Near-ML MIMO Detection Algorithm With LR-Aided Fixed-Complexity Tree Searching

IEEE Communications Letters(2014)

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摘要
In this paper, we propose a low-complexity multipleinput multiple-output (MIMO) detection algorithm with lattice-reduction-aided fixed-complexity tree searching which is motivated by the fixed-complexity sphere decoder (FSD). As the proposed scheme generates a fixed tree whose size is much smaller than that of the full expansion in the FSD, the computational complexity is reduced considerably. Nevertheless, the proposed scheme achieves a near-maximum-likelihood (ML) performance with a large number of transmit antennas and a high-order modulation. The experimental results demonstrate that the performance degradation of the proposed scheme is less than 0.5 dB at the bit error rate (BER) of 10-5 for a 8 × 8 MIMO system with 256 QAM. Also, the proposed method reduces the complexity to about 1.23% of the corresponding FSD complexity.
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关键词
fixedcomplexity sphere decoder,bit error rate,fixed-complexity sphere decoder,transmitting antennas,computational complexity reduction,lattice reduction-aided fixed-complexity tree searching,tree searching,QAM,LR-aided fixed-complexity tree searching,high-order modulation,maximum likelihood detection,BER,computational complexity,near-maximum likelihood scheme,MIMO communication,quadrature amplitude modulation,low-complexity near-ML MIMO detection algorithm,FSD complexity,transmitting antenna,multiple input multiple output detection algorithm,error statistics,MIMO,lattice reduction
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