Compressed Sensing Based Sparse Channel Estimation in MIMO Systems
Received date: 2010-12-20
Revised date: 2011-05-16
Online published: 2011-07-30
Abstract: In MIMO systems, channel state information (CSI) is necessary for coherent detection and channel
equalization at the receiver. Traditional channel estimation methods such as least squares (LS) and minimum
mean square error (MMSE) are based on the rich multipath assumption which leads to low frequency spectrum
utilization. This paper studies sparse channel estimation for single carrier MIMO systems. A novel method
based on compressed sensing is proposed by using sparsity, which can obtain accurate CSI with fewer pilots so
as to improve frequency spectrum utilization. Simulation and theoretical analysis show that the compressive
sampling matching pursuit (CoSaMP) estimation is the best choice for MIMO sparse multipath channel estimation.
WANG Ni-na1, GUI Guan2;3, ZHANG Zhi1, TANG Tian1 . Compressed Sensing Based Sparse Channel Estimation in MIMO Systems[J]. Journal of Applied Sciences, 2011 , 29(4) : 347 -352 . DOI: 10.3969/j.issn.0255-8297.2011.04.003
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