Improving Triplet-Based Channel Charting on Distributed Massive MIMO Measurements
Abstract
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.
Cite
@article{arxiv.2206.09774,
title = {Improving Triplet-Based Channel Charting on Distributed Massive MIMO Measurements},
author = {Florian Euchner and Phillip Stephan and Marc Gauger and Sebastian Dörner and Stephan ten Brink},
journal= {arXiv preprint arXiv:2206.09774},
year = {2022}
}