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Statistical Neuro-Space Mapping Technique for Large-Signal Modeling of Nonlinear Devices

机译:用于非线性设备大信号建模的统计神经空间映射技术

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摘要

A new technique, called statistical neuro-space mapping, is proposed for large-signal statistical modeling of nonlinear microwave devices. The proposed technique is an advance over a recent linear statistical mapping technique. It uses nonlinear mapping to overcome the accuracy limitations of the linear mapping in modeling large statistical variations among different devices. For a given population of device samples, the nominal device model is determined from dc, small-, and large-signal data. The behavior of a random device in the population is obtained by a nonlinear mapping from that of the nominal device. The unknown mapping function is represented by neural networks trained using dc and small-signal data of various devices in the population. A novel statistical mapping is formulated by introducing a compact set of statistical variables to control the mapping to map from the nominal device toward different devices in the population. A new training method is proposed for simultaneous statistical parameter extraction and neural-network training. The proposed technique is confirmed by statistical modeling of microwave transistor examples, and use of the models in statistical analyses of a two-stage amplifier. It is demonstrated that, for small or large statistical variations, the proposed technique outperforms the existing methods, using a minimum amount of expensive large-signal data to provide the most accurate large-signal statistical model.
机译:提出了一种称为统计神经空间映射的新技术,用于非线性微波设备的大信号统计建模。所提出的技术是相对于最近的线性统计映射技术的进步。它使用非线性映射来克服线性映射在对不同设备之间的较大统计变化进行建模时的精度限制。对于给定的设备样本总数,标称设备模型由dc,小信号和大信号数据确定。随机设备在总体中的行为是通过非线性映射从标称设备的行为获得的。未知的映射功能由使用人口中各种设备的直流和小信号数据训练的神经网络表示。通过引入一组紧凑的统计变量来控制映射,以从标称设备向总体中的不同设备进行映射,从而制定出一种新颖的统计映射。提出了一种同时统计参数提取和神经网络训练的新训练方法。通过对微波晶体管示例进行统计建模以及将该模型用于两级放大器的统计分析中,可以证实所提出的技术。事实证明,对于较小或较大的统计变化,所提出的技术优于现有方法,使用最少数量的昂贵大信号数据来提供最准确的大信号统计模型。

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