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A Software Deep Packet Inspection System for Network Traffic Analysis and Anomaly Detection

机译:用于网络流量分析和异常检测的软件深度包检查系统

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摘要

In this paper, to solve the problem of detecting network anomalies, a method of forming a set of informative features formalizing the normal and anomalous behavior of the system on the basis of evaluating the Hurst (H) parameter of the network traffic has been proposed. Criteria to detect and prevent various types of network anomalies using the Three Sigma Rule and Hurst parameter have been defined. A rescaled range (RS) method to evaluate the Hurst parameter has been chosen. The practical value of the proposed method is conditioned by a set of the following factors: low time spent on calculations, short time required for monitoring, the possibility of self-training, as well as the possibility of observing a wide range of traffic types. For new DPI (Deep Packet Inspection) system implementation, algorithms for analyzing and captured traffic with protocol detection and determining statistical load parameters have been developed. In addition, algorithms that are responsible for flow regulation to ensure the QoS (Quality of Services) based on the conducted static analysis of flows and the proposed method of detection of anomalies using the parameter Hurst have been developed. We compared the proposed software DPI system with the existing SolarWinds Deep Packet Inspection for the possibility of network traffic anomaly detection and prevention. The created software components of the proposed DPI system increase the efficiency of using standard intrusion detection and prevention systems by identifying and taking into account new non-standard factors and dependencies. The use of the developed system in the IoT communication infrastructure will increase the level of information security and significantly reduce the risks of its loss.
机译:为了解决检测网络异常的问题,提出了一种在评估网络流量的Hurst(H)参数的基础上,形成一套将系统的正常和异常行为形式化的信息特征的方法。已经定义了使用三西格玛规则和赫斯特参数来检测和预防各种类型的网络异常的标准。选择了用于评估赫斯特参数的重标范围(RS)方法。所提出的方法的实际价值取决于以下因素:计算所花费的时间短,监控所需的时间短,自我训练的可能性以及观察各种交通类型的可能性。对于新的DPI(深度数据包检查)系统实施,已经开发了用于通过协议检测来分析和捕获流量并确定统计负载参数的算法。另外,已经开发了负责基于进行的流的静态分析来确保QoS(服务质量)的流调节的算法,以及使用参数Hurst提出的异常检测方法。我们将提议的软件DPI系统与现有的SolarWinds深度数据包检测进行了比较,以进行网络流量异常检测和预防。提议的DPI系统创建的软件组件通过识别并考虑新的非标准因素和依赖性,提高了使用标准入侵检测和防御系统的效率。在物联网通信基础设施中使用已开发的系统将提高信息安全级别,并显着降低其丢失的风险。

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