Lightweight Intrusion Detection System(L-IDS) for the Internet of Things

D. D. Priya, A. Kiran, P. Purushotham
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引用次数: 1

Abstract

Internet of Things devices collect and share data (IoT). Internet connections and emerging technologies like IoT offer privacy and security challenges, and this trend is anticipated to develop quickly. Internet of Things intrusions are everywhere. Businesses are investing more to detect these threats. Institutes choose accurate testing and verification procedures. In recent years, IoT utilisation has increasingly risen in healthcare. Where IoT applications gained popular among technologists. IoT devices' energy limits and scalability raise privacy and security problems. Experts struggle to make IoT devices more safe and private. This paper provides a machine-learning-based IDS for IoT network threats (ML-IDS). This study aims to implement ML-supervised IDS for IoT. We're going with a centralised, lightweight IDS. Here, we compare seven popular categorization techniques on three data sets. The decision tree algorithm shows the best intrusion detection results.
物联网轻量级入侵检测系统(L-IDS)
物联网设备收集和共享数据(IoT)。互联网连接和物联网等新兴技术为隐私和安全带来了挑战,预计这一趋势将迅速发展。物联网入侵无处不在。企业正在加大投资,以检测这些威胁。机构选择准确的测试和验证程序。近年来,物联网在医疗保健领域的使用率越来越高。物联网应用在技术人员中受到欢迎。物联网设备的能量限制和可扩展性引发了隐私和安全问题。专家们努力使物联网设备更加安全和私密。本文提出了一种基于机器学习的物联网网络威胁检测方法(ML-IDS)。本研究旨在为物联网实现机器学习监督的IDS。我们将使用集中式轻量级IDS。在这里,我们在三个数据集上比较了七种流行的分类技术。决策树算法具有较好的入侵检测效果。
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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