试验台
计算机科学
入侵检测系统
异常检测
仿形(计算机编程)
僵尸网络
计算机安全
物联网
网络安全
网络攻击
人工智能
计算机网络
互联网
操作系统
万维网
作者
Joseph Rose,Matthew Swann,Gueltoum Bendiab,Stavros Shiaeles,Nicholas Kolokotronis
标识
DOI:10.1109/netsoft51509.2021.9492685
摘要
The rapid increase in the use of IoT devices brings many benefits to the digital society, ranging from improved efficiency to higher productivity. However, the limited resources and the open nature of these devices make them vulnerable to various cyber threats. A single compromised device can have an impact on the whole network and lead to major security and physical damages. This paper explores the potential of using network profiling and machine learning to secure IoT against cyber-attacks. The proposed anomaly-based intrusion detection solution dynamically and actively profiles and monitors all networked devices for the detection of IoT device tampering attempts as well as suspicious network transactions. Any deviation from the defined profile is considered to be an attack and is subject to further analysis. Raw traffic is also passed on to the machine learning classifier for examination and identification of potential attacks. Performance assessment of the proposed methodology is conducted on the Cyber-Trust testbed using normal and malicious network traffic. The experimental results show that the proposed anomaly detection system delivers promising results with an overall accuracy of 98.35% and 0.98% of false-positive alarms.
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