车辆网络中的边缘辅助联邦学习

G. Bruna, Carlos Mateo Risma Carletti, Riccardo Rusca, C. Casetti, C. Chiasserini, Marina Giordanino, Roberto Tola
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引用次数: 1

摘要

鉴于车辆配备了大量传感器,如今的自动驾驶汽车已经产生了大量数据,预计自动驾驶汽车的数据量还会增加,从而为车辆控制、安全性和舒适性提供数据驱动的解决方案,并有效地实现便利性应用。预计机器学习模型将在处理这些数据方面发挥关键作用,然而,机器学习模型的训练需要大量的计算和能源资源。在本文中,我们解决了使用合作学习解决方案来训练神经网络(NN)模型,同时保持数据在训练过程中涉及的每辆车的本地。我们特别关注联邦学习(FL),并探索如何将这种合作学习方案应用于城市场景,在城市场景中,由位于网络边缘的服务器支持的几辆汽车协作训练NN模型。为此,我们考虑了一个用于轨迹预测的LSTM模型——这是许多安全和便利车辆应用的重要组成部分,并研究了随着参与学习过程的车辆数量和它们拥有的数据集的变化,FL的性能。为此,我们利用大城市和FLOWER FL平台的现实交通痕迹。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Edge-assisted Federated Learning in Vehicular Networks
Given the plethora of sensors with which vehicles are equipped, today's automated vehicles already generate large amounts of data, and this is expected to increase in the case of autonomous vehicles, to enable data-driven solutions for vehicle control, safety and comfort, as well as to effectively implement convenience applications. It is expected that a crucial role in processing such data will be played by machine learning models, which, however, require substantial computing and energy resources for their training. In this paper, we address the use of cooperative learning solutions to train a Neural Network (NN) model while keeping data local to each vehicle involved in the training process. In particular, we focus on Federated Learning (FL) and explore how this cooperative learning scheme can be applied in an urban scenario where several cars, supported by a server located at the edge of the network, collaborate to train a NN model. To this end, we consider an LSTM model for trajectory prediction - a task that is an essential component of many safety and convenience vehicular applications, and investigate the performance of FL as the number of vehicles contributing to the learning process, and the data set they own, vary. To do so, we leverage realistic mobility traces of a large city and the FLOWER FL platform.
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