单组多播网络中的秩正则波束形成

Dima Taleb, M. Pesavento
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引用次数: 0

摘要

在多播网络中,多天线基站向一组用户传输相同的信息。本文研究了利用正交空时分组码(OSTBC)实现的一般秩波束形成。波束形成问题是非凸的,一般是NP困难的。采用半定松弛技术解决了这一问题。为了控制波束形成解的秩,我们提出用正则化体积最小化来代替功率最小化,这被称为秩最小化的替代。我们提出了一种迭代的双尺度算法来寻找正则化参数的适当值,从而产生期望的秩,并计算相应优化问题的平稳点。采用单尺度算法,正则化变量的值随秩的降低而减小,显著改善了算法的高计算复杂度。仿真结果表明,我们的算法在传输功率和符号错误率(SER)方面优于最先进的算法。对于正则化变量的适当设置,一个尺度算法在计算复杂度方面优于最好的比较方法。
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Rank regularized beamforming in single group multicasting networks
In multicasting networks, a multi-antenna base station transmits the same information to a single group of users. In this work we consider general rank beamforming using orthogonal space-time block codes (OSTBC)s. The beamforming problem is non-convex and generally NP hard. The semidefinite relaxation technique is employed to solve the problem. In order to control the rank of the beamforming solution we propose to replace the power minimization by a regularized volume minimization which is known as a surrogate for the rank minimization. We propose an iterative two scale algorithm to find the appropriate value for the regularization parameter that yields the desired rank and to compute stationary points of the corresponding optimization problem. The high computational complexity of the proposed algorithm is improved significantly using a one scale algorithm, where the value of the regularization variable is reduced along with the decreasing rank. Simulation results demonstrate that our algorithms outperform the stateof-the-arts procedures in terms of the transmitted power and symbol error rate (SER). For a proper setting of the regularization variable, one scale algorithm outperforms the best compared methods in terms of computational complexity.
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