基于模型的机器学习节能无人机布局

Shiyang Zhou, Yufan Cheng, Xia Lei
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引用次数: 0

摘要

作为空中基站,无人驾驶飞行器(uav)可以为地面用户提供无线覆盖。为了实现节能覆盖的目标,本文提出了一种基于模型的无人机布局算法。具体而言,通过基于无人机对地信道估计的机器学习确定无人机坐标。首先,建立了信道参数未知的无人机对地传输路径损失概率模型,并基于监督学习对信道参数进行估计。其中,我们从无人机和地面用户的不同坐标处收集训练数据,并从地面用户处收集相应的路径损失反馈。然后,通过学习到的信道模型,采用梯度下降法求解无人机最优放置高度,以最小发射功率完美覆盖服务区域;仿真结果验证了所提出的基于模型的学习方案能够准确估计信道参数。此外,与无模型无人机放置算法相比,基于模型的无人机放置算法以更低的发射功率覆盖了服务区域。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Model-Based Machine Learning for Energy-Efficient UAV Placement
Serving as aerial base stations, unmanned aerial vehicles (UAVs) can provide wireless coverage for the ground users. To achieve the goal of energy-efficient coverage, this paper proposes a model-based UAV placement algorithm. Specifically, the UAV coordinate is determined via machine learning based UAV-to-ground channel estimation. First, We establish a probabilistic UAV-to-ground transmission pathloss model with unknown channel parameters, which are estimated based on supervised learning. Among them, we collect the training data from the diverse coordinates of the UAV and the ground users and the corresponding pathloss feedback from the ground users. Then, the optimal UAV placed altitude is solved by gradient descent via the learned channel model to perfectly cover the served area with the minimum transmit power. Simulation results are presented to validate that the proposed model-based learning scheme can precisely estimate the channel parameters. Moreover, the proposed model-based UAV placement algorithm cover the served area with lower transmit power compared with model-free UAV placement algorithm.
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