The integration of Reconfigurable Intelligent Surfaces (RISs) into wireless environments endows channels with programmability, and is expected to play a key role in future communication standards. To date, most RIS-related efforts focus on quasi-free-space, where wireless channels are typically modeled analytically. Many realistic communication scenarios occur, however, in rich-scattering environments which, moreover, evolve dynamically. These conditions present a tremendous challenge in identifying an RIS configuration that optimizes the achievable communication rate. In this paper, we make a first step toward tackling this challenge. Based on a simulator that is faithful to the underlying wave physics, we train a deep neural network as surrogate forward model to capture the stochastic dependence of wireless channels on the RIS configuration under dynamic rich-scattering conditions. Subsequently, we use this model in combination with a genetic algorithm to identify RIS configurations optimizing the communication rate. We numerically demonstrate the ability of the proposed approach to tune RISs to improve the achievable rate in rich-scattering setups.
翻译:将可重新配置的智能表面(RIS)纳入无线环境的可编程性通道,预计在未来通信标准中将发挥关键作用。迄今为止,大多数与RIS相关的努力都侧重于准无线空间,无线频道一般是模拟分析的。然而,许多现实的通信情景发生在富余隔热环境中,这种环境还会动态地演变。这些条件对确定可优化可实现通信率的RIS配置提出了巨大的挑战。在本文件中,我们为迎接这一挑战迈出了第一步。基于一个忠实于基本波波物理的模拟器,我们培训了一个深神经网络,作为前方模型,以捕捉到无线频道在动态富缓存条件下对RIS配置的随机依赖性。随后,我们利用这一模型与遗传算法结合,以确定可优化通信率的RIS配置。我们从数字上展示了拟议的调控RISs的能力,以提高富震组合中可实现的比率。