Title :
ML-Based Channel Estimations for Non-Regenerative Relay Networks with Multiple Transmit and Receive Antennas
Author :
Jing, Yindi ; Yu, Xinwei
Author_Institution :
Dept. of Electr. & Comput. Eng., Univ. of Alberta, Edmonton, AB, Canada
fDate :
9/1/2012 12:00:00 AM
Abstract :
This paper investigates the channel estimations in a relay network with multiple transmit and receive antennas, including the estimation of the end-to-end channel matrix and the individual estimation of the transmitter-relay channels and the relay-receiver channels. For the end-to-end channel estimation, instead of directly estimating entries of the channel matrix, we use singular value decomposition (SVD) and estimate its largest singular value and singular vectors, which are then combined to form an estimation of the channel matrix. An approximate maximum-likelihood (ML) estimation is proposed, which is shown to become the exact ML estimation when the time duration of each training step equals the number of antennas at the transmitter. Simulation on the mean square error (MSE) shows that the SVD-based approximate ML estimation performs about the same as the exact ML estimation and is superior to entry-based estimations. For the individual channel estimation, we decompose each channel vector into the product of its length and direction, and find the ML estimation of each. By using an approximation on the probability density function (PDF) of the observations during training, an analytical ML estimation is derived. The ML estimation with the exact PDF is also investigated and a solution is obtained numerically. Simulation on the MSE shows that the two have similar performance. Compared with cascade channel estimations, its performance is superior for the relay-receiver channel estimation and comparable for the transmitter-relay channel estimation. Extension to the general multiple-antenna multiple-relay network is also provided.
Keywords :
antenna arrays; channel estimation; maximum likelihood estimation; mean square error methods; probability; receiving antennas; singular value decomposition; transmitting antennas; ML-based channel estimations; MSE; PDF; SVD-based approximate ML estimation; approximate maximum-likelihood estimation; end-to-end channel estimation; end-to-end channel matrix; entry-based estimations; general multiple-antenna multiple-relay network; mean square error; multiple transmit and receive antennas; nonregenerative relay networks; probability density function; relay-receiver channel estimation; singular value decomposition; singular vectors; transmitter-relay channel estimation; Channel estimation; Maximum likelihood estimation; Receivers; Relays; Training; Vectors; Relay network; channel estimation; channel training; maximum-likelihood (ML) estimation; mean square error (MSE);
Journal_Title :
Selected Areas in Communications, IEEE Journal on
DOI :
10.1109/JSAC.2012.120912