Title :
Noncoherent Trellis Coded Quantization: A Practical Limited Feedback Technique for Massive MIMO Systems
Author :
Junil Choi ; Chance, Z. ; Love, David J. ; Madhow, Upamanyu
Author_Institution :
Sch. of Electr. & Comput. Eng., Purdue Univ., West Lafayette, IN, USA
Abstract :
Accurate channel state information (CSI) is essential for attaining beamforming gains in single-user (SU) multiple-input multiple-output (MIMO) and multiplexing gains in multi-user (MU) MIMO wireless communication systems. State-of-the-art limited feedback schemes, which rely on pre-defined codebooks for channel quantization, are only appropriate for a small number of transmit antennas and low feedback overhead. In order to scale informed transmitter schemes to emerging massive MIMO systems with a large number of transmit antennas at the base station, one common approach is to employ time division duplexing (TDD) and to exploit the implicit feedback obtained from channel reciprocity. However, most existing cellular deployments are based on frequency division duplexing (FDD), hence it is of great interest to explore backwards compatible massive MIMO upgrades of such systems. For a fixed feedback rate per antenna, the number of codewords for quantizing the channel grows exponentially with the number of antennas, hence generating feedback based on look-up from a standard vector quantized codebook does not scale. In this paper, we propose noncoherent trellis-coded quantization (NTCQ), whose encoding complexity scales linearly with the number of antennas. The approach exploits the duality between source encoding in a Grassmannian manifold (for finding a vector in the codebook which maximizes beamforming gain) and noncoherent sequence detection (for maximum likelihood decoding subject to uncertainty in the channel gain). Furthermore, since noncoherent detection can be realized near-optimally using a bank of coherent detectors, we obtain a low-complexity implementation of NTCQ encoding using an off-the-shelf Viterbi algorithm applied to standard trellis coded quantization. We also develop advanced NTCQ schemes which utilize various channel properties such as temporal/spatial correlations. Monte Carlo simulation results show the proposed NTCQ and its extensions can achieve- near-optimal performance with moderate complexity and feedback overhead.
Keywords :
MIMO communication; Monte Carlo methods; antenna arrays; array signal processing; cellular radio; frequency division multiplexing; maximum likelihood decoding; source coding; time division multiplexing; transmitting antennas; trellis codes; CSI accuracy; FDD; Grassmannian manifold; MU MIMO wireless communication system; Monte Carlo simulation; NTCQ encoding; SU MIMO wireless communication system; TDD; advanced NTCQ scheme; base station; beamforming gain; cellular deployment; channel gain; channel properties; channel quantization; channel reciprocity; channel state information accuracy; coherent detectors; encoding complexity; feedback overhead; frequency division duplexing; implicit feedback; informed transmitter scheme; limited feedback scheme; low-complexity implementation; massive MIMO systems; maximum likelihood decoding; multiplexing gain; multiuser MIMO wireless communication system; near-optimal performance; noncoherent detection; noncoherent sequence detection; noncoherent trellis coded quantization; off-the-shelf Viterbi algorithm; practical limited feedback technique; pre-defined codebook; single-user multiple-input multiple-output wireless communication system; source encoding; standard trellis-coded quantization; standard vector quantized codebook; temporal-spatial correlations; time division duplexing; transmit antennas; Antenna feeds; Array signal processing; Encoding; MIMO; Quantization (signal); Transmitting antennas; Vectors; Massive MIMO systems; limited feedback; noncoherent TCQ; trellis-coded quantization (TCQ);
Journal_Title :
Communications, IEEE Transactions on
DOI :
10.1109/TCOMM.2013.111413.130379