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首页> 外文期刊>IEEE Transactions on Intelligent Transportation Systems >A Hierarchical Blockchain-Enabled Federated Learning Algorithm for Knowledge Sharing in Internet of Vehicles
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A Hierarchical Blockchain-Enabled Federated Learning Algorithm for Knowledge Sharing in Internet of Vehicles

机译:在车辆互联网上的知识共享中启用了一个层级的联邦学习算法

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摘要

Internet of Vehicles (IoVs) is highly characterized by collaborative environment data sensing, computing and processing. Emerging big data and Artificial Intelligence (AI) technologies show significant advantages and efficiency for knowledge sharing among intelligent vehicles. However, it is challenging to guarantee the security and privacy of knowledge during the sharing process. Moreover, conventional AI-based algorithms cannot work properly in distributed vehicular networks. In this paper, a hierarchical blockchain framework and a hierarchical federated learning algorithm are proposed for knowledge sharing, by which vehicles learn environmental data through machine learning methods and share the learning knowledge with each others. The proposed hierarchical blockchain framework is feasible for the large scale vehicular networks. The hierarchical federated learning algorithm is designed to meet the distributed pattern and privacy requirement of IoVs. Knowledge sharing is then modeled as a trading market process to stimulate sharing behaviours, and the trading process is formulated as a multi-leader and multi-player game. Simulation results show that the proposed hierarchical algorithm can improve the sharing efficiency and learning quality. Furthermore, the blockchain-enabled framework is able to deal with certain malicious attacks effectively.
机译:车辆互联网(IOV)的特征在于协同环境数据感测,计算和处理。新兴大数据和人工智能(AI)技术表现出智能车辆中知识共享的显着优势和效率。但是,在共享过程中保证知识的安全和隐私是挑战性的。此外,传统的基于AI的算法不能在分布式车辆网络中正常工作。在本文中,提出了一种分层区间框架和分层联合学习算法,用于知识共享,车辆通过机器学习方法学习环境数据并与彼此共享学习知识。所提出的分层区块链框架对于大规模车辆网络是可行的。分层联合学习算法旨在满足IOV的分布式模式和隐私要求。然后,知识共享被建模为刺激共享行为的交易市场进程,交易过程被制定为多领导和多人游戏。仿真结果表明,该提出的分层算法可以提高共享效率和学习质量。此外,支持区块链的框架能够有效地处理某些恶意攻击。

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