The objective of channel charting is to learn a virtual map of the radio environment from high-dimensional CSI that is acquired by a multi-antenna wireless system. Since, in static environments, CSI is a function of the transmitter location, a mapping from CSI to channel chart coordinates can be learned in a self-supervised manner using dimensionality reduction techniques. The state-of-the-art triplet-based approach is evaluated on multiple datasets measured by a distributed massive MIMO channel sounder, with both co-located and distributed antenna setups. The importance of suitable triplet selection is investigated by comparing results to channel charts learned from a genie-aided triplet generator and learned from triplets on simulated trajectories through measured data. Finally, the transferability of learned forward charting functions to similar, but different radio environments is explored.
翻译:频道制图的目的是从多层无线系统获得的高维 CSI 中学习无线电环境的虚拟地图;由于在静态环境中,CSI是发射机位置的函数,因此,从 CSI 绘制到 频道图表坐标可以使用减少维度技术以自我监督的方式学习; 最先进的三重基方法是用分布式大型MIMO 频道声音仪测量的多个数据集进行评估,该数据仪同时配置和分布式天线装置; 通过比较从基因辅助三重发电机中学习的结果和通过测量数据从模拟轨迹上的三重轨迹中学习的图表,来研究适当的三重力选择的重要性; 最后,通过研究将学到的远端制图功能转移到类似但不同的无线电环境的可能性。