Proactive Online Power Allocation for Uplink NOMA-IoT Networks With Delayed Gradient Feedback

  • Jing, Zewei
  • Yang, Qinghai
  • Qin, Meng
  • Mei, Muyu
  • Kwak, Kyung Sup
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초록

In this letter, we propose a proactive online power allocation algorithm aiming to maximize the ergodic sum rate for an uplink multi-carrier non-orthogonal multiple access enabled Internet of Things (IoT) network, in which IoT devices (IoTDs) are subject to both instantaneous and ergodic transmit power constraints. The proposed algorithm enables a natural distributed implementation where each IoTD chooses its own transmit power proactively for future time slots without requiring instant channel power gain (CPG) information but only upon a delayed feedback of the sum rate gradient from the base station and a self-maintaining virtual queue. We show that the optimal power allocation for each IoTD can be easily obtained by a low-complexity bisection method. Moreover, the proposed algorithm achieves an [O(V), O(1/V)]-tradeoff between the virtual queue length and the ergodic sum rate optimality, where V is a positive parameter. Simulation results show that our algorithm has a comparable convergence speed and insignificant performance loss compared to a centralized drift-plus-penalty based algorithm upon instant CPG information.

키워드

Non-orthogonal multiple accessInternet of Thingsproactive power allocationonline convex optimization
제목
Proactive Online Power Allocation for Uplink NOMA-IoT Networks With Delayed Gradient Feedback
저자
Jing, ZeweiYang, QinghaiQin, MengMei, MuyuKwak, Kyung Sup
DOI
10.1109/LWC.2020.3047871
발행일
2021-04
유형
Article
저널명
IEEE Wireless Communications Letters
10
4
페이지
869 ~ 872