Gustavo Vitral Arbex, Kétly Gonçalves Machado, M. N. Lima, D. Batista, R. Hirata
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引用次数: 3
Abstract
The Internet of Things (IoT) represents a new reality, as smart devices spread quickly and a higher number of applications arises. This attracts the attention of not only legitimate users but also attackers aiming to jeopardize the entire IoT infrastructure. Intrusion detection mechanisms are paramount in this networking environment as its first line of defense. Hence, this work proposes a Network Intrusion Detection System (NIDS) that deals with the Distributed Denial of Service (DDoS) attack, one of the most critical attacks that occur through IoT. The proposed NIDS uses stream learning to detect DDoS attacks in the IoT network and is designed to be deployed in a fog infrastructure. The detection model, built on Hoeffding Anytime Tree (HATT) algorithm, achieved a 99% accuracy and a 99% recall.
随着智能设备的迅速普及和更多应用的出现,物联网(IoT)代表了一个新的现实。这不仅引起了合法用户的注意,也引起了旨在危害整个物联网基础设施的攻击者的注意。在这种网络环境中,入侵检测机制作为第一道防线至关重要。因此,本工作提出了一种网络入侵检测系统(NIDS),用于处理分布式拒绝服务(DDoS)攻击,这是通过物联网发生的最关键的攻击之一。提出的NIDS使用流学习来检测物联网网络中的DDoS攻击,并被设计部署在雾基础设施中。该检测模型基于Hoeffding Anytime Tree (HATT)算法,达到了99%的准确率和99%的召回率。