Softwarized and distributed learning for SON management systems

Tony Daher, S. B. Jemaa, L. Decreusefond
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引用次数: 1

Abstract

Self-Organizing Networks (SON) functions have already proven to be useful for network operations. However, a higher automation level is required to make a network enabled with SON capabilities re­spond as a whole to the operator's objectives. For this purpose, a Policy Based SON Management (PBSM) layer has been proposed to manage the deployed SON functions. In this paper, we propose to empower the PBSM with cognition capability in order to manage ef­ficiently SON enabled networks. We focus particularly on the implementation of such a Cognitive PBSM (C- PBSM) on a large scale network and propose a scalable approach based on distributed Reinforcement Learning (RL): RL agents are deployed on different clusters of the network. These clusters should be defined in such a way that the RL agents can learn independently. As the interaction between these clusters may evolve in time due for instance to traffic dynamics, we propose a flexible implementation of this C-PBSM framework with dynamic clustering to adapt to network's evolutions. We show how this flexible implementation is rendered possible under Software Defined Networks (SDN) framework. We also assess the performance of the proposed distributed learning approach on an LTE- A simulator.
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SON管理系统的软件化和分布式学习
自组织网络(SON)功能已经被证明对网络操作很有用。然而,要使具有SON功能的网络作为一个整体响应运营商的目标,需要更高的自动化水平。为此,提出了基于策略的SON管理(PBSM)层来管理已部署的SON功能。在本文中,我们建议赋予PBSM认知能力,以便有效地管理SON支持的网络。我们特别关注这种认知PBSM (C- PBSM)在大规模网络上的实现,并提出了一种基于分布式强化学习(RL)的可扩展方法:RL代理部署在网络的不同集群上。这些集群应该以RL代理可以独立学习的方式定义。由于这些集群之间的交互可能随着时间的推移而变化,例如由于流量的动态变化,我们提出了一种灵活的C-PBSM框架实现,采用动态集群来适应网络的演变。我们将展示如何在软件定义网络(SDN)框架下实现这种灵活的实现。我们还在LTE- A模拟器上评估了所提出的分布式学习方法的性能。
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