Channel charting is a self-supervised learning technique whose objective is to reconstruct a map of the radio environment, called channel chart, by taking advantage of similarity relationships in high-dimensional channel state information. We provide an overview of processing steps and evaluation methods for channel charting and propose a novel dissimilarity metric that takes into account angular-domain information as well as a novel deep learning-based metric. Furthermore, we suggest a method to fuse dissimilarity metrics such that both the time at which channels were measured as well as similarities in channel state information can be taken into consideration while learning a channel chart. By applying both classical and deep learning-based manifold learning to a dataset containing sub-6GHz distributed massive MIMO channel measurements, we show that our metrics outperform previously proposed dissimilarity measures. The results indicate that the new metrics improve channel charting performance, even under non-line-of-sight conditions.
翻译:信道制图是一种自监督学习技术,其目标是通过利用高维信道状态信息中的相似性关系,重建无线电环境地图(称为信道图谱)。本文概述了信道制图的处理步骤与评估方法,并提出了一种融合角度域信息的新型差异度量,以及一种基于深度学习的创新度量。此外,我们提出一种差异度量融合方法,使得在生成信道图谱时,既能考虑信道测量时间,又能利用信道状态信息中的相似性。通过将经典流形学习与深度流形学习方法应用于包含亚6GHz分布式大规模MIMO信道测量的数据集,我们证明了所提度量优于先前提出的差异度量。结果表明,即使在非视距条件下,新度量也能显著提升信道制图性能。