Integrated Sensing and Communication for STAR-RIS-Aided UAV Networks
Yasoub Eghbali, Amir Mohammadisarab, Hosein Zarini, Mohammad Robat Mili, Ertuğrul Başar, Marco Di Renzo, Henk Wymeersch
Abstract
This paper studies an integrated sensing and communication framework, in which an unpiloted aerial vehicle (UAV) concurrently serves mobile users and sensing targets with the assistance of a simultaneously transmitting and reflecting reconfigurable intelligent surface (STAR-RIS). To analyze the performance of this system, an admission control problem is formulated that aims to maximize the number of served sensing targets. Due to tight coupling and its non-convex nature, the problem is transformed to a Markov decision process (MDP) form, based on which a recurrent deep deterministic policy gradient (RDPG) agent is trained to jointly optimize the UAV flight trajectory, STAR-RIS coefficients, as well as the transmit and receive beamforming at the transceivers. Concerning the frequent displacement of the UAV and thus the considerable dynamism of the system, we further enrich the trained RDPG model for better adapting to the system variations by integrating a meta-learning technique. Numerical results exhibit at least 30% enhancement in average admission rate of sensing targets with the assistance of STAR-RIS. Additionally, the proposed adaptive resource allocation scheme brings about 25% superiority in average, over the existing soft actor-critic (SAC) counterpart available in the literature.