AI-driven dynamic resource allocation for ISAC systems in 6G networks: intelligent beamforming, interference management, and power allocation
摘要
In this paper, we present an AI-based novel framework for dynamic resource management in ISAC systems in 6G networks. The framework utilizes Deep Reinforcement Learning (DRL) to learn and optimize various resource control tasks such as smart beamforming, interference control, and power assignment, according to instantaneous network state and environment. The sum rate and beam pattern gain of AI-based approach are up to 45% and 50% higher than those of the static beamforming, respectively, at all scenarios. In particular, at pmax = 30 dBm and L = 64 antennas, the AI model yields a sum rate of