Connected and Automated Vehicles (CAVs) are one of the emerging technologies in the automotive domain that has the potential to alleviate the issues of accidents, traffic congestion, and pollutant emissions, leading to a safe, efficient, and sustainable transportation system. Machine learning-based methods are widely used in CAVs for crucial tasks like perception, motion planning, and motion control, where machine learning models in CAVs are solely trained using the local vehicle data, and the performance is not certain when exposed to new environments or unseen conditions. Federated learning (FL) is an effective solution for CAVs that enables a collaborative model development with multiple vehicles in a distributed learning framework. FL enables CAVs to learn from a wide range of driving environments and improve their overall performance while ensuring the privacy and security of local vehicle data. In this paper, we review the progress accomplished by researchers in applying FL to CAVs. A broader view of the various data modalities and algorithms that have been implemented on CAVs is provided. Specific applications of FL are reviewed in detail, and an analysis of the challenges and future scope of research are presented.
翻译:联网和自动驾驶汽车(Connected and Automated Vehicles,CAVs)是汽车领域的新兴技术之一,具有减少事故、交通堵塞和污染排放等问题的潜力,有望建立安全、高效和可持续的交通系统。机器学习技术被广泛应用于 CAVs 的关键任务,如感知、运动规划以及运动控制。在 CAVs 中,机器学习模型仅使用本地车辆数据进行训练,仅当暴露到新环境或未见条件时,性能才不确定。联邦学习(Federated Learning,FL)是 CAVs 的有效解决方案,它启用多个车辆的协作模型开发分布式学习框架。FL 使 CAVs 能够从广泛的驾驶环境中学习并改进其整体性能,同时确保本地车辆数据的隐私和安全。本文回顾了研究人员在将 FL 应用于 CAVs 中取得的进展。提供了各种数据模态和算法在 CAVs 上的更广泛视角,详细审查了 FL 的具体应用,并分析了未来研究的挑战和前景。