A fast online sequential learning accelerator for IoT network intrusion detection: work-in-progress

Hantao Huang, Suleman Khalid Rai, Wenye Liu, Hao Yu
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引用次数: 3

Abstract

Deployment of IoT devices for smart buildings and homes will offer a high level of comfortability with increased energy efficiency; but can also introduce potential cyber-attacks such as network intrusions via linked IoT devices. Due to the low-power and low-latency requirement to secure IoT network, traditional software based security system is not applicable. Instead, an embedded hardware-accelerator based data analytics is more preferred for network intrusion detection. In this paper, we propose an online sequential machine learning hardware accelerator to perform realtime network intrusion detection. A single hidden layer feedforward neural network based learning algorithm is developed with a least-squares solver realized on hardware. Experimental results on a single FPGA achieve a bandwidth of 409.6 Gbps with fast yet low-power network intrusion detection based on a number of benchmarks.
为智能建筑和家庭部署物联网设备将提供高水平的舒适度,同时提高能源效率;但也可能引入潜在的网络攻击,例如通过连接的物联网设备进行网络入侵。由于物联网对低功耗、低时延的要求,传统的基于软件的安全系统已不适用。相反,基于嵌入式硬件加速器的数据分析更适合于网络入侵检测。在本文中,我们提出了一个在线顺序机器学习硬件加速器来执行实时网络入侵检测。提出了一种基于单隐层前馈神经网络的学习算法,并在硬件上实现了最小二乘求解器。基于多个基准测试,在单个FPGA上的实验结果实现了409.6 Gbps的带宽和快速低功耗网络入侵检测。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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