Millimeter wave (mmWave) and terahertz MIMO systems rely on pre-defined beamforming codebooks for both initial access and data transmission. However, most of the existing codebooks adopt pre-defined beams that focus mainly on improving the gain of their target users, without taking interference into account, which could incur critical performance degradation in dense networks. To address this problem, in this paper, we propose a sample-efficient digital twin-assisted beam pattern design framework that learns how to form the beam pattern to reject the signals from the interfering directions. The proposed approach does not require any explicit channel knowledge or any coordination with the interferers. The adoption of the digital twin improves the sample efficiency by better leveraging the underlying signal relationship and by incorporating a demand-based data acquisition strategy. Simulation results show that the developed signal model-based learning framework can significantly reduce the actual interaction with the radio environment (i.e., the number of measurements) compared to the model-unaware design, leading to a more practical and efficient interference-aware beam design approach.
翻译:为解决这一问题,我们在本文件中提议了一个具有样本效率的数字双辅助光束模式设计框架,用以学习如何形成横梁模式,以拒绝干扰方向的信号。拟议方法并不要求任何明确的频道知识或与干扰者进行任何协调。采用数字对齐,通过更好地利用基本信号关系和纳入基于需求的数据获取战略来提高样本效率。模拟结果表明,开发信号模型学习框架可以大大降低与模型软件设计的实际互动(即测量数量),而与模型软件设计相比,显著减少与无线电环境的实际互动(即测量数量),从而导致一种更加实用和高效的干扰感应波束设计方法。