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A Feedback Reduced Random Beamforming Algorithm Based on Opportunistic Eigenbeamforming System

机译:基于机会特征波束形成系统的减少反馈的随机波束成形算法

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Abstract Opportunistic beamforming(OBF) is a powerful technique that exploits multiuser diversity to increase the system throughput on the downlink correlated wireless channels. Opportunistic eigenbeamforming(OEB) can achieve larger multiuser diversity gain than OBF under different degrees of channel correlation but it need additional feedback. This paper proposes a feedback reduced random beamforming algorithm based on OEB. In the proposed method, each user computes the correlation factor of the beamforming vectors generated by OBF and OEB. Those users whose correlation factor is greater than the predefined threshold feed back their SNRs, others don’t need to feed back SNRs, thus the base station choose the best user to transmit data. Simulation results show that the performance of the proposed algorithm is asymptotic to that of OEB while the overall feedback is significantly reduced.
机译:摘要机会波束成形(OBF)是一项强大的技术,它利用多用户分集来增加下行链路相关无线信道上的系统吞吐量。在不同的信道相关度下,机会特征波束成形(OEB)可以获得比OBF更大的多用户分集增益,但是它需要额外的反馈。提出了一种基于OEB的减少反馈的随机波束成形算法。在提出的方法中,每个用户计算由OBF和OEB生成的波束形成矢量的相关因子。相关因子大于预定义阈值的那些用户会反馈其SNR,而其他用户则不需要反馈SNR,因此基站会选择最佳用户来传输数据。仿真结果表明,该算法的性能与OEB的渐近性明显降低了总体反馈。

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