利用常模差分准则提高存在相位噪声时的多输入多输出检测性能

T. Datta, Sheng Yang
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引用次数: 4

摘要

实际的多输入多输出(MIMO)通信系统会因振荡器相位噪声而造成性能损失。特别是,如果在不考虑相位噪声的情况下进行最大似然(ML)检测,就会导致符号错误概率出现误差下限。在本文中,我们提出了一种在存在强相位噪声的情况下检测天真的 ML 解决方案正确性的方法。基于 ML 解法与实际传输向量之间的 ML 成本差异的标准被用来确定一组可能的候选解法。接下来,我们提出了一种利用相位噪声估计技术进行数据检测的新型算法,以获得每个候选解决方案的修正 ML 成本。这种方法通过降低误差底限来提高符号误差率性能,而不会因为相位噪声估计而增加很多复杂性。理论论证和仿真研究都支持所实现的性能改进。
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Improving MIMO detection performance in presence of phase noise using norm difference criterion
Practical MIMO communication systems suffer performance loss from oscillator phase noise. In particular, if maximum likelihood (ML) detection is performed naively without considering the phase noise, it results in an error floor in its symbol error probability. In this paper, we propose a method to detect the correctness of the naive ML solution in the presence of strong phase noise. A criteria based on the ML cost differences between the ML solution and the actually transmitted vector is used to determine a set of possible candidate solutions. Next we propose a novel algorithm for data detection using phase noise estimation techniques to obtain an modified ML cost for each of the candidate solutions. This approach results in symbol error rate performance improvement by reducing the error floor without incurring much additional complexity due to phase noise estimation. Theoretical arguments as well as simulation studies are presented to support the performance improvement achieved.
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