In-situ manipulation of wireless link with reinforcement-learning-driven programmable metasurface in indoor environment

Jiawen Xu , Rong Zhang , Jie Ma , Hanting Zhao , Lianlin Li
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Abstract

It is of great importance to control flexibly wireless links in the modern society, especially with the advent of the Internet of Things (IoT), fifth-generation communication (5G), and beyond. Recently, we have witnessed that programmable metasurface (PM) or reconfigurable intelligent surface (RIS) has become a key enabling technology for manipulating flexibly the wireless link; however, one fundamental but challenging issue is to online design the PM's control sequence in a complicated wireless environment, such as the real-world indoor environment. Here, we propose a reinforcement learning (RL) approach to online control of the PM and thus in-situ improve the quality of the underline wireless link. We designed an inexpensive one-bit PM working at around 2.442 ​GHz and developed associated RL algorithms, and demonstrated experimentally that it is capable of enhancing the quality of commodity wireless link by a factor of about 10 ​dB and beyond in multiple scenarios, even if the wireless transmitter is in the glancing angle of the PM in the real-world indoor environment. Moreover, we also prove that our RL algorithm can be extended to improve the wireless signals of receivers in dual-receiver scenario. We faithfully expect that the presented technique could hold important potentials in future wireless communication, smart homes, and many other fields.

室内环境下基于强化学习驱动的可编程元表面无线链路的原位操作
在现代社会中,灵活控制无线链路非常重要,尤其是随着物联网(IoT)、第五代通信(5G)等技术的出现。最近,我们见证了可编程元表面(PM)或可重构智能表面(RIS)已成为灵活操作无线链路的关键使能技术;然而,一个基本但具有挑战性的问题是在复杂的无线环境(例如真实世界的室内环境)中在线设计PM的控制序列。在这里,我们提出了一种增强学习(RL)方法来在线控制PM,从而原位提高下划线无线链路的质量。我们设计了一个价格低廉的一位PM,工作温度约为2.442​GHz,并开发了相关的RL算法,并通过实验证明它能够将商品无线链路的质量提高约10倍​在多种情况下,即使无线发射机在真实室内环境中处于PM的掠射角,也可以达到dB及以上。此外,我们还证明了我们的RL算法可以扩展到改善双接收机场景中接收机的无线信号。我们真诚地期望所提出的技术在未来的无线通信、智能家居和许多其他领域具有重要的潜力。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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