Closed-form MSE performance for phase estimation from Gaussian reference signals

Xiaojing Huang, Y. Guo, Jay Au, Au
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引用次数: 4

Abstract

In many communications and signal processing applications, phase information carried on Gaussian distributed reference signals is often required for various purposes, such as the carrier frequency offset estimation in orthogonal frequency division multiplexing (OFDM) systems. The performance of phase estimation is usually measured by the mean square error (MSE) which is often infeasible to obtain. Instead, the Cramér-Rao Bound (CRB) and modified Cramér-Rao Bound (MCRB) are used to give lower MSE bounds for the phase estimation. This paper presents closed-form MSE approximations for estimating phase information from Gaussian reference signals, which provide better indications of the MSE performance than the MCRB. It is also shown that the MCRB is only attainable at high signal-to-noise ratios and with large number of observed signal samples. Simulated and analytical results are compared to demonstrate the accuracy and efficiency of the derived MSE formulas.
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基于高斯参考信号相位估计的闭式MSE性能
在许多通信和信号处理应用中,经常需要在高斯分布参考信号上携带相位信息,用于各种目的,例如正交频分复用(OFDM)系统中的载波频偏估计。相位估计的性能通常是用均方误差(MSE)来衡量的,而MSE通常是不可获得的。取而代之的是,使用cram - rao边界(CRB)和改进的cram - rao边界(MCRB)来给出相位估计的较低的MSE边界。本文提出了从高斯参考信号估计相位信息的闭式MSE近似,它比MCRB提供了更好的MSE性能指标。研究还表明,MCRB只有在高信噪比和大量观察信号样本的情况下才能实现。仿真结果与分析结果进行了比较,验证了所推导的均方误差公式的准确性和有效性。
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