SDN网络中的增强扫描及其机器学习检测

Abdullah H. Alqahtani, John A. Clark
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引用次数: 0

摘要

SDN (Software-Defined Networking)是一种动态的、可编程的组网方式,使网络配置更加简单,提高了网络效率。控制平面与网络平面的分离以及控制器对整个网络的全局可见性使得数据的监控和采集比传统网络容易得多。与传统攻击相比,高级持续性威胁(apt)具有复杂的特征,因此很难检测和预防。在sdn背景下检测APTs的研究很少。在SDN中,扫描是节点上维护的流规则重建的基本部分(并且支持许多进一步的攻击)。在本文中,我们提出了一种在SDN网络中更隐蔽的扫描方法,典型的apt采取的“低而慢”的方法,并增强了网络扫描工具来实现它。我们评估了机器学习(ML)算法在SDN内检测此类APT扫描活动的能力。我们将XGBoost分类器用于提出的检测模型,仅使用5个特征,就在准确性、召回率、精度和f1测量方面达到了至少97.8%。生成不同网络规模的数据集,作为实验的基础,并免费提供给公众使用。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Enhanced Scanning in SDN Networks and its Detection using Machine Learning
Software-Defined Networking (SDN) is a networking approach that is dynamic and programmable, making network configuration easier and improving network efficiency. The separation of the control plane from the network plane and the global visibility of the controller to the whole network make the monitoring and collection of data much easier than in traditional networks. Advanced Persistent Threats (APTs) are notoriously hard to detect and prevent as they have sophisticated characteristics compared to traditional attacks. Little research has been carried out on the detection of APTs in the context of SDNs. In SDN, scanning is a fundamental part of the reconstruction of flow rules maintained at nodes (and underpins many further attacks). In this paper, we propose a more stealthy means of scanning within SDN networks, typical of the "low and slow" approach taken by APTs, and enhance a network scanning tool to implement it. We evaluate how well Machine Learning (ML) algorithms can detect such APT scanning activities inside SDN. We use the XGBoost classifier for the proposed detection model, achieving at least 97.8% in Accuracy, Recall, Precision and F1-measures using just 5 features. Datasets over different network sizes are generated to form the basis for experiments and are offered free public use.
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