Title :
Semi-Blind Channel Estimation with Superimposed Training for OFDM-Based AF Two-Way Relaying
Author :
Abdallah, Saeed ; Psaromiligkos, Ioannis N.
Author_Institution :
Dept. of Electr. & Comput. Eng., McGill Univ., Montreal, QC, Canada
Abstract :
We consider the problem of channel estimation for OFDM-based amplify-and-forward (AF) two-way relay networks (TWRNs). While previous works have adopted a pilot-based approach, we propose a semi-blind approach that exploits both the transmitted pilots as well as the received data samples to improve the estimation performance. Our proposed semi-blind estimator is based on the Gaussian maximum likelihood (GML) criterion which treats that data symbols as Gaussian-distributed nuisance parameters. The GML estimates are obtained using an iterative quasi-Newton method. To assist in the estimation of the individual channels, we adopt a superimposed training strategy at the relay. We design the pilot vectors of the terminals and the relay to optimize the estimation performance. Furthermore, we derive the semi-blind and pilot-based Cramer-Rao bounds (CRBs) to use as performance benchmarks. Finally, we use simulation studies to show that the proposed method provides substantial improvements in estimation accuracy over the conventional pilot-based estimation and that it approaches the semi-blind CRB as SNR increases. These improvements are possible using only a limited number of OFDM data blocks, which demonstrates the practicality of the semi-blind approach.
Keywords :
Gaussian distribution; Newton method; OFDM modulation; amplify and forward communication; channel estimation; maximum likelihood estimation; relay networks (telecommunication); GML; Gaussian distributed nuisance parameter; Gaussian maximum likelihood; OFDM-based AF two way relay network; SNR; amplify and forward communication; data symbols; iterative quasi-Newton method; pilot vectors; pilot-based Cramer-Rao bounds; pilot-based estimation; received data samples; semi-blind CRB; semiblind channel estimation; superimposed training strategy; Channel estimation; Covariance matrices; Estimation; OFDM; Relays; Training; Vectors; Amplify and forward; Cramer-Rao bound; maximum likelihood; semi-blind channel estimation; superimposed training; two-way relays;
Journal_Title :
Wireless Communications, IEEE Transactions on
DOI :
10.1109/TWC.2014.031714.130348