AI-based Two-Stage Intrusion Detection for Software Defined IoT Networks
June 07, 2018 Β· Declared Dead Β· π IEEE Internet of Things Journal
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Authors
Jiaqi Li, Zhifeng Zhao, Rongpeng Li, Honggang Zhang
arXiv ID
1806.02566
Category
cs.CR: Cryptography & Security
Cross-listed
cs.AI
Citations
178
Venue
IEEE Internet of Things Journal
Last Checked
4 months ago
Abstract
Software Defined Internet of Things (SD-IoT) Networks profits from centralized management and interactive resource sharing which enhances the efficiency and scalability of IoT applications. But with the rapid growth in services and applications, it is vulnerable to possible attacks and faces severe security challenges. Intrusion detection has been widely used to ensure network security, but classical detection means are usually signature-based or explicit-behavior-based and fail to detect unknown attacks intelligently, which are hard to satisfy the requirements of SD-IoT Networks. In this paper, we propose an AI-based two-stage intrusion detection empowered by software defined technology. It flexibly captures network flows with a globle view and detects attacks intelligently through applying AI algorithms. We firstly leverage Bat algorithm with swarm division and Differential Mutation to select typical features. Then, we exploit Random forest through adaptively altering the weights of samples using weighted voting mechanism to classify flows. Evaluation results prove that the modified intelligent algorithms select more important features and achieve superior performance in flow classification. It is also verified that intelligent intrusion detection shows better accuracy with lower overhead comparied with existing solutions.
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