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首页> 外文期刊>Internet of Things Journal, IEEE >Learning-Driven Detection and Mitigation of DDoS Attack in IoT via SDN-Cloud Architecture
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Learning-Driven Detection and Mitigation of DDoS Attack in IoT via SDN-Cloud Architecture

机译:通过SDN-Cloud架构进行学习驱动的检测和减轻IOT中的DDOS攻击

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摘要

The Internet-of-Things (IoT) network is growing big owing to its utility in smart applications. An IoT network is susceptible to security breaches, in majority due to the resource-constrained nature of IoT. Of the various breaches, the Distributed Denial-of-Service (DDoS) attack can snip off the network service to the users in various ways, such as consumption of server's resources, saturating link bandwidth, etc. These types of DDoS breaches can turn out to be a catastrophe in critical IoT use cases. This article delves into tackling the DDoS attack triggered by malicious wireless IoT on IoT servers. Our security scheme leverages the cloud and software-defined network (SDN) paradigm to mitigate the DDoS attack on IoT servers. We have proposed a novel mechanism named learning-driven detection mitigation (LEDEM) that detects DDoS using a semisupervised machine-learning algorithm and mitigates DDoS. We tested LEDEM in the testbed and emulated topology, and compared the results with state-of-the-art solutions. We achieved an improved accuracy rate of 96.28% in detecting DDoS attack.
机译:由于其在智能应用程序中的效用,互联网(IoT)网络正在越来越大。由于IOT的资源受限性质,IOT网络易于安全漏洞。在各种违规行为中,分布式拒绝服务(DDOS)攻击可以以各种方式剪除向用户的网络服务,例如服务器资源的消耗,饱和链路带宽等。这些类型的DDOS泄露可能会出现成为关键物联网用例中的灾难。本文删除了在IOT服务器上以恶意无线IOT触发的DDOS攻击。我们的安全方案利用云和软件定义的网络(SDN)范例来减轻IoT服务器上的DDOS攻击。我们提出了一种名为Learning驱动的检测缓解(LEDEM)的新机制,可使用半熟的机器学习算法和减轻DDOS来检测DDOS。我们在测试平台和模拟拓扑中测试了LEDEM,并将结果与​​最先进的解决方案进行了比较。在检测到DDOS攻击时,我们达到了96.28%的提高率。

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