Title
Compressive Subspace Learning With Antenna Cross-Correlations for Wideband Spectrum Sensing
Abstract
Compressive subspace learning (CSL) with the exploitation of space diversity has found a potential performance improvement for wideband spectrum sensing (WBSS). However, previous works mainly focus on either exploiting antenna auto-correlations or adopting a multiple-input multiple-output (MIMO) channel without considering the spatial correlations, which will degrade their performances. In this paper, we consider a spatially correlated MIMO channel and propose two CSL algorithms (i.e., mCSLSACC and vCSLACC) which exploit antenna cross-correlations, where the mCSLSACC utilizes an antenna averaging temporal decomposition, and the vCSLACC uses a spatial-temporal joint decomposition. For both algorithms, the conditions of statistical covariance matrices (SCMs) without noise corruption are derived. Through establishing the singular value relation of SCMs in statistical sense between the proposed and traditional CSL algorithms, we show the superiority of the proposed CSL algorithms. By further depicting the receiving correlation matrix of MIMO channel with the exponential correlation model, we give important closed-form expressions for the proposed CSL algorithms in terms of the amplification of singular values over traditional CSL algorithms. Such expressions provide a possibility to determine optimal algorithm parameters for high system performances in an analytical way. Simulations validate the correctness of this work and its performance improvement over existing works in terms of WBSS performance.
Year
DOI
Venue
2020
10.1109/TCOMM.2020.3001027
IEEE Transactions on Communications
Keywords
DocType
Volume
Compressive subspace learning,wideband spectrum sensing,cognitive radio,MIMO,antenna cross-correlation
Journal
68
Issue
ISSN
Citations 
9
0090-6778
1
PageRank 
References 
Authors
0.36
0
5
Name
Order
Citations
PageRank
Tierui Gong161.10
Zhijia Yang2134.62
Meng Zheng3254.48
Liu Zhifeng410.36
Wang Gengshan510.36