车联网中的延迟有效任务卸载技术:从车辆排布的角度来看

IF 8.4 2区 计算机科学 Q1 ENGINEERING, ELECTRICAL & ELECTRONIC IEEE Transactions on Communications Pub Date : 2024-11-07 DOI:10.1109/TCOMM.2024.3493816
Fuze Zhu;Xiaowu Liu;Kan Yu;Qixun Zhang;Zhiyong Feng;Dong Li
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引用次数: 0

摘要

任务卸载技术通过联合优化车辆、路边单元(rsu)和宏基站(mbs)支持的异构计算资源,最大限度地减少处理延迟,在车联网(IoV)中发挥着至关重要的作用。以往的工作往往忽略了任务数据交换和共享过程中的无线干扰。此外,具有相似驾驶行为的车辆形成车辆队列(vehicle platooning, VEH-PLA)并有效整合单个车辆资源的潜力尚未得到充分解决。此外,作为一种新的资源管理范例,VEH-PLA应该考虑任务分类,因为VEH-PLA中的车辆可能具有相同的任务卸载请求——这方面也没有得到足够的重视。在本文中,考虑无线干扰、车辆移动性、VEH-PLA和任务分类,我们提出了四种旨在最小化处理延迟的任务卸载模型。利用基于多智能体深度强化学习(MADRL)的集中训练和分散执行(CTDE)方法,提出了一种全局最优任务卸载决策方法。这将显著增强资源负载平衡并减少处理延迟。最后,仿真验证了该方法在最小化处理延迟的同时保持均衡的资源利用率方面明显优于传统的任务卸载方法。
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Delay-Effective Task Offloading Technology in Internet of Vehicles: From the Perspective of the Vehicle Platooning
Task offloading technology plays a crucial role in the Internet of Vehicles (IoV) by minimizing processing delays through the joint optimization of heterogeneous computing resources supported by vehicles, roadside units (RSUs), and macro base stations (MBSs). Previous works have often ignored the wireless interference during the exchange and sharing of task data. Additionally, the potential for vehicles with similar driving behaviors to form vehicle platooning (VEH-PLA) and effectively integrate individual vehicle resources has not been adequately addressed. Furthermore, as a novel resource management paradigm, VEH-PLA should consider task categorization since vehicles within a VEH-PLA may have identical task offloading requestsan aspect that has also received insufficient attention. In this paper, considering wireless interference, vehicle mobility, VEH-PLA, and task categorization, we propose four task offloading models aimed at minimizing processing delays. By utilizing centralized training and decentralized execution (CTDE) based on multi-agent deep reinforcement learning (MADRL), we present a task offloading decision-making method to find the global optimal offloading decision. This results in significant enhancements in resource load balancing and reductions in processing delays. Finally, simulations validate that the proposed method significantly outperforms traditional task offloading approaches in terms of minimizing processing delays while maintaining balanced resource utilization.
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来源期刊
IEEE Transactions on Communications
IEEE Transactions on Communications 工程技术-电信学
CiteScore
16.10
自引率
8.40%
发文量
528
审稿时长
4.1 months
期刊介绍: The IEEE Transactions on Communications is dedicated to publishing high-quality manuscripts that showcase advancements in the state-of-the-art of telecommunications. Our scope encompasses all aspects of telecommunications, including telephone, telegraphy, facsimile, and television, facilitated by electromagnetic propagation methods such as radio, wire, aerial, underground, coaxial, and submarine cables, as well as waveguides, communication satellites, and lasers. We cover telecommunications in various settings, including marine, aeronautical, space, and fixed station services, addressing topics such as repeaters, radio relaying, signal storage, regeneration, error detection and correction, multiplexing, carrier techniques, communication switching systems, data communications, and communication theory. Join us in advancing the field of telecommunications through groundbreaking research and innovation.
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