Iterative MIMO Detection and Channel Estimation Using Joint Superimposed and Pilot-Aided Training

Author:

Longoria-Gandara Omar1,Parra-Michel Ramon2,Carrasco-Alvarez Roberto3,Romero-Aguirre Eduardo4

Affiliation:

1. Department of Electronics, Systems and IT, ITESO Jesuit University, 45604 Tlaquepaque, JAL, Mexico

2. Department of Electrical Engineering, CINVESTAV-IPN, 45015 Zapopan, JAL, Mexico

3. Department of Electronics and Communication, CUCEI-Guadalajara University, 44430 Guadalajara, JAL, Mexico

4. Department of Electrical and Electronic Engineering, ITSON, 85130 Ciudad Obregon, SON, Mexico

Abstract

This paper presents a novel iterative detection and channel estimation scheme that combines the effort of superimposed training (ST) and pilot-aided training (PAT) for multiple-input multiple-output (MIMO) flat fading channels. The proposed method, hereafter known as joint mean removal ST and PAT (MRST-PAT), implements an iterative detection and channel estimation that achieves the performance of data-dependent ST (DDST) algorithm, with the difference that the data arithmetic cyclic mean is estimated and removed from data at the receiver’s end. It is demonstrated that this iterative and cooperative detection and channel estimator algorithm surpasses the effects of data detection identifiability condition that DDST has shown when higher orders of modulation are used. Theoretical performance of the MRST-PAT scheme is provided and corroborated by numerical simulations. In addition, the performance comparison between the proposed method and different MIMO channel estimation techniques is analyzed. The joint effort between ST and PAT shows that MRST-PAT is a solid candidate in communications systems for multiamplitude constellations in Rayleigh fading channels, while achieving high-throughput data rates with manageable complexity and bit-error rate (BER) as a figure of merit.

Publisher

Hindawi Limited

Subject

Computer Networks and Communications,Computer Science Applications

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