English

Massive Unsourced Random Access: Exploiting Angular Domain Sparsity

Information Theory 2022-02-17 v1 math.IT

Abstract

This paper investigates the unsourced random access (URA) scheme to accommodate numerous machine-type users communicating to a base station equipped with multiple antennas. Existing works adopt a slotted transmission strategy to reduce system complexity; they operate under the framework of coupled compressed sensing (CCS) which concatenates an outer tree code to an inner compressed sensing code for slot-wise message stitching. We suggest that by exploiting the MIMO channel information in the angular domain, redundancies required by the tree encoder/decoder in CCS can be removed to improve spectral efficiency, thereby an uncoupled transmission protocol is devised. To perform activity detection and channel estimation, we propose an expectation-maximization-aided generalized approximate message passing algorithm with a Markov random field support structure, which captures the inherent clustered sparsity structure of the angular domain channel. Then, message reconstruction in the form of a clustering decoder is performed by recognizing slot-distributed channels of each active user based on similarity. We put forward the slot-balanced K-means algorithm as the kernel of the clustering decoder, resolving constraints and collisions specific to the application scene. Extensive simulations reveal that the proposed scheme achieves a better error performance at high spectral efficiency compared to the CCS-based URA schemes.

Keywords

Cite

@article{arxiv.2202.08096,
  title  = {Massive Unsourced Random Access: Exploiting Angular Domain Sparsity},
  author = {Xinyu Xie and Yongpeng Wu and Jianping An and Junyuan Gao and Wenjun Zhang and Chengwen Xing and Kai-Kit Wong and Chengshan Xiao},
  journal= {arXiv preprint arXiv:2202.08096},
  year   = {2022}
}

Comments

Accepted for publication in IEEE TCOM