基于协同边缘计算的车辆网络迁移任务划分

Sung-woo Moon, Yujin Lim
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摘要

多接入边缘计算(MEC)被认为是一种很有前途的技术,可以促进关键任务车辆应用,如自动驾驶、路径规划和导航。通过将延迟敏感或计算密集型任务从车辆卸载到MEC服务器(mecs),边缘计算显着提高了计算资源有限的车辆的计算能力。然而,MEC系统可能具有不均匀的负载,因为车辆不是均匀分布在MEC系统中,并且车辆不会均匀地卸载其任务。因此,那些卸载的任务具有高延迟或被阻塞。此外,高移动性导致的任务迁移会导致业务频繁中断。由于车辆的高机动性和MECS上的负载动态,计算任务可以同时迁移到特定的MECS或迁移到严重拥挤的MECS。因此,在mecs之间确定迁移决策(即是否迁移/迁移到哪里)具有挑战性。在传统方法中,计算任务完全迁移到与车辆轨迹相对应的MECS中。相比之下,在本研究中,任务部分或全部迁移到协作边缘计算系统中的其他mecs。为了减少任务执行延迟和提高系统吞吐量,该方法选择一个优化MECS之间负载均衡的MECS,并将任务分区迁移到MECS。仿真结果表明,与传统方法相比,该方法通过优化负载均衡和任务划分,提高了服务质量(QoS)要求的满意度和MEC系统吞吐量。
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Task Partitioning for Migration with Collaborative Edge Computing in Vehicular Networks
Multi-access edge computing (MEC) is considered a promising technology to facilitate mission-critical vehicular applications, such as automatic driving, path-planning, and navigation. By offloading delay-sensitive or computation-intensive tasks from vehicles to MEC servers (MECSs), edge computing significantly enhances the computing capacity of vehicles with limited computing resources. However, MECSs may have uneven loads as vehicles are not evenly distributed across MEC systems and vehicles do not offload their tasks evenly. As a result, those offloaded tasks have high latency or be blocked. In addition, service interruption would happen frequently due to task migration caused by the high mobility. Due to the high mobility of vehicles and load dynamics at MECSs, computation tasks can migrate simultaneously to a particular MECS or migrate to a heavily congested MECS. Therefore, it is challenging to determine the migration decision, i.e., whether/where to migrate, among MECSs. In conventional methods, computation tasks are fully migrated to the MECS corresponding to the vehicle’s trajectory. By contrast, in this study, tasks are migrated partially or fully to other MECSs in the collaborative edge computing system. To reduce the task execution latency and improve the system throughput, the proposed method selects a MECS that optimizes load balancing among MECSs and partitions the task to migrate for the MECS. Through simulations, compared with the conventional methods, the proposed method can increase the satisfaction of quality of service (QoS) requirements and MEC system throughput by optimizing the load balancing and task partitioning.
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