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Optimum power allocation for parallel Gaussian channels with arbitrary input distributions

机译:具有任意输入分布的并行高斯通道的最佳功率分配

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摘要

The mutual information of independent parallel Gaussian-noise channels is maximized, under an average power constraint, by independent Gaussian inputs whose power is allocated according to the waterfilling policy. In practice, discrete signaling constellations with limited peak-to-average ratios (m-PSK, m-QAM, etc.) are used in lieu of the ideal Gaussian signals. This paper gives the power allocation policy that maximizes the mutual information over parallel channels with arbitrary input distributions. Such policy admits a graphical interpretation, referred to as mercury/waterfilling, which generalizes the waterfilling solution and allows retaining some of its intuition. The relationship between mutual information of Gaussian channels and nonlinear minimum mean-square error (MMSE) proves key to solving the power allocation problem.
机译:在平均功率约束下,通过根据灌水策略分配功率的独立高斯输入,可以使独立并行高斯噪声通道的互信息最大化。在实践中,使用具有有限峰均比(m-PSK,m-QAM等)的离散信号星座来代替理想的高斯信号。本文提出了一种功率分配策略,该策略可以在具有任意输入分布的并行通道上最大化互信息。此类政策允许使用图形化的解释,称为汞/注水,它可以概括注水解决方案并保留其某些直觉。高斯通道的互信息与非线性最小均方误差(MMSE)之间的关系证明了解决功率分配问题的关键。

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