A Heuristic-Integrated DRL Approach for Phase Optimization in Large-Scale RISs
A Heuristic-Integrated DRL Approach for Phase Optimization in Large-Scale RISs
Optimizing discrete phase shifts in large-scale reconfigurable intelligent surfaces (RISs) is challenging due to their non-convex and non-linear nature. In this letter, we propose a heuristic-integrated deep reinforcement learning (DRL) framework that (1) leverages accumulated actions over multiple steps in the double deep Q-network (DDQN) for RIS column-wise control and (2) integrates a greedy algorithm (GA) into each DRL step to refine the state via fine-grained, element-wise optimization of RIS configurations. By learning from GA-included states, the proposed approach effectively addresses RIS optimization within a small DRL action space, demonstrating its capability to optimize phase-shift configurations of large-scale RISs.
Mark A. Beach、Peizheng Li、Wei Wang、Angela Doufexi
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Mark A. Beach,Peizheng Li,Wei Wang,Angela Doufexi.A Heuristic-Integrated DRL Approach for Phase Optimization in Large-Scale RISs[EB/OL].(2025-05-07)[2025-05-19].https://arxiv.org/abs/2505.04401.点此复制
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