Federated Reinforcement Learning for Wireless Networks: Fundamentals, Challenges and Future Research Trends

被引:1
|
作者
Das, Sree Krishna [1 ]
Mudi, Ratna [2 ]
Rahman, Md. Siddikur [3 ]
Rabie, Khaled M. [4 ,5 ,6 ]
Li, Xingwang [7 ,8 ]
机构
[1] Mil Inst Sci & Technol, Dept Elect Elect & Commun Engn, Dhaka 1216, Bangladesh
[2] Jahangirnagar Univ, Dept Comp Sci & Engn, Savar Dhaka 1342, Bangladesh
[3] Univ Teknol PETRONAS, Dept Elect & Elect Engn, Seri Iskandar 32610, Perak, Malaysia
[4] King Fahd Univ Petr & Minerals, Dept Comp Engn, Dhahran 31261, Saudi Arabia
[5] King Fahd Univ Petr & Minerals, Ctr Commun Syst & Sensing, Dhahran 31261, Saudi Arabia
[6] Univ Johannesburg, Dept Elect & Elect Engn Sci, ZA-2092 Johannesburg, South Africa
[7] Henan Polytech Univ, Sch Phys & Elect Informat Engn, Jiaozuo 454099, Peoples R China
[8] Southeast Univ, Natl Mobile Commun Res Lab, Nanjing 210096, Peoples R China
关键词
6G mobile communication; Wireless sensor networks; Wireless networks; Internet of Things; Resource management; Communication system security; Ultra reliable low latency communication; Federated reinforcement learning; power allocation; bandwidth allocation; interference mitigation; communication mode selection; DYNAMIC SPECTRUM ACCESS; RESOURCE-ALLOCATION; JOINT OPTIMIZATION; MODE SELECTION; COMMUNICATION; MANAGEMENT; EFFICIENT; 6G; PRIVACY; RADIO;
D O I
10.1109/OJVT.2024.3466858
中图分类号
TM [电工技术]; TN [电子技术、通信技术];
学科分类号
0808 ; 0809 ;
摘要
The increasing popularity of Internet of Things (IoT)-based wireless services highlights the urgent need to upgrade fifth-generation (5G) wireless networks and beyond to accommodate these services. Although 5G networks currently support a variety of wireless services, they might not fully meet the high computational and communication resource demands of new applications. Issues such as latency, energy consumption, network congestion, signaling overhead, and potential privacy breaches contribute to this limitation. Machine learning (ML) frequently offers solutions to these problems. As a result, sixth-generation (6G) wireless technologies are being developed to address the deficiencies of 5G networks. Traditional ML methods are generally centralized. However, the vast amount of wireless data generated, growing privacy concerns, and the increasing computational capabilities of edge devices have led to a shift towards optimizing system performance in a distributed manner. This paper provides a thorough analysis of distributed learning techniques, including federated learning (FL), multi-agent reinforcement learning (MARL), and the multi-agent federated reinforcement learning (FRL) framework. It explains how these techniques can be effectively and efficiently implemented in wireless networks. These methods offer potential solutions to the challenges faced by current wireless networks, promising to create a more robust, capable, and versatile network that meets the growing demands of IoT and other emerging applications. Implementing the FRL framework can significantly improve the learning efficiency of wireless networks. To tackle the challenges posed by rapidly changing radio channels, we propose a robust FRL framework that enables local users to perform distributed power allocation, bandwidth allocation, interference mitigation, and communication mode selection. Finally, the paper outlines several future research directions aimed at effectively integrating the FRL framework into wireless networks.
引用
收藏
页码:1400 / 1440
页数:41
相关论文
共 50 条
  • [21] Distributed Learning in Wireless Networks: Recent Progress and Future Challenges
    Chen, Mingzhe
    Gunduz, Deniz
    Huang, Kaibin
    Saad, Walid
    Bennis, Mehdi
    Feljan, Aneta Vulgarakis
    Poor, H. Vincent
    IEEE JOURNAL ON SELECTED AREAS IN COMMUNICATIONS, 2021, 39 (12) : 3579 - 3605
  • [22] Fairness in Federated Learning: Trends, Challenges, and Opportunities
    Mukhtiar, Noorain
    Mahmood, Adnan
    Sheng, Quan Z.
    ADVANCED INTELLIGENT SYSTEMS, 2025,
  • [23] Federated Learning for IoT: Applications, Trends, Taxonomy, Challenges, Current Solutions, and Future Directions
    Adam, Mumin
    Baroudi, Uthman
    IEEE OPEN JOURNAL OF THE COMMUNICATIONS SOCIETY, 2024, 5 : 7842 - 7877
  • [24] Backdoor attacks and defenses in federated learning: Survey, challenges and future research directions
    Nguyen, Thuy Dung
    Nguyen, Tuan
    Nguyen, Phi Le
    Pham, Hieu H.
    Doan, Khoa D.
    Wong, Kok-Seng
    ENGINEERING APPLICATIONS OF ARTIFICIAL INTELLIGENCE, 2024, 127
  • [25] Federated learning review: Fundamentals, enabling technologies, and future applications
    Banabilah, Syreen
    Aloqaily, Moayad
    Alsayed, Eitaa
    Malik, Nida
    Jararweh, Yaser
    INFORMATION PROCESSING & MANAGEMENT, 2022, 59 (06)
  • [26] Challenges and future trends of research on learning using digital technologies
    Gros, Begona
    RED-REVISTA DE EDUCACION A DISTANCIA, 2012, (32):
  • [27] Optical Wireless Hybrid Networks: Trends, Opportunities, Challenges, and Research Directions
    Chowdhury, Mostafa Zaman
    Hasan, Moh Khalid
    Shahjalal, Md
    Hossan, Md Tanvir
    Jang, Yeong Min
    IEEE COMMUNICATIONS SURVEYS AND TUTORIALS, 2020, 22 (02): : 930 - 966
  • [28] Cognitive Radio Wireless Sensor Networks: Applications, Challenges and Research Trends
    Joshi, Gyanendra Prasad
    Nam, Seung Yeob
    Kim, Sung Won
    SENSORS, 2013, 13 (09) : 11196 - 11228
  • [29] Federated Learning: Challenges, Methods, and Future Directions
    Li, Tian
    Sahu, Anit Kumar
    Talwalkar, Ameet
    Smith, Virginia
    IEEE SIGNAL PROCESSING MAGAZINE, 2020, 37 (03) : 50 - 60
  • [30] Cost-efficient Federated Reinforcement Learning-Based Network Routing for Wireless Networks
    Abou El Houda, Zakaria
    Nabousli, Diala
    Kaddoum, Georges
    2022 IEEE FUTURE NETWORKS WORLD FORUM, FNWF, 2022, : 243 - 248