QoE Oriented Cognitive Network Based on Machine Learning and SDN

Lei Wang, D. Delaney
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引用次数: 9

Abstract

With the aim of improving application Quality of Experience (QoE), this paper presents a framework for a QoE oriented cognitive network that enables the implementation of a machine learning model in SDN architecture. Software Defined Networking (SDN) technology is applied to dynamically manage and orchestrate end-to-end network resources as per application needs and network condition and scenario. A structured approach is applied to implementing Machine Learning (ML) techniques within the network. A ML approach is intended to be used to autonomously learn the best management strategy for a given application and best fulfill its requirements. The framework is based on the combined SDN and ML approach, combining information obtained from both the SDN North Bound Interface (NBI) and South Bound Interface to assess both the network and application state and condition. A module built on the SDN controller uses this information to correlate network level metrics with application condition. This module will learn how the features of the network effect the application condition. This information is then used to make decisions with regards to network resources for the application. The framework is structured into three main modules: data collection and aggregation, network/application learning and network management with prediction. The proposed framework is intended to be used for investigation into link types and their effects on end-to-end path selection for application flows in SDN. This is essential for future networks as more diverse applications are expected to enter the mobile domain with each application flow traversing a range of link types.
基于机器学习和SDN的面向QoE的认知网络
为了提高应用体验质量(QoE),本文提出了一个面向QoE的认知网络框架,该框架能够在SDN架构中实现机器学习模型。软件定义网络(SDN)技术是根据应用需求、网络状况和场景,对端到端网络资源进行动态管理和编排的技术。一种结构化的方法被应用于在网络中实现机器学习(ML)技术。ML方法旨在用于自主学习给定应用程序的最佳管理策略,并最好地满足其需求。该框架基于SDN和ML相结合的方法,结合从SDN北向接口(NBI)和南向接口获得的信息来评估网络和应用的状态和条件。建立在SDN控制器上的模块使用此信息将网络级别指标与应用程序条件关联起来。本模块将学习网络的特性如何影响应用条件。然后使用这些信息来决定应用程序的网络资源。该框架分为三个主要模块:数据收集和聚合、网络/应用学习和网络管理与预测。提议的框架旨在用于调查链路类型及其对SDN应用程序流的端到端路径选择的影响。这对未来的网络至关重要,因为预计将有更多不同的应用程序进入移动领域,每个应用程序流将遍历一系列链路类型。
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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