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Joint Optimization of Relay Deployment, Channel Allocation, and Relay Assignment for UAVs-Aided D2D Networks

机译:用于无人机辅助D2D网络的中继部署,信道分配和中继分配的联合优化

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摘要

Unmanned aerial vehicles (UAVs) can be deployed in the air to provide high probabilities of line of sight (LoS) transmission, thus UAVs bring much gain for wireless communication systems. In this paper, we study a UAVs-aided self-organized device-to-device (D2D) network. Relay deployment, channel allocation and relay assignment are jointly optimized, aiming to maximize the capacity of the relay network. On account of the coupled relationship between the three optimization variables, an alternating optimization approach is proposed to solve this problem. The original problem is divided into two sub-problems. The first one is that of optimizing the channel allocation and relay assignment with fixed relay deployment. Considering without central controller, a reinforcement learning algorithm is proposed to solve this sub-problem. The second sub-problem is that of optimizing the relay deployment with fixed channel allocation and relay assignment. Assuming no knowledge of channel model and exact positions of the communication nodes, an online learning algorithm based on real-time capacity is proposed to solve this sub-problem. By solving the two sub-problems alternately and iteratively, the original problem is finally solved. Simulation results show that the UAVs-aided D2D network can achieve a high capacity via the joint optimization of relay deployment, channel allocation, and relay assignment.
机译:无人驾驶飞行器(无人机)可以部署在空中,以提供高度的视线(LOS)传输,因此无人机为无线通信系统带来了很多增益。在本文中,我们研究了一个无人机辅助自组织设备到设备(D2D)网络。继电器部署,通道分配和中继分配共同优化,旨在最大限度地提高继电器网络的容量。由于三个优化变量之间的耦合关系,建议解决交替的优化方法来解决这个问题。原始问题分为两个子问题。第一个是优化具有固定继电器部署的信道分配和中继分配。考虑到没有中央控制器,提出了一种加强学习算法来解决该子问题。第二个子问题是优化具有固定信道分配和中继分配的中继部署。假设不知道通信节点的信道模型和精确位置,提出了一种基于实时容量的在线学习算法来解决该子问题。通过交替地和迭代地解决两个子问题,最终解决了原始问题。仿真结果表明,无人机辅助D2D网络可以通过中继部署,通道分配和中继分配的联合优化来实现高容量。

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