一个灯泡中的网络入侵检测系统

Liam Daly Manocchio, S. Layeghy, Marius Portmann
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引用次数: 3

摘要

物联网(IoT)设备正逐步应用于各种边缘应用,以监控家庭和工业基础设施。由于有限的计算和能源资源,在许多物联网设备中,主动安全保护通常是最小的。这给网络安全领域带来了严峻的安全挑战,引起了研究人员的关注。尽管提出了大量的网络入侵检测系统(NIDS),但对实际物联网实施的研究有限,据我们所知,没有基于边缘的NIDS被证明可以在大多数物联网设备(如ESP8266)中的常见低功耗芯片组上运行。本研究旨在通过推动基于低功耗机器学习(ML)的nids的边界来解决这一差距。我们提出并开发了一种高效、低功耗的基于ml的NIDS,并通过在典型的智能灯泡上运行它来演示其对物联网边缘应用的适用性。我们还针对其他提出的基于边缘的nids评估了我们的系统,并表明我们的模型具有更高的检测性能,并且速度更快,体积更小,因此更适用于更广泛的物联网边缘设备。
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Network Intrusion Detection System in a Light Bulb
Internet of Things (IoT) devices are progressively being utilised in a variety of edge applications to monitor and control home and industry infrastructure. Due to the limited compute and energy resources, active security protections are usually minimal in many IoT devices. This has created a critical security challenge that has attracted researchers' attention in the field of network security. Despite a large number of proposed Network Intrusion Detection Systems (NIDSs), there is limited research into practical IoT implementations, and to the best of our knowledge, no edge-based NIDS has been demonstrated to operate on common low-power chipsets found in the majority of IoT devices, such as the ESP8266. This research aims to address this gap by pushing the boundaries on low-power Machine Learning (ML) based NIDSs. We propose and develop an efficient and low-power ML-based NIDS, and demonstrate its applicability for IoT edge applications by running it on a typical smart light bulb. We also evaluate our system against other proposed edge-based NIDSs and show that our model has a higher detection performance, and is significantly faster and smaller, and therefore more applicable to a wider range of IoT edge devices.
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