Sum rate maximization of D2D networks with energy constrained UAVs through deep unsupervised learning

Benjamin Lea, Debaditya Shome, Omer Waqar, J. Tomal
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Abstract

We consider a system model in which several energy harvesting (EH) unmanned aerial vehicles (UAVs), often known as drones, are deployed with device-to-device (D2D) communication networks. For the considered system model, we formulate an optimization problem that aims to find an optimal transmit power vector which maximizes the sum rate of the D2D network while also meets the minimum energy requirements of the UAVs. Because of the nature of the system model, it is necessary to deliver solutions in real time i.e., within a channel coherence time. As a result, conventional non-data-driven optimization methods are inapplicable, as either their run-time overheads are prohibitively expensive or their solutions are significantly suboptimal. In this paper, we address this problem by proposing a deep unsupervised learning (DUL) based hybrid scheme in which a deep neural network (DNN) is complemented by the full power scheme. It is shown through simulations that our proposed hybrid scheme provides up to 91% higher sum rate than an existing fully non-data driven scheme and our scheme is able to obtain solutions quite efficiently, i.e., within a channel coherence time.
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基于深度无监督学习的能量受限无人机D2D网络和速率最大化
我们考虑了一个系统模型,其中几个能量收集(EH)无人驾驶飞行器(uav),通常被称为无人机,与设备到设备(D2D)通信网络部署。对于所考虑的系统模型,我们制定了一个优化问题,旨在找到一个最优的发射功率矢量,使D2D网络的和速率最大化,同时满足无人机的最小能量需求。由于系统模型的性质,有必要实时交付解决方案,即在信道相干时间内。因此,传统的非数据驱动的优化方法不适用,因为它们的运行时开销非常昂贵,或者它们的解决方案明显不是最优的。在本文中,我们通过提出一种基于深度无监督学习(DUL)的混合方案来解决这个问题,其中深度神经网络(DNN)与全功率方案相辅相成。通过仿真表明,我们提出的混合方案比现有的完全非数据驱动方案提供高达91%的和速率,并且我们的方案能够非常有效地获得解决方案,即在信道相干时间内。
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