Federated Edge Learning for the Wireless Physical Layer:Opportunities and Challenges

被引:0
作者
Yiming Cui [1 ]
Jiajia Guo [1 ]
Xiangyi Li [1 ]
Le Liang [1 ,2 ]
Shi Jin [1 ]
机构
[1] National Mobile Communications Research Laboratory and Frontiers Science Center for Mobile Information Communication and Security, Southeast University
[2] Purple Mountain Laboratories
基金
中国国家自然科学基金; 中央高校基本科研业务费专项资金资助;
关键词
D O I
暂无
中图分类号
TP18 [人工智能理论]; TN929.5 [移动通信];
学科分类号
080402 ; 080904 ; 0810 ; 081001 ; 081104 ; 0812 ; 0835 ; 1405 ;
摘要
Deep learning(DL) has been applied to the physical layer of wireless communication systems, which directly extracts environment knowledge from data and outperforms conventional methods either in accuracy or computation complexity. However,most related research works employ centralized training that inevitably involves collecting training data from edge devices. The data uploading process usually results in excessive communication overhead and privacy disclosure. Alternatively, a distributed learning approach named federated edge learning(FEEL)is introduced to physical layer designs. In FEEL, all devices collaborate to train a global model only by exchanging parameters with a nearby access point. Because all datasets are kept local, data privacy is better protected and data transmission overhead can be reduced. This paper reviews the studies on applying FEEL to the wireless physical layer including channel state information acquisition, transmitter, and receiver design, which represent a paradigm shift of the DL-based physical layer design. In the meantime they also reveal several limitations inherent in FEEL, particularly when applied to the wireless physical layer,thus motivating further research efforts in the field.
引用
收藏
页码:15 / 30
页数:16
相关论文
共 50 条
  • [21] Client Selection in Federated Learning: Principles, Challenges, and Opportunities
    Fu, Lei
    Zhang, Huanle
    Gao, Ge
    Zhang, Mi
    Liu, Xin
    IEEE INTERNET OF THINGS JOURNAL, 2023, 10 (24) : 21811 - 21819
  • [22] Adaptive Retransmission Design for Wireless Federated Edge Learning
    XU Xinyi
    LIU Shengli
    YU Guanding
    ZTE Communications, 2023, 21 (01) : 3 - 14
  • [23] Federated Learning Over Wireless Networks: Challenges and Solutions
    Beitollahi, Mahdi
    Lu, Ning
    IEEE INTERNET OF THINGS JOURNAL, 2023, 10 (16) : 14749 - 14763
  • [24] Toward Scalable Wireless Federated Learning: Challenges and Solutions
    Zhou Y.
    Shi Y.
    Zhou H.
    Wang J.
    Fu L.
    Yang Y.
    IEEE Internet of Things Magazine, 2023, 6 (04): : 10 - 16
  • [25] Agricultural data privacy and federated learning: A review of challenges and opportunities
    Dembani, Rahool
    Karvelas, Ioannis
    Akbar, Nur Arifin
    Rizou, Stamatia
    Tegolo, Domenico
    Fountas, Spyros
    COMPUTERS AND ELECTRONICS IN AGRICULTURE, 2025, 232
  • [26] Federated Learning for 6G: Applications, Challenges, and Opportunities
    Yang, Zhaohui
    Chen, Mingzhe
    Wong, Kai-Kit
    Poor, H. Vincent
    Cui, Shuguang
    ENGINEERING, 2022, 8 : 33 - 41
  • [27] Federated Learning for 6G: Applications, Challenges, and Opportunities
    Zhaohui Yang
    Mingzhe Chen
    Kai-Kit Wong
    H.Vincent Poor
    Shuguang Cui
    Engineering, 2022, 8 (01) : 33 - 41
  • [28] Federated Reinforcement Learning in IoT: Applications, Opportunities and Open Challenges
    Pinto Neto, Euclides Carlos
    Sadeghi, Somayeh
    Zhang, Xichen
    Dadkhah, Sajjad
    APPLIED SCIENCES-BASEL, 2023, 13 (11):
  • [29] Decentralized Federated Learning for UAV Networks: Architecture, Challenges, and Opportunities
    Qu, Yuben
    Dai, Haipeng
    Zhuang, Yan
    Chen, Jiafa
    Dong, Chao
    Wu, Fan
    Guo, Song
    IEEE NETWORK, 2021, 35 (06): : 156 - 162
  • [30] Federated Learning for 6G: Applications, Challenges, and Opportunities
    Zhaohui Yang
    Mingzhe Chen
    KaiKit Wong
    HVincent Poor
    Shuguang Cui
    Engineering, 2022, (01) : 33 - 41