Tan Yi Ji, Zhu Changyan, Tan Thomas Caiwei, Kumar Abhishek, Wong Liang Jie, Chong Yidong, Singh Ranjan
Opt Express. 2022 Jul 18;30(15):27763-27779. doi: 10.1364/OE.458823.
Exponential growth in data rate demands has driven efforts to develop novel beamforming techniques for realizing massive multiple-input and multiple-output (MIMO) systems in sixth-generation (6G) terabits per second wireless communications. Existing beamforming techniques rely on conventional optimization algorithms that are too computationally expensive for real-time applications and require complex digital processing yet to be achieved for phased array antennas at terahertz frequencies. Here, we develop an intelligent and self-adaptive beamforming scheme enabled by deep reinforcement learning, which can predict the spatial phase profiles required to produce arbitrary desired radiation patterns in real-time. Our deep learning model adaptively trains an artificial neural network in real-time by comparing the input and predicted intensity patterns via automatic differentiation of the phase-to-intensity function. As a proof of concept, we experimentally demonstrate two-dimensional beamforming by spatially modulating broadband terahertz waves using silicon metasurfaces designed with the aid of the deep learning model. Our work offers an efficient and robust deep learning model for real-time self-adaptive beamforming to enable multi-user massive MIMO systems for 6G terahertz wireless communications, as well as intelligent metasurfaces for other terahertz applications in imaging and sensing.
数据速率需求的指数级增长推动了人们努力开发新型波束成形技术,以在第六代(6G)太比特每秒无线通信中实现大规模多输入多输出(MIMO)系统。现有的波束成形技术依赖于传统优化算法,这些算法对于实时应用来说计算成本过高,并且对于太赫兹频率的相控阵天线而言,还需要实现复杂的数字处理。在此,我们开发了一种由深度强化学习实现的智能自适应波束成形方案,该方案能够实时预测产生任意所需辐射方向图所需的空间相位分布。我们的深度学习模型通过经由相位到强度函数的自动微分来比较输入和预测的强度模式,从而实时自适应地训练人工神经网络。作为概念验证,我们通过使用借助深度学习模型设计的硅超表面对宽带太赫兹波进行空间调制,实验演示了二维波束成形。我们的工作为实时自适应波束成形提供了一种高效且强大的深度学习模型,以实现用于6G太赫兹无线通信的多用户大规模MIMO系统,以及用于成像和传感等其他太赫兹应用的智能超表面。