A New Macromodeling Approach for Nonlinear Microwave Circuits Based on Recurrent Neural Networks

@inproceedings{Fang2001ANM,
  title={A New Macromodeling Approach for Nonlinear Microwave Circuits Based on Recurrent Neural Networks},
  author={Yonghua Fang and Mustapha C. E. Yagoub and Qi-Jun Zhang},
  year={2001}
}
In this paper, a new macromodeling approach is developed in which a recurrent neural network (RNN) is trained to learn the dynamic responses of nonlinear microwave circuits. Input and output waveforms of the original circuit are used as training data. A training algorithm based on back propagation through time is developed. Once trained, the RNN macromodel provides fast prediction of the full analog behavior of the original circuit, which can be useful for high-level simulation and optimization… CONTINUE READING
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