基于人工智能的网络流量异常识别算法

O. Laptiev, A. Musienko, Volodymyr Nakonechnyi, A. Sobchuk, S. Gakhov, Serhii Kopytko
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引用次数: 1

摘要

网络流量异常可能是由网络设备故障、用户意外或故意行为、攻击者的行为引起的。因此,为了保证信息网络中数据的可靠传输,需要采取措施,及时发现异常并采取措施消除异常。因此,为了保证网络中数据的可靠传输,开发新的异常检测方法迫在眉睫。本文致力于开发一种基于人工智能的网络流量异常识别改进算法。在进行分析和研究的基础上,开发了一种改进的算法,以最准确地确定异常状态。以主成分分析算法为基础,加入一种生成式对抗网络算法,一种没有老师的机器学习算法,即BIGAN,它在活动中使用编码器,即由于它的E编码器,它能够检测输入和处理的数据中的异常,从而可以在更短的时间内以更高的精度检测网络流量异常。
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Algorithm for Recognition of Network Traffic Anomalies Based on Artificial Intelligence
Abnormalities in network traffic can be caused by malfunctioning network equipment, accidental or intentional actions by users, or the actions of attackers. Thus, for reliable data transmission in the information network, it is necessary to take measures to detect anomalies in a timely manner and take measures to eliminate them. Therefore, in order to ensure reliable data transmission in the network, the development of new methods for detecting anomalies is of urgent importance. This work is devoted to the development of an improved algorithm for recognizing network traffic anomalies based on artificial intelligence. On the basis of the conducted analysis and research, an improved algorithm was developed for the most accurate determination of an abnormal state. The principle component analysis algorithm was taken as a basis and a type of Generative adversarial network algorithm, a machine learning algorithm without a teacher, was added to it, namely BIGAN, which uses an encoder in its activity, namely, thanks to its E encoder, it is able to detect anomalies in input and processed data, which made it possible to detect network traffic anomalies with greater accuracy and in less time.
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