QoE-Aware and Secure UAV-Aided Rate-Splitting Multiple Access Based Communications
Abstract
QoE optimization in UAV-aided multiuser RSMA networks under secrecy constraints is addressed through decomposition into beamforming, rate allocation, and UAV trajectory subproblems, with nonconvex problems convexified using epigraph method, SOC relaxation, and Taylor expansions.
In this work, we address the issue of quality of experience (QoE) in unmanned aerial vehicle (UAV) aided multiuser rate-splitting multiple access (RSMA) networks under secrecy constraints. The problem is formulated as maximization of sum mean opinion scores (MOSs) of the users. The problem is decomposed into two subproblems, beamforming and rate allocation and UAV trajectory subproblem. For, beamforming and rate allocation subproblem, we use the epigraph method, property of polynomials, and the norm-bounded error of channels, we linearize the objective function. Then, applying second-order conic (SOC) and first Taylor expansion, we convexify the remaining nonconvex constraints. For the highly nonconvex UAV trajectory, we unroll the constraints and we apply first Taylor expansion on the unrolled constraints. The simulation results demonstrate the efficiency of the proposed framework.
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