基于C-V2X模式4的联邦边缘学习系统车辆选择

IF 4 3区 计算机科学 Q1 COMPUTER SCIENCE, INFORMATION SYSTEMS IEEE Systems Journal Pub Date : 2024-09-26 DOI:10.1109/JSYST.2024.3459926
Xiaobo Wang;Qiong Wu;Pingyi Fan;Qiang Fan;Huiling Zhu;Jiangzhou Wang
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引用次数: 0

摘要

随着信息通信技术的兴起,车辆之间的协同工作成为实现车联网的关键。在车联网中,联邦学习(FL)是一种很有前途的保护车辆隐私的技术。计算能力有限的车辆可能面临与FL相关的巨大计算负担,引入联邦边缘学习(FEEL)系统来解决这一问题。在FEEL系统中,车辆采用蜂窝车到一切(C-V2X)模式4将加密数据上传到路旁单元(rsu)缓存队列。然后,rsu对车辆传输的数据进行训练,更新局部模型超参数,并将结果返回给车辆,从而减轻车辆的计算负担。然而,每个RSU都有有限的缓存队列。为了保持高速缓存队列的稳定性和最大限度地提高模型的准确性,选择合适的车辆上传数据是至关重要的。由于随机通道和车辆系统状态的不同,会导致数据随机偏离缓存队列,因此FEEL系统的车辆选择方法面临挑战。本文提出了一种用于FEEL系统的车辆选择方法,其目的是在保持缓存队列稳定的同时使模型的准确性最大化。大量的仿真实验表明,我们提出的方法优于其他基线选择方法。
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Vehicle Selection for C-V2X Mode 4-Based Federated Edge Learning Systems
As the rise of information and communication technology, the cooperative work of vehicles has become crucial in realizing Internet of Vehicles (IoV). Federated learning (FL) is a promising technology to protect vehicles' privacy in IoV. Vehicles with limited computation capacity may face a large computational burden associated with FL. Federated edge learning (FEEL) systems are introduced to solve such a problem. In FEEL systems, vehicles adopt the cellular-vehicle to everything (C-V2X) mode 4 to upload encrypted data to road side units' (RSUs) cache queue. Then, RSUs train the data transmitted by vehicles, update the local model hyperparameters, and send back results to vehicles, thus, vehicles' computational burden can be released. However, each RSU has limited cache queue. To maintain the stability of cache queue and maximize the accuracy of model, it is essential to select appropriate vehicles to upload data. The vehicle selection method for FEEL systems faces challenges due to the random departure of data from the cache queue caused by the stochastic channel and the different system status of vehicles. This article proposes a vehicle selection method for FEEL systems that aims to maximize the accuracy of model while keeping the cache queue stable. Extensive simulation experiments demonstrate that our proposed method outperforms other baseline selection methods.
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来源期刊
IEEE Systems Journal
IEEE Systems Journal 工程技术-电信学
CiteScore
9.80
自引率
6.80%
发文量
572
审稿时长
4.9 months
期刊介绍: This publication provides a systems-level, focused forum for application-oriented manuscripts that address complex systems and system-of-systems of national and global significance. It intends to encourage and facilitate cooperation and interaction among IEEE Societies with systems-level and systems engineering interest, and to attract non-IEEE contributors and readers from around the globe. Our IEEE Systems Council job is to address issues in new ways that are not solvable in the domains of the existing IEEE or other societies or global organizations. These problems do not fit within traditional hierarchical boundaries. For example, disaster response such as that triggered by Hurricane Katrina, tsunamis, or current volcanic eruptions is not solvable by pure engineering solutions. We need to think about changing and enlarging the paradigm to include systems issues.
期刊最新文献
2024 Index IEEE Systems Journal Vol. 18 Front Cover Editorial Table of Contents IEEE Systems Council Information
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