基于单任务延迟的移动边缘计算网络多策略感知卸载

T. Chanyour, Youssef Hmimz, Mohamed El Ghmary, M. Malki
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引用次数: 1

摘要

移动边缘计算(MEC)是一项很有前途的新技术,为优化能耗、保护隐私和减少网络流量瓶颈提供了新的机会。此外,基于mec的计算任务卸载可以实现更低的延迟和能耗。然而,对于多任务多用户设置,卸载决策变得困难和关键。实际上,必须仔细考虑通信和处理资源以及由此产生的处理延迟和消耗的能量。在本文中,我们考虑了一个多策略卸载场景,其中每个移动设备持有一个繁重的任务列表。每个任务的进一步特点是其适当的处理截止日期。因此,我们设计了相应的优化问题,该优化问题是最小化一个加权和函数,该函数综合考虑了能耗、处理延迟和未满足任务的工作量。由于所研究系统的决策时间约束较短,且所得到的问题具有np -硬度,我们将其分解为两个子问题。然后,我们对每个子问题提出了解决方案。目的是评估这些解决方案。,我们进行了一组仿真实验,将它们的性能与相关的最新方法进行比较。最后。,对于中等数量的任务,获得的执行时间非常令人满意。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Multi-policy Aware Offloading with Per-task Delay for Mobile Edge Computing Networks
Mobile Edge Computing (MEC) is a promising new technology that offers new opportunities for energy consumption optimization, privacy preservation, and network traffic bottlenecks” reduction. Besides, MEC-based computation tasks offloading can achieve lower latencies and energy consumption. However, with the multi-task multi-user setting, the offloading decisions become hard and critical. Indeed, the communication and processing resources as well as the resulting processing delays and the consumed energies have to be carefully considered. In this paper, we consider a multi-policy offloading scenario where each mobile device holds a list of heavy tasks. Each task is further characterized by its proper processing deadline. Therefore, we designed the corresponding optimization problem that minimizes a weighted-sum function that jointly considers energy consumption, processing delays, and the unsatisfied tasks' workloads. Due to the short decision time constraint in the studied system and the NP-hardness of the obtained problem, we decomposed it using two sub-problems. Then, we proposed a solution to each sub-problem. With the aim of evaluating these solutions., we performed a set of simulation experiments to compare their performance with relevant state of the art method. Finally., the obtained execution times are very satisfactory for moderate number of tasks.
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