Способ прямого синтаксического преобразования данных как средство минимизации объема данных о событиях и инцидентах информационной безопасности
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Научный журнал Моделирование, оптимизация и информационные технологииThe scientific journal Modeling, Optimization and Information Technology
Online media
issn 2310-6018

A method of direct syntactic transformation of data as a means of minimizing the amount of data on information security events and incidents

idKorolev I.D. idMarkin D.I. idLitvinov E.S. idRogozin E.A.

UDC УДК 004.654
DOI: 10.26102/2310-6018/2021.34.3.024

  • Abstract
  • List of references
  • About authors

The relevance of the study is due to the need to improve the speed and quality of information exchange in information infrastructures protected by means of information security centers (security operation centers) during the period of active malicious impact on the communication channel, the use of high-load or low-speed (unstable) communication channels. In this regard, this article is aimed at identifying a method (or method) for compressing transmitted data in real time (or with minimal delays), working with minimal requirements for the resources involved and allowing you to achieve the highest possible level of data compression. The method to study this problem is to compare the capabilities and characteristics of various methods and methods of data compression under specified conditions. This approach allows you to comprehensively consider the advantages and disadvantages of each of the proposed methods and methods, as well as to select and evaluate the most appropriate one. The article presents a large number of different methods and methods of data compression, reveals the main advantages of the chosen method of data compression by direct syntactic replacement, identifies its advantages and disadvantages, and justifies the need to use this method for compressing transmitted data about identified events and incidents of information security. The materials of the article are of practical value for specialists and developers working in the field of information security, as well as theoretical value for researchers conducting their research both in the field of information security and in the field of information technology in general.

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Korolev Igor Dmitrievich
doctor of technical sciences, professor

ORCID |

Krasnodar Higher Military School

Krasnodar, Russian Federation

Markin Denis Igorevich

ORCID |

Krasnodar Higher Military School

Krasnodar, Russian Federation

Litvinov Evgeny Sergeevich

ORCID |

Krasnodar Higher Military School

Krasnodar, Russian Federation

Rogozin Evgeny Alekseevich
Doctor of Technical Sciences, professor

ORCID |

Military Training and Research Center of the Air Force "Air Force Academy named after Professor N. E. Zhukovsky and Yu. A. Gagarin"

Voronezh, Russian Federation

Keywords: database, coding, compression, database management system, information security events and incidents, communication channels

For citation: Korolev I.D. Markin D.I. Litvinov E.S. Rogozin E.A. A method of direct syntactic transformation of data as a means of minimizing the amount of data on information security events and incidents. Modeling, Optimization and Information Technology. 2021;9(3). Available from: https://moitvivt.ru/ru/journal/pdf?id=1002 DOI: 10.26102/2310-6018/2021.34.3.024 (In Russ).

345

Full text in PDF

Received 11.06.2021

Revised 26.09.2021

Accepted 27.09.2021

Published 17.10.2021