全息波束形成的人工智能框架:全息MIMO与智能全曲面的共存

Apurba Adhikary, M. S. Munir, Avi Deb Raha, Yu Qiao, S. Hong, E. Huh, C. Hong
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引用次数: 3

摘要

即将到来的6G无线通信系统需要满足日益增长的网络连接需求,这需要节省电力以产生有效的波束形成。因此,提出了全息MIMO (HMIMO)和智能全表面(IOS)共存的联合传感与通信框架,保证了覆盖范围的扩大,降低了波束形成的功耗。考虑信道容量、波束方向增益随天顶角和方位角的变化、距离和传感通信过程中的损耗,提出了最大化效用函数的优化问题。设计了一个人工智能框架来解决公式化的np困难问题。首先,利用基于长短期记忆(LSTM)的方案确定天顶角和方位角,从而获得所有HMIMO直接服务用户和IOS反射信道和折射信道服务用户的当前位置;然后,基于lstm方案的结果,开发了一种基于强化学习(RL)的方法,用于将通信资源分配给目标用户,以产生所需的波束形成。最后,仿真结果表明,与基线方法相比,所提出的人工智能框架实现了1.5%的功率增益,可以为用户提供全息波束成形服务。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
An Artificial Intelligence Framework for Holographic Beamforming: Coexistence of Holographic MIMO and Intelligent Omni-Surface
The forth-coming 6G wireless communication systems are required to meet the increasing demand for network connectivity that requires power savings for generating effective beamforming. Therefore, joint sensing and communication framework is proposed with the coexistence between holographic MIMO (HMIMO) and Intelligent Omni-Surface (IOS) which ensures the extension of the coverage area resulting in lower power consumption for beamforming. An optimization problem is formulated maximizing the utility function considering the channel capacity, beampattern gains with zenith and azimuth angles, distances, and losses during the sensing-communication process. An artificial intelligence framework is designed for solving the formulated NP-hard problem. Firstly, long short-term memory (LSTM) based scheme is utilized to determine the zenith and azimuth angles with a view to obtaining the current location of all the users that are served directly by the HMIMO and users that are served with reflective channel and refractive channel from the IOS. Afterward, a reinforcement learning (RL) based method is developed for allocating the communication resources to the intended users for generating the required beamforming based on the results obtained from the LSTM-based scheme. Finally, simulation results illustrate that the proposed artificial intelligence framework achieves a power gain of 1.5% compare to the baseline method to perform holographic beamforming for serving the users.
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