New Insights into Channel vs Subspace Codes for Large-Scale Beamspace MIMO Channel Sensing
This work addresses hardware- and sample-efficient channel sensing for large-scale multiantenna communications, offering theoretical guarantees but is incremental as it builds on existing code and beamforming concepts.
The paper tackles the problem of nonadaptive channel sensing with a single RF chain in large-scale MIMO systems, showing that the performance depends on subspace distance and beam gain, and introduces beamspace subspace codes based on Golomb rulers that achieve near-optimal subspace distance for efficient sensing.
This paper provides novel insights into channel and subspace codes in nonadaptive channel sensing with a single RF chain. Observing that this problem naturally maps to a noncoherent decoding problem, we show that the sensing performance of the maximum likelihood (ML) angle estimator, which does not require knowledge of the typically unknown channel coefficient, is governed by two key terms: the minimum subspace distance and beam gain of the used beamformers. We derive an exact expression for the subspace distance of binary linear channel codes mapped to BPSK, which illuminates the relationship between subspace and Hamming distance, used to design subspace and channel codes, respectively. Our result also reveals why good Hamming distance alone is insufficient for sensing, and shows that well-known families of channel codes such as Reed-Muller codes, yield zero subspace distance and thereby poor sensing performance when used naively without proper codebook pruning. Finally, we introduce so-called beamspace subspace codes based on sparse antenna selection patterns (Golomb rulers), which we show provide near-optimal subspace distance. We demonstrate that this property of judiciously designed sparse arrays can be leveraged together with beamforming gain via convolutional beamspaces, enabling hardware- and sample-efficient channel sensing with theoretical guarantees in large-scale multiantenna communications.