任意大量1位相位分辨率元素的在线RIS配置学习

Kyriakos Stylianopoulos, G. Alexandropoulos
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引用次数: 4

摘要

强化学习(RL)方法最近被部署用于编排由可重构智能表面(RISs)支持的无线通信,利用其在线优化能力。最常见的是,在具有低分辨率相位可调元素的现实RISs的基于rl的公式中,每种配置都被建模为不同的反射动作,由于搜索空间的指数性质,导致探索效率低下。在本文中,我们考虑了具有1位相位分辨元素的RISs,并将反射作用建模为包含可行反射系数的二进制向量。然后,我们引入了两种已建立的深度q网络(DQN)和深度确定性策略梯度(DDPG)代理的变体,旨在有效地探索二元动作空间。对于DQN的情况,我们使用了q函数的有效近似,而离散化后处理步骤应用于DDPG的输出。我们的模拟考虑了大规模的RISs,其中现有的调优方法在很大程度上是不切实际的,并展示了所提出的技术在速率最大化目标方面大大优于基线。此外,当处理中等规模的RIS时,传统的依赖于基于配置的动作空间的DQN是可行的,后者的性能与所提出的学习方法相似。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Online RIS Configuration Learning for Arbitrary Large Numbers of 1-Bit Phase Resolution Elements
Reinforcement Learning (RL) approaches are lately deployed for orchestrating wireless communications empowered by Reconfigurable Intelligent Surfaces (RISs), leveraging their online optimization capabilities. Most commonly, in RL-based formulations for realistic RISs with low resolution phase-tunable elements, each configuration is modeled as a distinct reflection action, resulting to inefficient exploration due to the exponential nature of the search space. In this paper, we consider RISs with 1-bit phase-resolution elements and model the reflection action as a binary vector including the feasible reflection coefficients. We then introduce two variations of the well-established Deep Q-Network (DQN) and Deep Deterministic Policy Gradient (DDPG) agents, aiming for effective exploration of the binary action spaces. For the case of DQN, we make use of an efficient approximation of the Q-function, whereas a discretization post-processing step is applied to the output of DDPG. Our simulations consider large-scale RISs, where existing tuning methods are largely impractical, and showcase that the proposed techniques greatly outperform the baseline in terms of the rate maximization objective. In addition, when dealing with moderate-scale RIS sizes, where the conventional DQN relying on configuration-based action spaces is feasible, the performance of the latter technique is similar to the proposed learning approach.
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