As wireless standards evolve, more complex functionalities are introduced to address the increasing requirements in terms of throughput, latency, security, and efficiency. To unleash the potential of such new features, artificial intelligence (AI) and machine learning (ML) are currently being exploited for deriving models and protocols from data, rather than by hand-programming. In this paper, we explore the feasibility of applying ML in next-generation wireless local area networks (WLANs). More specifically, we focus on the IEEE 802.11ax spatial reuse (SR) problem and predict its performance through federated learning (FL) models. The set of FL solutions overviewed in this work is part of the 2021 International Telecommunication Union (ITU) AI for 5G Challenge.
翻译:随着无线标准的发展,引入了更为复杂的功能,以满足在吞吐量、潜伏、安全和效率方面日益增加的要求;为了发挥这些新特征的潜力,目前正在利用人工智能和机器学习(ML)从数据中产生模型和协议,而不是手动编程;在本文件中,我们探讨了在下一代无线局域网中应用ML的可行性;更具体地说,我们侧重于IEE 802.11x空间再利用(SR)问题,并通过联合学习(FL)模式预测其性能;这项工作中概述的一套FL解决方案是2021年国际电信联盟(国际电联)关于5G挑战的AI的一部分。