M. Anand Kumar, Edeh Michael Onyema, B. Sundaravadivazhagan, Manish Gupta, Achyut Shankar, Venkataramaiah Gude, Nagendar Yamsani
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引用次数: 0
Abstract
In order to make networks more adaptable and flexible, software-defined networking (SDN) is an architecture that abstracts the many, easily distinct layers of a network. By enabling businesses and service providers to react swiftly to shifting business requirements, SDN aims to improve network control. SDN has become an important framework for Internet of Things (IoT) and 5G. Despite recent research endeavors focused on pinpointing constraints within SDN design components, various security attacks persist, including man-in-the-middle attacks, host hijacking, ARP poisoning, and saturation attacks. Overcoming these limitations poses a challenge, necessitating robust security techniques to detect and counteract such attacks in SDN environments. This study is dedicated to developing a method for detecting and mitigating control plane attacks within Software Defined Network Environments utilizing Deep Learning Algorithms. The study presents a deep-learning-based approach to identifying malicious hosts within SDN networks, thus thwarting unauthorized access to the controller. Experimental results demonstrate the effectiveness of the proposed model in host classification, exhibiting high accuracy and performance compared to alternative approaches.
摘要 为了使网络更具适应性和灵活性,软件定义网络(SDN)是一种架构,它抽象了网络中许多易于区分的层。通过使企业和服务提供商能够对不断变化的业务需求做出快速反应,SDN 旨在改进网络控制。SDN 已成为物联网 (IoT) 和 5G 的重要框架。尽管最近的研究工作侧重于找出 SDN 设计组件中的限制因素,但各种安全攻击依然存在,包括中间人攻击、主机劫持、ARP 中毒和饱和攻击。克服这些局限性是一项挑战,需要强大的安全技术来检测和抵御 SDN 环境中的此类攻击。本研究致力于开发一种利用深度学习算法检测和缓解软件定义网络环境中控制平面攻击的方法。研究提出了一种基于深度学习的方法,用于识别 SDN 网络中的恶意主机,从而阻止对控制器的未经授权访问。实验结果表明了所提模型在主机分类方面的有效性,与其他方法相比,该模型具有更高的准确性和性能。
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