物联网设备入侵监控与检测的智能机制

Vitalina Holubenko, Paulo Silva
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引用次数: 0

摘要

近年来,由于连接到互联网的物联网设备数量不断增加,设备处理的数据呈指数级增长,物联网在智能基础设施、医疗保健、供应链或运输等许多领域发挥着非常关键的作用。尽管物联网设备具有优势,但其数量已成为恶意实体利用此类设备的动机。为了应对物联网设备中潜在的网络攻击,机器学习技术可以与联邦学习一起应用于入侵检测系统,以帮助管理与隐私相关的问题。过去已经提出了几种入侵检测方法,但是,针对HIDS的研究较少。此外,重点主要放在应用的机器学习方法和评估上,而不是这些系统的实际部署。为了解决这个问题,本文提出了一个基于系统调用跟踪分析的轻量级主机入侵检测系统框架,用于良性和恶意活动检测。总之,这项工作旨在介绍可以应用于物联网设备的主机入侵检测研究,同时利用联邦学习进行模型更新。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
An Intelligent Mechanism for Monitoring and Detecting Intrusions in IoT Devices
As of recent years, the growth of data processed by devices has been exponential, resulting of the increasing number of Internet of Things devices connected to the Internet, which has come to play a very critical role in many domains, such as smart infrastructures, healthcare, supply chain or transportation. Despite its advantages, the amount of IoT devices has come to serve as a motivation for malicious entities to take advantage of such devices. To deal with potential cyberattacks in IoT devices, Machine Learning techniques can be applied to Intrusion Detection Systems along with Federated Learning to help manage privacy related concerns. Several intrusion detection methods have been proposed in the past, however, there’s a lack of research aimed at HIDS. Furthermore, the focus is mostly on applied ML methods and evaluation and not on real-world deployment of such systems. To tackle this, this work proposes a framework for a lightweight host based intrusion detection system based on system call trace analysis for benign and malicious activity detection. In summary, this work aims to present research about Host Intrusion Detection that could be applied for IoT devices, while leveraging Federated Learning for model updates.
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