Two-Stage Distributionally Robust Optimization Framework for Secure Communications in Aerial-RIS Systems
By: Zhongming Feng , Qiling Gao , Zeping Sui and more
Potential Business Impact:
Makes wireless signals safer from spying.
This letter proposes a two-stage distributionally robust optimization (DRO) framework for secure deployment and beamforming in an aerial reconfigurable intelligent surface (A-RIS) assisted millimeter-wave system. To account for multi-timescale uncertainties arising from user mobility, imperfect channel state information (CSI), and hardware impairments, our approach decouples the long-term unmanned aerial vehicle (UAV) placement from the per-slot beamforming design. By employing the conditional value-at-risk (CVaR) as a distribution-free risk metric, a low-complexity algorithm is developed, which combines a surrogate model for efficient deployment with an alternating optimization (AO) scheme for robust real-time beamforming. Simulation results validate that the proposed DRO-CVaR framework significantly enhances the tail-end secrecy spectral efficiency and maintains a lower outage probability compared to benchmark schemes, especially under severe uncertainty conditions.
Similar Papers
Sum Rate Maximization in STAR-RIS-UAV-Assisted Networks: A CA-DDPG Approach for Joint Optimization
Machine Learning (CS)
Makes wireless signals stronger and faster using flying robots.
Large-scale Aerial Reconfigurable Intelligent Surface-aided Robust Anti-jamming Transmission
Information Theory
Drones help make phone signals stronger against jamming.
RIS-based Communication Enhancement and Location Privacy Protection in UAV Networks
Systems and Control
Hides drones from spies while they talk.