Utilize este identificador para referenciar este registo:
http://hdl.handle.net/10071/35449| Autoria: | Susskind, Z. Arora, A. Bacellar, A. Dutra, D. L. C. Miranda, I. D. S. Breternitz Jr., M. Lima, P. M. V. França, F. M. G. John, L. K. |
| Editor: | Paolo Ienne Zhiru Zhang |
| Data: | 2023 |
| Título próprio: | An FPGA-based weightless neural network for edge network intrusion detection |
| Título e volume do livro: | FPGA '23: Proceedings of the 2023 ACM/SIGDA International Symposium on Field Programmable Gate Arrays |
| Título do evento: | FPGA '23: The 2023 ACM/SIGDA International Symposium on Field Programmable Gate Arrays |
| Referência bibliográfica: | Susskind, Z., Arora, A., Bacellar, A., Dutra, D. L. C., Miranda, I. D. S., Breternitz Jr., M., Lima, P. M. V., França, F. M. G., & John, L. K. (2023). An FPGA-based weightless neural network for edge network intrusion detection. In P. Ienne, & Z. Zhang (Eds.), FPGA '23: Proceedings of the 2023 ACM/SIGDA International Symposium on Field Programmable Gate Arrays. ACM. https://doi.org/10.1145/3543622.3573140 |
| ISBN: | 978-1-4503-9417-8 |
| DOI (Digital Object Identifier): | https://doi.org/10.1145/3543622.3573140 |
| Resumo: | The last decade has seen an explosion in the number of networked edge and Internet-of-Things (IoT) devices, a trend which shows no signs of slowing. Concurrently, networking is increasingly moving away from centralized cloud servers and towards base stations and the edge devices themselves, with the objective of decreasing latency and improving the user experience. ASICs typically lack the flexibility needed to update algorithms or adapt to specific user scenarios, which is becoming increasingly important with the emergence of 6G. While FPGAs have the potential to address these issues, their inferior energy and area efficiency and high unit cost mean that FPGA-based designs must be very aggressively optimized to be viable. In this paper, we propose FWIW, a novel FPGA-based solution for detecting anomalous or malicious network traffic on edge devices. While prior work in this domain is based on conventional deep neural networks (DNNs), FWIW incorporates a weightless neural network (WNN), a table lookup-based model which learns sophisticated nonlinear behaviors. This allows FWIW to achieve accuracy far superior to prior FPGA-based work at a very small fraction of the model footprint, enabling deployment on edge devices. FWIW achieves a prediction accuracy of 98.5% on the UNSW-NB15 dataset with a total model parameter size of just 192 bytes, reducing error by 7.9x and model size by 262x vs. the prior work. Implemented on a Xilinx Virtex UltraScale+ FPGA, FWIW demonstrates a 59x reduction in LUT usage with a 1.6x increase in throughput. The accuracy of FWIW comes within 0.6% of the best-reported result in literature, a model several orders of magnitude larger. Our results make it clear that WNNs are worth exploring in the emerging domain of edge networking, and suggest that FPGAs are capable of providing the extreme throughput needed. |
| Arbitragem científica: | yes |
| Acesso: | Acesso Aberto |
| Aparece nas coleções: | ISTAR-CRI - Comunicações a conferências internacionais |
Ficheiros deste registo:
| Ficheiro | Tamanho | Formato | |
|---|---|---|---|
| conferenceObject_94691.pdf | 570,38 kB | Adobe PDF | Ver/Abrir |
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