基于协同集装箱的停放车辆边缘计算框架在线任务卸载

Khoa T. D. Nguyen, S. Drew, Changcheng Huang, Jiayu Zhou
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引用次数: 7

摘要

由于大多数车辆95%以上的时间都停留在停车场,停放车辆的强大计算资源没有得到充分利用,可以将其视为运行任务的可用计算节点,同时也是现有基础设施的延伸。在本文中,我们提出了一种协同计算范式EdgePV来有效地改进在线异构任务调度。为了保证服务的可靠性,一个容器编排(例如Kubernetes)被建议集成到这个架构中,因为它具有显著的高级特性,如负载平衡、自动修复、资源隔离、安全性等。Kubernetes协调pv运行足够数量的任务副本,提供高服务可用性,以应对pv的移动性可能导致的故障。我们研究了pv在高峰时段如何有效地处理在线计算任务。我们还提出了双成本和效用感知的启发式算法,并与解决任务调度问题的一组启发式算法进行了比较,该算法可用于替代Kubernetes平台中的默认调度程序。大量的仿真结果表明,与协同的云边缘架构相比,我们提出的设计在任务到达率最低的情况下,任务接受率和平均成本分别提高了至少23%和64%。此外,通过共享闲置的pv资源,pv的所有者可以从激励中获得显著收益。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Collaborative Container-based Parked Vehicle Edge Computing Framework for Online Task Offloading
As most vehicles spend over 95% of their time in the parking lots, the powerful computing resources of parked vehicles (PVs) are underutilized, that can be considered as available computing nodes to run tasks as well as an extension of the existing infrastructure. In this paper, we propose EdgePV, a collaborative computing paradigm to efficiently improve online heterogeneous task scheduling. To guarantee service reliability, a container orchestration (e.g. Kubernetes) is advocated to be integrated into this proposed architecture due to its notable advanced features such as load-balancing, auto-healing, resource isolation, security, etc,. Kubernetes coordinates PVs to run sufficient numbers of task replicas, providing high service availability against possible failure caused by the mobility of PVs. We investigate how efficient PVs can handle the online computational tasks during peak hours. We also present the dual cost and utility-aware heuristic algorithm, compared with a set of heuristics to solve the problem of task scheduling, that can be devised for replacing the default scheduler in Kubernetes platform. Extensive simulation results show that our proposed design improves the task acceptance ratios and average costs at least 23% and 64%, respectively, at lowest task arrival rate compared to the cooperated cloud-edge architecture. Furthermore, owners of PVs can significantly benefit from incentives received by sharing the idle resources of their PVs.
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