面向上行MIMO云无线接入网络的优化波束形成和回程压缩

Yuhan Zhou, Wei Yu
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引用次数: 20

摘要

本文研究了多天线用户终端通过多天线基站作为中继节点与基于云计算的中央处理器通信的云无线接入网(C-RAN)上行链路的发射波束形成和回程压缩策略优化。BSs执行压缩转发策略对接收到的信号进行量化,并通过容量有限的回程链路将量化位发送给CP进行解码。与以往对上行链路C-RAN的研究大多只关注回程压缩策略不同,本文提出了在BSs处联合优化发射波束形成器和量化噪声协方差矩阵,以最大限度地发挥C-RAN架构带来的效益。在用户功率和回程容量约束下,建立了加权和速率最大化问题。提出了一种新的加权最小均方误差逐次凸逼近(WMMSE-SCA)算法,用于求解该问题的局部最优解。本文进一步提出了一种低复杂度的近似方案,该方案由与用户侧最强信道矢量匹配的波束形成器以及在每个BS的天线上具有均匀量化噪声水平的每个天线标量量化器组成。这种简单的分离设计策略是通过探索在连续干扰抵消(SIC)条件下,假设高信噪比(SQNR)的和速率最大化问题的最优解的结构而衍生出来的。仿真结果表明,通过优化波束形成和回程压缩,C-RAN可以显著提高无线蜂窝网络的整体性能。使用SIC,所提出的分离设计非常接近于实际关注的SQNR区域的优化联合设计。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Optimized beamforming and backhaul compression for uplink MIMO cloud radio access networks
This paper studies the optimization of transmit beamforming and backhaul compression strategies for the uplink of cloud radio access networks (C-RAN), in which multi-antenna user terminals communicate with a cloud-computing based central processor (CP) through multi-antenna base-stations (BSs) serving as relay nodes. The BSs perform compress-and-forward strategy to quantize the received signals and send the quantization bits to the CP via capacity-limited backhaul links for decoding. In contrast to the previous works on the uplink C-RAN, which mostly focus on the backhaul compression strategies only, this paper proposes the joint optimization of the transmit beamformers and the quantization noise covariance matrices at the BSs for maximizing the benefit brought by the C-RAN architecture. A weighted sum-rate maximization problem is formulated under the user power and backhaul capacity constraints. A novel weighted minimum-mean-square-error successive convex approximation (WMMSE-SCA) algorithm is developed for finding a local optimum solution to the problem. This paper further proposes a low-complexity approximation scheme consisting of beamformers matching to the strongest channel vectors at the user side along with per-antenna scalar quantizers with uniform quantization noise levels across the antennas at each BS. This simple separate design strategy is derived by exploring the structure of the optimal solution to the sum-rate maximization problem under successive interference cancellation (SIC) while assuming high signal-to-quantization-noise ratio (SQNR). Simulation results show that with optimized beamforming and backhaul compression, C-RAN can significantly improve the overall performance of wireless cellular networks. With SIC, the proposed separate design performs very close to the optimized joint design in the SQNR regime of practical interest.
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