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Extrapolation Techniques for Neural-based Nonlinear Electronic Modeling and Circuit Simulation

机译:基于神经网络的非线性电子建模和电路仿真的外推技术

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Neural network based techniques are useful in representing the behavior of electronic devices for nonlinear circuit simulation. As new technologies evolve, new behavior need to be captured for modeling and simulation. Often, measurement data from the devices are used to train a neural model to capture these behaviors. However, during nonlinear simulation, the nonlinear equations derived from the electronic circuits need to be solved iteratively, and the iterative variables may explore outside the training data range, potentially causing convergence failure. This paper addresses such problem by describing an extrapolation technique that extrapolate the information smoothly beyond the training data range. To guarantee convergence of nonlinear simulation, the extrapolated model is made maximumly smooth while satisfying diverse tendencies of the model in multi-dimensional parameter space. The technique is demonstrated by a high-electron-mobility transistor modeling example and its use in harmonic-balance simulation, showing better convergence of nonlinear circuit simulation using extrapolated neural models over existing neural modeling methods.
机译:基于神经网络的技术可用于表示用于非线性电路仿真的电子设备的行为。随着新技术的发展,需要捕获新的行为以进行建模和仿真。通常,来自设备的测量数据用于训练神经模型以捕获这些行为。但是,在非线性仿真过程中,需要迭代求解从电子电路得出的非线性方程,并且迭代变量可能会在训练数据范围之外进行探索,从而可能导致收敛失败。本文通过描述一种外推技术来解决此类问题,该技术可以将信息平滑地外推到训练数据范围之外。为了保证非线性仿真的收敛性,在满足多维参数空间中模型的各种趋势的同时,使外推模型最大程度地平滑。通过高电子迁移率晶体管建模示例及其在谐波平衡仿真中的使用证明了该技术,与现有的神经建模方法相比,它显示了使用外推神经模型更好地收敛于非线性电路仿真。

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