Title :
Network MIMO With Linear Zero-Forcing Beamforming: Large System Analysis, Impact of Channel Estimation, and Reduced-Complexity Scheduling
Author :
Huh, Hoon ; Tulino, Antonia M. ; Caire, Giuseppe
Author_Institution :
Dept. of Electr. Eng., Univ. of Southern California, Los Angeles, CA, USA
fDate :
5/1/2012 12:00:00 AM
Abstract :
We consider the downlink of a multicell system with multiantenna base stations and single-antenna user terminals, arbitrary base station cooperation clusters, distance-dependent propagation pathloss, and general “fairness” requirements. Base stations in the same cooperation cluster employ joint transmission with linear zero-forcing beamforming, subject to sum or per-base station power constraints. Intercluster interference is treated as noise at the user terminals. Analytic expressions for the system spectral efficiency are found in the large-system limit where both the numbers of users and antennas per base station tend to infinity with a given ratio. In particular, for the per-base station power constraint, we find new results in random matrix theory, yielding the squared Frobenius norm of submatrices of the Moore-Penrose pseudo-inverse for the structured non-i.i.d. channel matrix resulting from the cooperation cluster, user distribution, and path-loss coefficients. The analysis is extended to the case of nonideal Channel State Information at the Transmitters obtained through explicit downlink channel training and uplink feedback. Specifically, our results illuminate the trade-off between the benefit of a larger number of cooperating antennas and the cost of estimating higher-dimensional channel vectors. Furthermore, our analysis leads to a new simplified downlink scheduling scheme that preselects the users according to probabilities obtained from the large-system results, depending on the desired fairness criterion. The proposed scheme performs close to the optimal (finite-dimensional) opportunistic user selection while requiring significantly less channel state feedback, since only a small fraction of preselected users must feed back their channel state information.
Keywords :
MIMO communication; antenna arrays; array signal processing; channel estimation; communication complexity; cooperative communication; matrix algebra; radiofrequency interference; radiowave propagation; spectral analysis; telecommunication network reliability; Moore-Penrose pseudo-inverse submatrices; arbitrary base station cooperation cluster; channel estimation; channel matrix; channel state feedback; cooperating antenna; distance-dependent propagation path loss coefficient; downlink scheduling scheme; fairness criterion; higher-dimensional channel vector estimation cost; intercluster interference; large system analysis; linear zero-forcing beamforming; multiantenna base station; multicell system downlink channel training; network MIMO; nonideal channel state information; optimal opportunistic user selection; power constraint; random matrix theory; reduced-complexity scheduling; single antenna user terminal; spectral efficiency; squared Frobenius norm; uplink feedback; Array signal processing; Base stations; Channel estimation; Downlink; MIMO; Monte Carlo methods; Throughput; Channel estimation; downlink scheduling; large random matrices; linear zero-forcing beamforming; network MIMO;
Journal_Title :
Information Theory, IEEE Transactions on
DOI :
10.1109/TIT.2011.2178230