Learning on the Fly: An RNN-Based Online Throughput Prediction Framework for UAV Communications

Yuxuan Jiang, Koichi Nihei, Junnan Li, H. Yoshida, Dai Kanetomo
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引用次数: 4

Abstract

This paper presents learning on the fly (LoF), a two-stage online framework to predict the achievable application-layer throughput in the downlink data communication from an unmanned aerial vehicle (UAV) to a ground access point. LoF is based on a recurrent neural network (RNN). While the UAV is flying, LoF trains the RNN with constantly observed throughput and in the meantime, makes throughput predictions for the near future. Both the training and prediction can concurrently run on a non-GPU device at the network edge (e.g., on the UAV). To this end, we design LoF with a lightweight RNN architecture and a customized training process by weighted sampling on a sliding window. We implement LoF using PyTorch. Numerical results show that LoF is able to achieve an average prediction accuracy of 87.65%, outperforming existing approaches in the literature.
飞行学习:基于rnn的无人机通信在线吞吐量预测框架
本文提出了一种两阶段在线框架——飞行学习(LoF),用于预测从无人机(UAV)到地面接入点的下行数据通信中可实现的应用层吞吐量。LoF基于递归神经网络(RNN)。当无人机飞行时,LoF对RNN进行持续观察吞吐量的训练,同时对近期的吞吐量进行预测。训练和预测可以同时在网络边缘的非gpu设备上运行(例如,在无人机上)。为此,我们设计了具有轻量级RNN架构的LoF,并通过对滑动窗口进行加权采样来定制训练过程。我们使用PyTorch实现LoF。数值结果表明,LoF的平均预测精度达到87.65%,优于已有的文献方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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