基于机器学习的SDN网络DDoS攻击智能检测概念

M. Klymash, O. Shpur, Nazar Peleh, O. Maksysko
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引用次数: 5

摘要

本文提出了基于日志分析的SDN网络DDoS攻击智能检测的概念。由于SDN管理和自学习元素的实现,我们建议教SDN控制器使用有关流状态、会话持续时间及其来源的信息来检测攻击,使用来自日志和流表的信息。为此,有必要将总流量划分为异常流量和正常流量。意识到哪些客户端请求是ddos攻击的结果,可以创建适当的规则来阻止它们。我们建议通过使用Kulbak-Leibler方法确定流量行为的度量来检测会话时间内的流量异常。在我们的示例中,我们将比较平均会话时间与从特定IP地址访问服务器的时间。获得的值将被记录在机器学习数据库中。如果比较结果没有带来结果,则比较最近7天内访问该服务的持续时间。类似地,确定KL的值并将其写入ML数据库。ML中的KL累积值将通过分析服务长度和访问Controller的规定规则来识别流准入请求中的异常情况。由于使用机器学习,SDN控制器将阻止DDoS攻击刚刚开始的IP域
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Concept of Intelligent Detection of DDoS Attacks in SDN Networks Using Machine Learning
In this paperwe propose the concept of intelligent detection of DDoS attacks in SDN networks by log analyzing. Due to SDN management and implementation of the self-learning element, we propose to teach the SDN controller to detect attacks using information about the state of the flow, the duration of the session and its source, using information from logs and flow tables. To do this, it is necessary to divide the total traffic flow into anomalous and normal. Realizing which client requests are the result of DDoS-attack, one can create the appropriate rules for their blocking. We propose to do this by determining the metrics of traffic behavior using the Kulbak-Leibler approach to detect flow anomalies over the session time. In our case, we will compare the average session time with time to access the server from specific IP addresses. The obtained values will be recorded in the Machine Learning database. If the result of the comparison did not bring results, the duration of access to the service during the last seven days is compared. Similarly, the value of KL is determined and written to the ML database. KL accumulation values in a ML will identify anomalies in the flow admission requests by analyzing the length of service and access to prescribe rules of Controller. As a result of using machine learning, the SDN controller will block IP domains from which DDoS attacks are just starting
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