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Detection of Anomalies in the Information Networks of Industrial Automation Systems Based on Artificial Immune Detectors

机译:基于人工免疫检测器的工业自动化系统信息网络异常检测

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The actions of attackers are the main sources of anomalies in the information networks of industrial automation systems, which can lead to serious consequences up to the occurrence of emergency situations. Neutralizing software development, as well as the development of new network anomalous behavior detection methods is one of the most important tasks. This article proposes a heuristic anomalies detection method based on the use of immune detectors in the form of the Kohonen layer and the hidden Markov model. Conclusions contain the results obtained in comparison with other anomaly detection systems. This paper proves that the proposed method can serve as a basis for building effective anomalies detection systems.
机译:攻击者的行为是工业自动化系统信息网络中异常的主要来源,可能导致严重后果,甚至发生紧急情况。中立的软件开发以及新的网络异常行为检测方法的开发是最重要的任务之一。本文提出了一种启发式异常检测方法,该方法基于使用Kohonen层和隐马尔可夫模型形式的免疫检测器。结论包含与其他异常检测系统相比获得的结果。本文证明了该方法可为建立有效的异常检测系统奠定基础。

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