysis is shown. The following neural network architecture was chosen: the input layer, in accordance with the dimension of the input signal, contained 51 neurons, two hidden layers with 20 and 10 neurons, respectively, and the output layer with five neurons, according to the number of specified types of distributions. The results obtained showed a satisfactory quality of the neural network developed and trained in the framework of the research.

Keywords:artificial intelligence, expert systems, artificial neural networks, infocommunication traffic, search strategy, knowledge base.

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Information about authors:
Shakhmaran Zh. Seilov, candidate of technical Sciences, doctor of Economic Science, professor, Dean of the faculty of information technologies of the L. N. Gumilyov ENU, Nur-Sultan, Kazakhstan.
Vadim Yu. Goikhman, candidate of technical Sciences, associate Professor, General director of LLC «NTC «SOTSBI», Saint-Petersburg, Russia.
Yerden Zhursinbek, 1st year master student of the Department «Information security», ENU named after L. N. Gumilev, G. Nur-Sultan, Kazakhstan.
Mereilim N. Kassenova, master of technical sciences, lecturer of the department of radio engineering, electronics and telecommunications, Vice-dean of the faculty of information technologies of the L. N. Gumilyov ENU, Nur-Sultan, Kazakhstan.
Daniyar S. Shingissov, master of engineering and technology, 2nd year doctoral student of the Department of Information systems, ENU named After L. N. Gumilyov, Nur-Sultan, Kazakhstan.
Akhmet T. Kuzbayev, master of engineering and technology, 2nd year doctoral student of the Department of Information systems, ENU named after L. N. Gumilyov, Nur-Sultan, Kazakhstan.