BFLP: An Adaptive Federated Learning Framework for Internet of Vehicles

Applications of Internet of Vehicles (IoV) make the life of human beings more intelligent and convenient. However, in the present, there are some problems in IoV, such as data silos and poor privacy preservation. To address the challenges in IoV, we propose a blockchain-based federated learning pool...

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Main Authors: Yongqiang Peng, Zongyao Chen, Zexuan Chen, Wei Ou, Wenbao Han, Jianqiang Ma
Format: Article
Language:English
Published: Hindawi Limited 2021-01-01
Series:Mobile Information Systems
Online Access:http://dx.doi.org/10.1155/2021/6633332
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spelling doaj-ddaf95d2daae4f1493570f081ee7cba02021-07-02T20:38:02ZengHindawi LimitedMobile Information Systems1875-905X2021-01-01202110.1155/2021/6633332BFLP: An Adaptive Federated Learning Framework for Internet of VehiclesYongqiang Peng0Zongyao Chen1Zexuan Chen2Wei Ou3Wenbao Han4Jianqiang Ma5School of Computer Science and Cyberspace SecuritySchool of Computer Science and Cyberspace SecuritySchool of Computer Science and Cyberspace SecuritySchool of Computer Science and Cyberspace SecuritySchool of Computer Science and Cyberspace SecuritySchool of Computer Science and Cyberspace SecurityApplications of Internet of Vehicles (IoV) make the life of human beings more intelligent and convenient. However, in the present, there are some problems in IoV, such as data silos and poor privacy preservation. To address the challenges in IoV, we propose a blockchain-based federated learning pool (BFLP) framework. BFLP allows the models to be trained without sharing raw data, and it can choose the most suitable federated learning method according to actual application scenarios. Considering the poor computing power of vehicle systems, we construct a lightweight encryption algorithm called CPC to protect privacy. To verify the proposed framework, we conducted experiments in obstacle-avoiding and traffic forecast scenarios. The results show that the proposed framework can effectively protect the user's privacy, and it is more stable and efficient compared with traditional machine learning technique. Also, we compare the CPC algorithm with other encryption algorithms. And the results show that its calculation cost is much lower compared to other symmetric encryption algorithms.http://dx.doi.org/10.1155/2021/6633332
collection DOAJ
language English
format Article
sources DOAJ
author Yongqiang Peng
Zongyao Chen
Zexuan Chen
Wei Ou
Wenbao Han
Jianqiang Ma
spellingShingle Yongqiang Peng
Zongyao Chen
Zexuan Chen
Wei Ou
Wenbao Han
Jianqiang Ma
BFLP: An Adaptive Federated Learning Framework for Internet of Vehicles
Mobile Information Systems
author_facet Yongqiang Peng
Zongyao Chen
Zexuan Chen
Wei Ou
Wenbao Han
Jianqiang Ma
author_sort Yongqiang Peng
title BFLP: An Adaptive Federated Learning Framework for Internet of Vehicles
title_short BFLP: An Adaptive Federated Learning Framework for Internet of Vehicles
title_full BFLP: An Adaptive Federated Learning Framework for Internet of Vehicles
title_fullStr BFLP: An Adaptive Federated Learning Framework for Internet of Vehicles
title_full_unstemmed BFLP: An Adaptive Federated Learning Framework for Internet of Vehicles
title_sort bflp: an adaptive federated learning framework for internet of vehicles
publisher Hindawi Limited
series Mobile Information Systems
issn 1875-905X
publishDate 2021-01-01
description Applications of Internet of Vehicles (IoV) make the life of human beings more intelligent and convenient. However, in the present, there are some problems in IoV, such as data silos and poor privacy preservation. To address the challenges in IoV, we propose a blockchain-based federated learning pool (BFLP) framework. BFLP allows the models to be trained without sharing raw data, and it can choose the most suitable federated learning method according to actual application scenarios. Considering the poor computing power of vehicle systems, we construct a lightweight encryption algorithm called CPC to protect privacy. To verify the proposed framework, we conducted experiments in obstacle-avoiding and traffic forecast scenarios. The results show that the proposed framework can effectively protect the user's privacy, and it is more stable and efficient compared with traditional machine learning technique. Also, we compare the CPC algorithm with other encryption algorithms. And the results show that its calculation cost is much lower compared to other symmetric encryption algorithms.
url http://dx.doi.org/10.1155/2021/6633332
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