Computation Rate Maximization in Active RIS-Assisted Hybrid FDMA-NOMA MEC Systems: A Deep Reinforcement Learning Approach
Citations

WEB OF SCIENCE

2
Citations

SCOPUS

2

초록

This letter investigates an active RIS-assisted mobile edge computing system where IoT devices (IDs) offload compute-intensive tasks to a base station under limited energy budget. IDs communicate in pairs leveraging hybrid frequency-division and nonorthogonal multiple-access schemes. To maximize the sum computation rate of IDs, we jointly optimize the energy allocation for offloading and local computing, RIS phase shifts, and receive beamforming. To tackle the non-convex problem, we apply a deep reinforcement learning approach based on the proximal policy optimization algorithm, ensuring stable and efficient training. The simulation results highlight the superiority of the proposed approach when compared to benchmark methods. © 2012 IEEE.

키워드

deep reinforcement learning (DRL)mobile edge computing (MEC)proximal policy optimization (PPO)Reconfigurable intelligent surface (RIS)
제목
Computation Rate Maximization in Active RIS-Assisted Hybrid FDMA-NOMA MEC Systems: A Deep Reinforcement Learning Approach
저자
Ahn, JoonsukMughal, Danish MehmoodKim, Sang-HyoChung, Min Young
DOI
10.1109/LWC.2025.3542086
발행일
2025-05
유형
Article
저널명
IEEE Wireless Communications Letters
14
5
페이지
1346 ~ 1350