Employing large antenna arrays is a key characteristic of millimeter wave (mmWave) and terahertz communication systems. Due to the hardware constraints and the lack of channel knowledge, codebook based beamforming/combining is normally adopted to achieve the desired array gain. However, most of the existing codebooks focus only on improving the gain of their target user, without taking interference into account. This can incur critical performance degradation in dense networks. In this paper, we propose a sample-efficient online reinforcement learning based beam pattern design algorithm that learns how to shape the beam pattern to null the interfering directions. The proposed approach does not require any explicit channel knowledge or any coordination with the interferers. Simulation results show that the developed solution is capable of learning well-shaped beam patterns that significantly suppress the interference while sacrificing tolerable beamforming/combing gain from the desired user. Furthermore, a hardware proof-of-concept prototype based on mmWave phased arrays is built and used to implement and evaluate the developed online beam learning solutions in realistic scenarios. The learned beam patterns, measured in an anechoic chamber, show the performance gains of the developed framework and highlight a promising machine learning based beam/codebook optimization direction for mmWave and terahertz systems.
翻译:使用大型天线阵列是毫米波(mmWave)和千兆赫通信系统的关键特征。由于硬件限制和缺乏频道知识,通常会采用基于代码手册的波形/组合,以实现预期的阵列增益。然而,大多数现有代码手册只注重提高目标用户的得益,而不考虑干扰因素。这可能在密集的网络中造成严重性能退化。在本文件中,我们提议基于样本高效的在线强化学习比目模式设计算法,以学习如何塑造横梁模式,从而消除干扰方向。拟议方法不需要任何明确的频道知识或与干扰者进行任何协调。模拟结果显示,开发的解决方案能够学习大大抑制干扰的形形形形形束模式,同时牺牲了从理想用户那里获得的可调成的波形/组合。此外,基于毫米Wave分阶段阵列的硬件校正测试原型模型已经建立并用于在现实情景中实施和评估开发的在线学习解决方案。在某组别中测量到的光谱模式,在非组化室中测量的,或与干扰者进行的任何协调。模拟结果显示一个有希望的模型的模型框架。