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L1 norm minimization approach to MIMO detector

机译:MIMO检测器的L1范数最小化方法

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摘要

This paper deals with the quadrature amplitude modulation (QAM) problem for the multiple-input multiple-output (MIMO) channel. Based on the maximum likelihood estimation, the QAM detection problem is formulated as an integer quadratic programming, which is a combinatorial problem and difficult to obtain exact solutions. In order to overcome combinatorial difficulties, this paper formulates the QAM detection problem as the l norm minimization problem and relaxes it into a quadratic programming with the l norm regularization. Utilizing and modifying the forward-backward splitting (FOBOS) algorithm, a new QAM detection algorithm is proposed. This algorithm has a trade-off between the computational cost and the detection accuracy, which depends on a parameter of the algorithm. Numerical simulations show that the proposed algorithm works well and achieves a good detection performance with less computational cost comparing with the semidefinite relaxation (SDR) based algorithm.
机译:本文研究了多输入多输出(MIMO)信道的正交幅度调制(QAM)问题。基于最大似然估计,将QAM检测问题表述为整数二次规划,这是一个组合问题,难以获得精确解。为了克服组合困难,本文将QAM检测问题表述为l范数最小化问题,并将其放宽为l范数正则化的二次规划。利用并修改了前向后向分割算法(FOBOS),提出了一种新的QAM检测算法。该算法在计算成本和检测精度之间进行权衡,这取决于算法的参数。数值仿真表明,与基于半定松弛的算法相比,该算法工作良好,检测性能好,计算量少。

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