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Efficient Nonlinear Precoding for Massive MIMO Downlink Systems With 1-Bit DACs

机译:具有1位DAC的大型MIMO下行链路系统的高效非线性预编码

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摘要

The power consumption of digital-to-analog converters (DACs) constitutes a significant proportion of the total power consumption in a massive multiuser multiple-input multiple-output (MU-MIMO) base station (BS). Using 1-bit DACs can significantly reduce the power consumption. This paper addresses the precoding problem for the massive narrow-band MU-MIMO downlink system equipped with 1-bit DACs at each BS. In such a system, the preceding problem plays a central role as the preceded symbols are affected by extra distortion introduced by 1-bit DACs. In this paper, we develop a highly efficient nonlinear preaxling algorithm based on the alternative direction method framework. Unlike the classic algorithms, such as the semidefinite relaxation (SDR) and squared-infinity norm Douglas-Rachford splitting (SQUID) algorithms, which solve convex relaxed versions of the original precoding problem, the new algorithm solves the original nonconvex problem directly. The new algorithm is guaranteed to globally converge under some mild conditions. A sufficient condition for its convergence has been derived. The experimental results in various conditions demonstrated that the new algorithm can achieve the state-of-the-art performance comparable with the SDR algorithm while being much more efficient (e.g., more than 300 times faster than the SDR algorithm).
机译:数模转换器(DACS)的功耗构成大量多用户多输入多输出(MU-MIMO)基站(BS)中的总功耗的大量比例。使用1位DAC可以显着降低功耗。本文讨论了在每个BS上配备有1位DAC的大型窄带MU-MIMO下行链路系统的预编码问题。在这样的系统中,前面的问题扮演中心角色,因为前面的符号受到1位DAC引入的额外失真的影响。本文基于替代方向法框架,开发了一种高效的非线性Preaxling算法。与经典算法不同,例如SEMIDEFINITE放松(SDR)和SQUARED-INFINITY NORM DOGGRAS-RACHFORD分裂(SQUID)算法,它解决了原始预编码问题的凸松弛版本,新算法直接解决了原始的非核解问题。新算法保证在一些温和条件下全局收敛。已经得出了足够的趋同条件。各种条件的实验结果表明,新算法可以实现与SDR算法相当的最先进的性能,同时更有效(例如,比SDR算法快300倍)。

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