在物联网中构建基于联盟学习的鲁棒入侵检测系统

Afrooz Rahmati, Afra Mashhadi, Geethapriya Thamilarasu
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摘要

近年来,物联网(IoT)已成为下一场重大技术革命,有可能改变人类生活的各个领域。随着设备、应用和通信网络的连接和集成度越来越高,物联网的安全和隐私问题也在以惊人的速度增长。虽然现有的研究主要集中在检测安全攻击的集中式系统上,但这些系统并不能很好地应对物联网设备的快速增长,而且会带来单点故障风险。此外,由于数据广泛分散在巨大的联网设备网络中,因此分散计算至关重要。近来,联邦学习(FL)系统作为分布式机器学习模型广受欢迎,它能让物联网边缘设备以分散的方式协作训练模型,同时确保用户设备上的数据保持私密,数据内容或细节不会离开该设备。在本文中,我们利用 LSTM Autoencoder 提出了一种基于联合学习的入侵检测系统。所提出的技术允许物联网设备在不泄露其私人数据的情况下训练一个全局模型,从而使训练模型的规模不断扩大,同时保护每个参与者的本地数据。我们使用 BoT-IoT 数据集进行了大量实验,证明我们的解决方案不仅能有效提高物联网安全性,抵御未知攻击,还能确保用户的数据隐私。
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Building a Robust Federated Learning based Intrusion Detection System in Internet of Things
The Internet of Things (IoT) has emerged as the next big technological revolution in recent years with the potential to transform every sphere of human life. As devices, applications, and communication networks become increasingly connected and integrated, security and privacy concerns in IoT are growing at an alarming rate as well. While existing research has largely focused on centralized systems to detect security attacks, these systems do not scale well with the rapid growth of IoT devices and pose a single-point of failure risk. Furthermore, since data is extensively dispersed across huge networks of connected devices, decentralized computing is critical. Federated learning (FL) systems in the recent times has gained popularity as the distributed machine learning model that enables IoT edge devices to collaboratively train models in a decentralized manner while ensuring that data on a user’s device stays private without the contents or details of that data ever leaving that device. In this paper, we propose a federated learning based intrusion detection system using LSTM Autoencoder. The proposed technique allows IoT devices to train a global model without revealing their private data, enabling the training model to grow in size while protecting each participants local data. We conduct extensive experiments using the BoT-IoT data set and demonstrate that our solution can not only effectively improve IoT security against unknown attacks but also ensure users data privacy.
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