Cooperative Deep Reinforcement Learning for Fair RIS Allocation
AI 摘要
提出了一种公平性感知的合作深度强化学习方法,用于动态分配RIS资源。
主要贡献
- 提出了基于拍卖机制的RIS分配方案
- 设计了公平性感知的多智能体强化学习方法
- 实现了弱势用户速率的提升,同时保持了整体吞吐量
方法论
使用合作多智能体强化学习,基站根据效用和相对服务质量调整竞标策略,中心化计算性能依赖的公平性指标。
原文摘要
The deployment of reconfigurable intelligent surfaces (RISs) introduces new challenges for resource allocation in multi-cell wireless networks, particularly when user loads are uneven across base stations. In this work, we consider RISs as shared infrastructure that must be dynamically assigned among competing base stations, and we address this problem using a simultaneous ascending auction mechanism. To mitigate performance imbalances between cells, we propose a fairness-aware collaborative multi-agent reinforcement learning approach in which base stations adapt their bidding strategies based on both expected utility gains and relative service quality. A centrally computed performance-dependent fairness indicator is incorporated into the agents' observations, enabling implicit coordination without direct inter-base-station communication. Simulation results show that the proposed framework effectively redistributes RIS resources toward weaker-performing cells, substantially improving the rates of the worst-served users while preserving overall throughput. The results demonstrate that fairness-oriented RIS allocation can be achieved through cooperative learning, providing a flexible tool for balancing efficiency and equity in future wireless networks.