论文标题

在多个频道上的强大底层设备到设备通信

Robust Underlay Device-to-Device Communications on Multiple Channels

论文作者

Elnourani, Mohamed, Deshmukh, Siddharth, Beferull-Lozano, Baltasar, Romero, Daniel

论文摘要

最新的设备对设备(D2D)底层通信的工作重点是优化功率或通道分配,以提高光谱效率,通常会分别考虑上行链路和下行链路。此外,其中一些人还假设渠道状态(CSI)的完美知识。在本文中,我们制定了一个联合上行链路和下行链路资源分配方案,该方案在底层网络方案中将功率和渠道资源分配给D2D对和蜂窝用户。目的是在保持D2D对之间的公平性的同时最大化整体网络速率。此外,我们还考虑了不完美的CSI,在这里我们保证一定的停电概率可以维持所需的服务质量(QoS)。最终的问题是混合整数非凸优化问题,我们提出了集中式和分散算法来解决它,以使用凸松弛,分数编程和交替优化来解决它。在分散的设置中,计算负载分布在D2D对和基站之间,也保持低频开销。此外,我们还提供了理论收敛分析,包括收敛速率与固定点。与最先进的替代方案相比,所提出的算法已在模拟环境中进行了实验测试,显示出其优惠的性能。

Most recent works in device-to-device (D2D) underlay communications focus on the optimization of either power or channel allocation to improve the spectral efficiency, and typically consider uplink and downlink separately. Further, several of them also assume perfect knowledge of channel-stateinformation (CSI). In this paper, we formulate a joint uplink and downlink resource allocation scheme, which assigns both power and channel resources to D2D pairs and cellular users in an underlay network scenario. The objective is to maximize the overall network rate while maintaining fairness among the D2D pairs. In addition, we also consider imperfect CSI, where we guarantee a certain outage probability to maintain the desired quality-of-service (QoS). The resulting problem is a mixed integer non-convex optimization problem and we propose both centralized and decentralized algorithms to solve it, using convex relaxation, fractional programming, and alternating optimization. In the decentralized setting, the computational load is distributed among the D2D pairs and the base station, keeping also a low communication overhead. Moreover, we also provide a theoretical convergence analysis, including also the rate of convergence to stationary points. The proposed algorithms have been experimentally tested in a simulation environment, showing their favorable performance, as compared with the state-of-the-art alternatives.

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