增强软件定义网络安全性的深度学习框架

A. Dawoud, Seyed Shahristani, Chun Raun
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引用次数: 8

摘要

软件定义网络(SDN)开创了一种新的网络模式。SDN通过引入一种称为网络控制器的新的独立平面,提出了转发平面和控制平面的分离。该体系结构增强了网络弹性,分解了管理复杂性,并支持更直接的网络策略实施。然而,该模型面临着严重的安全威胁。具体来说,集中式网络控制器是一个宝贵的目标,原因有两个。首先,控制器位于应用程序和数据平面之间的中心点。其次,控制器是一种容易出现漏洞的软件,例如缓冲区和堆栈溢出。因此,提供安全措施是充分释放新模型功能的关键步骤。入侵检测是增强网络安全的一种手段。提出了基于签名的检测方法和异常检测方法。异常检测是一种广泛的方法,由各种方法部署,例如机器学习。几十年来,入侵检测解决方案一直存在性能和准确性方面的缺陷。随着机器学习的最新进展,特别是深度学习在计算机视觉和语音识别等许多领域取得了成功,本文重新审视了网络异常检测。本研究提出了一种基于无监督深度学习算法的入侵检测框架。
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A Deep Learning Framework to Enhance Software Defined Networks Security
Software-Defined Networks (SDN) initiates a novel networking model. SDN proposes the separation of forward and control planes by introducing a new independent plane called network controller. The architecture enhances the network resilient, decompose management complexity, and support more straightforward network policies enforcement. However, the model suffers from severe security threats. Specifically, a centralized network controller is a precious target for two reasons. First, the controller is located at a central point between the application and data planes. Second, a controller is software which prone to vulnerabilities, e.g., buffer and stack overflow. Hence, providing security measures is a crucial procedure towards the fully unleash of the new model capabilities. Intrusion detection is an option to enhance the networking security. Several approaches were proposed, for instance, signature-based, and anomaly detection. Anomaly detection is a broad approach deployed by various methods, e.g., machine learning. For many decades intrusion detection solution suffers performance and accuracy deficiencies. This paper revisits network anomalies detection as recent advances in machine learning particularly deep learning proofed success in many areas like computer vision and speech recognition. The study proposes an intrusion detection framework based on unsupervised deep learning algorithms.
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