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Near-Optimal Signal Detector Based on Structured Compressive Sensing for Massive SM-MIMO

Authors :
Gao, Zhen
Dai, Linglong
Qi, Chenhao
Yuen, Chau
Wang, Zhaocheng
Publication Year :
2016

Abstract

Massive spatial modulation (SM)-MIMO, which employs massive low-cost antennas but few power-hungry transmit radio frequency (RF) chains at the transmitter, is recently proposed to provide both high spectrum efficiency and energy efficiency for future green communications. However, in massive SM-MIMO, the optimal maximum likelihood (ML) detector has the prohibitively high complexity, while state-of-the-art low-complexity detectors for conventional small-scale SM-MIMO suffer from an obvious performance loss. In this paper, by exploiting the structured sparsity of multiple SM signals, we propose a low-complexity signal detector based on structured compressive sensing (SCS) to improve the signal detection performance. Specifically, we first propose the grouped transmission scheme at the transmitter, where multiple SM signals in several continuous time slots are grouped to carry the common spatial constellation symbol to introduce the desired structured sparsity. Accordingly, a structured subspace pursuit (SSP) algorithm is proposed at the receiver to jointly detect multiple SM signals by leveraging the structured sparsity. In addition, we also propose the SM signal interleaving to permute SM signals in the same transmission group, whereby the channel diversity can be exploited to further improve the signal detection performance. Theoretical analysis quantifies the performance gain from SM signal interleaving, and simulation results demonstrate the near-optimal performance of the proposed scheme.<br />Comment: 8 pages 7 figures, accepted by IEEE Transactions on Vehicular Technology. Keywords: Spatial modulation (SM), massive MIMO, signal detection, compressive sensing (CS), signal interleaving

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.1601.07701
Document Type :
Working Paper
Full Text :
https://doi.org/10.1109/TVT.2016.2557625