使用机器学习和物联网深度学习的高效可持续入侵检测系统

Muhammad Sarim Amir, Gufran Bhatti, Misbah Anwer, Yumna Iftikhar
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引用次数: 0

摘要

在我们的技术环境中,一切都在朝着物联网(IoT)和基于网络的方向发展。物联网设备和无处不在的计算系统的数量呈指数级增长。这也增加了网络泄露的风险。为了迎合这个问题,许多研究人员提出了不同的技术,并得到了很好的结果,但它可以更好,因为一切都在网上,这是安全和隐私的问题。本文提出了一种高效且可持续的入侵检测系统,该系统通过连接两个众所周知的最先进的“kitsune”数据集(ARP MITM和SSDP Flood)。随机森林、决策树和双向长短期记忆(Bi-LSTM)在不同的训练和测试比例和不同的层数下实现。性能测量表明,所有模型都达到了99%以上的准确率,但随机森林在串联数据集上的表现优于两种模型。这两种攻击都是由给定的模型决定的,因此提高了性能,系统会在任何恶意活动的情况下通知。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Efficient & Sustainable Intrusion Detection System Using Machine Learning & Deep Learning for IoT
Everything is evolving toward IoT (Internet of Things) and online-based in our technological environment. The number of IoT devices and ubiquitous computing systems are growing exponentially. This also increases the risk of network breach. To cater this issue many researchers proposed different techniques and get great results but it can be better since everything in online and it's a matter of security and privacy. This paper presents an efficient and sustainable intrusion detection system by the concatenation of two well-known state of the art “kitsune” datasets (ARP MITM and SSDP Flood). Random Forest, decision tree, and Bi-LSTM (Bi-Directional Long Short Term Memory) were implemented in different training and testing ratios and different numbers of layers. Performance measures show that all the models achieved over 99% accuracy but random forest outperforms both models on the concatenated dataset. Both attacks are determined by the given model hence increasing the performance and the system will notify in case of any malicious activity.
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