Article (Scientific journals)
Hybrid Optimization for NOMA-Based Transmissive-RIS Mounted UAV Networks
Ali, Zain; Asif, Muhammad; KHAN, Wali Ullah et al.
2025In IEEE Transactions on Consumer Electronics, 71 (2), p. 3740 - 3752
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Keywords :
Machine learning; non-orthogonal multiple access (NOMA); resource allocation; transmissive reconfigurable intelligent surface (T-RIS); uncrewed aerial vehicle (UAV); Aerial vehicle; Joint optimization; Machine-learning; Multiple access; Non-orthogonal; Non-orthogonal multiple access; Reconfigurable; Resources allocation; Transmissive reconfigurable intelligent surface; Unmanned aerial vehicle; Media Technology; Electrical and Electronic Engineering; Autonomous aerial vehicles; Resource management; Optimization; NOMA; Array signal processing; Consumer electronics; Reconfigurable intelligent surfaces; Performance evaluation; Communication networks; Urban areas
Abstract :
[en] In this work, we introduce a novel hybrid joint optimization framework specifically designed for enhancing the performance of consumer electronics in vehicular networks using a transmissive reconfigurable intelligent surface (T-RIS)-mounted uncrewed aerial vehicle (UAV) system. The UAV employs the non-orthogonal multiple access (NOMA) protocol to broadcast data to multiple ground devices, ensuring efficient communication. Our primary objective is to maximize the overall system sum rate while adhering to key constraints such as the rate requirements of ground devices, UAV battery capacity, and UAV coordinate boundaries. The optimization challenge of maximizing the system’s sum rate is inherently non-convex and complex. To address this, we decompose the problem into manageable subproblems. The beamforming optimization problem is tackled using successive convex approximation and semi-definite programming techniques, allowing for effective handling of non-convexity. For power allocation, we employ the Lagrangian dual method along with the sub-gradient technique, ensuring optimal power distribution among devices. To optimize the UAV’s location, we propose a dueling-based double deep reinforcement learning (D3RL) framework. This approach effectively combines all computed solutions, resulting in a comprehensive joint optimization strategy. Simulation results highlight the exceptional performance of the proposed framework. Specifically, optimizing the UAV’s location leads to a substantial performance gain of up to 65.9% compared to a system where only beamforming and power allocation are optimized with the UAV positioned at the center of the service area. These findings underscore the potential of our framework in advancing consumer electronics connectivity in vehicular networks.
Disciplines :
Electrical & electronics engineering
Author, co-author :
Ali, Zain ;  University of California at Santa Cruz, Baskin School of Engineering, Electrical and Computer Engineering Department, Santa Cruz, United States
Asif, Muhammad ;  Jiangsu University, School of Computer Science and Communication Engineering, Zhenjiang, China
KHAN, Wali Ullah  ;  University of Luxembourg > Interdisciplinary Centre for Security, Reliability and Trust (SNT) > SigCom
Elfikky, Abdelrahman ;  University of California at Santa Cruz, Baskin School of Engineering, Electrical and Computer Engineering Department, Santa Cruz, United States
Ihsan, Asim ;  University of Cambridge, Department of Engineering, Cambridge, United Kingdom
Ahmed, Manzoor ;  Hubei Engineering University, School of Computer and Information Science, Institute for AI Industrial Technology Research, Xiaogan, China
Ranjha, Ali ;  École de Technologie Supérieure, Electrical Engineering Department, Montreal, Canada
Srivastava, Gautam ;  Brandon University, Department of Mathematics and Computer Science, Brandon, Canada ; China Medical University, Research Centre for Interneural Computing, Taichung, Taiwan ; Chitkara University Institute of Engineering and Technology, Chitkara University, Centre for Research Impact and Outcome, Rajpura, India
External co-authors :
yes
Language :
English
Title :
Hybrid Optimization for NOMA-Based Transmissive-RIS Mounted UAV Networks
Publication date :
2025
Journal title :
IEEE Transactions on Consumer Electronics
ISSN :
0098-3063
Publisher :
Institute of Electrical and Electronics Engineers Inc.
Volume :
71
Issue :
2
Pages :
3740 - 3752
Peer reviewed :
Peer Reviewed verified by ORBi
Available on ORBilu :
since 07 December 2025

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