Abstract
This study proposes a heterogeneous hardware-based framework for network intrusion detection using lightweight artificial neural network models. With the increase in the volume of exchanged data, IoT networks’ security has become a crucial issue. Anomaly-based intrusion detection systems (IDS) using machine learning have recently gained increased popularity due to their generation’s ability to detect unseen attacks. However, the deployment of anomaly-based AI-assisted IDS for IoT devices is computationally expensive. A high-performance and ultra-low power consumption anomaly-based IDS framework is proposed and evaluated in this paper. The framework has achieved the highest accuracy of 98.57% and 99.66% on the UNSW-NB15 and IoT-23 datasets, respectively. The inference engine on the MAX78000EVKIT AI-microcontroller is 11.3 times faster than the Intel Core i7-9750H 2.6 GHz and 21.3 times faster than NVIDIA GeForce GTX 1650 graphics cards, when the power drawn was 18mW. In addition, the pipelined design on the PYNQ-Z2 SoC FPGA board with the Xilinx Zynq xc7z020-1clg400c device is optimised to run at the on-chip frequency (100 MHz), which shows a speedup of 53.5 times compared to the MAX78000EVKIT.
| Original language | English |
|---|---|
| Article number | 9 |
| Journal | Future Internet |
| Volume | 15 |
| Issue number | 1 |
| DOIs | |
| Publication status | Published - Jan 2023 |
Keywords
- artificial neural Networks
- CPU
- FPGA
- GPU
- hardware accelerators
- high-performance
- low power
- microcontrollers
- network security
Fingerprint
Dive into the research topics of 'HH-NIDS: Heterogeneous Hardware-Based Network Intrusion Detection Framework for IoT Security'. Together they form a unique fingerprint.Press/Media
-
University College Cork Researchers Detail Findings in Future Internet (HH-NIDS: Heterogeneous Hardware-Based Network Intrusion Detection Framework for IoT Security)
Popovici, E., Temko, A. & Murphy, C.
6/02/23
1 item of Media coverage
Press/Media