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Iterative Code-Aided ML Phase Estimation and Phase Ambiguity Resolution

机译:迭代代码辅助ML相位估计和相位歧义解析

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As many coded systems operate at very low signal-to-noise ratios, synchronization becomes a very difficult task. In many cases, conventional algorithms will either require long training sequences or result in large BER degradations. By exploiting code properties, these problems can be avoided. In this contribution, we present several iterative maximum-likelihood (ML) algorithms for joint carrier phase estimation and ambiguity resolution. These algorithms operate on coded signals by accepting soft information from the MAP decoder. Issues of convergence and initialization are addressed in detail. Simulation results are presented for turbo codes, and are compared to performance results of conventional algorithms. Performance comparisons are carried out in terms of BER performance and mean square estimation error (MSEE). We show that the proposed algorithm reduces the MSEE and, more importantly, the BER degradation. Additionally, phase ambiguity resolution can be performed without resorting to a pilot sequence, thus improving the spectral efficiency.
机译:由于许多编码系统以非常低的信噪比工作,因此同步变得非常困难。在许多情况下,常规算法将需要很长的训练序列,或者会导致BER下降较大。通过利用代码属性,可以避免这些问题。在此贡献中,我们提出了几种用于联合载波相位估计和歧义分辨率的迭代最大似然(ML)算法。这些算法通过接受来自MAP解码器的软信息,对编码信号进行操作。详细讨论了收敛和初始化问题。给出了turbo码的仿真结果,并将其与常规算法的性能结果进行了比较。根据BER性能和均方估计误差(MSEE)进行性能比较。我们表明,所提出的算法减少了MSEE,更重要的是,降低了BER降级。另外,可以在不借助于导频序列的情况下执行相位模糊度解析,从而提高了频谱效率。

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