A Self-Adaptive Wireless Network Service Embedding through SVM and MTA

Sujitha Venkatapathy, In-ho Ra, Han-Gue Jo
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引用次数: 0

Abstract

Network virtualization (NV) provides a feasible mechanism for operating numerous diverse virtual networks concurrently on a shared physical infrastructure network. The key issue in NV is virtual network embedding (VNE), which efficiently and effectively maps virtualized networks (VNs) with multiple resource needs for nodes and links to the underlying physical network with limited resources. A multiple topological attributes (MTA) based embedding algorithm is proposed to address the issue of providing different virtual request ser-vices delivered in a wireless network environment, leading to an unstable utilization of physical network resources and a low access rate for subsequent requests. It is emphasized that machine learning (ML) should be integrated into the process of network slicing in order to properly classify the received wireless virtual request. In this work, virtual request services are categorized automatically using support vector machine (SVM), and resources are allocated accordingly. The proposed technique organizes nodes in the embedding process according to their priority based on multiple topological properties of virtual and physical networks. According to the findings of the simulations, the SVM-MTA algorithm enhances both the acceptance rate and the resource efficiency of the network.
基于SVM和MTA的自适应无线网络业务嵌入
网络虚拟化(Network virtualization, NV)为在共享的物理基础设施网络上同时运行多个不同的虚拟网络提供了一种可行的机制。虚拟网络嵌入(VNE)技术是虚拟网络嵌入技术的关键,它能有效地将节点和链路需要多种资源的虚拟网络映射到资源有限的底层物理网络。针对无线网络环境中提供不同虚拟请求服务导致物理网络资源利用率不稳定和后续请求访问速率低的问题,提出了一种基于多拓扑属性(MTA)的嵌入算法。为了对接收到的无线虚拟请求进行正确的分类,应将机器学习(ML)集成到网络切片过程中。该方法利用支持向量机(SVM)对虚拟请求服务进行自动分类,并进行资源分配。该技术基于虚拟网络和物理网络的多种拓扑特性,在嵌入过程中按优先级组织节点。仿真结果表明,SVM-MTA算法提高了网络的接受率和资源效率。
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