ITU-R P.370-7中传播曲线的神经模型

J. Antonijevic, J. Jovkovic
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引用次数: 2

摘要

ITU- r建议书是由国际电信联盟(ITU)无线电通信部门制定的国际技术标准。ITU-R是根据阅读ITU-R P.370-7建议书中定义的图表编制的。ITU-R方法的主要问题是计算出的h/下标e/曲线的外推值与ITU-R P.370-7中图表上显示的值不同。我们检验了一个传播曲线的MLP神经模型,并在几个例子上证明了它的准确性,提供了神经网络的最佳结构。
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Neural model of the propagation curves from ITU-R P.370-7
The ITU-R Recommendations are the international technical standards developed by the Radiocommunication Sector of the International Telecommunication Union (ITU). ITU-R is based on reading the diagrams defined in Recommendation ITU-R P.370-7. The main problem with ITU-R method is the extrapolation of the curves with the calculated h/sub e/ that differs from the values shown on the diagrams in Rec. ITU-R P.370-7. We examined a MLP neural model of the propagation curves and proved its accuracy on a few examples providing the best structure of the neural network.
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