基于时间卷积网络(TCN)的大气管道传播损耗预测

Ziliang Wei, Jiajing Wu, Bo Yin, Dongning Jia, Jiali Xu
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引用次数: 1

摘要

大气管道环境中无线电波传播损耗的准确预测是雷达信号传输和目标探测研究的热点问题。深度学习在很多领域都取得了很好的效果,在传播损失预测的准确预测方面也有相应的应用。本文采用时间序列卷积网络(TCN)模型对蒸发风管和地表风管超视距传播损失时间序列数据进行预测,并与目前最先进的时间序列预测网络模型LSTM和GRU的预测效果进行比较。以RMSE作为评价指标计算其精度,实验证明TCN模型在蒸发风道和地表风道环境下的预测效果都优于最先进的LSTM和GRU模型。
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Atmospheric duct propagation loss prediction based on time convolution network (TCN)
The accurate prediction of propagation loss of radio waves in atmospheric duct environment is a hot issue in radar signal transmission and target detection research. Deep learning has achieved good results in many fields, and there are corresponding applications in the accurate prediction of propagation loss prediction. In this paper, we use the time- series convolutional network (TCN) model to predict the data of evaporative duct and surface duct over-the-horizon propagation loss time series and compare the prediction effect with the current state-of-the-art time-series prediction network models LSTM and GRU. The RMSE is used as the evaluation index to calculate their accuracy, and the experiments prove that the TCN model has the best prediction effect than the most advanced LSTM and GRU models, both in the evaporative duct and surface duct environments.
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