Energy-Efficient D2D Communications Based on Centralised Reinforcement Learning Techniques

Sami Alenezi, Chunbo Luo, G. Min
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Abstract

Device-to-Device (D2D) communication has emerged as an evolving communication technology in 5G networks, enabling a pair of user equipment units to communicate without passing through the base station. However, the introduction of a D2D link can cause interference with other cellular user links, which highlights the difficulty of guaranteeing the communication quality of the whole system. In addition, when a large number of cellular users are connected to the network through D2D devices at the same time, the circuit consumption of the mobile devices will greatly increase and affect the user experience. In this paper, we focus on improving the energy efficiency of D2D devices in a cellular network served by one base station, through the adjustment of D2D link transmission power. We propose a centralised power control algorithm based on reinforcement learning to optimise the energy utilisation, while minimising the interference on cellular users, to maintain the quality of service (QoS). Simulation results show that the proposed approach can significantly increase the system energy efficiency and maintain the cellular user QoS, compared with the benchmark algorithm.
基于集中强化学习技术的高效D2D通信
设备对设备(Device-to-Device, D2D)通信在5G网络中成为一种不断发展的通信技术,使一对用户设备单元无需通过基站即可进行通信。然而,D2D链路的引入会对其他蜂窝用户链路造成干扰,这凸显了整个系统通信质量的难以保证。此外,当大量蜂窝用户同时通过D2D设备接入网络时,移动设备的电路消耗将大大增加,影响用户体验。本文主要研究通过调整D2D链路传输功率来提高单基站蜂窝网络中D2D设备的能效。我们提出了一种基于强化学习的集中功率控制算法,以优化能量利用,同时最大限度地减少对蜂窝用户的干扰,以保持服务质量(QoS)。仿真结果表明,与基准算法相比,该方法能显著提高系统能量效率,保持蜂窝用户QoS。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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