P. Hart, J. van Staveren, F. Sebastiano, Jianjun Xu, D. Root, M. Babaie
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引用次数: 2
摘要
基于量子的系统,如量子计算机和量子传感器,通常需要一个低温电接口,这可以使用在低温下工作的CMOS集成电路(cryo-CMOS)方便地实现。设计复杂的电路需要可靠的仿真模型,但CMOS晶体管在低温下的电特性与室温下的行为存在很大差异,并且没有标准的基于物理的crmo器件模型。为了规避这些限制,本文提出使用人工神经网络(ANN)和相关的训练(提取)程序,直接从实验数据自动生成冷冻cmos器件模型。建立了40纳米CMOS晶体管在宽偏置条件、器件几何形状和4 K至300 K温度范围内直流特性的器件模型,并用于模拟宽温度范围(4 K - 300 K)下的电压参考电路。通过使用基于人工神经网络的非线性多端电容元件来模拟环形振荡器,证明了该模型在动态/高频电路中的潜在应用。初步仿真结果与实验结果吻合良好,证明了该方法的可行性和实用性。
Artificial Neural Network Modelling for Cryo-CMOS Devices
Quantum-based systems, such as quantum computers and quantum sensors, typically require a cryogenic electrical interface, which can be conveniently implemented using CMOS integrated circuits operating at cryogenic temperatures (cryo-CMOS). Reliable simulation models are required to design complex circuits, but CMOS transistor electrical characteristics at cryogenic temperatures substantially deviate from the behavior at room temperature, and no standard physics-based model exists for cryo-CMOS devices. To circumvent those limitations, this paper proposes the use of Artificial Neural Networks (ANN) and an associated training (extraction) procedure that automatically generates cryo-CMOS device models directly from experimental data. A device model for the DC characteristics of 40-nm CMOS transistors over a wide range of bias conditions, device geometries and temperatures from 4 K to 300 K has been generated and used to simulate voltage-reference circuits over a wide temperature range (4 K – 300 K). The potential application to dynamic/high-frequency circuits is demonstrated by enhancing the basic model with ANN-based nonlinear multi-terminal capacitive elements to simulate a ring oscillator. Preliminary results showing a good match between simulations and experiments demonstrate the feasibility and practicality of the proposed approach.