论文标题
使用神经网络学习光束代码手册:朝着环境感知的mmwave mimo
Learning Beam Codebooks with Neural Networks: Towards Environment-Aware mmWave MIMO
论文作者
论文摘要
扩展天线的数量是当前和未来无线通信系统的关键特征。但是,硬件成本和功耗激发了大规模的MIMO系统,尤其是在毫米波(MMWave)频段,依靠仅模拟或混合模拟/数字收发器架构。使用这些体系结构,MMWave基站通常使用预定义的波束形成代码簿进行初始访问和数据传输。但是,当前的光束代码簿通常采用单杆狭窄的光束并扫描整个角空间。这会导致远光灯训练的开销和可实现的光束成型增长的损失。在本文中,我们提出了一个新的机器学习框架,用于在硬件约束的大规模MIMO系统中学习波束成形的代码手册。更具体地说,我们开发了一个神经网络体系结构,该架构可以说明硬件约束,并学习适应周围环境和用户位置的光束代码簿。仿真结果突出了所提出的解决方案在学习多叶梁和降低代码簿大小方面的能力,与经典的代码书设计方法相比,这将导致明显的收益。
Scaling the number of antennas up is a key characteristic of current and future wireless communication systems. The hardware cost and power consumption, however, motivate large-scale MIMO systems, especially at millimeter wave (mmWave) bands, to rely on analog-only or hybrid analog/digital transceiver architectures. With these architectures, mmWave base stations normally use pre-defined beamforming codebooks for both initial access and data transmissions. Current beam codebooks, however, generally adopt single-lobe narrow beams and scan the entire angular space. This leads to high beam training overhead and loss in the achievable beamforming gains. In this paper, we propose a new machine learning framework for learning beamforming codebooks in hardware-constrained large-scale MIMO systems. More specifically, we develop a neural network architecture that accounts for the hardware constraints and learns beam codebooks that adapt to the surrounding environment and the user locations. Simulation results highlight the capability of the proposed solution in learning multi-lobe beams and reducing the codebook size, which leads to noticeable gains compared to classical codebook design approaches.