论文标题

根据互联车辆的共识增强了分散的联合学习

Enhanced Decentralized Federated Learning based on Consensus in Connected Vehicles

论文作者

Liu, Xiaoyan, Dong, Zehui, Xu, Zhiwei, Liu, Siyuan, Tian, Jie

论文摘要

有关连接车辆的高级研究最近针对将车辆到全部用途(V2X)网络与机器学习(ML)工具(ML)工具和分布式决策制定的集成。联合学习(FL)正在作为训练机器学习(ML)模型的新范式(包括V2X网络中的车辆)中的新范式出现。与其将培训数据共享和上传到服务器,不如将模型参数的更新(例如,神经网络的权重和偏见)被大量的互连车辆应用,充当本地学习者。尽管有这些好处,但现有方法的局限性是集中式优化,它依赖于服务器来汇总和融合本地参数,从而导致单个故障点和扩展问题的缺点,以增加V2X网络大小。同时,在智能运输方案中,从机上传感器收集的数据是多余的,这会降低聚合的性能。为了解决这些问题,我们探索了一个新颖的分散数据处理的想法,并引入了用于网络内工具的联合学习框架,C-DFL(基于共识的分散联邦学习),以解决有关连接车辆的联合学习并提高学习质量的联盟学习。已经实施了广泛的仿真来评估C-DFL的性能,该表明C-DFL在所有情况下都胜过常规方法的性能。

Advanced researches on connected vehicles have recently targeted to the integration of vehicle-to-everything (V2X) networks with Machine Learning (ML) tools and distributed decision making. Federated learning (FL) is emerging as a new paradigm to train machine learning (ML) models in distributed systems, including vehicles in V2X networks. Rather than sharing and uploading the training data to the server, the updating of model parameters (e.g., neural networks' weights and biases) is applied by large populations of interconnected vehicles, acting as local learners. Despite these benefits, the limitation of existing approaches is the centralized optimization which relies on a server for aggregation and fusion of local parameters, leading to the drawback of a single point of failure and scaling issues for increasing V2X network size. Meanwhile, in intelligent transport scenarios, data collected from onboard sensors are redundant, which degrades the performance of aggregation. To tackle these problems, we explore a novel idea of decentralized data processing and introduce a federated learning framework for in-network vehicles, C-DFL(Consensus based Decentralized Federated Learning), to tackle federated learning on connected vehicles and improve learning quality. Extensive simulations have been implemented to evaluate the performance of C-DFL, that demonstrates C-DFL outperforms the performance of conventional methods in all cases.

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