ITITApr 9

Group Relative Policy Optimization for Robust Blind Interference Alignment with Fluid Antennas

arXiv:2601.1350621.7h-index: 11
Predicted impact top 62% in IT · last 90 daysOriginality Incremental advance
AI Analysis

This work addresses interference management in wireless communications for improved network efficiency, presenting an incremental advancement with a novel algorithm.

The paper tackles robust blind interference alignment for multi-user downlink with imperfect channel state information by optimizing fluid antenna positions, achieving performance gains such as a 4.17% improvement over PPO and over 200% improvement over heuristic methods.

Fluid antenna system (FAS) leverages dynamic reconfigurability to unlock spatial degrees of freedom and reshape wireless channels. Blind interference alignment (BIA) aligns interference through antenna switching. This paper proposes, for the first time, a robust fluid antenna-driven BIA framework for a K-user MISO downlink under imperfect channel state information (CSI). We formulate a robust sum-rate maximization problem through optimizing fluid antenna positions (switching positions). To solve this challenging non-convex problem, we employ group relative policy optimization (GRPO), a novel deep reinforcement learning algorithm that eliminates the critic network. This robust design reduces model size and floating point operations (FLOPs) by nearly half compared to proximal policy optimization (PPO) while significantly enhancing performance through group-based exploration that escapes bad local optima. Simulation results demonstrate that GRPO outperforms PPO by 4.17%, and a 100K-step pre-trained PPO by 30.29%. Due to error distribution learning, GRPO exceeds heuristic MaximumGain and RandomGain by 200.78% and 465.38%, respectively.

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