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Efficient parameter-extraction of SPICE compact model through automatic differentiation

机译:通过自动微分有效地提取SPICE紧凑模型的参数

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A novel parameter extraction method for compact MOSFET models is proposed. The proposed method exploits automatic differentiation (AD) technique that is widely used in the training of artificial neural networks. In the AD technique, gradient of all the parameters of the MOSFET model is analytically calculated as a graph to reduce computational cost. On the basis of the calculated gradient, the model parameters are efficiently optimized. Through experiments using SPICE models, the parameter extraction using the proposed method achieved 7.01x speedup compared to that using the numerical-differentiation method.
机译:提出了一种用于紧凑型MOSFET模型的新参数提取方法。所提出的方法利用了在人工神经网络的训练中广泛使用的自动差分(AD)技术。在AD技术中,将MOSFET模型的所有参数的斜率解析为曲线图以减少计算成本。基于计算出的梯度,可以有效地优化模型参数。通过使用SPICE模型进行的实验,与使用数值微分方法相比,所提方法的参数提取速度提高了7.01倍。

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