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New-Generation Design-Technology Co-Optimization (DTCO): Machine-Learning Assisted Modeling Framework

机译:新一代设计技术协同优化(DTCO):机器学习辅助建模框架

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In this paper, we propose a machine-learning assisted modeling framework in design-technology co-optimization (DTCO) flow. Neural network (NN) based surrogate model is used as an alternative of compact model of new devices without prior knowledge of device physics to predict device and circuit electrical characteristics. This modeling framework is demonstrated and verified in FinFET with high predicted accuracy in device and circuit level. Details about the data handling and prediction results are discussed. Moreover, same framework is applied to new mechanism device tunnel FET (TFET) to predict device and circuit characteristics. This work provides new modeling method for DTCO flow.
机译:在本文中,我们提出了一种在设计 - 技术协同优化(DTCO)流中的机器学习辅助建模框架。基于神经网络(NN)的代理模型用作新设备紧凑型模型的替代方案,而无需先验知识的设备物理以预测设备和电路电特性。在FinFET中展示并验证了该建模框架,具有高预测的设备和电路电平的精度。讨论了有关数据处理和预测结果的详细信息。此外,将相同的框架应用于新机构装置隧道FET(TFET)以预测装置和电路特性。这项工作为DTCO流提供了新的建模方法。

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