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Behavioral Modeling of Steady-State Oscillators with Buffers Using Neural Networks

机译:使用神经网络具有缓冲器的稳态振荡器的行为建模

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This paper describes a method to model the nonlinear time-domain steady-state behavior of oscillators with output buffers using neural networks. In the proposed model, an augmented neural network (AugNN) with a periodic unit is used to capture the periodicity of the oscillatory output waveform, where the nonlinear dynamic behavior of the output buffer is taken into account using recurrent neural networks (RNN). The model is trained using the data obtained from the simulation of transistor-level circuit models. The proposed model is compatible with Verilog-A. An example applied to a buffer-included ring oscillator demonstrates that the proposed modeling method offers good accuracy and significant simulation speed-up to facilitate time-domain analysis without compromising intellectual property (IP).
机译:本文介绍了一种使用神经网络与输出缓冲器模拟振荡器的非线性时域稳态行为的方法。在所提出的模型中,使用周期性单元的增强神经网络(AUGNN)来捕获振荡输出波形的周期性,其中使用经常性神经网络(RNN)考虑输出缓冲器的非线性动态行为。使用从晶体管电平电路模型的模拟中获得的数据训练该模型。所提出的模型与Verilog-A兼容。应用于缓冲区环形振荡器的示例演示了所提出的建模方法提供良好的精度和显着的模拟加速,以便于在不影响知识产权(IP)的情况下进行时间域分析。

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