International Journal of Digital Multimedia Broadcasting (Jan 2008)

Iterative Mean Removal Superimposed Training for SISO and MIMO Channel Estimation

  • O. Longoria-Gandara,
  • R. Parra-Michel,
  • M. Bazdresch,
  • A. G. Orozco-Lugo

DOI
https://doi.org/10.1155/2008/535269
Journal volume & issue
Vol. 2008

Abstract

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This contribution describes a novel iterative radio channel estimation algorithm based on superimposed training (ST) estimation technique. The proposed algorithm draws an analogy with the data dependent ST (DDST) algorithm, that is, extracts the cycling mean of the data, but in this case at the receiver's end. We first demonstrate that this mean removal ST (MRST) applied to estimate a single-input single-output (SISO) wideband channel results in similar bit error rate (BER) performance in comparison with other iterative techniques, but with less complexity. Subsequently, we jointly use the MRST and Alamouti coding to obtain an estimate of the multiple-input multiple-output (MIMO) narrowband radio channel. The impact of imperfect channel on the BER performance is evidenced by a comparison between the MRST method and the best iterative techniques found in the literature. The proposed algorithm shows a good tradeoff performance between complexity, channel estimation error, and noise immunity.