REAL-TIME INTELLIGENT ANOMALY DETECTION AND PREVENTION SYSTEM

Remzi GÜRFİDAN, Şerafettin ATMACA, Tuncay YİĞİT
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引用次数: 0

Abstract

Real-time anomaly detection in network traffic is a method that detects unexpected and anomalous behaviour by identifying normal behaviour and statistical patterns in network traffic data. This method is used to detect potential attacks or other anomalous conditions in network traffic. Real-time anomaly detection uses different algorithms to detect abnormal activities in network traffic. These include statistical methods, machine learning and deep learning techniques. By learning the normal behaviour of network traffic, these methods can detect unexpected and anomalous situations. Attackers use various techniques to mimic normal patterns in network traffic, making it difficult to detect. Real-time anomaly detection allows network administrators to detect attacks faster and respond more effectively. Real-time anomaly detection can improve network performance by detecting abnormal conditions in network traffic. Abnormal traffic can overuse the network's resources and cause the network to slow down. Real-time anomaly detection detects abnormal traffic conditions, allowing network resources to be used more effectively. In this study, blockchain technology and machine learning algorithms are combined to propose a real-time prevention model that can detect anomalies in network traffic.
实时智能异常检测和预防系统
网络流量实时异常检测是一种通过识别网络流量数据中的正常行为和统计规律,对异常行为进行检测的方法。该方法用于检测网络流量中潜在的攻击或其他异常情况。实时异常检测采用不同的算法检测网络流量中的异常活动。其中包括统计方法、机器学习和深度学习技术。通过学习网络流量的正常行为,这些方法可以检测到意外和异常情况。攻击者使用各种技术模仿网络流量中的正常模式,使其难以检测。实时异常检测可以使网络管理员更快地发现攻击,更有效地响应。实时异常检测通过检测网络流量中的异常情况,提高网络性能。异常流量会占用网络资源,导致网络速度变慢。实时异常检测检测异常流量情况,使网络资源得到更有效的利用。在本研究中,区块链技术和机器学习算法相结合,提出了一种可以检测网络流量异常的实时预防模型。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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