Spectrum fragmentation-aware dynamic network slicing deployment in computing power networks based on elastic optical networks

Q3 Engineering
Laiming Wang, Haojie Zhang, Lei Li, Danping Ren, Jinhua Hu, Jijun Zhao
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引用次数: 0

Abstract

The widespread application of AI with high computing requirements has driven the rapid development of the computing field. Computing Power Networks (CPNs) have been recognized as solutions to providing on-demand computing services, and its service provisioning can be modeled as a network slicing deployment problem. Elastic Optical Networks (EONs) offer the flexibility to allocate spectrum resources, making them well-suited for network slicing technology. Consequently, EON-based CPNs have attracted considerable attention. However, the unbalanced distribution of computing resources leads to inefficient computing resource utilization. Meanwhile, spectrum resources may be isolated and difficult for other services. This phenomenon is known as spectrum fragmentation, leading to inefficient spectrum resource utilization. To achieve balanced and efficient resource utilization, this paper first analyzes the main reasons for load unbalance and spectrum fragmentation in CPNs: mismatched slicing deployment and inappropriate resource scheduling. Therefore, a dynamic network slicing scheme based on traffic prediction (DNS-TP) is designed. Its core highlight is cooperative optimization slicing deployment and resource scheduling based on spectrum fragmentation awareness. Simulation results show that the proposed scheme enhances the network slicing acceptance ratio, computing and spectrum resource utilization while exhibiting strong performance in resource balancing.
基于弹性光网络的计算能力网络中的频谱碎片感知动态网络切片部署
人工智能的广泛应用对计算能力提出了很高的要求,这推动了计算领域的快速发展。计算能力网络(CPN)已被认为是提供按需计算服务的解决方案,其服务供应可模拟为网络切片部署问题。弹性光网络(EON)可灵活分配频谱资源,因此非常适合网络切片技术。因此,基于 EON 的 CPN 备受关注。然而,计算资源的不均衡分配会导致计算资源利用效率低下。同时,频谱资源可能会被隔离,难以用于其他服务。这种现象被称为频谱碎片,导致频谱资源利用效率低下。为了实现均衡高效的资源利用,本文首先分析了 CPN 负载不均衡和频谱碎片化的主要原因:不匹配的切片部署和不恰当的资源调度。因此,本文设计了一种基于流量预测的动态网络切片方案(DNS-TP)。其核心亮点是基于频谱碎片意识的合作优化切片部署和资源调度。仿真结果表明,所提出的方案提高了网络切片接受率、计算和频谱资源利用率,同时在资源平衡方面表现出色。
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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来源期刊
Journal of Optical Communications
Journal of Optical Communications Engineering-Electrical and Electronic Engineering
CiteScore
2.90
自引率
0.00%
发文量
86
期刊介绍: This is the journal for all scientists working in optical communications. Journal of Optical Communications was the first international publication covering all fields of optical communications with guided waves. It is the aim of the journal to serve all scientists engaged in optical communications as a comprehensive journal tailored to their needs and as a forum for their publications. The journal focuses on the main fields in optical communications
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