论文标题
毫米波无人机通信的生成神经网络渠道建模
Generative Neural Network Channel Modeling for Millimeter-Wave UAV Communication
论文作者
论文摘要
越来越多地考虑与无人机通信(UAV)无线通信。这项工作至关重要的是统计渠道模型,这些模型描述了感兴趣的情况下的组成参数的分布。本文提出了一种基于数据培训生成神经网络的一般建模方法。所提出的生成模型具有两阶段的结构,该结构首先预测链路状态(视线,非视线或中断),然后将该状态馈入条件变化自动编码器(VAE),从而产生路径损失,延迟,延迟以及所有传播路径的到达和出发。在代表性城市环境中,无人机和蜂窝系统之间的28个GHz空中通道证明了该方法,并通过射线追踪生产训练数据集。演示范围延伸到两个标准的基站(安装在街道和下层)以及专用的基站(安装在屋顶上并上升)。所提出的方法能够捕获数据中的复杂统计关系,即使在将这些模型的参数重新放置为数据之后,它也明显胜过标准3GPP模型。
The millimeter wave bands are being increasingly considered for wireless communication to unmanned aerial vehicles (UAVs). Critical to this undertaking are statistical channel models that describe the distribution of constituent parameters in scenarios of interest. This paper presents a general modeling methodology based on data-training a generative neural network. The proposed generative model has a two-stage structure that first predicts the link state (line-of-sight, non-line-of-sight, or outage), and subsequently feeds this state into a conditional variational autoencoder (VAE) that generates the path losses, delays, and angles of arrival and departure for all the propagation paths. The methodology is demonstrated for 28 GHz air-to-ground channels between UAVs and a cellular system in representative urban environments, with training datasets produced through ray tracing. The demonstration extends to both standard base stations (installed at street level and downtilted) as well as dedicated base stations (mounted on rooftops and uptilted). The proposed approach is able to capture complex statistical relations in the data and it significantly outperforms standard 3GPP models, even after refitting the parameters of those models to the data.