超5G网络中网络切片的动态机器学习算法选择

Abdelmounaim Bouroudi, A. Outtagarts, Y. H. Aoul
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引用次数: 0

摘要

先进的5G和6G移动网络提供了新的功能,可以创建具有不同和严格要求的多个虚拟网络实例。然而,多种网络功能在共享的基板网络上共存带来了一个资源分配挑战,即虚拟网络嵌入(VNE)问题。近年来,由于在计算和存储能力有限的网络边缘优化资源的需求日益增长,这个NP-hard问题在文献中受到越来越多的关注。在这篇演示论文中,我们提出了一个解决这个问题的方法,利用算法选择(AS)范式。该算法基于过去的表现,以离线方式从智能体组合中选择最优的深度强化学习(DRL)算法。为了评估我们的解决方案,我们使用omnet++框架开发了一个模拟平台,并使用Docker容器化了一个编排模块。该方案具有良好的性能,优于独立算法。
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Dynamic Machine Learning Algorithm Selection For Network Slicing in Beyond 5G Networks
The advanced 5G and 6G mobile network generations offer new capabilities that enable the creation of multiple virtual network instances with distinct and stringent requirements. However, the coexistence of multiple network functions on top of a shared substrate network poses a resource allocation challenge known as the Virtual Network Embedding (VNE) problem. In recent years, this NP-hard problem has received increasing attention in the literature due to the growing need to optimize resources at the edge of the network, where computational and storage capabilities are limited. In this demo paper, we propose a solution to this problem, utilizing the Algorithm Selection (AS) paradigm. This selects the most optimal Deep Reinforcement Learning (DRL) algorithm from a portfolio of agents, in an offline manner, based on past performance. To evaluate our solution, we developed a simulation platform using the OMNeT++ framework, with an orchestration module containerized using Docker. The proposed solution shows good performance and outperforms standalone algorithms.
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