ANOMALY DETECTION IN ZIGBEE-BASED IOT USING SECURE AND EFFICIENT DATA COLLECTION

Fal Sadikin, Nuruddin Wiranda
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Abstract

This article outlines various techniques for detecting types of attacks that may arise in ZigBee-based IoT system. The researchers introduced a hybrid Intrusion Detection System (IDS), combining rule-based intrusion detection and machine learning-based anomaly detection. Rule-based attack detection techniques are used to provide an accurate detection method for known attacks. However, determining accurate detection rules requires significant human effort that is susceptible to error. If it is done incorrectly, it can result in false alarms. Therefore, to alleviate this potential problem, the system is being upgraded by combining it (hybrid) with machine learning-based anomaly detection. This article expounds the researchers’ IDS implementation covering a wide variety of detection techniques to detect both known attacks and potential new types of attacks in ZigBee-based IoT system. Furthermore, a safe and efficient meth-od for large-scale IDS data collection is introduced to provide a trusted reporting mechanism that can operate on the stringent IoT resource requirements appropriate to today's IoT systems.
基于zigbee的物联网异常检测:安全高效的数据采集
本文概述了用于检测基于zigbee的物联网系统中可能出现的攻击类型的各种技术。研究人员介绍了一种混合入侵检测系统(IDS),结合了基于规则的入侵检测和基于机器学习的异常检测。基于规则的攻击检测技术为已知的攻击提供了准确的检测方法。然而,确定准确的检测规则需要大量的人力,这很容易出错。如果操作不正确,可能会导致假警报。因此,为了缓解这一潜在问题,系统正在进行升级,将其与基于机器学习的异常检测相结合(混合)。本文阐述了研究人员的IDS实现,涵盖了多种检测技术,以检测基于zigbee的物联网系统中的已知攻击和潜在的新型攻击。此外,还引入了一种安全有效的大规模IDS数据收集方法,以提供可信赖的报告机制,该机制可以在适合当今物联网系统的严格物联网资源要求上运行。
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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