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Adaptive ML-Based Frame Length Optimisation in Enterprise SD-WLANs

机译:企业SD-WLAN中基于自适应ML的帧长优化

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Software-Defined Networking (SDN) is gaining a lot of traction in wireless systems with several practical implementations and numerous proposals being made. Despite instigating a shift from monolithic network architectures towards more modulated operations, automated network management requires the ability to extract, utilise and improve knowledge over time. Beyond simply scrutinizing data, Machine Learning (ML) is evolving from a simple tool applied in networking to an active component in what is known as Knowledge-Defined Networking (KDN). This work discusses the inclusion of ML techniques in the specific case of Software-Defined Wireless Local Area Networks (SD-WLANs), paying particular attention to the frame length optimization problem. With this in mind, we propose an adaptive ML-based approach for frame size selection on a per-user basis by taking into account both specific channel conditions and global performance indicators. By relying on standard frame aggregation mechanisms, the model can be seamlessly embedded into any Enterprise SD-WLAN by obtaining the data needed from the control plane, and then returning the output back to this in order to efficiently adapt the frame size to the needs of each user. Our approach has been gauged by analysing a multitude of scenarios, with the results showing an average improvement of 18.36% in goodput over standard aggregation mechanisms.
机译:软件定义的网络(SDN)在具有多种实际实现的无线系统中获得了大量牵引力和所做的许多提案。尽管从单片网络架构转变为更频繁的调制操作,但是自动化网络管理需要提取,利用和提高知识随时间提取的能力。除了简单的仔细审查数据之外,机器学习(ML)正在从网络中应用于所谓的知识定义的网络(KDN)中的一个简单工具的简单工具发展。这项工作讨论了在软件定义的无线局域网(SD-WLAN)的特定情况下包含M1技术,特别注意帧长优化问题。考虑到这一点,我们通过考虑到特定的频道条件和全球性能指标,提出了一种基于ML的基于ML的帧尺寸选择方法。通过依赖标准帧聚合机制,通过获取控制平面所需的数据,可以将模型无缝地嵌入到任何企业SD-WLAN中,然后将输出返回到此以便有效地使帧大小有效地适应需求每个用户。通过分析众多场景,我们的方法已经衡量,结果表明在标准聚集机制上的净化净化的平均提高18.36%。

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