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Erschienen in: Automatic Control and Computer Sciences 8/2021

01.12.2021

Using the Neat-Hypercube Mechanism to Detect Cyber Attacks on IoT Systems

verfasst von: A. D. Fatin, E. Yu. Pavlenko

Erschienen in: Automatic Control and Computer Sciences | Ausgabe 8/2021

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Abstract

This paper considers a method for detecting abnormal behavior in cyber-physical systems, Internet of Things (IoT) systems, and distributed technological process automated control system ACS by predicting and analyzing of multidimensional time series by means of neuroevolutionary algorithms based on the development of the hypercube substrate. The method is based on the detection of deviations between the current values of the state of the cyber-physical system and the predicted results. The results of studies of the described method demonstrate the correctness and accuracy of its work.
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Metadaten
Titel
Using the Neat-Hypercube Mechanism to Detect Cyber Attacks on IoT Systems
verfasst von
A. D. Fatin
E. Yu. Pavlenko
Publikationsdatum
01.12.2021
Verlag
Pleiades Publishing
Erschienen in
Automatic Control and Computer Sciences / Ausgabe 8/2021
Print ISSN: 0146-4116
Elektronische ISSN: 1558-108X
DOI
https://doi.org/10.3103/S0146411621080101

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