Misbehavior detection system with semi-supervised federated learning

被引:3
|
作者
Kristianto, Edy [1 ]
Lin, Po-Ching [1 ]
Hwang, Ren-Hung [2 ]
机构
[1] Natl Chung Cheng Univ, Dept Comp Sci & Informat Engn, Chiayi, Taiwan
[2] Natl Yang Ming Chiao Tung Univ, Coll Artificial Intelligence, Tainan, Taiwan
关键词
Misbehavior detection system; Semi-supervised learning; V2X communications; Federated learning; AUTHORIZATION USAGE CONTROL; SAFETY DECIDABILITY;
D O I
10.1016/j.vehcom.2023.100597
中图分类号
TN [电子技术、通信技术];
学科分类号
0809 ;
摘要
V2X communications can enhance transportation safety by exchanging safety information between vehicles, road infrastructures, networks, and pedestrians. However, the safety messages are vulnerable to disruption from faulty components or an attack that can cause misinformation. Recently, a machine learning-based misbehavior detection system (MDS) has been widely investigated to detect the misbehaving vehicles to secure the V2X communications. Nonetheless, machine learning models need sufficient labeled data for learning purposes. However, the volume of unlabeled data is usually larger than that of labeled data in practice. Moreover, transferring the large dataset to a centralized learning model will consume much bandwidth. Thus, we propose a semi-supervised federated learning MDS to overcome the limitations of unlabeled data and bring the training close to the data sources to reduce the bandwidth to the core network. Overall, our model with only limited labeled data training (5%-30%) can achieve the F1-score up to 0.96 and the recall up to 0.95. The F1-score is up to 0.26 higher and the recall is up to 0.29 higher than the performance of centralized supervised learning. The federated learning model can reduce the core network bandwidth utilization by up to 95%.(c) 2023 Elsevier Inc. All rights reserved.
引用
收藏
页数:17
相关论文
共 50 条
  • [11] Employing Federated Semi-supervised Learning for Network Traffic Classification
    Chih-Yu Lin
    Chien-Ting Tseng
    Li-Yu An
    Journal of Network and Systems Management, 2025, 33 (3)
  • [12] 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,
  • [13] Network traffic classification based on federated semi-supervised learning
    Wang, Zixuan
    Li, Zeyi
    Fu, Mengyi
    Ye, Yingchun
    Wang, Pan
    JOURNAL OF SYSTEMS ARCHITECTURE, 2024, 149
  • [14] Federated semi-supervised learning based on truncated Gaussian aggregation
    Zhu, Suxia
    Wang, Yunmeng
    Sun, Guanglu
    JOURNAL OF SUPERCOMPUTING, 2025, 81 (01)
  • [15] Exploitation Maximization of Unlabeled Data for Federated Semi-Supervised Learning
    Chen, Siguang
    Shen, Jianhua
    IEEE TRANSACTIONS ON EMERGING TOPICS IN COMPUTATIONAL INTELLIGENCE, 2024, : 1 - 6
  • [16] FedIDE: Federated Semi-Supervised Learning With Instance Discrimination & LocalEMA
    Gao, Zhipeng
    Niu, Shaolong
    Zhao, Chen
    Yang, Yang
    ICC 2024 - IEEE INTERNATIONAL CONFERENCE ON COMMUNICATIONS, 2024, : 3268 - 3273
  • [17] FedMSE: Semi-supervised federated learning approach for IoT network intrusion detection
    Nguyen, Van Tuan
    Beuran, Razvan
    COMPUTERS & SECURITY, 2025, 151
  • [18] Federated Cycling (FedCy): Semi-Supervised Federated Learning of Surgical Phases
    Kassem, Hasan
    Alapatt, Deepak
    Mascagni, Pietro
    Karargyris, Alexandros
    Padoy, Nicolas
    IEEE TRANSACTIONS ON MEDICAL IMAGING, 2023, 42 (07) : 1920 - 1931
  • [19] Federated Learning in Healthcare with Unsupervised and Semi-Supervised Methods
    Panos-Basterra, Juan
    Dolores Ruiz, M.
    Martin-Bautista, Maria J.
    FLEXIBLE QUERY ANSWERING SYSTEMS, FQAS 2023, 2023, 14113 : 182 - 193
  • [20] Asynchronous Semi-Supervised Federated Learning with Provable Convergence in Edge Computing
    Yang, Nan
    Yuan, Dong
    Zhang, Yuning
    Deng, Yongkun
    Bao, Wei
    IEEE NETWORK, 2022, 36 (05): : 136 - 143