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首页> 外文期刊>IEICE Transactions on Communications >Near-Optimal Signal Detection Based on the MMSE Detection Using Multi-Dimensional Search for Correlated MIMO Channels
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Near-Optimal Signal Detection Based on the MMSE Detection Using Multi-Dimensional Search for Correlated MIMO Channels

机译:基于多维搜索的MMSE检测的近最优信号检测及其相关MIMO信道

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摘要

This paper proposes a low-complexity signal detection algorithm for spatially correlated multiple-input multiple-output (MIMO) channels. The proposed algorithm sets a minimum mean-square error (MMSE) detection result to the starting point, and searches for signal candidates in multi-dimensions of the noise enhancement from which the MMSE detection suffers. The multi-dimensional search is needed because the number of dominant directions of the noise enhancement is likely to be more than one over the correlated MIMO channels. To reduce the computational complexity of the multi-dimensional search, the proposed algorithm limits the number of signal candidates to 0(Nt) where N_T is the number of transmit antennas and O( ) is big O notation. Specifically, the signal candidates, which are unquantized, are obtained as the solution of a minimization problem under a constraint that a stream of the candidates should be equal to a constellation point. Finally, the detected signal is selected from hard decisions of both the MMSE detection result and unquantized signal candidates on the basis of the log likelihood function. For reducing the complexity of this process, the proposed algorithm decreases the number of calculations of the log likelihood functions for the quantized signal candidates. Computer simulations under a correlated MIMO channel condition demonstrate that the proposed scheme provides an excellent trade-otf between BER performance and complexity, and that it is superior to conventional one-dimensional search algorithms in BER performance while requiring less complexity than the conventional algorithms.
机译:本文针对空间相关的多输入多输出(MIMO)信道提出了一种低复杂度的信号检测算法。所提出的算法将最小均方误差(MMSE)检测结果设置为起点,并在MMSE检测所遭受的噪声增强的多维中搜索候选信号。之所以需要进行多维搜索,是因为在相关的MIMO信道上,噪声增强的主要方向的数量可能会超过一个。为了降低多维搜索的计算复杂度,提出的算法将候选信号的数量限制为0(Nt),其中N_T是发射天线的数量,O()是大的O表示法。具体地,在候选流应该等于星座点的约束下,获得了未量化的信号候选作为最小化问题的解决方案。最后,基于对数似然函数,从MMSE检测结果和未量化信号候选的硬判决中选择检测到的信号。为了降低该过程的复杂度,所提出的算法减少了量化信号候选的对数似然函数的计算数量。在相关MIMO信道条件下的计算机仿真表明,该方案在BER性能和复杂度之间提供了极好的折衷方案,并且在BER性能方面优于常规一维搜索算法,同时所需的复杂度比常规算法要小。

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