【Author】
He, Ying; Huang, Ke; Zhang, Guangzheng; Yu, F. Richard; Chen, Jianyong; Li, Jianqiang
【Source】IEEE INTERNET OF THINGS JOURNAL
【Abstract】Machine learning (ML) algorithms are essential components in autonomous driving. In most existing connected and autonomous vehicles (CAVs), a large amount of driving data collected from multiple vehicles are sent to a central server for unified training. However, data privacy and security have become crucial during the data-sharing process. Federated learning (FL) for data security has arisen nowadays, and it can improve the data privacy of distribute machine learning. However, the malicious attackers can still be able to attack the training process. Due to the complete reliance on the central server, FL is very fragile. To address the above problem, we propose Bift: 1) a fully decentralized ML system combined with FL and 2) blockchain to provide a privacy-preserving ML process for CAVs. Bift enables distributed CAVs to train ML models locally using their own driving data and then to upload the local models to get a better global model. More importantly, Bift provides a consensus algorithm named Proof of Federated Learning to resist possible adversaries. We evaluate the performance of Bift and demonstrate that Bift is scalable and robust, and can defend against malicious attacks.
【Keywords】Blockchains; Servers; Data models; Collaborative work; Training; Computational modeling; Autonomous vehicles; Blockchain; connected and autonomous vehicles (CAVs); consensus algorithm; federated learning (FL); off-chain storage
【标题】Bift:一个基于区块链的联邦学习系统,用于互联和自动驾驶汽车
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