IMIDS: An intelligent intrusion detection system against cyber threats in IoT

Abstract

The increasing popularity of the Internet of Things (IoT) has significantly impacted our daily lives in the past few years. On one hand, it brings convenience, simplicity, and efficiency for us; on the other hand, the devices are susceptible to various cyber-attacks due to the lack of solid security mechanisms and hardware security support. In this paper, we present IMIDS, an intelligent intrusion detection system (IDS) to protect IoT devices. IMIDS’s core is a lightweight convolutional neural network model to classify multiple cyber threats. To mitigate the training data shortage issue, we also propose an attack data generator powered by a conditional generative adversarial network. In the experiment, we demonstrate that IMIDS could detect nine cyber-attack types (e.g., backdoors, shellcode, worms) with an average F-measure of 97.22% and outperforms its competitors. Furthermore, IMIDS’s detection performance is notably improved after being further trained by the data generated by our attack data generator. These results demonstrate that IMIDS can be a practical IDS for the IoT scenario.

Publication
Electronics
FieldDetails
Volume11
Issue4
Pages524
PublisherMDPI
Scholar articlesIMIDS: An intelligent intrusion detection system against cyber threats in IoT - KH Le, MH Nguyen, TD Tran, ND Tran - Electronics, 2022 - Cited by 92 Related articles All 4 versions