Publication | Closed Access
MIMO Gaussian Channels With Arbitrary Inputs: Optimal Precoding and Power Allocation
231
Citations
19
References
2010
Year
Mathematical ProgrammingMimo SystemEngineeringChannel Capacity EstimationChannel CharacterizationMultiuser MimoMulti-terminal Information TheoryOptimal PrecodingMimo Gaussian ChannelsLinear PrecodingComputer EngineeringComputer ScienceMutual InformationChannel EstimationArbitrary InputsApproximation TheorySignal ProcessingGaussian Channels
In this paper, we investigate the linear precoding and power allocation policies that maximize the mutual information for general multiple-input-multiple-output (MIMO) Gaussian channels with arbitrary input distributions, by capitalizing on the relationship between mutual information and minimum mean-square error (MMSE). The optimal linear precoder satisfies a fixed-point equation as a function of the channel and the input constellation. For non-Gaussian inputs, a nondiagonal precoding matrix in general increases the information transmission rate, even for parallel noninteracting channels. Whenever precoding is precluded, the optimal power allocation policy also satisfies a fixed-point equation; we put forth a generalization of the mercury/waterfilling algorithm, previously proposed for parallel noninterfering channels, in which the mercury level accounts not only for the non-Gaussian input distributions, but also for the interference among inputs.
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