Гибридная система обнаружения атак на основе комитета классификаторов
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Научный журнал Моделирование, оптимизация и информационные технологииThe scientific journal Modeling, Optimization and Information Technology
Online media
issn 2310-6018

Hybrid intrusion detection system with the use of a classifiers committee

Vasilyev V.I.   idVulfin A.M. Gvozdev V.E.   idShamsutdinov R.R.

UDC 004.056
DOI: 10.26102/2310-6018/2022.39.4.020

  • Abstract
  • List of references
  • About authors

The issues of detecting network attacks to Industrial Internet of Things (IIoT) systems are analyzed. Existing approaches for detecting such attacks based on the use of artificial intelligence methods are considered. The high interest to integration of machine learning and artificial intelligence methods as a part of hybrid systems is emphasized. Such integration makes it possible to compensate the shortcomings of some algorithms due to the advantages of others. The goal of this research is to improve the efficiency of network attacks detection. The paper proposes the implementation of a multi-level hybrid attack detection system on the basis of combining several classifiers in the committee including the artificial immune system, the multilayer perceptron, and the random forest algorithm. The choice of these classifiers is due to their high classification efficiency and the ability of artificial immune system to detect unknown network attacks. The decision is made on the basis of the conclusion of each expert (classifiers) with the use of voting mechanism. Such approach provides more accurate result in accordance with the Condorcet's jury theorem. To carry out computational experiments for assessing the effectiveness of the proposed system, the NSL-KDD network traffic data set was employed. The results of experiments carried out demonstrate the high efficiency of the proposed hybrid attack detection system based on use of classifiers committee.

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Vasilyev Vladimir Ivanovich
Doctor of Technical Sciences, Professor

Ufa University of Science and Technology

Ufa, Russian Federation

Vulfin Alexey Mikhailovich
Doctor of Technical Sciences, Associate Professor

ORCID |

Ufa University of Science and Technology

Ufa, Russian Federation

Gvozdev Vladimir Efimovich
Doctor of Technical Sciences, Professor

Ufa University of Science and Technology

Ufa, Russian Federation

Shamsutdinov Rinat Rustemovich

WoS | ORCID |

Ufa University of Science and Technology

Ufa, Russian Federation

Keywords: information security, industrial Internet of Things, intrusion detection system, network attack, NSL-KDD dataset

For citation: Vasilyev V.I. Vulfin A.M. Gvozdev V.E. Shamsutdinov R.R. Hybrid intrusion detection system with the use of a classifiers committee. Modeling, Optimization and Information Technology. 2022;10(4). Available from: https://moitvivt.ru/ru/journal/pdf?id=1267 DOI: 10.26102/2310-6018/2022.39.4.020 .

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Full text in PDF

Received 07.11.2022

Revised 13.12.2022

Accepted 28.12.2022

Published 30.12.2022