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Detection and mitigation of DDoS attacks in SDN: A comprehensive review, research challenges and future directions

机译:检测和减轻SDN中DDOS袭击:全面审查,研究挑战和未来方向

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摘要

Many security solutions have been proposed in the past to protect Internet architecture from a diversity of malware. However, the security of the Internet and its applications is still an open research challenge. Researchers continuously working on novel network architectures such as HTTP as the narrow waist, Named Data Networking (NDN), programmable networks and Software-Defined Networking (SDN) for designing a more reliable network. Among these, SDN has emerged as a more robust and secure solution to combat against such malicious activities. In SDN, bifurcation of control plane and data plane provides more manageability, control, dynamic updating of rules, analysis, and global view of the network using a centralized controller. Though SDN seems a secured network architecture as compared to the conventional IP-based networks, still, SDN itself is vulnerable to many types of network intrusions and facing severe deployment challenges. This paper systematically reviews around 70 prominent DDoS detection and mitigation mechanisms in SDN networks. These mechanisms are characterized into four categories, viz: Information theory-based methods, Machine learning-based methods, Artificial Neural Networks (ANN) based methods and other miscellaneous methods. The paper also dowries and deliberates on various open research issues, gaps and challenges in the deployment of a secure SDN-based DDoS defence solution. Such an exhaustive review will surely help the researcher community to provide more robust and reliable DDoS solutions in SDN networks.
机译:过去已经提出了许多安全解决方案,以保护Internet架构免受恶意软件的多样性。但是,互联网的安全性及其应用仍然是开放的研究挑战。研究人员在新颖的网络架构上不断工作,例如HTTP作为窄腰,名为Data Networking(NDN),可编程网络和软件定义的网络(SDN),用于设计更可靠的网络。其中,SDN已成为对抗这种恶意活动的更强大和安全的解决方案。在SDN中,使用集中控制器,控制平面和数据平面的分叉提供更多可管理性,控制,动态更新网络的规则,分析和全局视图。虽然SDN似乎是与传统的基于IP的网络相比的安全网络架构,但是,SDN本身易于攻击许多类型的网络入侵,并面临严重的部署挑战。本文系统地评估了SDN网络中大约70个显着的DDOS检测和缓解机制。这些机制的特点是四类:基于信息理论的方法,基于机器学习的方法,基于人工神经网络(ANN)的方法和其他杂项方法。本文还讨论了在部署安全的SDN的DDOS防御解决方案方面的各种开放研究问题,差距和挑战。这种详尽的评论肯定会帮助研究人员社区在SDN网络中提供更强大和可靠的DDOS解决方案。

著录项

  • 来源
    《Computer science review》 |2020年第8期|100279.1-100279.25|共25页
  • 作者

    Jagdeep Singh; Sunny Behal;

  • 作者单位

    Department of Computer Science and Engineering Shaheed Bhagat Singh State Technical Campus I.K.G. Punjab Technical University Kapurthala Punjab India;

    Department of Computer Science and Engineering Shaheed Bhagat Singh State Technical Campus I.K.G. Punjab Technical University Kapurthala Punjab India;

  • 收录信息
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

    DDoS; Software Defined Networking; Detection; Mitigation; Review;

    机译:DDOS;软件定义网络;检测;减轻;审查;

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