通过机器学习使用多层数据检测物联网攻击

Hina Alam, Muhammad Shaharyar Yaqub, Ibrahim Nadir
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引用次数: 2

摘要

物联网(IoT)设备被用于无数的网络应用中。然而,由于其不安全的性质,这些设备的广泛采用也增加了网络攻击的可能性。需要一种健壮的安全机制来检测和防范各种威胁。机器学习(ML)技术已被用于检测对不同网络层的攻击,但仅训练网络、传输或链路层数据已被证明是不够的。因此,为攻击者控制和渗透网络打开了道路。利用这一不足,我们使用机器学习技术来检测使用应用程序、传输和网络层数据对物联网设备的攻击。我们特别关注应用层数据的特征提取,以识别数据包中的恶意。此外,对于分组分类,我们还从网络层和传输层提取特征。我们的模拟结果表明,使用不同的机器学习算法,准确率分别达到88%和92%。我们还确定了可用于验证解决方案的可能的未来工作。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Detecting IoT Attacks using Multi-Layer Data Through Machine Learning
Internet of Things (IoT) devices is being used in countless network applications. However, due to their insecure nature, the wide adoption of these devices has also increased the possibility of cyber-attacks. There is a need for a robust security mechanism to detect and safeguard against numerous threats. Machine Learning (ML) techniques have been used to detect attacks on different networking layers but training only the network, transport, or link-layer data has proven to be inadequate. Thus, opening paths for attackers to take control and penetrate the networks. Leveraging from this inadequacy, we have employed Machine Learning technology to detect attacks on IoT devices using the application, transport, and network layer data. In particular, we have focused on feature extraction of Application layer data to identify nefariousness in packets. Furthermore, for packet classification, we are also extracting features from the network layer and transport layer. Our simulation results have promised accuracy of 88% and 92% using different ML algorithms. We have also identified possible future work that can be used to validate the solution.
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