基于神经网络的薄样品射频测试系统

Satyajit Panda, N. Tiwari, M. Akhtar
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引用次数: 3

摘要

提出了一种新的基于人工神经网络(ANN)的射频和微波频段薄样品复介电常数测定方法。所提出的方法使用共面波导传感器测量试样的散射系数,然后将其与所提出的人工神经网络结构结合使用以获得其介电特性。利用CST Microwave Studio对共面传感器进行仿真,获得了训练人工神经网络所需的数据。为了训练网络,使用了带动量的梯度下降训练函数,避免了对局部极小值的依赖。此外,正则化交叉熵激活函数用于更快的网络学习和解决过拟合问题。通过在指定频带内测试多个标准样本,验证了所提方法的有效性。
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Neural network based system for RF testing of thin samples
A novel artificial neural network (ANN) based architecture is proposed for the complex permittivity determination of thin samples in RF and microwave frequency band. The proposed approach uses a coplanar waveguide sensor for the measurement of scattering coefficients of test specimens, which are then used in conjunction with the proposed ANN architecture to obtain their dielectric properties. The data for training the ANN are obtained by simulating the coplanar sensor using the CST Microwave Studio. To train the network, the gradient-descent training function with momentum is used which avoids sticking to a local minima. In addition, the regularized cross-entropy activation function is used for faster learning of the network and to address over-fitting. The proposed approach is validated by testing a number of standard samples in the designated frequency bands.
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