通过随机逼近实现最小中断的发射波束形成

Yunmei Shi, Aritra Konar, N. Sidiropoulos, X. Mao, Yongtan Liu
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引用次数: 1

摘要

我们考虑了一种基于中断的发射波束形成方法,其中下行信道被建模为从未知分布中绘制的随机向量。该问题模型既适用于点对点发射波束形成,也适用于单组多播。由于缺乏通道信息,我们等效地将问题重新表述为具有不连续和非凸成本函数的随机优化(SO)问题。我们设计了上述函数的两个明智的光滑近似,它们适用于随机梯度类型方法。使用这些,我们通过基于间歇、延迟或对等反馈的流一阶方法(FOMs)计算近似的在线解决方案。大规模MIMO系统的仿真结果验证了该方法的有效性。
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Transmit beamforming for minimum outage via stochastic approximation
We consider an outage based approach for transmit beamforming where the downlink channels are modeled as random vectors drawn from an unknown distribution. Our problem model is applicable to both point-to-point transmit beamforming as well as single-group multicasting. Given the lack of channel information, we equivalently reformulate our problem as a stochastic optimization (SO) problem with a discontinuous and non-convex cost function. We design two judicious smooth approximations of the said function, which are amenable to stochastic gradient type methods. Using these, we compute approximate online solutions via streaming first-order methods (FOMs) based on intermittent, delayed, or peer feedback. Simulation results for massive MIMO systems demonstrate the effective performance of our methods.
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