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\(2D\) rake receiver for MIMO channels: Optimum algorithm with minimum complexity. (English) Zbl 1151.94381

Summary: This article presents the original results of the synthesis and noise immunity analysis of the optimum rake-type receiver with minimum complexity properties for MIMO systems. In this approach we apply the fully generic Gaussian MIMO channel model with a separable covariance matrix in the time and space domains. The advantages of this model for statistical aspects of MIMO communications are shown.

MSC:

94A12 Signal theory (characterization, reconstruction, filtering, etc.)
94A11 Application of orthogonal and other special functions
94A40 Channel models (including quantum) in information and communication theory
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