Papers
Topics
Authors
Recent
Gemini 2.5 Flash
Gemini 2.5 Flash
169 tokens/sec
GPT-4o
7 tokens/sec
Gemini 2.5 Pro Pro
45 tokens/sec
o3 Pro
4 tokens/sec
GPT-4.1 Pro
38 tokens/sec
DeepSeek R1 via Azure Pro
28 tokens/sec
2000 character limit reached

Distributed Attacks over Federated Reinforcement Learning-enabled Cell Sleep Control (2311.15894v1)

Published 27 Nov 2023 in cs.NI

Abstract: Federated learning (FL) is particularly useful in wireless networks due to its distributed implementation and privacy-preserving features. However, as a distributed learning system, FL can be vulnerable to malicious attacks from both internal and external sources. Our work aims to investigate the attack models in a FL-enabled wireless networks. Specifically, we consider a cell sleep control scenario, and apply federated reinforcement learning to improve energy-efficiency. We design three attacks, namely free rider attacks, Byzantine data poisoning attacks and backdoor attacks. The simulation results show that the designed attacks can degrade the network performance and lead to lower energy-efficiency. Moreover, we also explore possible ways to mitigate the above attacks. We design a defense model called refined-Krum to defend against attacks by enabling a secure aggregation on the global server. The proposed refined- Krum scheme outperforms the existing Krum scheme and can effectively prevent wireless networks from malicious attacks, improving the system energy-efficiency performance.

Definition Search Book Streamline Icon: https://streamlinehq.com
References (15)
  1. M. Elsayed and M. Erol-Kantarci, “AI-enabled future wireless networks: challenges, opportunities, and open issues,” IEEE Vehicular Technology Magazine, vol. 14, no. 3, pp. 70–77, Sep. 2019.
  2. M.Elsayed and M.Erol-Kantarci,“AI-enabled radio resource allocation in 5G for URLLC and eMBB users,” IEEE 5G World Forum, 5GWF 2019 - Conference Proceedings, pp. 590–595, Sep. 2019.
  3. H. Zhou, M. Erol-Kantarci, and H. V. Poor, “Knowledge Transfer and Reuse: A Case Study of AI-enabled Resource Management in RAN Slicing,” IEEE Wireless Communications, pp. 1-10, Nov. 2022.
  4. H. Zhang, H. Zhou, and M. Erol-Kantarci,“Federated Deep Reinforcement Learning for Resource Allocation in O-RAN Slicing,” in Proc. IEEE Glob. Commun. Conf. (GLOBECOM), pp. 958-963, Dec. 2022.
  5. P. Blanchard, E. M. E. Mhamdi, R. Guerraoui, and J. Stainer, “Machine learning with adversaries: Byzantine tolerant gradient descent,” in Advances in Neural Information Processing Systems 30: Annual Conference on Neural Information Processing Systems, pp. 119–129, Dec. 2017.
  6. V. Tolpegin, S. Truex, M. E. Gursoy, and L. Liu, “Data poisoning attacks against federated learning systems,” arXiv preprint arXiv:2007.08432, Sep. 2020.
  7. E. Bagdasaryan, A. Veit, Y. Hua, D. Estrin, and V. Shmatikov, “How to backdoor federated learning,” arXiv preprint arXiv:1807.00459, Apr. 2018.
  8. A. Anwar and A. Raychowdhury, “Multi-task federated reinforcement learning with adversaries,” CoRR, vol. abs/2103.06473, Mar. 2021.
  9. T. Zheng and B. Li, “Poisoning attacks on deep learning based wireless traffic prediction,” in IEEE INFOCOM 2022 - IEEE Conference on Computer Communications, pp. 660–669, May. 2022.
  10. Y. Shi and Y.E. Sagduyu, “How to Launch Jamming Attacks on Federated Learning in NextG Wireless Networks,” in IEEE Globecom Workshop on 5G and Beyond Wireless Security (Wireless-Sec), pp. 945-950, Jan. 2022.
  11. M. Masoud, M.G. Khafegy, E. Soroush, and D. Giacomelli, “Reinforcement Learning for Traffic-Adaptive Sleep Mode Management in 5G Networks,” IEEE Annual International Conference, pp. 1-6, Aug. 2020.
  12. M. A. Habib, H. Zhou, P. E. Iturria-Rivera, M. Elsayed, M. Bavand, R. Gaigalas, S. Furr, and M. Erol-Kantarci, “Traffic Steering for 5G Multi-Rat Deployments using Deep Reinforcement Learning,” in IEEE Consumer Communications and Networking Conference (CCNC), pp. 164-169, Jan. 2023.
  13. A. E. Amine, P. Dini, and L. Nuaymi, “Reinforcement learning for delay-constrained energy-aware small cells with multi-sleeping control,” in Proc. IEEE Int. Conf. Commun. Workshops (ICC Workshops), pp. 1–6, Jun. 2020.
  14. Y. Fraboni, R. Vidal, and M. Lorenzi, “Free-rider attacks on model aggregation in federated learning,” in Proc. Int. Conf. Artif. Intell. Statist., pp. 1846–1854, Jun. 2021.
  15. H. Zhou, L. Kong, M. Elsayed, M. Bavand, R. Gaigalas, S. Furr, and M. Erol-Kantarci, “Hierarchical reinforcement learning for RIS- assisted energy-efficient RAN,” in Proc. IEEE Global Commun. Conf. (GLOBECOM), pp. 3326–3331, Dec. 2022.
Citations (1)

Summary

We haven't generated a summary for this paper yet.