Joint resource management for mobility supported federated learning in Internet of Vehicles

被引:24
|
作者
Wang, Ge [1 ]
Xu, Fangmin [1 ]
Zhang, Hengsheng [2 ]
Zhao, Chenglin [1 ]
机构
[1] Beijing Univ Posts & Telecommun, Sch Informat & Commun Engn, Beijing 100876, Peoples R China
[2] China Acad Informat & Commun Technol, Inst Technol & Stand, Ind Internet Res Dept, Beijing 100191, Peoples R China
基金
北京市自然科学基金; 中国国家自然科学基金;
关键词
Internet of Vehicles; Federated learning; Multi-access Edge Computing; Distributed dynamic resource management; Multi-agent deep reinforcement learning; ALLOCATION; IOT;
D O I
10.1016/j.future.2021.11.020
中图分类号
TP301 [理论、方法];
学科分类号
081202 ;
摘要
In recent years, the powerful combination of Multi-access Edge Computing (MEC) and Artificial Intelligence (AI), called edge intelligence, promotes the development of Intelligent Transportation Systems (ITS). However, there is a mismatch between the ever-increasing consumer privacy awareness and the data leakage risk in centralized AI training solutions in vehicular edge scenarios, which has become a new obstacle to satisfying the user experience. As a promising privacy-preserving paradigm, federated learning synthesizes a global model only with the parameters of decentralized trained local models, avoiding the exposure of sensitive data. Given this, we introduce federated learning into the proposed two-level MEC-assisted vehicular network framework. This paper aims to address the challenges posed by adopting federated learning into the Internet of Vehicles (IoV) scenario. Firstly, as the entity of the participant (the local model training node of federated learning), vehicles have high mobility. We design a mobility supported federated learning participant decision algorithm to pick out participants from candidate vehicles. Secondly, federated learning is rather resource-consuming, inevitably incurring considerable costs to participants. We focus on the joint resource allocation problem to optimize the federated learning cost. Finally, considering the limitations of centralized resource allocation, we propose a fully distributed resource allocation method inspired by multiagent deep reinforcement learning. Simulation results are presented to demonstrate the feasibility and effectiveness of the proposed schemes. (C) 2021 Published by Elsevier B.V.
引用
收藏
页码:199 / 211
页数:13
相关论文
共 50 条
  • [31] An Enhancing Semi-Supervised Federated Learning Framework for Internet of Vehicles
    Su, Xiangqing
    Huo, Yan
    Wang, Xiaoxuan
    Jing, Tao
    2023 IEEE 98TH VEHICULAR TECHNOLOGY CONFERENCE, VTC2023-FALL, 2023,
  • [32] Energy efficient federated learning in internet of vehicles: A game theoretic scheme
    Zhang, Jiancong
    Wang, Changhao
    Li, Shining
    TRANSACTIONS ON EMERGING TELECOMMUNICATIONS TECHNOLOGIES, 2023, 34 (05)
  • [33] Selective Federated Learning for On-Road Services in Internet-of-Vehicles
    Saputra, Yuris Mulya
    Nguyen, Diep N.
    Hoang, Dinh Thai
    Dutkiewicz, Eryk
    2021 IEEE GLOBAL COMMUNICATIONS CONFERENCE (GLOBECOM), 2021,
  • [34] FedDQ: A communication-efficient federated learning approach for Internet of Vehicles
    Mo, Zijia
    Gao, Zhipeng
    Zhao, Chen
    Lin, Yijing
    Journal of Systems Architecture, 2022, 131
  • [35] Towards Efficient Federated Learning Using Agile Aggregation in Internet of Vehicles
    He, Xin
    Hu, Xiaolin
    Wang, Guanghui
    Yu, Junyang
    Zhao, Zhanghong
    Lu, Xiaobin
    Security and Communication Networks, 2023, 2023
  • [36] FedDQ: A communication-efficient federated learning approach for Internet of Vehicles
    Mo, Zijia
    Gao, Zhipeng
    Zhao, Chen
    Lin, Yijing
    JOURNAL OF SYSTEMS ARCHITECTURE, 2022, 131
  • [37] FLUK: Protecting Federated Learning Against Malicious Clients for Internet of Vehicles
    Zhu, Mengde
    Ning, Wanyi
    Qi, Qi
    Wang, Jingyu
    Zhuang, Zirui
    Sun, Haifeng
    Huang, Jun
    Liao, Jianxin
    EURO-PAR 2024: PARALLEL PROCESSING, PART II, EURO-PAR 2024, 2024, 14802 : 454 - 469
  • [38] Making a Case for Federated Learning in the Internet of Vehicles and Intelligent Transportation Systems
    Manias, Dimitrios Michael
    Shami, Abdallah
    IEEE NETWORK, 2021, 35 (03): : 88 - 94
  • [39] Distributed Joint Resource Optimization for Federated Learning Task Distribution
    Zhang, Chaofeng
    Dong, Mianxiong
    Ota, Kaoru
    IEEE TRANSACTIONS ON GREEN COMMUNICATIONS AND NETWORKING, 2023, 7 (03): : 1457 - 1471
  • [40] A Novel Federated Learning Framework Based on Trust Evaluation in Internet of Vehicles
    Wan, Na
    Wang, Denghui
    AD HOC & SENSOR WIRELESS NETWORKS, 2024, 58 (3-4) : 321 - 343