Network Slicing Algorithms Case Study:Virtual Network Embedding

D. Irawan, N. Syambas, A. A. Ananda Kusuma, E. Mulyana
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引用次数: 4

Abstract

In the 5G telecommunication network, one promising technique is network slicing. The network slicing technique enables infrastructure service providers to create end-to-end virtual networks from radio access network to the core network. This virtual network consists of abstracted functions and resources. One of the network slicing issues is how to efficiently allocate virtual network resources on the substrate network. This can affect network performance in general. Resource allocation is strongly influenced by algorithm and computation time in mapping virtual networks into substrate networks and it is important to note because this affects service quality and profit for infrastructure service providers. From several studies conducted by the authors, the problem of resource allocation in network slicing can be transformed into an optimization problem. The optimization problem in network slicing is known as virtual network embedding (VNE). In this report, the authors test the virtual network embedding algorithms of GRC, MCTS, and RL to compare profit gain for infrastructure service providers using long-term average revenue metrics and computation time in mapping virtual network allocation. It can be concluded that for profit the RL algorithm is 1% better than GRC and MCTS. Meanwhile, the computation time of the GRC algorithm is faster than MCTS and RL.
网络切片算法案例研究:虚拟网络嵌入
在5G通信网络中,一种很有前途的技术是网络切片。网络切片技术使基础设施服务提供商能够创建从无线接入网到核心网的端到端虚拟网络。这个虚拟网络由抽象的功能和资源组成。如何在基板网络上有效地分配虚拟网络资源是网络切片的一个重要问题。这通常会影响网络性能。在将虚拟网络映射到基板网络时,算法和计算时间对资源分配有很大影响,这一点值得注意,因为这会影响基础设施服务提供商的服务质量和利润。从作者的一些研究中可以看出,网络切片中的资源分配问题可以转化为优化问题。网络切片中的优化问题被称为虚拟网络嵌入(VNE)。在本报告中,作者测试了GRC、MCTS和RL的虚拟网络嵌入算法,使用长期平均收入指标和映射虚拟网络分配的计算时间来比较基础设施服务提供商的利润增长。结果表明,RL算法的收益比GRC和MCTS算法高1%。同时,GRC算法的计算速度比MCTS和RL快。
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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