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Application of Neural Network and Its Extension of Derivative to Scattering From a Nonlinearly Loaded Antenna

机译:神经网络及其在非线性负载天线散射中的应用及其扩展

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摘要

The neural network and its extension of derivative are applied to the scattering of a nonlinearly loaded antenna. Initially, the radar cross section (RCS) of a nonlinearly loaded antenna is modeled or predicted by a neural network. By using some extension of the neural network, the derivative, i.e., slope information, about the output of the original neural network can be obtained easily. This slope information about the RCS characteristics will help one design the nonlinearly loaded antenna efficiently. It should be emphasized that the training work of the neural network is performed only once, and can be finished in advance. Numerical examples show that the neural network can predict the RCS as well as the derivatives of RCS for a nonlinearly loaded antenna with only once of training work. Therefore, the proposed method will be helpful in the design of a nonlinearly loaded antenna
机译:神经网络及其导数的扩展应用于非线性加载天线的散射。最初,通过神经网络对非线性负载天线的雷达截面(RCS)进行建模或预测。通过使用神经网络的某些扩展,可以容易地获得关于原始神经网络的输出的导数,即斜率信息。有关RCS特性的这种斜率信息将有助于人们有效地设计非线性负载天线。应该强调的是,神经网络的训练工作仅执行一次,并且可以提前完成。数值示例表明,神经网络只需训练一次即可预测非线性负载天线的RCS以及RCS的导数。因此,所提出的方法将有助于非线性加载天线的设计。

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