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Efficient Analytical Formulation and Sensitivity Analysis of Neuro-Space Mapping for Nonlinear Microwave Device Modeling

机译:非线性微波设备建模的神经空间映射的高效分析公式和敏感性分析

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摘要

A new computer-aided design (CAD) method for automated enhancement of nonlinear device models is presented, advancing the concept of Neuro-space mapping (Neuro-SM). It is a systematic computational method to address the situation where an existing device model cannot fit new device data well. By modifying the current and voltage relationships in the model, Neuro-SM produces a new model exceeding the accuracy limit of the existing model. In this paper, a novel analytical formulation of Neuro-SM is proposed to achieve the same accuracy as the basic formulation of Neuro-SM (known as circuit-based Neuro-SM) with much higher computational efficiency. Through our derivations, the mapping between the existing (coarse) model and the overall Neuro-SM model is analytically achieved for dc, small-signal, and large-signal simulation and sensitivity analysis. The proposed analytical formulation is a significant advance over the circuit-based Neuro-SM, due to the elimination of extra circuit equations needed in the circuit-based formulation. A two-phase training algorithm utilizing gradient optimization is also developed for fast training of the analytical Neuro-SM models. Application examples on modeling heterojunction bipolar transistor (HBT), metal-semiconductor-field-effect transistor (MESFET), and high-electron mobility transmistor (HEMT) devices and the use of Neuro-SM models in harmonic balance simulations demonstrate that the analytical Neuro-SM is an efficient approach for modeling various types of microwave devices. It is useful for systematic and automated update of nonlinear device model library for existing circuit simulators.
机译:提出了一种用于自动增强非线性设备模型的新的计算机辅助设计(CAD)方法,从而改进了神经空间映射(Neuro-SM)的概念。它是解决现有设备模型无法很好地适应新设备数据的情况的一种系统计算方法。通过修改模型中的电流和电压关系,Neuro-SM产生了一个新模型,该模型超出了现有模型的精度极限。在本文中,提出了一种新颖的Neuro-SM分析公式,以达到与Neuro-SM基本公式(称为基于电路的Neuro-SM)基本公式相同的准确性,并具有更高的计算效率。通过我们的推导,可以对直流(小信号)和大信号仿真以及灵敏度分析进行解析,从而实现现有(粗)模型与整个Neuro-SM模型之间的映射。由于消除了基于电路的公式中所需的额外电路方程,因此所提出的分析公式比基于电路的Neuro-SM有了重大进步。还开发了利用梯度优化的两阶段训练算法,用于快速训练分析型Neuro-SM模型。对异质结双极晶体管(HBT),金属半导体场效应晶体管(MESFET)和高电子迁移率发射器(HEMT)器件进行建模的应用示例以及在谐波平衡仿真中使用Neuro-SM模型证明了分析神经-SM是用于对各种类型的微波设备进行建模的有效方法。对于现有电路仿真器的非线性设备模型库的系统和自动更新,它很有用。

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