Thamilarasu Geethapriya, Chawla Shiven
School of STEM, University of Washington Bothell, Bothell, WA 98011, USA.
Sensors (Basel). 2019 Apr 27;19(9):1977. doi: 10.3390/s19091977.
Cyber-attacks on the Internet of Things (IoT) are growing at an alarming rate as devices, applications, and communication networks are becoming increasingly connected and integrated. When attacks on IoT networks go undetected for longer periods, it affects availability of critical systems for end users, increases the number of data breaches and identity theft, drives up the costs and impacts the revenue. It is imperative to detect attacks on IoT systems in near real time to provide effective security and defense. In this paper, we develop an intelligent intrusion-detection system tailored to the IoT environment. Specifically, we use a deep-learning algorithm to detect malicious traffic in IoT networks. The detection solution provides security as a service and facilitates interoperability between various network communication protocols used in IoT. We evaluate our proposed detection framework using both real-network traces for providing a proof of concept, and using simulation for providing evidence of its scalability. Our experimental results confirm that the proposed intrusion-detection system can detect real-world intrusions effectively.
随着设备、应用程序和通信网络之间的连接与集成日益增加,针对物联网(IoT)的网络攻击正以惊人的速度增长。当对物联网网络的攻击在较长时间内未被发现时,会影响终端用户关键系统的可用性,增加数据泄露和身份盗窃的数量,推高成本并影响收入。必须近乎实时地检测对物联网系统的攻击,以提供有效的安全防护。在本文中,我们开发了一种针对物联网环境量身定制的智能入侵检测系统。具体而言,我们使用深度学习算法来检测物联网网络中的恶意流量。该检测解决方案将安全作为一种服务提供,并促进物联网中使用的各种网络通信协议之间的互操作性。我们使用真实网络跟踪来提供概念验证,并使用模拟来证明其可扩展性,从而对我们提出的检测框架进行评估。我们的实验结果证实,所提出的入侵检测系统能够有效地检测现实世界中的入侵行为。