A Blockchain Based Federated Learning for Message Dissemination in Vehicular Networks
【Author】 Ayaz, Ferheen; Sheng, Zhengguo; Tian, Daxin; Guan, Yong Liang
【Source】IEEE TRANSACTIONS ON VEHICULAR TECHNOLOGY
【影响因子】6.239
【Abstract】Message exchange among vehicles plays an important role in ensuring road safety. Emergency message dissemination is usually carried out by broadcasting. However, high vehicle density and mobility lead to challenges in message dissemination such as broadcasting storm and low probability of packet reception. This paper proposes a federated learning based blockchain-assisted message dissemination solution. Similar to the incentive-based Proof-of-Work consensus in blockchain, vehicles compete to become a relay node (miner) by processing the proposed Proof-of-Federated-Learning (PoFL) consensus which is embedded in the smart contract of blockchain. Both theoretical and practical analysis of the proposed solution are provided. Specifically, the proposed blockchain based federated learning results in more vehicles uploading their models in a given time, which can potentially lead to a more accurate model in less time as compared to the same solution without using blockchain. It also outperforms other blockchain approaches in reducing 65.2% of time delay in consensus, improving at least 8.2% message delivery rate and preserving privacy of neighbor vehicle more efficiently. The economic model to incentivize vehicles participating in federated learning and message dissemination is further analyzed using Stackelberg game. The analysis of asymptotic complexity proves PoFL as the most scalable solution compared to other consensus algorithms in vehicular networks.
【Keywords】Biological system modeling; Blockchains; Relays; Fuzzy logic; Economics; Data models; Analytical models; Blockchain; federated learning; smart contract
【发表时间】2022 FEB
【收录时间】2022-03-08
【文献类型】期刊
【主题类别】
区块链应用-交通领域-
【DOI】 10.1109/TVT.2021.3132226
评论