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Accuracy Improvement Model for Predicting Propagation Delay of Loran-C Signal Over a Long Distance

机译:预测长距离传播信号传播延迟的准确性改进模型

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摘要

We previously used back propagation neural network (BPNN) with the meteorological factors of the receiver point to establish a model for predicting propagation delay of Loran-C signal over a short distance. Nevertheless, for a long propagation path, it is not proper to use only the meteorological factors of the receiver point. In this letter, a propagation delay prediction model that considers multiweather and multipoint was established by using a more suitable generalized regression neural network (GRNN) over a long distance. We first compared three meteorological factors of six points on the propagation path, and found that they have obvious differences. Then, a propagation delay prediction model based on three meteorological factors of the six points is established with GRNN. Finally, the further comparison shows that on the one hand, GRNN is more suitable to establish the prediction model of propagation delay than BPNN; on the other hand, more points on the propagation path are considered, and the prediction accuracy of the model is higher.
机译:我们以前使用了接收器点的气象因子来建立用于预测Loran-C信号的传播延迟在短距离中的模型的模型。然而,对于长传播路径,仅使用接收器点的气象因素是不合适的。在这封信中,通过在长距离中使用更合适的广义回归神经网络(GRNN)来建立考虑多天气和多点的传播延迟预测模型。我们首先将三个繁殖路径上的六点的气象因素进行了比较,发现它们具有明显的差异。然后,使用GRNN建立基于六点的三个气象因子的传播延迟预测模型。最后,进一步的比较表明,一方面,GRNN更适合于建立比BPNN的传播延迟预测模型;另一方面,考虑了传播路径上的更多点,并且模型的预测精度更高。

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