平衡边缘云协作系统中的节能物联网服务

Zhengzhe Xiang, Shuiguang Deng, Yuhang Zheng, Dongjing Wang, J. Taheri, Zengwei Zheng
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引用次数: 3

摘要

物联网(Internet-of-Things, IoT)的快速发展,使得广泛分布的各种传感器能够方便地感知和收集现实世界的信息。由于云上有大量的web服务提供各种功能,收集到的信息上传后可以充分用于完成复杂的任务。然而,远程通信带来的延迟和网络拥塞限制了物联网平台的发展。解决这一问题的可行方法是建立基于多访问边缘计算(MEC)范式的边缘云协作(ECC)系统,将收集到的信息与部署在附近边缘服务器上的服务进行细化。但是,由于边缘服务器的资源是有限的,我们应该更加谨慎地分配边缘资源给服务,以及设计流量调度策略。本文研究了ECC系统中服务供给的边缘云协同机制,并提出了其能耗模型;我们还提出了一个性能模型和平衡模型来量化ECC系统的运行状态。在此基础上,进一步将节能ECC系统优化问题表述为以资源分配策略和交通调度策略为决策变量的联合优化问题。在证明了该问题的凸性后,我们提出了一种求解算法,并进行了一系列的实验来评估其性能。结果表明,与代表性基线相比,我们的方法可以提高至少4.3%的性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Energy-effective IoT Services in Balanced Edge-Cloud Collaboration Systems
The rapid development of the Internet-of-Things (IoT) makes it convenient to sense and collect real-world information with different kinds of widely distributed sensors. With plenty of web services providing diverse functions on the cloud, the collected information can be sufficiently used to complete complex tasks after being uploaded. However, the latency brought by long-distance communication and network congestion limits the development of IoT platforms. A feasible approach to solve this problem is to establish an edge-cloud collaboration (ECC) system based on the multi-access edge computing (MEC) paradigm where the collected information can be refined with the services deployed on nearby edge servers. However, as the edge servers are resource-limited, we should be more careful in allocating the edge resource to services, as well as designing the traffic scheduling strategy. In this paper, we investigated the edge-cloud cooperation mechanism of service provisioning in ECC systems, and to that end, proposed an energy-consumption model for it; we also proposed a performance model and balancing model to quantify the running state of ECC systems. Based on these, we further formulated the energy-effective ECC system optimization problem as a joint optimization problem whose decision variables are the resource allocation strategy and traffic scheduling strategy. With the convexity of this problem proved, we proposed an algorithm to solve it and conducted a series of experiments to evaluate its performance. The results showed that our approach can improve at least 4.3 % of the performance compared with representative baselines.
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