隧道中无线电波传播的实时训练卷积神经网络模型

Siyi Huang, Shiqi Wang, Xingqi Zhang
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引用次数: 0

摘要

矢量抛物方程(VPE)方法已被广泛应用于隧道无线电波传播建模。然而,用VPE对长隧道进行模拟计算仍然是昂贵的。提出了一种高效的实时训练卷积神经网络(CNN)模型,该模型可以在不需要预训练的情况下提供高保真的接收信号强度(RSS)预测。在短距离内同时进行粗网格和密网格VPE模拟,训练出仅使用粗网格VPE数据预测全隧道密网格结果的CNN模型。通过与全VPE仿真的比较,验证了该模型的准确性和有效性。
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On-the-Fly Training Convolutional Neural Network Models for Radio Wave Propagation in Tunnels
The vector parabolic equation (VPE) method has been widely applied to modeling radio wave propagation in tunnels. However, simulation with VPE for long tunnels is still computationally expensive. This paper presents an efficient on-the-fly training convolutional neural network (CNN) model that can provide high-fidelity received signal strength (RSS) prediction without pre-training requirement. Coarse-mesh and dense-mesh VPE simulations are concurrently run for a short distance, while a CNN model which can use only the coarse-mesh VPE data to predict dense-mesh results for the whole tunnel is trained. The accuracy and efficiency of the proposed model have been demonstrated through comparisons with full VPE simulations.
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