Wireless local area networks (WLANs) empowered by IEEE 802.11 (Wi-Fi) hold a dominant position in providing Internet access thanks to their freedom of deployment and configuration as well as the existence of affordable and highly interoperable devices. The Wi-Fi community is currently deploying Wi-Fi 6 and developing Wi-Fi 7, which will bring higher data rates, better multi-user and multi-AP support, and, most importantly, improved configuration flexibility. These technical innovations, including the plethora of configuration parameters, are making next-generation WLANs exceedingly complex as the dependencies between parameters and their joint optimization usually have a non-linear impact on network performance. The complexity is further increased in the case of dense deployments and coexistence in shared bands. While classical optimization approaches fail in such conditions, machine learning (ML) is able to handle complexity. Much research has been published on using ML to improve Wi-Fi performance and solutions are slowly being adopted in existing deployments. In this survey, we adopt a structured approach to describe the various Wi-Fi areas where ML is applied. To this end, we analyze over 250 papers in the field, providing readers with an overview of the main trends. Based on this review, we identify specific open challenges and provide general future research directions.
翻译:由IEEE 802.11(Wi-Fi)授权的无线局域网(Wel-Fi)通过IEEE EE 802.11(Wi-Fi)获得授权,在提供因特网接入方面占据主导地位,这是因为其部署和配置自由以及存在负担得起和高度互操作的装置。Wi-Fi社区目前正在部署Wi-Fi 6,并开发Wi-Fi 7,这将带来更高的数据率、更好的多用户和多AP支持,以及最重要的是,改善配置灵活性。这些技术创新,包括配置参数过多,正在使下一代的Wi-Fi 局域网变得极为复杂,因为参数及其联合优化之间的依赖性通常对网络性能产生非线性影响。在共用带密集部署和共存的情况下,其复杂性进一步增加。传统优化方法在这类条件下失败,机器学习(ML)能够处理复杂性。关于使用ML来改进Wi-Fi的绩效和解决方案的大量研究正在缓慢地得到采用。在这次调查中,我们采取了结构化的方法来描述各种Wi-Fi域域域域域域域域域域。我们为此分析250多的文件,并分析外地的概览,提供具体的研究方向。