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Artificial Neural Network-Based Compact Modeling Methodology for Advanced Transistors

机译:基于人工神经网络的高级晶体管的紧凑型型方法

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The artificial neural network (ANN)-based compact modeling methodology is evaluated in the context of advanced field-effect transistor (FET) modeling for Design-Technology-Cooptimization (DTCO) and pathfinding activities. An ANN model architecture for FETs is introduced, and the results clearly show that by carefully choosing the conversion functions (i.e., from ANN outputs to device terminal currents or charges) and the loss functions for ANN training, ANN models can reproduce the current-voltage and charge-voltage characteristics of advanced FETs with excellent accuracy. A few key techniques are introduced in this work to enhance the capabilities of ANN models (e.g., model retargeting, variability modeling) and to improve ANN training efficiency and SPICE simulation turn-around-time (TAT). A systematical study on the impact of the ANN size on ANN model accuracy and SPICE simulation TAT is conducted, and an automated flow for generating optimum ANN models is proposed. The findings in this work suggest that the ANN-based methodology can be a promising compact modeling solution for advanced DTCO and pathfinding activities.
机译:基于人工神经网络(ANN)的紧凑型模型方法,在高级场效应晶体管(FET)建模中评估了设计 - 技术 - 高化(DTCO)和路径挤出活动的建模。介绍了用于FET的ANN模型架构,结果清楚地表明,通过仔细选择转换功能(即从ANN输出到设备终端电流或电荷)以及ANN训练的损耗功能,ANN模型可以再现电流电压以及高级FET的充电电压特性,精度优异。在这项工作中引入了一些关键技术,以增强ANN模型的能力(例如,模型重试,可变性建模),并改善ANN训练效率和SPICE仿真旋转时间(TAT)。对ANN尺寸对ANN模型精度和SPICE模拟TAT的影响进行了系统研究,提出了一种用于产生最佳ANN模型的自动化流程。这项工作中的调查结果表明,基于安基的方法可以是高级DTCO和Pathfinding活动的有希望的紧凑型造型解决方案。

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