Development of Lightweight and Accurate Intrusion Detection on Programmable Data Plane

Thi-Nga Dao, Van‐Phuc Hoang, C. Ta, V. Vu
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引用次数: 3

Abstract

With the aim of developing a lightweight yet accurate network security method for Internet of Things, this paper presents the neural-network-based intrusion detection model that incorporates a parameter trimming method. The intrusion detection and classification function is implemented on programmable data plane, thus significantly reducing the detection time. Moreover, by using the neuron pruning approach, the proposed architecture requires a much lower delay for traffic classification with a slight reduction in classification accuracy. We conduct experiments using a P4 programming language and the collected results show that the pruned intrusion detection model with low model complexity is more feasible for edge devices with constrained computing and memory resources than the fully-connected model.
基于可编程数据平面的轻量、精确入侵检测方法的研究
为了开发一种轻量级而准确的物联网网络安全方法,本文提出了一种基于神经网络的入侵检测模型,该模型结合了参数裁剪方法。入侵检测和分类功能在可编程数据平面上实现,大大缩短了检测时间。此外,通过使用神经元修剪方法,该架构对流量分类的延迟要求更低,分类精度略有降低。我们使用P4编程语言进行了实验,收集的结果表明,对于计算和内存资源受限的边缘设备,具有低模型复杂度的剪枝入侵检测模型比全连接模型更可行。
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