In-Situ Resource Provisioning with Adaptive Scale-out for Regional IoT Services

Yugo Nakamura, Teruhiro Mizumoto, H. Suwa, Yutaka Arakawa, H. Yamaguchi, K. Yasumoto
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引用次数: 10

Abstract

In an era where billions of IoT devices have been deployed, edge/fog computing paradigms are attracting attention for their ability to reduce processing delays and communication overhead. In order to improve Quality of Experience (QoE) of regional IoT services that create timely geo-spatial information in response to users' queries, it is important to efficiently allocate sufficient resources based on the computational demand of each service. However since edge/fog devices are assumed to be heterogeneous (in terms of their computational power, network performance to other devices, deployment density, etc.), provisioning computational resources according to computational demand becomes a challenging constrained optimization problem. In this paper, we formulate a delay constrained regional IoT service provisioning (dcRISP) problem. dcRISP assigns computational resources of devices based on the demand of the regional IoT services in order to maximize users' QoE. We also present dcRISP+, an extension of dcRISP, that enables resource selection to extend beyond the initial area in order to satisfy increasing computational demands. We propose a provisioning algorithm, in-situ resource area selection with adaptive scale out and in-situ task scheduling based on a tabu search, to solve the dcRISP+ problem. We conducted a simulation study of a tourist area in Kyoto where 4,000 IoT devices and 3 types of IoT services were deployed. Results show that our proposed algorithms can obtain higher user QoE compared to conventional resource provisioning algorithms.
基于自适应横向扩展的区域物联网服务原位资源配置
在一个已经部署了数十亿物联网设备的时代,边缘/雾计算范式因其减少处理延迟和通信开销的能力而备受关注。为了提高区域物联网服务的体验质量(Quality of Experience, QoE),即根据用户的查询创建及时的地理空间信息,根据每个服务的计算需求有效地分配足够的资源是很重要的。然而,由于边缘/雾设备被认为是异构的(在计算能力、对其他设备的网络性能、部署密度等方面),因此根据计算需求提供计算资源成为一个具有挑战性的约束优化问题。在本文中,我们提出了一个延迟约束的区域物联网服务供应(dcRISP)问题。dcRISP根据区域物联网业务需求分配设备计算资源,实现用户QoE最大化。我们还介绍了dcRISP+,这是dcRISP的扩展,它使资源选择能够扩展到初始区域之外,以满足不断增长的计算需求。为了解决dcRISP+问题,提出了一种基于禁忌搜索的自适应扩展的原位资源区域选择和原位任务调度算法。我们在京都的一个旅游区进行了模拟研究,在那里部署了4000个物联网设备和3种物联网服务。结果表明,与传统的资源分配算法相比,我们提出的算法可以获得更高的用户QoE。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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