A Resource Allocation Scheme of D2D Energy Harvesting Networks Based on Stochastic Learning

Wenyan Shi, Yue Meng, Lulu Gu
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引用次数: 1

Abstract

As one of the key technologies in the 5th generation mobile networks, device-to-device (D2D) can significantly improve spectrum efficiency (SE), throughput, energy efficiency, and reduce congestion in cellular networks. However, due to the spectrum sharing between D2D users (DUs) and cellular users (CUs), unreasonable resource allocation may cause serious interferences. Meanwhile, considering the energy limitation of D2D equipment and the requirement of green communication, this paper studies the resource allocation scheme under D2D energy harvesting (EH) networks based on stochastic learning and Stackelberg game. We formulate the joint channel and EH time slot allocation problem as a distributed learning problem. The DUs should pay for reusing the spectrum resource to base station if joining the networks reduce the SE of CUs severely. The proposed resource allocation scheme can converge to a Nash Equilibrium which maximizes the SE of the D2D networks and protects the quality of service of CUs. Finally, numerical results validate that the proposed scheme achieves an advanced performance relatively.
基于随机学习的D2D能量收集网络资源分配方案
设备到设备(device-to-device, D2D)是第五代移动网络的关键技术之一,可以显著提高蜂窝网络的频谱效率(SE)、吞吐量、能源效率和减少拥塞。但是,由于D2D用户(DUs)和蜂窝用户(cu)之间的频谱共享,资源分配不合理可能会造成严重的干扰。同时,考虑到D2D设备的能量限制和绿色通信的要求,本文研究了基于随机学习和Stackelberg博弈的D2D能量收集(EH)网络下的资源分配方案。我们将联合信道和EH时隙分配问题表述为一个分布式学习问题。如果加入网络会严重降低cu的SE,则需要为基站复用频谱资源付费。所提出的资源分配方案能够收敛到纳什均衡,使D2D网络的SE最大化,同时保护cu的服务质量。最后,数值结果验证了该方案具有较好的性能。
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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