The emergence of Intelligent Connected Vehicles (ICVs) shows great potential for future intelligent traffic systems, enhancing both traffic safety and road efficiency. However, the ICVs relying on data driven perception and driving models face many challenges, such as the lack of comprehensive knowledge to deal with complicated driving context. In this paper, we are motivated to investigate cooperative knowledge sharing for ICVs. We propose a secure and efficient directed acyclic graph (DAG) blockchain based knowledge sharing framework, wherein a distributed learning based scheme is utilized to enhance the efficiency of knowledge sharing and a DAG system is designed to guarantee the security of shared learning models. To cater for the time-intense demand of highly dynamic vehicular networks, a lightweight DAG is designed to reduce the operation latency in terms of fast consensus and authentication. Moreover, to further enhance model accuracy as well as minimizing bandwidth consumption, an adaptive asynchronous distributed learning (ADL) based scheme is proposed for model uploading and downloading. Experiment results show that the DAG based framework is lightweight and secure, which reduces both chosen and confirmation delay as well as resisting malicious attacks. In addition, the proposed adaptive ADL scheme enhances driving safety related performance compared to several existing algorithms.
翻译:智能连通车辆(ICV)的出现显示了未来智能交通系统的巨大潜力,提高了交通安全和道路效率;然而,依赖数据驱动的感知和驱动模式的ICV公司面临许多挑战,例如缺乏处理复杂驾驶背景的全面知识;在本文件中,我们积极调查ICV公司的合作知识共享;我们提议一个安全高效的定向单向单向单向单向单向单向图(DAG)链式知识共享框架,利用基于分布式学习的系统提高知识共享效率,并设计一个DAG系统以保障共享学习模式的安全;为满足高度动态的电视网络的时间性需求,设计了轻量级DAG公司,以降低快速共识和认证方面的运行延迟;此外,为了进一步提高模型准确性并最大限度地减少带宽的消耗,我们提议为模型上载和下载提出一个基于适应性分散式学习(ADL)的适应性计划;实验结果表明,基于DAG的框架是轻度和安全的,可以减少所选择和确认的延迟,同时减少选择和确认的多次恶意攻击的延迟,以及抑制与ADL相关的演算。