Transistor Compact Model Based On Gradient Constrainted Convolution Neural Network

Zijia Zhang, Yiyang Tao,Dan Niu, Bowen Zhou,Lang Zeng, Hongwei Zhou,Lining Zhang

2023 International Symposium of Electronics Design Automation (ISEDA)(2023)

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摘要
In semiconductor research, the characteristic curves of analog devices under different combinations of process and device structure parameters are very important. Traditional TCAD simulation plays a very important role, but building a compact model based on quantum physics requires a lot of effort and time, and shows relatively weak technical adaptability. The derivative of the model output may also lose continuity. In order to solve these problems, this work proposes a gradient supervised convolution neural network model with adaptive dynamic adjustment of learning rate. It is employed to model the I-V characteristics of GAA and PLANAR devices and achieves the continuity of higher-order derivatives. In addition, this work designs effective data preprocessing and new weighted loss function to enhance model expressivity. The I-V curves and physical verification of GAA and PLANAR devices by the proposed model show that the model can obtain high-precision fitting and achieve high-order differentiable continuity.
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关键词
TCAD,Convolutional neural network,Circuit Simulation,NMOS devices
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