Integrating sensing and communication is a defining theme for future wireless systems. This is motivated by the promising performance gains, especially as they assist each other, and by the better utilization of the wireless and hardware resources. Realizing these gains in practice, however, is subject to several challenges where leveraging machine learning can provide a potential solution. This article focuses on ten key machine learning roles for joint sensing and communication, sensing-aided communication, and communication-aided sensing systems, explains why and how machine learning can be utilized, and highlights important directions for future research. The article also presents real-world results for some of these machine learning roles based on the large-scale real-world dataset DeepSense 6G, which could be adopted in investigating a wide range of integrated sensing and communication problems.
翻译:集成遥感和通信是未来无线系统的一个决定性主题,其动机是有希望的绩效收益,特别是它们相互协助,以及更好地利用无线和硬件资源。然而,实现这些收益在实践中面临若干挑战,利用机器学习可以提供潜在的解决办法。本条款侧重于联合遥感和通信、遥感辅助通信和通信辅助遥感系统的10个关键机器学习作用,解释了为什么和如何利用机器学习,并强调了未来研究的重要方向。文章还介绍了一些基于大规模真实世界数据集DeepSense 6G的机器学习角色的现实世界成果,这些角色可用于调查广泛的综合遥感和通信问题。