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Multi-Server Multi-User Multi-Task Computation Offloading for Mobile Edge Computing Networks

机译:移动边缘计算网络的多服务器多用户多任务计算分载

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摘要

This paper studies mobile edge computing (MEC) networks where multiple wireless devices (WDs) offload their computation tasks to multiple edge servers and one cloud server. Considering different real-time computation tasks at different WDs, every task is decided to be processed locally at its WD or to be offloaded to and processed at one of the edge servers or the cloud server. In this paper, we investigate low-complexity computation offloading policies to guarantee quality of service of the MEC network and to minimize WDs’ energy consumption. Specifically, both a linear programing relaxation-based (LR-based) algorithm and a distributed deep learning-based offloading (DDLO) algorithm are independently studied for MEC networks. We further propose a heterogeneous DDLO to achieve better convergence performance than DDLO. Extensive numerical results show that the DDLO algorithms guarantee better performance than the LR-based algorithm. Furthermore, the DDLO algorithm generates an offloading decision in less than 1 millisecond, which is several orders faster than the LR-based algorithm.
机译:本文研究了移动边缘计算(MEC)网络,其中多个无线设备(WD)将其计算任务分流到多个边缘服务器和一个云服务器。考虑到不同WD处的不同实时计算任务,每个任务都决定在其WD本地处理,或者卸载到边缘服务器或云服务器之一并在其中进行处理。在本文中,我们研究了低复杂度的计算卸载策略,以确保MEC网络的服务质量并最大程度地降低WD的能耗。具体而言,针对MEC网络,分别研究了基于线性规划松弛的算法(基于LR)和基于分布式深度学习的卸载算法(DDLO)。我们还提出了一种异构DDLO,以实现比DDLO更好的收敛性能。大量的数值结果表明,DDLO算法比基于LR的算法具有更好的性能。此外,DDLO算法可在不到1毫秒的时间内生成卸载决策,这比基于LR的算法快了几个数量级。

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