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首页> 外文期刊>Communications Letters, IEEE >Sparsity-Boosted Detection for Large MIMO Systems
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Sparsity-Boosted Detection for Large MIMO Systems

机译:大型MIMO系统的稀疏增强检测

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摘要

In this letter, we propose a novel low-complexity detector for large MIMO systems, which is capable of achieving near-ML performance for low order constellation (such as BPSK, 4-QAM). The main idea of our algorithm is to successively boost the detection by leveraging the hidden sparsity in the residual error of received signal. Specifically, since the symbol error rate (SER) of the MMSE detector is usually not high (say, less than 10%), the residual error, which is the difference between the original transmitted signal and the recovered one, would exhibit significant sparsity. Therefore, by locating the non-zero entries (i.e., the incorrectly detected symbols) via compressive sensing algorithms, we can reduce the original MIMO system to a new one, whose input dimension is much less than the output dimension. This implies that a linear detector will suffice for achieving near-optimal performance, otherwise we can repeat the above procedures to iteratively boost the detection till satisfaction. Overall, our proposed algorithm can achieve performance close to the optimal ML detector, while its complexity is just on the order of the linear detectors (say, MMSE detector).
机译:在这封信中,我们提出了一种适用于大型MIMO系统的新型低复杂度检测器,该检测器能够为低阶星座图(例如BPSK,4-QAM)实现近ML性能。我们算法的主要思想是通过利用接收信号的残留误差中的隐藏稀疏性来连续增强检测。具体而言,由于MMSE检测器的符号错误率(SER)通常不高(例如,小于10%),所以残留错误(即原始传输信号与恢复的信号之间的差异)将表现出极大的稀疏性。因此,通过压缩感测算法定位非零条目(即错误检测的符号),我们可以将原始MIMO系统缩减为一个新的MIMO系统,其输入维数远小于输出维数。这意味着线性检测器足以满足近乎最佳的性能要求,否则我们可以重复上述步骤来迭代地提高检测效率,直到满意为止。总体而言,我们提出的算法可以实现接近最佳ML检测器的性能,而其复杂度仅与线性检测器(例如MMSE检测器)有关。

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