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Semi-blind maximum-likelihood joint channel/data estimation for correlated channels in multiuser MIMO networks
Authors:Constantinos Rizogiannis  Eleftherios Kofidis  Constantinos B Papadias  Sergios Theodoridis
Institution:1. Department of Informatics and Telecommunications, University of Athens, Panepistimioupolis, 157 84 Athens, Greece;2. Department of Statistics and Insurance Science, University of Piraeus, 185 34 Piraeus, Greece;3. Athens Information Technology, PO Box 68, Markopoulo Avenue, Peania 190 02, Athens, Greece
Abstract:The aim of this paper is to investigate receiver techniques for maximum likelihood (ML) joint channel/data estimation in flat fading multiple-input multiple-output (MIMO) channels, that are both (i) data efficient and (ii) computationally attractive. The performance of iterative least squares (LS) for channel estimation combined with sphere decoding (SD) for data detection is examined for block fading channels, demonstrating the data efficiency provided by the semi-blind approach. The case of continuous fading channels is addressed with the aid of recursive least squares (RLS). The observed relative robustness of the ML solution to channel variations is exploited in deriving a block QR-based RLS-SD scheme, which allows significant complexity savings with little or no performance loss. The effects on the algorithms’ performance of the existence of spatially correlated fading and line-of-sight paths are also studied. For the multi-user MIMO scenario, the gains from exploiting temporal/spatial interference color are assessed. The optimal training sequence for ML channel estimation in the presence of co-channel interference (CCI) is also derived and shown to result in better channel estimation/faster convergence. The reported simulation results demonstrate the effectiveness, in terms of both data efficiency and performance gain, of the investigated schemes under realistic fading conditions.
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