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SNR Estimation for Multilevel Constellations Using Higher-Order Moments

机译:使用高阶矩的多星座星座的SNR估计

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摘要

The performance of existing moments-based non-data-aided (NDA) estimators of signal-to-noise ratio (SNR) in digital communication systems substantially degrades with multilevel constellations. We propose a novel moments-based approach that is amenable to practical implementation and significantly improves on previous estimators of this class. This approach is based on a linear combination of ratios of certain even-order moments, which allow the derivation of NDA SNR estimators without requiring memory-costly lookup tables. The weights of the linear combination can be tuned according to the constellation and the SNR operation range. As particular case we develop an eighth-order statistics (EOS)-based estimator, showing in detail the statistical analysis that leads to the weight optimization procedure. The EOS-based estimators yield improved performance for multilevel constellations, especially for those with two and three amplitude levels. Monte Carlo simulations validate the new approach in a wide SNR range.
机译:数字通信系统中现有的基于矩的信噪比(SNR)的基于矩的非数据辅助(NDA)估计器的性能会因多级星座而大大降低。我们提出了一种新颖的基于矩的方法,该方法适用于实际实现,并且大大改善了此类的先前估计量。此方法基于某些偶数阶矩比率的线性组合,从而可以导出NDA SNR估计量,而无需消耗内​​存的查找表。可以根据星座图和SNR工作范围来调整线性组合的权重。作为特殊情况,我们开发了一个基于八阶统计量(EOS)的估算器,详细显示了导致权重优化过程的统计分析。基于EOS的估计器可提高多级星座的性能,尤其是对于具有两个和三个幅度级的星座。蒙特卡洛仿真在宽信噪比范围内验证了该新方法。

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