异构无线边缘网络的绿雾卸载策略

Yung-Lin Hsu, Hung-Yu Wei, M. Bennis
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引用次数: 7

摘要

多接入/移动边缘计算(MEC)和雾计算是很有前途的技术,可以满足新兴的下一代应用程序的低延迟要求。将计算实体移动到离用户更近的地方可以减少总体服务延迟。在绿色通信方面,考虑到延迟约束,如何最大限度地减少用户设备(UE)和边缘节点(EN)侧的功耗非常重要。考虑到多个边缘节点,将用户的部分任务卸载到一个或多个边缘节点是关键。本文讨论了一种多节点部分任务卸载MEC场景,其中ue在本地计算任务并与其他边缘节点共享剩余任务。此外,考虑排队、传输和计算延迟,提出了一种最小化系统功耗的绿色任务分配算法。仿真结果表明,该算法在满足时延要求的同时,最大限度地降低了系统功耗,且节能效率优于二进制卸载策略。讨论了时延需求、边缘节点内的卸载信号强度、边缘节点的计算能力和用于传输卸载任务的子载波数量之间的耦合效应。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Green Fog Offloading Strategy for Heterogeneous Wireless Edge Networks
Multi-access/Mobile Edge Computing (MEC) and fog computing are promising techniques to satisfy low latency requirements for emerging next generation applications. Moving computation entities closer to a user could reduce the overall serving latency. In terms of green communications, given the latency constraint, how to minimize the power consumption at the user equipment (UE) and the edge node (EN) sides is important. Considering several edge nodes, partially offloading a user's task to one or more edge nodes is key. In this paper, a multi-node partial task offloading MEC scenario is discussed, in which UEs locally compute the task and share the remainder with other edge nodes. In addition, a green task distribution algorithm which minimizes the system power consumption is proposed, considering queueing, transmitting and computing delay. The simulation results show that the proposed algorithm minimizes the power consumption while meeting the latency requirements, and the power saving efficiency outperforms a binary offloading strategy. Moreover, the coupling effects between the latency requirements, offloading signal strength within the edge nodes, computation capability of edge nodes and the number of subcarriers used to transmit the offloading task are discussed.
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