The Monthly Newsletter of IEEE Vehicular Technology Society—May 2023

header
Forward to a Colleague | RSS Join Our LinkedIn Group Join Our LinkedIn Group
spacer spacer
From the IEEE Transactions on Vehicular Technology
Federated Learning in IoV
Xiaoya Hu, Ruiqin Li, Yuqiao Ning, Kaoru Ota, and Licheng Wang

Full title—A Data Sharing Scheme Based on Federated Learning in IoV

As the functions of connected vehicles become more complicated, the amount and type of data they generate during driving are increasing. Sharing the data among connected vehicles can improve users' driving experience and reduce traffic pressure.

However, the leakage of users' private information caused by data sharing may harm the interest of vehicle users and even endanger their lives. Meanwhile, since the quality of data collected by vehicles varies, high-quality data sharing means users get more reliable services, while low-quality data can reduce service reliability, drive experience, or cause traffic accidents.

Therefore, developing an effective and highly reliable privacy protection scheme for shared data becomes a pressing problem to be solved. At the same time, since data sharing requires low latency, it is also a challenge to introduce a privacy protection mechanism without significant delay.

In this paper, we propose a decentralized federated learning-based data sharing scheme that provides strong privacy protection for data and improves the system's robustness. In particular, we decouple the data request process from the data sharing process to improve the sharing efficiency.

Then we propose a TOP-K-based nodes selection scheme to improve the accuracy of the trained models and ensure data reliability. The security analysis shows that the scheme can resist attacks and achieve secure data sharing.

Finally, the scheme's effectiveness and the model prediction's efficiency are verified through experiments. The results show that the scheme has high accuracy, efficiency, and security.

Full Article: IEEE Transactions on Vehicular Technology, Early Access, 2023

spacer
spacer
spacer spacer
Previous Article Previous Article
Return to Top Return to Top
spacer spacer
Home Return Home
Print This Article Print This Article
spacer spacer
Share Share This Article Share Share Share
spacer
spacer
In This Issue
Message from the EiC
spacer
Open Calls
VTS Board of Governors
Call for Nominations: Wiley-IEEE Press Book Awards
spacer
Mobile Radio
5G SA for Midband and Millimeter-Wave Launches
spacer
Transportation Systems
More, Faster Trains Between Stuttgart—Munich
spacer
Connected and Automated Vehicles
Self-Driving in the Real World?
First Monograph Dedicated to C-V2X
spacer
From the IEEE Open Journal of Vehicular Technology
Cybersecurity of Autonomous Vehicles
spacer
From the IEEE Transactions on Vehicular Technology
Federated Learning in IoV
spacer

Editor-in-Chief

F. Richard Yu

Jump to
Conference News
Jump to
Pubs and Videos

IEEE VTS Website

News
Member Resources
Conferences
Publications
Tech Communities
About Us
spacer

CONFERENCE NEWS and LATEST UPDATES

IEEE VTC2023-Spring

20 – 23 Jun 2023

Florence, Italy

View the latest updates

IEEE VPPC 2023

23 – 27 Oct 2023

Milan, Italy

Regular paper deadline extended to 8 May 2023

FREE for VTS Members
VTS Resource Center
VTS Resource Center
A Multimedia
Educational Library
IEEE Vehicular
Technology Magazine

Volume 18, Number 1
NEW IEEE Open Journal of
Vehicular Technology
IEEE Open Journal on Vehicular Technology
IEEE Transactions on
Vehicular Technology

Volume 72, Number 4
Browse all
Past Issues of
  50 most popular VTM articles   50 most popular TVT articles  
header
Copyright © IEEE

To ensure delivery, please add vts@ieee.org to your email address book or Safe Sender List. If you are still having problems receiving our emails, see our whitelisting page for more details.
Vehicular Technology Society Homepage IEEE Homepage