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A hybrid Multi-valued neuron based network for the identification of lumped models

机译:基于混合的多价神经元网络,用于识别集集模型

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A novel identification technique for lumped models of general distributed circuits (i.e. microwave transmission lines, monolithic integrated circuits and filters) is presented. The approach is based on a hybrid neural network having based on Multi-valued neurons network with a modified layer and learning process, whose convergence allows the validation of the circuit approaximated lumped model. The modified layer is generated by symbolic analysis of the model under exam. The inputs of the network are geometrical parameters and the neural network output represents the lumped circuit parameter estimation.
机译:呈现了一般分布式电路集集模型的新型识别技术(即微波传输线,单片集成电路和过滤器)。该方法基于具有基于具有修改层和学习过程的多值神经元网络的混合神经网络,其会聚允许验证电路被验证的集总模型。通过考试模型的符号分析来产生修改的层。网络的输入是几何参数,神经网络输出代表集总电路参数估计。

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