Title :
Subspace beamforming for near-capacity MIMO performance
Author :
Ariyavisitakul, Sirikiat Lek ; Ojard, Eric ; Kim, Joonsuk ; Zheng, Jun ; Seshadri, Nambi
Author_Institution :
Broadcom Corp., Irvine, CA
fDate :
Jan. 27 2008-Feb. 1 2008
Abstract :
A subspace beamforming method is presented that decomposes a MIMO channel into multiple pairs of subchannels. The pairing is done based on singular values such that similar channel capacity is obtained between different subchannel pairs. This new capacity balancing concept is key to achieving high performance with low complexity. We apply the subspace idea to geometric mean decomposition (GMD) and maximum likelihood (ML) detection. The proposed subspace GMD scheme requires only two layers of detection/decoding, regardless of the total number of subchannels, thus alleviating the latency issue associated with conventional GMD. We also show how the subspace concept makes the optimization of ML beamforming and ML detection itself feasible for any KtimesK MIMO system. Simulation results show that subspace beamforming performs nearly as well as optimum GMD performance, and to within only a few dB of the Shannon bound.
Keywords :
MIMO communication; channel capacity; maximum likelihood detection; optimisation; MIMO channel; Shannon bound; channel capacity; geometric mean decomposition; maximum likelihood detection; multiple pairs; near-capacity MIMO performance; optimization; subspace beamforming; Array signal processing; Channel capacity; Delay; Interference cancellation; MIMO; Maximum likelihood decoding; Maximum likelihood detection; Receiving antennas; Silicon carbide; Transmitters; GMD; MIMO; SVD; maximum likelihood; subspace;
Conference_Titel :
Information Theory and Applications Workshop, 2008
Conference_Location :
San Diego, CA
Print_ISBN :
978-1-4244-2670-6
DOI :
10.1109/ITA.2008.4601069