使用协作联邦学习的低延迟基于雾的框架来保护物联网应用程序

Zakaria Abou El Houda, L. Khoukhi, B. Brik
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引用次数: 10

摘要

针对物联网网络的攻击正在迅速增加,导致不安全的物联网设备数量呈指数级增长。由于缺乏实时决策、高能耗和高时间延迟,现有的安全机制面临着几个问题。在这种情况下,我们提出了一种新的低延迟基于雾的框架,称为FogFed,以使用雾计算和联邦学习(FL)来保护物联网应用程序。雾带来了物联网设备附近的安全机制,减少了通信延迟,而FL实现了物联网之间的隐私感知协作学习,同时保护了他们的隐私。FogFed结合了两个级别的检测,基于雾的物联网攻击检测使用二进制FL分类器和基于云的物联网攻击检测使用Multiclass FL分类器。利用著名的物联网攻击/恶意软件UNSW-NB15数据集进行的深入实验结果表明,该方法具有显著的准确率(99%)和检测率(99%),优于集中式ML/DL模型,同时显著减少了延迟并保护了隐私。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Low-Latency Fog-based Framework to secure IoT Applications using Collaborative Federated Learning
Attacks against the IoT network are increasing rapidly, leading to an exponential growth in the number of unsecured IoT devices. Existing security mechanisms are facing several issues due to the lack of real-time decisions, high energy consumption, and high time delays. In this context, we propose a novel Low-Latency Fog-based Framework, called FogFed, to secure IoT applications using Fog computing and Federated Learning (FL). The fog brings security mechanisms near IoT devices reducing delays in communication, while FL enables a privacy-aware collaborative learning between IoT while preserving their privacy. FogFed combines two levels of detection, Fog-based IoT attack detection using a binary FL classifier and cloud-based IoT attack detection using a Multiclass FL classifier. The in-depth experiments results with well-known IoT attack/malware using, the UNSW-NB15 datastet, show the significant accuracy (99%) and detection rate (99%), which outperforms centralized ML/DL models, while significantly reducing delays and preserving the privacy.
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