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Low-Complexity Decoding via Reduced Dimension Maximum-Likelihood Search

机译:通过降维最大似然搜索进行低复杂度解码

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摘要

In this paper, we consider a low-complexity detection technique referred to as a reduced dimension maximum-likelihood search (RD-MLS). RD-MLS is based on a partitioned search which approximates the maximum-likelihood (ML) estimate of symbols by searching a partitioned symbol vector space rather than that spanned by the whole symbol vector. The inevitable performance loss due to a reduction in the search space is compensated by 1) the use of a list tree search, which is an extension of a single best searching algorithm called sphere decoding, and 2) the recomputation of a set of weak symbols, i.e., those ignored in the reduced dimension search, for each strong symbol candidate found during the list tree search. Through simulations on M-quadrature amplitude modulation (QAM) transmission in frequency nonselective multi-input-multioutput (MIMO) channels, we demonstrate that the RD-MLS algorithm shows near constant complexity over a wide range of bit error rate (BER) (10-1 ~ 10-4), while limiting performance loss to within 1 dB from ML detection.
机译:在本文中,我们考虑了一种低复杂度检测技术,称为降维最大似然搜索(RD-MLS)。 RD-MLS基于分区搜索,该分区搜索通过搜索分区符号向量空间而不是整个符号向量所跨越的空间来近似估计符号的最大似然(ML)估计。由于搜索空间减少而导致的不可避免的性能损失可以通过以下方式补偿:1)使用列表树搜索(这是称为球形解码的单个最佳搜索算法的扩展),以及2)重新计算一组弱符号,即在降维搜索中针对列表树搜索期间找到的每个强符号候选者忽略的那些。通过对频率非选择性多输入多输出(MIMO)信道中的M正交幅度调制(QAM)传输进行仿真,我们证明RD-MLS算法在较宽的误码率(BER)范围内显示出接近恒定的复杂度(10 -1〜10-4),同时将性能损失限制在ML检测的1 dB以内。

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