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首页> 外文期刊>International journal of RF and microwave computer-aided engineering >Neural Networks and Volterra Series for Time-Domain Power Amplifier Behavioral Models
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Neural Networks and Volterra Series for Time-Domain Power Amplifier Behavioral Models

机译:时域功率放大器行为模型的神经网络和Volterra系列

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摘要

This paper presents a black-box model that can be applied to characterize the nonlinear dynamic behavior of power amplifiers (PAs), including strong nonlinearities and memory effects. Feedforward time-delay Neural Networks (TDNN) are used to extract the model from a large-signal input-output time-domain characterization in a given bandwidth; furthermore, explicit formulas to derive Volterra kernels from the TDNN parameters are also presented. The TDNN and related Volterra models can predict the amplifier response to different frequency excitations in the same bandwidth and power sweep. As a case study, a PA, characterized with a two-tone power swept excitation, is modeled and simulations are found in good agreement with training measurements; moreover, a model validation with two tones of different frequencies and spacing is also performed.
机译:本文提出了一种黑匣子模型,该模型可用于表征功率放大器(PA)的非线性动态行为,包括强大的非线性和记忆效应。前馈时延神经网络(TDNN)用于在给定带宽下从大信号输入-输出时域表征中提取模型。此外,还提出了从TDNN参数导出Volterra内核的显式公式。 TDNN和相关的Volterra模型可以在相同的带宽和功率扫描中预测放大器对不同频率激励的响应。作为一个案例研究,对具有双音功率扫频激励特征的功率放大器进行了建模,并发现仿真结果与训练测量值非常吻合。此外,还执行了具有不同频率和间隔的两个音调的模型验证。

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