用人工神经网络求解折射率估计反演问题

C. Tepecik, I. Navruz
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引用次数: 1

摘要

大气折射率是影响无线电波传播方向的重要变量之一。这意味着雷达或通信系统可能会根据这个变量显示出意想不到的行为和性能。利用雷达杂波资料估计大气的折射率特性是可能的。这种方法被称为杂波折射(RFC)。RFC是一个非线性反演问题。本文研究了利用人工神经网络求解折射率反演问题。必须准备一个训练数据集来表示具有折射率参数的管道。幸运的是,神经网络(NN)的学习和泛化能力在这一点上很有帮助,因此一个好的折射参数映射足以解决反演问题。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Solving inversion problem for refractivity estimation using Artificial Neural Networks
Atmospheric refractivity index is one of the most important variable that effects the propagation direction of radio waves. This means a radar or communication system can show unexpected behaviour and performance depending on this variable. Estimation of refractivity characteristics of atmosphere is possible by using radar clutter data. This method is called refractivity from clutter (RFC). RFC is a nonlinear inversion problem. In this work, Artificial Neural Networks are studied to solve inversion problem for refractivity estimation. A training data set had to be prepared to represent ducts with refractivity parameters. Fortunately, learning and generalization capability of Neural Networks (NN) is very helpful in this point, so a good mapping of refractivity parameters can be enough for solving inversion problem.
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