Low-complexity Prediction Techniques of K-best Sphere Decoding for MIMO Systems

Hsiu-Chi Chang, Yen-Chin Liao, Hsie-Chia Chang
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引用次数: 5

Abstract

In multiple-input multiple output (MIMO) systems, maximum likelihood (ML) detection can provide good performance, however, exhaustively searching for the ML solution becomes infeasible as the number of antenna and constellation points increases. Thus ML detection is often realized by K-best sphere decoding algorithm. In this paper, two techniques to reduce the complexity of K-best algorithm while remaining an error probability similar to that of the ML detection is proposed. By the proposed K-best with predicted candidates approach, the computation complexity can be reduced. Moreover, the proposed adaptive K-best algorithm provides a means to determine the value K according the received signals. The simulation result shows that the reduction in the complexity of 64-best algorithm ranges from 48% to 85%, whereas the corresponding SNR degradation is maintained within 0.13dB and 1.1dB for a 64-QAM 4 × 4 MIMO system.
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MIMO系统k -最优球解码的低复杂度预测技术
在多输入多输出(MIMO)系统中,最大似然(ML)检测可以提供良好的性能,但随着天线和星座点数量的增加,彻底搜索最大似然解决方案变得不可行。因此,ML检测通常采用k -最优球解码算法来实现。本文提出了两种技术来降低K-best算法的复杂度,同时保持与ML检测相似的错误概率。通过提出的具有预测候选者的k -最优方法,可以降低计算复杂度。此外,本文提出的自适应K-best算法提供了一种根据接收信号确定K值的方法。仿真结果表明,对于64-QAM 4 × 4 MIMO系统,64-best算法的复杂度降低幅度在48% ~ 85%之间,而相应的信噪比下降幅度保持在0.13dB和1.1dB之间。
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