Emerging intelligent transportation applications, such as accident reporting, lane change assistance, collision avoidance, and infotainment, will be based on diverse requirements (e.g., latency, reliability, quality of physical experience). To fulfill such requirements, there is a significant need to deploy a digital twin-based intelligent transportation system. Although the twin-based implementation of vehicular networks can offer performance optimization. Modeling twins is a significantly challenging task. Machine learning (ML) can be a preferable solution to model such a virtual model, and specifically federated learning (FL) is a distributed learning scheme that can better preserve privacy compared to centralized ML. Although FL can offer performance enhancement, it requires careful design. Therefore, in this article, we present an overview of FL for the twin-based vehicular network. A general architecture showing FL for the twin-based vehicular network is proposed. Our proposed architecture consists of two spaces, such as twin space and a physical space. The physical space consists of all the physical entities (e.g., cars and edge servers) required for vehicular networks, whereas the twin space refers to the logical space that is used for the deployment of twins. A twin space can be implemented either using edge servers and cloud servers. We also outline a few use cases of FL for the twin-based vehicular network. Finally, the paper is concluded and an outlook on open challenges is presented.
翻译:新出现的智能运输应用,如事故报告、换车协助、避免碰撞、以及信息保存等新兴智能运输应用,将基于多种要求(如隐蔽度、可靠性、物理体验质量等),满足这些要求非常需要部署数字双基智能运输系统。虽然双基车辆网络的实施可以优化性能。模范双胞胎是一项艰巨的任务。机器学习(ML)可能是模拟这种虚拟模型的更好解决方案,而专门结合学习(FL)是一种分布式学习计划,可以比集中式ML更好地保护隐私。虽然FL可以提供性能增强,但需要仔细设计。因此,我们在本篇文章中为双基车辆网络概要介绍FL的FL。我们提议的结构由两个空间组成,如双层空间和物理空间。物理空间由所有物理实体(如汽车和边缘服务器)组成,这些实体可以更好地保护与中央ML的隐私。虽然FL能够提供性能增强性能,但需要谨慎设计。因此,我们在本篇文章中为双层车辆网络提供双层空间的双层服务器。我们最后使用双层服务器。